Validation Study for Daylight Dynamic Metrics by Using Test Cells in Mediterranean Area

Similar documents
Smart Controls for Lighting Design: Towards a Study of the Boundary Conditions

The performance and energy saving potential of daylighting for an industrial building in Tianjin

The Effects of Light Shelf on Climate-based Daylight performance in Tropics- A Case Study

Energy Saving Benefits of Daylighting Combined with Horizontal Exterior Overhangs in Hot-and-Humid Regions

SIMULATION-ASSISTED DAYLIGHT PERFORMANCE ANALYSIS IN A HIGH-RISE OFFICE BUILDING IN SINGAPORE

Daylight And Seating Preference In Open-Plan Library Spaces

The Assessment of Advanced Daylighting Systems in Multi-Story Office Buildings Using a Dynamic Method

IMPACT OF OCCUPANT BEHAVIOUR ON LIGHTING ENERGY USE Heverlee, Belgium Corresponding address:

Daylight Harvesting in Tropic

DAYLIGHTING PERFORMANCE OF TOPLIGHTING SYSTEMS IN THE HOT AND HUMID CLIMATE OF THAILAND

LIGHTING PERFORMANCE IN RURAL VERNACULAR ARCHITECTURE IN CYPRUS: FIELD STUDIES AND SIMULATION ANALYSIS.

EE2E045 A Calculation Method on the Energy Demand of Urban Districts

Solar Shading System Based on Daylight Directing Glass Lamellas

Daylighting Design 12 th Annual Building Codes Education Conference March Bozeman, MT Jaya Mukhopadhyay, Co-Director, Integrated Design

ENERGY AND COST SAVINGS BY USING LIGHTING CONTROLS IN OFFICES

North-South vs East-West: The Impact of Orientation in Daylighting Design for Educational Buildings in Bangladesh

New solar shading system based on daylight directing solar glass lamellas

Ground Factors and Lighting Design in an Urban Area: Daylight Availability and Light Pollution Risk

Air Pollution and Daylight Availability in the Urban Area: Dynamic Simulation in an Openplan Office in London. contact:

ADVANCED FAÇADES AND HVAC SYSTEMS: PRELIMINARY RESULTS OF FULL-SCALE MONITORING

Experimental and Simulation Study on the Performance of Daylighting in an Industrial Building and its Energy Saving Potential

Aalborg Universitet. CLIMA proceedings of the 12th REHVA World Congress volume 2 Heiselberg, Per Kvols. Publication date: 2016

A Study of Daylight Metrics Elucidating a basis for a common European approach

DAYLIGHTING DESIGN IN A LOW ENERGY BUILDING

An assessment tool for selection of appropriate daylight solutions for buildings in tropical and subtropical regions:

HOW CURRENT TRENDS IN THE DESIGN OF FACADES INFLUENCE THE FUNCTIONAL QUALITY OF INTERIOR SPACES

A Case Study on the Daylighting and Thermal Effects of Fixed and Motorized Light Louvers

Utilization of Combined Daylighting Techniques for Enhancement of Natural Lighting Distribution in Clear-Sky Residential Desert Buildings

Irvine CA MAE ROW ROW ROW. Office Lighting Plan. Page 93

CONTROLITE. Intelligent Daylighting System FACADE SKYLIGHT

SAGEGLASS VARIABLE TINTED GLAZING INPUT SHEET FOR DIAL+ SOFTWARE

BUILDING DESIGN AND THERMAL INERTIA: WHEN, WHY, WHERE

INTEGRATION OF LIGHTING PERFORMANCE INDICATORS INTO A DASHBOARD FOR DAYLIGHTING ASSESSMENTS. Beatriz Piderit 1, Daniela Besser 2

SKYLIGHT DESIGN PERFORMANCE EVALUATION METHOD DEVELOPMENT WITH THERMAL AND DAYLIGHT SIMULATION

A New Dynamic Climate-Based Daylight Metric for Sustainable Building Design in Hot Climates

An enhancement of the daylighting from side-window using two-section venetian blind

RESEARCH JOURNAL OF FISHERIES AND HYDROBIOLOGY

MAKING DAYLIGHTING WORK IN SCHOOLS

Guidelines for Design and Construction of Energy Efficient County Facilities

CONTROLITE. Intelligent Daylighting System FACADE SKYLIGHT

The effect of shading design and control on building cooling demand

Enhancing visual comfort in classrooms through daylight utilization

DYNAMIC DAYLIGHT SIMULATION AND VISUAL COMFORT SURVEY IN MEDITERRANEAN CLIMATE. CASE STUDY IN OFFICE BUILDING.

