Trip Generation Characteristics of Free- Standing Discount Stores: A Case Study

Size: px
Start display at page:

Download "Trip Generation Characteristics of Free- Standing Discount Stores: A Case Study"

Transcription

1 Trip Generation Characteristics of Free- Standing Discount Stores: A Case Study THE RETAIL CHAIN THE INSTITUTE OF TRANSPORTAtion Engineers (ITE) recently published CHOSEN FOR THIS STUDY the sixth edition of Trip Generation. 1 Data from 750 new studies were added to the WAS FAIRLY DISTINCT IN existing database for a combined total of more than 3,750 individual trip generation studies. Data collection and statistical TERMS OF ANNUAL SALES, analysis efforts resulted in the addition of EXPANSION OF EXISTING 19 new land uses. A review of the data for the Free-Standing Discount Store (FSDS) in the ITE STORES, SIGNIFICANT manual indicates that for some time periods, the number of studies reported is very INCREASE IN NEW STORES small as few as three. In those cases, no AND VARIETY OF regression equations are developed. The ITE manual classifies an FSDS as MERCHANDISE SOLD. a free-standing store with off-street parking. These stores offer a variety of customer services, centralized cashiering and THE AUTHORS PRESENT a wide range of products. They typically THE COLLECTED AND maintain long store hours seven days a week. The stores included in the study are ANALYZED DATA FROM often the only ones on the site, but they also can be found in mutual operation 18 MARYLAND STORES. with a related or unrelated garden center or service center. The manual further illustrates that the FSDS are sometimes found as separate parcels within a retail complex with their own dedicated parking. Based on the ITE definition, the retail chain chosen for the study may be classified as FSDS. This is consistent with a study by TRC Raymond Keyes Associates (RKA). 2 These stores offer a wide variety of merchandise, maintain long store hours and are normally open seven days a week. A survey of sites in Maryland, USA, shows that they are normally the only store at the BY MANOJ K. JHA AND DAVID J. LOVELL site, and they have their own dedicated parking. A single retail chain was chosen for the purposes of this case study because a significant amount of information was readily available for these stores and because the focus on one particular retailer should help reduce the effect on trip generation of various dissimilarities between competing retailers. BACKGROUND INFORMATION In the past decade, the number of new retail stores in the United States has grown rapidly. These stores can be classified into at least three different categories: discount stores, supercenters and membership warehouse clubs. The growth trend for the particular retail chain in this study can be seen in Figure 1. While size may be considered as one of the factors that differentiate between the conventional discount stores and the supercenters, the biggest difference between them is the verities of merchandise they sell. The supercenters sell far more varieties of merchandise than the discount stores. The stores that were used in the present study would all be considered discount stores and were very similar in nature, even though their sizes ranged from 92,000 square feet (sq. ft.) to 156,500 sq. ft. Such a significant growth of FSDS is of interest to city, county and state traffic engineers because of the significant amount of traffic generated by these stores, which further taxes the ability of existing roads and streets to serve traffic. The significant number of trips generated by such stores may not be accurately predicted by the equations for FSDS obtained from Trip Generation. In the current study, a separate regression equation has been developed for this retail franchise using actual data from 18 stores in Maryland. LITERATURE REVIEW In recent years, there have been several studies regarding trip generation for some land uses for which adequate data are not available in the ITE manual. Datta et al. 3 developed trip generation models for multiuse highway commercial ITE JOURNAL ON THE WEB / MAY

2 Number of Stores Year Discount Stores Supercenters Warehouse Clubs Average Size ( 1000 sq. ft.) Number of Associates Note: In 1997, some of the discount stores were converted to supercenters. Therefore, number of discount stores in 1997 is less than in Figure 1. Relevant data for the retailer. developments. Patel et al. 4 provided trip generation characteristics of economy motels. A similar study was done by Slipp and Hummer, 5 which provided a trip generation rate update for public high schools. The study reported that the small number of studies in the ITE manual associated with public high schools, in conjunction with their age, warranted further study in the area. The study by Peyrebrune 6 investigated the trip generation characteristics of shopping centers. The study was done for the ITE manual and investigated the following: The relationship between trip generation and a combination of several independent variables; The definition and classification of shopping centers used by ITE; The effects of the age of the data in the ITE trip generation database; and The relationship between pass-by trips and a combination of several independent variables. The conclusions of the study were summarized as follows: Additional data should be collected to further expand the ITE database; Consideration should be given to collecting data for additional independent variables for both trip generation and pass-by trips; and Consideration should be given to applying the methodology and procedures developed for this analysis to other land uses that may benefit from multivariable analysis. RKA conducted a study for five retail stores located throughout New Jersey, USA, to determine trip generation and pass-by information. The Peyrebrune study clearly indicated a need to update the ITE database and that information on other significant variables must be explored. The sixth edition of the ITE manual certainly provides better information on several new land uses and has a richer database. However, the database for some land uses is still poor, including FSDS. STUDY OBJECTIVE This study investigates the trip generation characteristics of a major retail chain, which may fall in the category of FSDS. The objectives of this study can be summarized as follows: Discuss the correlation between several independent variables using actual data from existing stores; Analyze the efficacy of several independent predictors of trip generation by estimating the coefficient of determination, R 2, for single variable regression; Develop a separate multivariate regression model and compare it with the best single-variable model; and Provide a comparison between the true and estimated values and values obtained by using the ITE data for FSDS. The following independent variables were chosen for the study: size of the store (sq. ft.), parking, annual average daily traffic (AADT) of the adjacent street, number of employees, population of the market area, population density (population/unit square mile) and the catchment area (square miles). Catchment area was defined as the area of the region from which shoppers would normally be attracted to a particular store, estimated qualitatively using a circle of large enough radius to capture the entirety of the nearby city or municipality. Admittedly, this process is subject to gross error, but more accurate estimates would not be possible without the use of detailed market research, including perhaps surveys of existing or potential patrons. The population density was computed by dividing the population of the market area by the catchment area. STUDY METHODOLOGY The study was done using data obtained from 18 stores in Maryland. For an FSDS, separate time periods were analyzed for weekdays and weekends in the ITE manual. Separate regression models were developed for two independent variables: gross floor area (GFA) of the store and number of employees. However, the number of studies reported using the number of employees is very limited as few as three. The Peyrebrune study indicates that for shopping center developments, the average weekday evening peak hour is the most critical time period. The same argument may be valid for FSDS, assuming similar trip-making tendencies. The study further illustrates that for shopping centers, GFA does not necessarily explain all of the variability in trip generation rate. Therefore, consideration should be given to collecting additional data for 86 ITE JOURNAL ON THE WEB / MAY 1999