STEADY STATE AND DYNAMIC THERMOPHYSICAL PARAMETERS OF TRANSPARENT BUILDING COMPONENTS

Veronica Garcia-Hansen Gillian Isoardi Michael Hirning John Bell

TREES Training for Renovated Energy Efficient Social housing. Section 1 Techniques 1.2 Replacement of glazing

Automating the Balance of Energy Performance with Occupant Comfort with Smart Fenestrations

Ventilated Illuminating Wall (VIW): Natural ventilation and daylight experimental analysis on a 1:1 prototype scale model

Thermal Performance of Toplighting Systems in a Hot and Humid Climate: Thailand

Introduction to Simulating LEEDv4 Daylighting Credit Compliance and IES-LM-83

Design and retrofitting of a hybrid building in Athens

Modeling Energy Consumption Effects of Glazing

Climate Analysis. Daylighting uses solar angles, cloud cover/precipitation, and context. Temperature. Humidity. Precipitation. Wind.

BUILDING ENCLOSURE COUNCIL

DAYLIGHTING AND VENTILATION USING A DYNAMIC SKYLIGHT

Role of daylight in the existent and future French building regulations

Experimental study on optic and thermal performance of solar control films

SKYLIGHTS IN CLASSROOMS

Optimum Design Parameters of Box Window DSF Office at Different Glazing Types under Sub Interval of Intermediate Sky Conditions (20-40 klux)

A STUDY OF DAYLIGHTING TECHNIQUES AND THEIR ENERGY IMPLICATIONS USING A DESIGNER FRIENDLY SIMULATION SOFTWARE

Energy and Lighting Performance of Buildings in the Neighbourhood Ciudad de los Angeles, Before and After Refurbishing.

COMPARATIVE EVALUATION OF SIDE-DAYLIGHTING STRATEGIES

Available online at ScienceDirect. Energy Procedia 78 (2015 ) th International Building Physics Conference, IBPC 2015

Available online at ScienceDirect. Procedia Engineering 121 (2015 )

The Elithis Tower is an experimental and demonstration. Elithis Tower in Dijon, France. nzeb case studies

additional cooling energy consumption. Because the thermal resistance of windows has always been a weak point, even with vacuum glass or low-e glass,

Analysis of Indoor Luminous Environment and Power Generation by Roll Screen and Venetian Blind with PV Modules

Integrated performance simulation of an innovative net zero energy modular building

INTENT INtegrated Energy walls Test facility

Simulation of Dynamic Daylighting and Glare Control Systems for a Six-Story Net-Zero Energy Office Building in Seattle, WA

Innovative Daylight Systems for the Tropics

An Experimental Study for the Evaluation of the Environmental Performance by the Application of the Automated Venetian Blind

Observation of Liquid-filled Window without Presence of Liquid in Test Chamber

The Teatinas of Lima: Energy Analysis and Possibilities of Contemporary Use

Advanced Daylighting System for Deep-Plan Office

Balancing Thermal and Luminous Autonomy in the Assessment of Building Performance. Simulation

Introduction to basics of energy efficient building design

COMFORT AND BUILDING PERFORMANCE ANALYSIS OF TRANSPARENT BUILDING INTEGRATED SILICON PHOTOVOLTAICS

Analysis of different shading strategies on energy demand and operating cost of office building

SUMMER THERMAL COMFORT IN TYPICAL FRENCH RESIDENTIAL BUILDINGS: IMPACT ASSESSMENT OF BUILDING ENVELOPE INSULATION ENHANCEMENT

306: Sustainable Daylighting Design in Southern Europe

Ball State Architecture ENVIRONMENTAL SYSTEMS 1 Grondzik 1

Characterization and performance evaluation of solar shading devices

Passive solutions for the optimization of the indoor environmental quality: a case study

Copyright 2015 IACSIT Press, Singapore.

Managing Light & Daylight Efficiently for Tropical Office Buildings

Chapter 7. Passive Solar Contents

NRC CONSTRUCTION TECHNOLOGY UPDATE

BEST3 / 3 April 2012 / Mark Perepelitza. enclosure performance research applications in professional practice

Windows as a low energy light source in residential buildings: Analysis of impact on electricity, cooling and heating demand

SynthLight Handbook. Chapter 5: Case Studies. Part 1: Museu National de Arqueologia Lisbon, Portugal

Optimise the Specification of a Building Envelope

Daylight, Solar Gains and Overheating Studies in a Glazed Office Building

Pearl River Tower. Guangzhou, China. AEI Professional Project Awards January 2014 PHOTO CREDIT: TIM GRIFFITH

SOMFY - PHILIPS Light balancing Whitepaper

Modelling Analysis of Thermal Performance of Internal Shading Devices for a Commercial Atrium Building in Tropical Climates

Don Frey, P.E. Co Founder and Principal LightLouver LLC

MODELLING THE IMPACT OF GLAZING SELECTION ON DAYLIGHTING PERFORMANCE OF AN OFFICE BUILDING IN SINGAPORE USING ENERGYPLUS

Sustainable lighting design in school buildings

PERFORMANCE EVALUATION OF PV VENTILATED GLAZING

Transcription:

Validation Study for Daylight Dynamic Metrics by Using Test Cells in Mediterranean Area M. A. Campano, I. Acosta, A. L. León, and C. Calama Abstract This paper presents the validation of two daylight dynamic predictive metrics, obtained through simulation with DaySim 3.2 tool: and Continuous Daylight Autonomy (DAC). To that effect, a validation protocol is developed, in which the annual results of the predictive simulation model are compared to the illuminance values measured during a whole year into an existing test cell, located in Seville (Spain), which is used as a reference. After trials it was found that, for three illuminance thresholds of 100, 250 and 500 lux, the mean difference of daylight autonomy between measurements and dynamic simulations is lower of 2% with a standard deviation of 6.8%, and the mean difference for continuous daylight autonomy is 1.0% with a standard deviation of 4.9%. It is concluded that the use of these two metrics by calculation with DaySim tool is adequate for small-sized rooms with one window, located in the Mediterranean area. The exposed methodology allows to validate the use of these indicators in rooms with variable size, window size and location, so further investigation is required. Index Terms Daylight autonomy, field experiments, energy saving, useful daylight illuminance, window. I. INTRODUCTION Currently, energy saving is one of the main objectives in building construction and civil engineering. In this way, electric lighting is the responsible of between 15 and 30% of the energy consumption in buildings [1]-[3], so the improvement in LED lamps or lighting smart controls, in order to make better use of daylight [4], can reduce the impact on the environment [5]. To optimize the use of daylight, there are different metrics; and despite Daylight factor (DF) is the simplest and most common metric to quantify the daylight allowed by a window [6]-[10] for a better design, Daylight autonomy (DA) [11], developed by Reinhart et al., is one of the most important existing metrics which evaluate dynamic aspects of daylight, being usually applied for annual calculations and allowing to predict the efficiency of lighting smart controls. At present, lighting simulation programs allow the calculation of daylight autonomy with greater accuracy than empirical methods [12], [13], making them extremely useful Manuscript received January 30, 2018; revised May 1, 2018. This work was supported by the research and development projects Energy Rehabilitation of tertiary buildings in Mediterranean climate by optimizing Solar Protection Systems (ref BIA2014-53949-R) and Efficient design for biodynamic lighting to promote the circadian rhythm in offices buildings (ref BIA2017-86997-R), as well as the TEP-130 Research group. M. A. Campano, I. Acosta, A. L. León and C. Calama are with the Department of Building Construction I, Universidad de Sevilla, Spain (e-mail: mcampano@us.es, iacosta@us.es, leonr@us.es and ccalama@us.es). DOI: 10.7763/IJET.2018.V10.1107 487 tools in the field of natural lighting. Nevertheless, a computational simulation process is not reliable until it has been validated by comparison, preferably with real models. Since both the DA and the DAC metrics are based in dynamic annual calculations and they have a recent development, there are still no studies that address the validation of such metrics. In this way, the use of test cells, rooms with controlled conditions and equipped with a set of sensors with data storage system, can allow to generate a reliable point of comparison of the obtained simulation results. II. OBJECTIVES The main objective of this research is the validation of two daylight dynamic predictive metrics, obtained through simulation with DaySim tool: To that effect, a validation protocol is developed, in which the DA and DAC annual results of the predictive simulation model are compared to those calculated with the illuminance values measured into an existing test cell, which is used as a reference. III. METHODOLOGY For the purposes of this metrics validation study, it is necessary to define a study sample for being used as a comparison element, also selecting the objective parameters that will be measured and used as reference. After selecting the calculation tool, the simulation model is performed and the comparative analysis methodology is defined and applied. A. Calculation Metrics to Be Validated Two dynamic metrics were under study in this work. The first of these is daylight autonomy (DA), a concept conceived by the Association Suisse des Electriciens [14] and redefined by Reinhart et al. [6]. This metric is defined as the percentage of the year when a minimum illuminance threshold is met by daylight alone so that the higher the daylight autonomy, the lower the energy consumption in electric lighting. This metric can be defined as equation (1): DA= i wf i t i i t i Є [0,1] wf i = 1 if E D E L 0 if E D < E L where t i is the occupied time in a year, wf i is the weighting (1)