3 various independent variables such as adjacent street traffic, population, household income, shopping opportunities and other socioeconomic variables. Data Collection The following data were obtained for the analysis: Trips in and out of the store during the p.m. peak hour of the adjacent street on an average weekday; Size of the stores in sq. ft. (GFA); Parking spaces available at each store; p.m. peak hour traffic of the adjacent street based on AADT; Number of employees working in each store; The population of the market area; and The catchment area for the store. An inspection of the monthly traffic variation 7 reflected that July was the peak traffic month. Additionally, the garden centers that were part of the stores were normally open only during spring and summer months. Therefore, the month of July was chosen for the analysis. While July is the highest trip-making month, it is not the highest retail shopping month. A monthly factor for the retail shopping variation is not provided for the FSDS (Land Use Code 815) in the ITE manual. For shopping centers (Land Use Code 820), however, a monthly retail shopping variation is provided in the manual. This variation may be used for the discount stores since the tendency for retail shopping may be the same for both shopping centers and discount stores. Thus even though the analysis included data for July, appropriate factors may be used to translate the trip-making tendency for other months using the variation table. The trips in and out were obtained by actual counts at each of the sites during July Although in most cases the retail franchise was the only store at the site, in some cases there were other stores in the vicinity. However, every effort was made to count only the traffic that used the retail store s parking lot and was destined specifically for the retailer. In addition, in some cases there were multiple access and egress points. In those cases, the traffic was counted at each access point and then combined to give the total number of in and out trips. Information on AADT was obtained from the files of the Maryland State Highway Administration (SHA). 7 Information on the population of the market area was obtained by discussion with local authorities. The complete data for the stores is shown in Table 1. Statistical Analysis After collecting the data, statistical analyses were performed, which included an examination of the correlation matrix, and single and multivariate regressions. The possible regression models applicable to the present study may be linear, logarithmic, inverse, linear-logarithmic, or logarithmic-linear. For a single-variable regression, the decision of which explanatory variable to use was based on maximizing the coefficient of determination R 2, which is equivalent to maximizing the correlation (in absolute value) between the independent and dependent variables. Departures from a strictly linear model would have been considered only if they Table 1. Key data for the retail stores in Maryland. Pop. Catchment Trips Trips Total trips= Size density area Radius Store # (in) (out) ins+outs (sq. ft.) Parking AADT Employees Population (pop./area) (sq. miles) (miles) , , , , , , , , , , , , , , , , , , , , , , , , , , , , , , , , , , , , , , , , , , , , , , , , , , , , , , , ITE JOURNAL ON THE WEB / MAY

4 offered significant improvement in the R 2 values. No such improvements were noted; hence only strictly linear-in-parameters models are included here. The correlation matrix indicates the relative significance of the independent variables, as shown in Table 2. The first column of this matrix shows the correlation coefficients between the dependent variable (trips generated) and each of the Table 2. Correlation matrix obtained from the regression analysis. Popu- Pop. Catchment Trips Size Parking AADT Employee lation density area R 2 Trips 1.00 Size Parking AADT Employee Population Pop. density Catchment area Table 3. Results of regression analysis. Type of Regression: Single Variable Regression Statistics R Standard error Observations 18 Coefficients Standard error t-stat P-value Intercept Size 2.96E E Resulting Regression Equation: T = ( ) (Size) Type of Regression: Multivariate Regression Statistics R Standard Error Observations 18 Coefficients Standard error t-stat P-value Intercept Size Parking AADT Employee Population Pop. density Catchment area Resulting Regression Equation: T = ( )(Size) + ( )(Parking) + ( )(AADT) (3.2)(Employees) + ( )(Population) ( )(Density) ( )(Catchment) independent variables. The squares of these correlation coefficients are the R 2 values that would have resulted from single-variable regressions on each of these variables; hence the variable with the highest correlation coefficient (in absolute value) is the best choice for a single predictor, in the sense of maximizing the R 2 value. Because size has the highest correlation with trips, it was used as the independent variable for the single variable analysis. The multivariate regression was performed using the independent variables: size, parking, AADT of the adjacent street, employee, population, catchment area and population density. The t-statistic and P-values were obtained for each of the independent variables in order to assess their significance. The results of these regressions are shown in Table 3. The true and predicted values for single and multivariate regression as well as the single variable regression using ITE values are shown in Figure 2. Note that because Figure 2 is a line plot, multiple sites with the same size are considered separately on the abscissa. RESULTS AND DISCUSSION The correlation matrix indicates that the size of the store has a very high correlation (~0.75) with the number of trips generated. The next highest correlation is observed between number of employees and trips (~0.57) and then between parking and trips (~0.33). Because there is a very high correlation observed between number of employees and size (~0.88), this suggests that the number of employees is not a good supplemental predictor of trips, as corroborated by the multivariate analysis. The other variables have negligible impact on trip-making tendency. The multivariate analysis results in an R 2 value of This is slightly higher than that obtained by a single variable analysis for size. The t-test shows that the null hypothesis can be rejected for the size at the 95 percent level of significance. Therefore, size is significant. This is also obvious by looking at the P-value, which, when subtracted from 1.0, yields the highest level 88 ITE JOURNAL ON THE WEB / MAY 1999

5 of significance at which the null hypothesis can safely be rejected. The t- statistics and P-values for the other variables show that the null hypothesis cannot be rejected at the 95 percent level of significance for these variables. Size is therefore the only statistically significant variable that contributes to the trip-making tendency. A comparison of predicted values for the single and multivariate regressions reveals little significant difference between the models, as suggested by the only slight improvement in R 2 (Figure 2). Additionally, Figure 2 shows that in most (but not all) cases, multivariate analysis is a better predictor than single variable analysis. Qualitatively, this observation is consistent with the slight improvement in the R 2 value offered by the multivariate model. The plot of true values, predicted values and the ITE values for single variable regression indicates that the ITE data clearly underestimates the trips (Figure 2). p.m. Peak Hour Trips (Ins + Outs) CONCLUSIONS Based on the study, the following conclusions may be drawn: 1. For the FSDS investigated in this study, size is the most significant trip predictor, which accounts for 56 percent of the variance in trip-making tendency. In fact, the significance tests show that size is the only statistically significant variable in the analysis. 2. The other variables that somewhat contribute to the trip-making tendency are number of employees and parking. However, because number of employees is highly correlated to the size, it offers little additional explanation for variance. The effect of parking is much less than size, when considered separately, and offers little marginal improvement, when the two are considered jointly. 3. The AADT, population, population density and the catchment area had the very least impact on the trip-making tendency and, therefore, may be ignored in the trip generation analysis. 4. The predicted values for multivariate analysis are closer to the true values than the predicted values for single variable analysis. Therefore, the multivariate analysis gives a better fit of the data. If information on other variables such as employees, parking and population is known, a multivariate analysis should be performed. Otherwise a single variable analysis for size may be performed, with little sacrifice in statistically defensible accuracy. 5. The equation developed in the ITE manual for FSDS is not a good predictor of trips for FSDS. The ITE equation normally underestimates the number of new trips generated. 6. The data used in this study may be added to the ITE database for FSDS. References 1. ITE. Trip Generation, 6th ed. Washington D.C., USA, RKA. Trip Generation Study. New Jersey Wal-Mart Stores. December Datta, T.K., S. Datta and P. Nannapaneni. Trip Generation Models for Multiuse Highway Commercial Developments. ITE Journal (February 1998): Patel, M.I., F.J. Wegmann and A. Chatterjee. Trip Generation Characteristics of Economy Motels. ITE Journal (May 1996): Slipp, P.R.M., and J.E. Hummer. Trip Generation Rate Update for Public High Schools. ITE Journal (June 1996): Peyrebrune, J.C. Trip Generation Characteristics of Shopping Centers. ITE Journal (June 1996): Maryland Department of Transportation. Traffic Trends State Highway Administration, Size (sq. ft.) TRUE Predicted (Single Variable Regression) Predicted (Multivariate Regression) ITE Figure 2. Plot of true, predicted and ITE values. MANOJ K. JHA, P.E., is a Transportation Engineer for the SHA in Baltimore, Md. He also is working toward his Ph.D. in transportation engineering at the University of Maryland, College Park. Jha holds a B.E. in mechanical engineering from Regional Engineering College, Durgapur, India, and an M.S. in mechanical engineering from Old Dominion University, Norfolk, Va., USA. He is an Associate Member of ITE. DAVID J. LOVELL is an Assistant Professor in the Department of Civil Engineering at the University of Maryland, College Park. He holds a B.A. in mathematics from Portland State University and an M.S. and a Ph.D. in civil engineering from the University of California, Berkeley. Lovell is an Associate Member of ITE. ITE JOURNAL ON THE WEB / MAY

Discount Superstore Trip Generation

Discount Superstore Trip Generation Discount Superstore Trip Generation A national discount superstore trip generation study determined current Wal-Mart supercenter trip generation characteristics. A key conclusion was that typical season

More information

TRIP GENERATIONS AT POLYCLINIC LAND USE TYPE IN JOHOR BAHRU, MALAYSIA

TRIP GENERATIONS AT POLYCLINIC LAND USE TYPE IN JOHOR BAHRU, MALAYSIA ISHTIAQUE AHMED, Ph,D. E-mail: ishtiaque@utm.my SULEIMAN ABDULRAHMAN, M.Eng. E-mail: sulaimankad@yahoo.com MOHD ROSLI HAININ, Ph.D. E-mail: mrosli@utm.my SITTI ASMAH HASSAN, Ph.D. E-mail: sasmah@utm.my

More information

2016 PURDUE ROAD SCHOOL. Cautions

2016 PURDUE ROAD SCHOOL. Cautions 2016 PURDUE ROAD SCHOOL Impact Fees Based on ITE Trip Generation - Presented by: Eric J. Tripi, P.E., PTOE Cautions March 9, 2016 W. Lafayette, IN Innovation for better mobility Agenda Trip Generation

More information

APPENDIX B: TRIP GENERATION METHODOLOGY

APPENDIX B: TRIP GENERATION METHODOLOGY APPENDIX B: TRIP GENERATION METHODOLOGY B.1 WEST BERKELEY SPECIFIC TRIP GENERATION The trip generation step of the future conditions modeling process was defined to estimate the number of new vehicle trips

More information

TENW MEMORANDUM. Project Description. Trip Generation

TENW MEMORANDUM. Project Description. Trip Generation TENW Transportation Engineering NorthWest MEMORANDUM DATE: January 31, 2017 TO: FROM: SUBJECT: Min Luo, P.E. City of Redmond Curtis Chin, P.E. TENW Phase 1 Traffic Study UPS Redmond Mezzanine Redmond,

More information

Departure from Parking & Loading Standards

Departure from Parking & Loading Standards The Maryland-National Capital Park and Planning Commission Prince George's County Planning Department Development Review Division 301-952-3530 Note: Staff reports can be accessed at www.mncppc.org/pgco/planning/plan.htm.

More information

TRUCK TRIP ESTIMATION BY FACILITIES USING ARC-INFO

TRUCK TRIP ESTIMATION BY FACILITIES USING ARC-INFO Golias M, and Boile M. 1 TRUCK TRIP ESTIMATION BY FACILITIES USING ARC-INFO Mihalis Golias (corresponding author) Graduate and Research Assistant CAIT/Maritime Infrastructure Engineering and Management

More information

CALL N RIDE PERFORMANCE REVIEW

CALL N RIDE PERFORMANCE REVIEW CALL N RIDE PERFORMANCE REVIEW Submitted by: December 2008 call n Ride Performance Review 1. Defining RTD s call n Ride Services The RTD call n Ride service is currently classified as a non fixed route

More information

Number of Independent Variable Studies Equation. Parking Spaces (PSP) 113 Ln(T) = Ln(PSP)

Number of Independent Variable Studies Equation. Parking Spaces (PSP) 113 Ln(T) = Ln(PSP) TripGeneration Characterislks of Shopping Centers BY JOAN C. PEYREBRUNE r is article presents the findings of a trip generation study performed for TE and the nternational Council of Shopping Centers (CSC)

More information

RELATIONSHIP BETWEEN TRAFFIC FLOW AND SAFETY OF FREEWAYS IN CHINA: A CASE STUDY OF JINGJINTANG FREEWAY

RELATIONSHIP BETWEEN TRAFFIC FLOW AND SAFETY OF FREEWAYS IN CHINA: A CASE STUDY OF JINGJINTANG FREEWAY RELATIONSHIP BETWEEN TRAFFIC FLOW AND SAFETY OF FREEWAYS IN CHINA: A CASE STUDY OF JINGJINTANG FREEWAY Liande ZHONG, PhD Associate professor, Certified Safety Engineer, Research Institute of Highway, Ministry

More information

APPLICATION OF SEASONAL ADJUSTMENT FACTORS TO SUBSEQUENT YEAR DATA. Corresponding Author

APPLICATION OF SEASONAL ADJUSTMENT FACTORS TO SUBSEQUENT YEAR DATA. Corresponding Author 1 2 3 4 5 6 7 8 9 10 11 12 13 14 15 16 17 18 19 20 21 22 23 24 25 26 27 28 29 30 31 32 33 34 35 36 37 38 39 40 41 42 43 44 45 46 47 48 49 50 51 52 APPLICATION OF SEASONAL ADJUSTMENT FACTORS TO SUBSEQUENT

More information

ALBION FLATS DEVELOPMENT EXISTING TRAFFIC CONDITIONS AND POTENTIAL IMPACTS

ALBION FLATS DEVELOPMENT EXISTING TRAFFIC CONDITIONS AND POTENTIAL IMPACTS EXISTING TRAFFIC CONDITIONS AND POTENTIAL IMPACTS FINAL REPORT SEPTEMBER 2010 TABLE OF CONTENTS 1.0 INTRODUCTION 1 2.0 EXISTING TRAFFIC CONDITIONS 2 3.0 FUTURE TRAFFIC CONDITIONS 3 4.0 POTENTIAL IMPACTS

More information

Chapter 5 Regression

Chapter 5 Regression Chapter 5 Regression Topics to be covered in this chapter: Regression Fitted Line Plots Residual Plots Regression The scatterplot below shows that there is a linear relationship between the percent x of

More information

A Time Series Approach to Forecast Highway Peak Period Spreading and Its Application in Travel Demand Modeling

A Time Series Approach to Forecast Highway Peak Period Spreading and Its Application in Travel Demand Modeling A Time Series Approach to Forecast Highway Peak Period Spreading and Its Application in Travel Demand Modeling Sabya Mishra (University of Memphis) Timothy F. Welch (Georgia Institute of Technology) Subrat

More information

Analysis of the Observed Behavior of Users to Value Pricing and Travel time: The New Jersey Turnpike Case

Analysis of the Observed Behavior of Users to Value Pricing and Travel time: The New Jersey Turnpike Case Analysis of the Observed Behavior of Users to Value Pricing and Travel time: The New Jersey Turnpike Case Kaan Ozbay, Ph. D. Associate Professor, Department of Civil and Environmental Engineering, Rutgers,

More information

ATTACHMENT C ATTACHMENT C

ATTACHMENT C ATTACHMENT C ATTACHMENT C ATTACHMENT C September 28, 2015 Ms. Nicole Criste Terra Nova Planning & Research 42635 Melanie Place, #101 Palm Desert, CA 92211 SUBJECT: PROJECT JUPITER TRIP GENERATION EVALUATION Dear Ms.

More information

Tangerine Plaza Market Analysis

Tangerine Plaza Market Analysis Tangerine Plaza Market Analysis City of St. Petersburg November 30, 2017 Community Solutions 618 E. South Street Suite 700 Orlando, FL 32801 Summary, Conclusions, and Findings This study is intended to

More information

GUIDE FOR THE PREPARATION OF TRAFFIC IMPACT STUDIES

GUIDE FOR THE PREPARATION OF TRAFFIC IMPACT STUDIES GUIDE FOR THE PREPARATION OF TRAFFIC IMPACT STUDIES Adopted by Town Council on November 25, 2008 Prepared By: HNTB Engineering Department Planning Department TABLE OF CONTENTS I. INTRODUCTION... 1 II.

More information

D DAVID PUBLISHING. Level of Service for Parking Facilities. 1. Introduction. 2. Literature Review

D DAVID PUBLISHING. Level of Service for Parking Facilities. 1. Introduction. 2. Literature Review Journal of Traffic and Transportation Engineering 3 (015) 35-41 doi: 10.1765/38-14/015.01.004 D DAVID PUBLISHING Yulong He 1, Xiaoduan Sun, Lizhen Du 1, Ruan Jinmei 3 and Subasish Das 1. Metropolitan Transportation

More information

Technology, Newark, New Jersey, USA. Abstract

Technology, Newark, New Jersey, USA. Abstract Air quality impact analysis for the caesar hotel/casino transportation center in Atlantic City, New Jersey, USA R. Dresnack, E. Golub Department of Civil and Environmental Engineering, New Jersey Institute

More information

KENTUCKY TRANSPORTATION CENTER

KENTUCKY TRANSPORTATION CENTER Research Report KTC-10-16/FR181-10-1F KENTUCKY TRANSPORTATION CENTER KENNEDY INTERCHANGE CRASH STUDY OUR MISSION We provide services to the transportation community through research, technology transfer

More information

Technical Memorandum. 720 SW Washington Suite 500 Portland, OR dksassociates.com. DATE: July 12, 2017

Technical Memorandum. 720 SW Washington Suite 500 Portland, OR dksassociates.com. DATE: July 12, 2017 Technical Memorandum DATE: July 12, 2017 TO: Kay Bork City of Veneta Bill Johnston, AICP Oregon Department of Transportation Christina McDaniel-Wilson, PE Oregon Department of Transportation Keith Blair,

More information

Traffic Impact Analysis Guidelines. Town of Queen Creek

Traffic Impact Analysis Guidelines. Town of Queen Creek Traffic Impact Analysis Guidelines Town of Queen Creek January 2016 1. INTRODUCTION The purpose of this document is to outline the procedures and requirements for preparing a Transportation Impact Analysis

More information

Clovis Community College Class Assessment

Clovis Community College Class Assessment Class: Math 110 College Algebra NMCCN: MATH 1113 Faculty: Hadea Hummeid 1. Students will graph functions: a. Sketch graphs of linear, higherhigher order polynomial, rational, absolute value, exponential,

More information

Evaluating Two Low-Cost Methods of Collecting Truck Generation Data Using Grocery Stores

Evaluating Two Low-Cost Methods of Collecting Truck Generation Data Using Grocery Stores Evaluating Two Low-Cost Methods of Collecting Truck Generation Data Using Grocery Stores Information on the rates of truck trips generated by different land uses is uncommon but necessary for freight planning

More information

CHAPTER 2 - TRAVEL DEMAND MODEL DEVELOPMENT

CHAPTER 2 - TRAVEL DEMAND MODEL DEVELOPMENT CHAPTER 2 - TRAVEL DEMAND MODEL DEVELOPMENT 2.1 EXISTING TRAVEL DEMAND MODEL In order to accurately project future year traffic volumes within this regional study area, it was first necessary to construct

More information

Parking Study of Neighborhood and Community Shopping Centers

Parking Study of Neighborhood and Community Shopping Centers TRANSPORTA T!ON RESEARCH RECORD 1299 19 Parking Study of Neighborhood and Community Shopping Centers HOWARD s. STEIN A detailed assessment of parking demand at local-serving, neighborhood and community

More information

DC Engineers, Inc. January 18, Mr. Seth Gadinsky Gadinsky Real Estate, LLC 1680 Michigan Avenue, Suite 1001 Miami Beach, Florida 33139

DC Engineers, Inc. January 18, Mr. Seth Gadinsky Gadinsky Real Estate, LLC 1680 Michigan Avenue, Suite 1001 Miami Beach, Florida 33139 January 18, 2018 Mr. Seth Gadinsky Gadinsky Real Estate, LLC 1680 Michigan Avenue, Suite 1001 Miami Beach, Florida 33139 Re: Traffic Impact Statement - The Sanctuary at El Portal Dear Mr.Gadinsky: Pursuant

More information

9. TRAVEL FORECAST MODEL DEVELOPMENT

9. TRAVEL FORECAST MODEL DEVELOPMENT 9. TRAVEL FORECAST MODEL DEVELOPMENT To examine the existing transportation system and accurately predict impacts of future growth, a travel demand model is necessary. A travel demand model is a computer

More information

BCEO TRAFFIC IMPACT STUDY GUIDELINES

BCEO TRAFFIC IMPACT STUDY GUIDELINES BCEO TRAFFIC IMPACT STUDY GUIDELINES February 2006 TABLE OF CONTENTS INTRODUCTION..... i TRAFFIC IMPACT STUDY STRUCTURE... 1 WHEN IS A TRAFFIC IMPACT STUDY NEEDED?..... 1 STUDY AREA, SITE PLAN & HORIZON

More information

sticky economy evaluation device measuring the financial impact of a public market Crescent City Farmers Market 2010 Combined

sticky economy evaluation device measuring the financial impact of a public market Crescent City Farmers Market 2010 Combined sticky economy evaluation device measuring the financial impact of a public market Crescent City Farmers Market 2010 Combined an economic impact report generated for: Crescent City Farmers Market 10/20/2010

More information

impact Understanding the regulatory environment of climate change and the A P P E N D I X 1 of community design on greenhouse gas emissions.

impact Understanding the regulatory environment of climate change and the A P P E N D I X 1 of community design on greenhouse gas emissions. A P P E N D I X 1 Understanding the regulatory environment of climate change and the impact of community design on greenhouse gas emissions. Transportation, Planning, Land Use and Air Quality Conference

More information

CITY OF DRAPER TRAFFIC IMPACT STUDY DESIGN GUIDELINES

CITY OF DRAPER TRAFFIC IMPACT STUDY DESIGN GUIDELINES CITY OF DRAPER TRAFFIC IMPACT STUDY DESIGN GUIDELINES June 1, 2012 Draper City Traffic Impact Study Guidelines Table of Contents Introduction... 1 Traffic Impact Classification Levels... 1 Analysis Approach

More information

Traffic generated by future approved, planned or potential development activity.

Traffic generated by future approved, planned or potential development activity. IV. FUTURE CONDITIONS IV.A. Development of Future Year Traffic Forecasts In order to assess future roadway conditions, traffic projections were developed based on several sources: Growth in existing through

More information

Interactive Statewide Transportation Planning Modeling Process

Interactive Statewide Transportation Planning Modeling Process TRANSPORTATION RESEARCH RECORD 1499 Interactive Statewide Transportation Planning Modeling Process JIANGYAN WANG AND EUGENE M. WILSON The Wyoming Multimodal Statewide Transportation Planning (WMSTP) model

More information

Economic Impact of UDC Farmers Market

Economic Impact of UDC Farmers Market 2015 Economic Impact of UDC Farmers Market Xiaochu Hu, Ph.D., Kamran Zendehdel, Ph.D., and Dwane Jones, Ph.D. Center for Sustainable Development College of Agriculture, Urban Sustainability and Environmental

More information

Impact of Variable Pricing on Temporal Distribution of Travel Demand

Impact of Variable Pricing on Temporal Distribution of Travel Demand 36 Transportation Research Record 1747 Paper No. 01-2257 Impact of Variable Pricing on Temporal Distribution of Travel Demand Alasdair Cain, Mark W. Burris, and Ram M. Pendyala Despite the potential of

More information

CITY OF VALLEJO PUBLIC WORKS DEPARTMENT TRAFFIC IMPACT Analysis/Study GUIDELINES

CITY OF VALLEJO PUBLIC WORKS DEPARTMENT TRAFFIC IMPACT Analysis/Study GUIDELINES The City Engineer, under the authority of the Public Works Director and recommendations from the Traffic Engineer, will make the final decision on the need for a traffic study. The purpose of the traffic

More information

Understanding the Demand for Bus Transit Service: A New Approach

Understanding the Demand for Bus Transit Service: A New Approach Understanding the Demand for Bus Transit Service: A New Approach Ahmed M. El-Geneidy Portland State University, Center for Urban Studies Email: elgeneid@pdx.edu Thomas J. Kimpel Portland State University,

More information

TRAFFIC STUDY GUIDELINES

TRAFFIC STUDY GUIDELINES TRAFFIC STUDY GUIDELINES December 2013 The scope of the traffic impact analysis (TIA) should follow these guidelines and the requirements of VMC 11.80.130 and VMC 11.70, transportation concurrency (attached

More information

A Procedure to Determine When Safety Performance Functions Should Be Recalibrated

A Procedure to Determine When Safety Performance Functions Should Be Recalibrated A Procedure to Determine When Safety Performance Functions Should Be Recalibrated Mohammadali Shirazi Zachry Department of Civil Engineering Texas A&M University, College Station, TX 77843, United States

More information

Coordinated Highways Action Response Team

Coordinated Highways Action Response Team Performance Evaluation and Benefit Analysis for CHART in Year 29 Coordinated Highways Action Response Team ( F i n a l r e p o r t ) Prepared by I Gang-Len Chang, Professor Department of Civil and Environmental

More information

RESOLUTION NO

RESOLUTION NO RESOLUTION NO. 2017- A RESOLUTION OF THE BOARD OF COUNTY COMMISSIONERS OF SARASOTA COUNTY, FLORIDA PROVIDING FINDINGS OF FACT; ESTABLISHING A UNIFORM METHODOLOGY FOR MULTIMODAL MOBILITY ANALYSES ; AND

More information

Title: Prequalification Criteria for Pavement Inspectors. Submission Date: 12/8/14. Word Count: 4,608

Title: Prequalification Criteria for Pavement Inspectors. Submission Date: 12/8/14. Word Count: 4,608 December 8, 2014 Page 1 Title: Prequalification Criteria for Pavement Inspectors Submission Date: 12/8/14 Word Count: 4,608 Author:, Ph.D., P.E., Professor Civil Engineering Department California State

More information

Overcoming Barriers to Mixed-Use Infill Development: Let s Get Trip Generation Right

Overcoming Barriers to Mixed-Use Infill Development: Let s Get Trip Generation Right Overcoming Barriers to Mixed-Use Infill Development: Let s Get Trip Generation Right By: Matt Goyne, Mackenzie Watten, and Dennis Lee with Fehr & Peers Please contact Matt Goyne at m.goyne@fehrandpeers.com

More information

SECTION VII TRAFFIC IMPACT ANALYSIS GUIDELINES

SECTION VII TRAFFIC IMPACT ANALYSIS GUIDELINES SECTION VII TRAFFIC IMPACT ANALYSIS GUIDELINES A. GENERAL Traffic Impact Analyses (TIAs) are tools that have historically been utilized to evaluate the interaction between existing transportation infrastructures

More information

5.0 ALTERNATIVES 5.1 INTRODUCTION

5.0 ALTERNATIVES 5.1 INTRODUCTION 5.1 INTRODUCTION The California Environmental Quality Act (CEQA) Guidelines state that an EIR shall describe a range of reasonable alternatives to the Project, or to the location of the Project, which

More information

for CHART in Year 2016 Coordinated Highways Action Response Team

for CHART in Year 2016 Coordinated Highways Action Response Team Performance Evaluation and Benefit Analysis for CHART in Year 216 Coordinated Highways Action Response Team December 217 Department of Civil and Environmental Engineering The University of Maryland, College

More information

Traffic Impact Study Requirements

Traffic Impact Study Requirements [TYPE THE COMPANY NAME] Traffic Impact Study Requirements County of San Mateo Department of Public Works Roadway Services 9/1/2013 I. Introduction The County of San Mateo (County), Department of Public

More information

DIVISION I TRAFFIC IMPACT STUDY GUIDELINES ENGINEERING STANDARDS

DIVISION I TRAFFIC IMPACT STUDY GUIDELINES ENGINEERING STANDARDS CITY OF ALBANY DEPARTMENT OF PUBLIC WORKS DIVISION I TRAFFIC IMPACT STUDY GUIDELINES ENGINEERING STANDARDS Prepared By PUBLIC WORKS DEPARTMENT ALBANY, OREGON 97321 Telephone: (541) 917-7676 TABLE OF CONTENTS

More information

APPENDIX H: TRAVEL DEMAND MODEL VALIDATION AND ANALYSIS

APPENDIX H: TRAVEL DEMAND MODEL VALIDATION AND ANALYSIS APPENDIX H: TRAVEL DEMAND MODEL VALIDATION AND ANALYSIS Travel demand models (TDM) simulate current travel conditions and forecast future travel patterns and conditions based on planned system improvements

More information

2 CDM Adjustment for the Load Forecast for Distributors 2 1 Accuracy of the Load Forecast and Variance Analysis 3 1 Distribution and Other Revenue

2 CDM Adjustment for the Load Forecast for Distributors 2 1 Accuracy of the Load Forecast and Variance Analysis 3 1 Distribution and Other Revenue Page of Exhibit Tab Schedule Appendix Contents Operating Revenue Load and Revenue Forecasts Multivariate Regression Model CDM Adjustment for the Load Forecast for Distributors Accuracy of the Load Forecast

More information

Model construction of earning money by taking photos

Model construction of earning money by taking photos IOP Conference Series: Materials Science and Engineering PAPER OPEN ACCESS Model construction of earning money by taking photos To cite this article: Jingmei Yang 2018 IOP Conf. Ser.: Mater. Sci. Eng.

More information

Method to Adjust ITE Vehicle Trip-Generation Estimates in Smart-Growth Areas Robert J. Schneider, Kevan Shafizadeh, & Susan L. Handy University of

Method to Adjust ITE Vehicle Trip-Generation Estimates in Smart-Growth Areas Robert J. Schneider, Kevan Shafizadeh, & Susan L. Handy University of Method to Adjust ITE Vehicle Trip-Generation Estimates in Smart-Growth Areas Robert J. Schneider, Kevan Shafizadeh, & Susan L. Handy University of Wisconsin-Milwaukee, CSU Sacramento, & UC Davis TRB Innovations

More information

Effectively Using the QRFM to Model Truck Trips in Medium-Sized Urban Communities

Effectively Using the QRFM to Model Truck Trips in Medium-Sized Urban Communities Effectively Using the QRFM to Model Truck Trips in Medium-Sized Urban Communities By Dr. Michael Anderson and Mary Catherine Dondapati Department of Civil and Environmental Engineering The University of

More information

VEHICLES MILES TRAVELED (VMT) TRAFFIC IMPACT METRIC

VEHICLES MILES TRAVELED (VMT) TRAFFIC IMPACT METRIC VEHICLES MILES TRAVELED (VMT) TRAFFIC IMPACT METRIC A project-specific quantified analysis of the MGA Campus has been undertaken to compare BAU to the project including the project s VMT reduction program

More information

Yt i = " 1 + " 2 D 2 + " 3 D 3 + " 4 D 4 + $ 1 t 1. + $ 2 (D 2 t 2 ) + $ 3 (D 3 t 3 ) + $ 4 (D 4 t 4 ) + :t i

Yt i =  1 +  2 D 2 +  3 D 3 +  4 D 4 + $ 1 t 1. + $ 2 (D 2 t 2 ) + $ 3 (D 3 t 3 ) + $ 4 (D 4 t 4 ) + :t i Real Price Trends and Seasonal Behavior of Louisiana Quarterly Pine Sawtimber Stumpage Prices: Implications for Maximizing Return on Forestry Investment by Donald L. Deckard Abstract This study identifies

More information

Gravity Model Formulation

Gravity Model Formulation Gravity Model Formulation 2.20 The basic gravity model takes the following formulation, known as the combined power and exponential function: where Cij is the generalised cost between each origin and destination,

More information

DETECTING AND MEASURING SHIFTS IN THE DEMAND FOR DIRECT MAIL

DETECTING AND MEASURING SHIFTS IN THE DEMAND FOR DIRECT MAIL Chapter 3 DETECTING AND MEASURING SHIFTS IN THE DEMAND FOR DIRECT MAIL 3.1. Introduction This chapter evaluates the forecast accuracy of a structural econometric demand model for direct mail in Canada.

More information

Phase II- Predictive Factors Report

Phase II- Predictive Factors Report Phase II- Predictive Factors Report Identification, Standardization, and Weighting of Significant Predictive Factors for Inclusion in the Decision-making Tool Summary This report summarizes the procedures

More information

Water Quality Analysis of Lakewood Lakes

Water Quality Analysis of Lakewood Lakes Water Quality Analysis of Lakewood Lakes December 2016 Prepared by WEST Consultants, Inc. Bellevue, Washington With support from HDR, Inc., Olympia, Washington TABLE OF CONTENTS EXECUTIVE SUMMARY... V

More information

LOADS, CUSTOMERS AND REVENUE

LOADS, CUSTOMERS AND REVENUE Page of LOADS, CUSTOMERS AND REVENUE The purpose of this evidence is to present the Company s load, customer and distribution revenue forecast for the test years. The detailed test year forecasts are shown

More information

Econometric Forecasting in a Lost Profits Case

Econometric Forecasting in a Lost Profits Case Econometric Forecasting in a Lost Profits Case I read with interest the recent article by A. Frank Adams, III, Ph.D., in the May /June 2008 issue of The Value Examiner1. I applaud Dr. Adams for his attempt

More information

Professor: Jerry Sheppard

Professor: Jerry Sheppard Prepared by Group 3 Yu Dan Chen Xi Li Wei Tan Rainy Yang Yina Zhao Professor: Jerry Sheppard Submitted: March 20, 2013 History of the Company Wal-Mart Stores Inc, is an American multinational retail corporation,

More information

Validation of a Multiple Linear Regression Model

Validation of a Multiple Linear Regression Model Validation of a Multiple Linear Regression Model Marin RUSĂNESCU 1, Anca Alexandra PURCĂREA 2 1 Valplast Industry Bucharest, rusanescum@yahoo.com 2 Politehnica University of Bucharest, Faculty of Entrepreneurship,

More information

Spreadsheets in Education (ejsie)

Spreadsheets in Education (ejsie) Spreadsheets in Education (ejsie) Volume 2, Issue 2 2005 Article 5 Forecasting with Excel: Suggestions for Managers Scott Nadler John F. Kros East Carolina University, nadlers@mail.ecu.edu East Carolina

More information

ARLINGTON COUNTY TRANSIT DEVELOPMENT PLAN

ARLINGTON COUNTY TRANSIT DEVELOPMENT PLAN p EXECUTIVE SUMMARY Report Prepared by: ARLINGTON COUNTY TRANSIT DEVELOPMENT PLAN The Arlington County Transit Development Plan (TDP) is an effort to evaluate and assess the performance, connectivity,

More information

Utilizing GIS to Assess Win-Win Built Environment Investments: Transportation Modeling Methodologies and Economic Analysis Applications

Utilizing GIS to Assess Win-Win Built Environment Investments: Transportation Modeling Methodologies and Economic Analysis Applications Utilizing GIS to Assess Win-Win Built Environment Investments: Transportation Modeling Methodologies and Economic Analysis Applications GIS-T Symposium, April 2009 Sasanka Gandavarapu Wilbur Smith Associates

More information

PART 5. Capacity and Quality of Service

PART 5. Capacity and Quality of Service PART 5 Capacity and Quality of Service Assessing Transit Level of Service Along Travel Corridors Case Study Using the Transit Capacity and Quality of Service Manual Yaping Xin, Liping Fu, and Frank F.

More information

Research Methodology

Research Methodology 3.1 Sampling Design: Research Methodology For any research; deciding the sample size and sampling technique is an important part. There are various methods for deciding the sample size. For this study,

More information

Chapter Seven: Selecting the Appropriate Market and Location

Chapter Seven: Selecting the Appropriate Market and Location Chapter Seven: Selecting the Appropriate Market and Location Location, location, location. William Dillard, founder, Dillard's department stores 7-2 Integrated Retail Management Flow Chart 7-3 Objectives

More information

Note on Incentives in the Channel of Distribution

Note on Incentives in the Channel of Distribution M I T S L O A N C O U R S E W A R E > P. 1 Note on Incentives in the Channel of Distribution John R. Hauser One of the central ideas in understanding the channel of distribution is the differential power

More information

SHOW ALL YOUR WORK IN A NEAT AND ORGANIZED MANNER

SHOW ALL YOUR WORK IN A NEAT AND ORGANIZED MANNER EQUATIONS YOU MAY NEED FOR THIS EXAM Depreciation = (Purchase price - salvage value) / years of useful life Average Value or Average Value of Investment = (Purchase price + salvage value) / 2 Slope = change

More information

Appendix B2: Factors Affecting Transit Choice

Appendix B2: Factors Affecting Transit Choice Appendix B2: Factors Affecting Transit Choice 1 TRANSIT MARKET The transit market comprises those trips which have the option of taking transit, that is, those trips for which the trip origin and trip

More information

LECTURE 17: MULTIVARIABLE REGRESSIONS I

LECTURE 17: MULTIVARIABLE REGRESSIONS I David Youngberg BSAD 210 Montgomery College LECTURE 17: MULTIVARIABLE REGRESSIONS I I. What Determines a House s Price? a. Open Data Set 6 to help us answer this question. You ll see pricing data for homes

More information

MARC Brunswick/Frederick Line Improvement Proposal

MARC Brunswick/Frederick Line Improvement Proposal MD State Highway Administration Project No. M00695172 IS 270 Innovative Congestion Management Project MARC Brunswick/Frederick Line Improvement Proposal Action Committee for Transit November 2016 MARC

More information

SPSS Guide Page 1 of 13

SPSS Guide Page 1 of 13 SPSS Guide Page 1 of 13 A Guide to SPSS for Public Affairs Students This is intended as a handy how-to guide for most of what you might want to do in SPSS. First, here is what a typical data set might

More information

Computer Applications in Engineering and Construction Programming Assignment #7 Data Analysis Applied to Toll Road Data

Computer Applications in Engineering and Construction Programming Assignment #7 Data Analysis Applied to Toll Road Data CVEN 302-501 Computer Applications in Engineering and Construction Programming Assignment #7 Data Analysis Applied to Toll Road Data Date distributed : 10/28/2015 Date due : 11/16/2015 at 12:00 p.m. Upload

More information

2010 JOURNAL OF THE ASFMRA

2010 JOURNAL OF THE ASFMRA Impact of Hired Foreign Labor on Milk Production and Herd Size in the United States By Dwi Susanto, C. Parr Rosson, Flynn J. Adcock, and David P. Anderson Abstract Foreign labor has become increasingly

More information

Travel Demand Modeling Applications How Modeling is Being Used to Address the Big Issues of Transportation Planning

Travel Demand Modeling Applications How Modeling is Being Used to Address the Big Issues of Transportation Planning How Modeling is Being Used to Address the Big Issues of Transportation Planning Presented by: Dean Munn The Corradino Group Topics This Presentation is organized around two main topics: What is a travel

More information

Do Customers Respond to Real-Time Usage Feedback? Evidence from Singapore

Do Customers Respond to Real-Time Usage Feedback? Evidence from Singapore Do Customers Respond to Real-Time Usage Feedback? Evidence from Singapore Frank A. Wolak Director, Program on Energy and Sustainable Development Professor, Department of Economics Stanford University Stanford,

More information

Problem Points Score USE YOUR TIME WISELY SHOW YOUR WORK TO RECEIVE PARTIAL CREDIT

Problem Points Score USE YOUR TIME WISELY SHOW YOUR WORK TO RECEIVE PARTIAL CREDIT STAT 512 EXAM I STAT 512 Name (7 pts) Problem Points Score 1 40 2 25 3 28 USE YOUR TIME WISELY SHOW YOUR WORK TO RECEIVE PARTIAL CREDIT WRITE LEGIBLY. ANYTHING UNREADABLE WILL NOT BE GRADED GOOD LUCK!!!!

More information

Creative Commons Attribution-NonCommercial-Share Alike License

Creative Commons Attribution-NonCommercial-Share Alike License Author: Brenda Gunderson, Ph.D., 2015 License: Unless otherwise noted, this material is made available under the terms of the Creative Commons Attribution- NonCommercial-Share Alike 3.0 Unported License:

More information

Application of Modern Geostatistics for Mine Planning

Application of Modern Geostatistics for Mine Planning Application of Modern Geostatistics for Mine Planning Oy Leuangthong (oy@ualberta.ca) Department of Civil and Environmental Engineering, University of Alberta Abstract The application of conditional simulation

More information

Emergency Incident Management, Benefits and Operational Issues

Emergency Incident Management, Benefits and Operational Issues Emergency Incident Management, Benefits and Operational Issues -- Performance and Benefits Evaluation of CHART Ying Liu, Peiwei Lin, Nan Zou, Gang-len Chang Department of Civil Engineering University of

More information

CHAPTER 4 RESEARCH METHODOLOGY

CHAPTER 4 RESEARCH METHODOLOGY 91 CHAPTER 4 RESEARCH METHODOLOGY INTRODUCTION This chapter presents how the study had been designed and orchestrated and provides a clear and complete description of the specific steps that were taken

More information

Untangling Correlated Predictors with Principle Components

Untangling Correlated Predictors with Principle Components Untangling Correlated Predictors with Principle Components David R. Roberts, Marriott International, Potomac MD Introduction: Often when building a mathematical model, one can encounter predictor variables

More information

AGGREGATE ANALYSIS OF TRAVELLER ADAPTATION TO TRANSPORTATION NETWORK CHANGES - A STUDY OF THE IMPACT OF THE OPENING OF HIGHWAY

AGGREGATE ANALYSIS OF TRAVELLER ADAPTATION TO TRANSPORTATION NETWORK CHANGES - A STUDY OF THE IMPACT OF THE OPENING OF HIGHWAY AGGREGATE ANALYSIS OF TRAVELLER ADAPTATION TO TRANSPORTATION NETWORK CHANGES - A STUDY OF THE IMPACT OF THE OPENING OF HIGHWAY 407 Bruce R. Hellinga and David K. Tsui 2 Department of Civil Engineering

More information

Induced Automobile Emission Comparison between Two Retail Land Use Types. Delia S. Chi

Induced Automobile Emission Comparison between Two Retail Land Use Types. Delia S. Chi Induced Automobile Emission Comparison between Two Retail Land Use Types Delia S. Chi Abstract The increase in the number of vehicles on the road has surpassed the population growth rate in the Bay Area.

More information

The Economic Impact of the Auto Care Industry, 2017

The Economic Impact of the Auto Care Industry, 2017 The Economic Impact of the Auto Care Industry, 2017 Methodology and Documentation Prepared for The Auto Care Association 7101 Wisconsin Ave. Suite 1300 Bethesda, MD 20814 by John Dunham & Associates, Inc.

More information

1. SUMMARY. Volume Two contains the summaries of key specific plan background data, information and all appendices that are referenced in Volume One.

1. SUMMARY. Volume Two contains the summaries of key specific plan background data, information and all appendices that are referenced in Volume One. 1. SUMMARY This Imperial Center Specific Plan has been prepared to establish policy and development guidelines for a regional commercial center that will be designed for specialty, retail and wholesale

More information

Request for Proposals (RFP) for DDA Consultant Services

Request for Proposals (RFP) for DDA Consultant Services Request for Proposals (RFP) for DDA Consultant Services Issued Population (2010 census) 2,454 No. of Households 731 SUMMARY The Charter Township of Royal Oak Downtown Development Authority (DDA) requests

More information

Differences Between High-, Medium-, and Low-Profit Cow-Calf Producers: An Analysis of Kansas Farm Management Association Cow-Calf Enterprise

Differences Between High-, Medium-, and Low-Profit Cow-Calf Producers: An Analysis of Kansas Farm Management Association Cow-Calf Enterprise Differences Between High-, Medium-, and Low-Profit Cow-Calf Producers: An Analysis of 2012-2016 Kansas Farm Management Association Cow-Calf Enterprise Dustin L. Pendell (dpendell@ksu.edu) and Kevin L.

More information

Laying the Foundation for Energy Efficiency Potential Estimates through Market Assessment

Laying the Foundation for Energy Efficiency Potential Estimates through Market Assessment Laying the Foundation for Energy Efficiency Potential Estimates through Market Assessment Mark Thompson, Forefront Economics Inc Howard Reichmuth, New Buildings Institute H. Gil Peach, H. Gil Peach & Associates

More information

Mentor: William F. Hunt, Jr. Adjunct Professor. In this project our group set out to determine what effect, if any, an air monitor s distance

Mentor: William F. Hunt, Jr. Adjunct Professor. In this project our group set out to determine what effect, if any, an air monitor s distance Assessment of Air Quality Trends Near Roadways By Taylor York, Carey Jackson, and Aaron Lamb Undergraduate Statistics Program North Carolina State University Mentor: William F. Hunt, Jr. Adjunct Professor

More information

Revision confidence limits for recent data on trend levels, trend growth rates and seasonally adjusted levels

Revision confidence limits for recent data on trend levels, trend growth rates and seasonally adjusted levels W O R K I N G P A P E R S A N D S T U D I E S ISSN 1725-4825 Revision confidence limits for recent data on trend levels, trend growth rates and seasonally adjusted levels Conference on seasonality, seasonal

More information

Qualcomm Stadium Redevelopment Response to Technical Questions

Qualcomm Stadium Redevelopment Response to Technical Questions Qualcomm Stadium Redevelopment Response to Technical Questions SANDAG has reviewed the concerns emailed on September 6, 2017 and has prepared this document to respond to each concern. Additionally, based

More information

Methodology for Trend Analysis and Projection. Of Production, Market Shares, and Consumption*

Methodology for Trend Analysis and Projection. Of Production, Market Shares, and Consumption* Methodology for Trend Analysis and Projection Of Production, Market Shares, and Consumption* by C. Thomas Worley Department of Agricultural Economics Washington State University Pullman, Washington Raymond

More information

Are We Successful in Reducing Vehicle Miles Traveled in Air Quality Nonattainment Areas?

Are We Successful in Reducing Vehicle Miles Traveled in Air Quality Nonattainment Areas? Presentation at MARAMA Transportation & Air Quality Workshop Are We Successful in Reducing Vehicle Miles Traveled in Air Quality Nonattainment Areas? Statistical Evidence of the Impact of Air Quality Control

More information

CAPITAL AREA TRANSIT PLANNING SERVICE STANDARDS AND PROCESS. Planning Department

CAPITAL AREA TRANSIT PLANNING SERVICE STANDARDS AND PROCESS. Planning Department CAPITAL AREA TRANSIT PLANNING SERVICE STANDARDS AND PROCESS Planning Department January 2016 INTRODUCTION Transit Service Standards are public rules and guidelines used to make decisions about where transit

More information