factor which depends on the illuminance threshold, E D is the daylight illuminance measured at a given point, and E L is the illuminance threshold. The second dynamic metric is continuous daylight autonomy (DAC) which represents the percentage of the year when a minimum illuminance threshold is met by daylight alone, considering a partial credit linearly to values below the threshold defined [15]. Therefore, this metric can be expressed as equation (2): modules off the ground and separated by an access area. Each module is composed of two test cells, one facing north and the other facing south, and separated by a service room for control, measurement and HVAC systems. Each cell is 2.40 m wide, 3.20 m deep, and 2.70 m high (Fig. 3). In this way, two different essays can be evaluated simultaneously for the same cardinal direction. DAC= i wf i t i i t i Є [0,1] wf i = 1 if E D E L E D /E L if E D < E L (2) According to the previous formulae, the dynamic metrics are calculated depending on the weather conditions which define daylight illuminance, the illuminance threshold and the occupancy time, using a typical year. B. Test Cells The room model selected for this validation study is one of the test cells of TEP-130 research group [16], designed for the optimization of vertical building envelope solutions for the retrofit of buildings in a Mediterranean area, both for opaque elements and for windows (Fig. 1). Fig. 3. Floor plans with the spatial organization of the test cells. Dimensions are in metres. Fig. 1. External appearance of the test modules. The test cells are located in an outdoor area of a building at the University of Seville, in Seville (Spain), with a N-S longitudinal axis and with no obstacles to sun or to the significant influence of wind flows in the surroundings, as can be seen in Fig. 2. The enclosure, consisting of the vertical envelope, the floor, and the roof, is made of a series of high density sandwich panels with a combined thickness of 460 mm, coloured in white and screwed to a steel frame structure. Its thermal transmittance (U-values) is 0.05 W/ m 2 K. For the flooring solution, 3 mm of non-slip black rubber covering is used. Cells 1 and 3, facing south, have a window aperture of 116 108 cm with aluminium sliding carpentry, 4.8.4 double glazing (U O = 3.3 W/m 2 K, solar factor of 0.75), and Polyvinyl Chloride (PVC) slatted shutters. The interior monitoring system controls ambient conditions of interior air quality, lighting, consumption, and energy efficiency. A weather station placed over one of the experimental modules is used to monitor the exterior parameters. The protocol established in EN ISO 7726:2001 [17] has been followed in the installation process for this system, considering a 5 min time interval for the reading of monitored data and recording historic tendencies. Table I shows the accuracy, rank and quantity of test cells lighting sensors. Fig. 2. Solar influence study (autumn equinox, 9:00 a.m. to 4:00 p.m.). TABLE I: LIGHTING PROBES IN THE TEST CELLS Device # Location Unit Rank Accuracy Lux meter 8 Interior ±3.0% lux 20-2000 (matrix) Lux meter 1 Exterior ±3.0% lux 0-200000 (horizontal) Pyranometer 6 Exterior (N/S/E/ W/horiz./diffuse) W/m² 0-2000 ±1.5% These four test cells are disposed in two independent 488

C. Calculation Model The calculation model, which generates the predictive results for DA and DAC, is defined from the facing south test cell characteristics, as a room 2.40 m wide by 3.20 m deep by 2.70 m high with a window of 116 108 cm centred in its south façade. The double-leaf window has 0.05 m thick joinery and double glazing which produces a solar factor of 0.75, using a conservation factor of 0.8. The reflectance of the inner surfaces of the calculation model is 0.22 for floor and 0.72 for walls and ceilings. These inner surfaces are diffuse reflectors and the Lambertian reflection of daylight is therefore directly proportional to the cosine of the angle between the observer's line of sight and the surface normal. All variables of the calculation model are shown in Fig. 4. using simulation program DaySim 3.2, which calculates luminous distribution using the ray-tracing process. Several studies have confirmed the correct behavior of this calculation program [18], determining their accuracy by applying the CIE test cases [12]. The calculation parameters used in this program are shown in Table II: TABLE II: RADIANCE CALCULATION PARAMETERS OF DAYSIM 3.2 Parameter Value Parameter Value Ambient Bounces 7 Specular Jitter 1.0000 Ambient Divisions 1500 Limit Weight 0.0040 Ambient Super-samples 100 Direct Jitter 0.0000 Ambient Resolution 300 Direct Sampling 0.2000 Ambient Accuracy 0.05 Direct Relays 2 Limit Reflection 10 Direct Pretest Density 512 Specular Threshold 0.0000 E. Sky Conditions The weather conditions correspond to the city of Seville, located at Latitude 37.42ºand Longitude 5.40º, with mainly clear skies. The weather data for computational computations is obtained from Energy Plus [19], considering direct normal and diffuse horizontal irradiances, as well as from the sky model developed by Perez et al. [20] and accepted by CIE [21]. Measurements in test cells were performed throughout all the year of 2017, from January to December. Fig. 4. Calculation model with illuminance control points. The measurement of illuminance values for DA and DAC indicators is performed on the axis of symmetry of the calculation model with a spacing of 0.40 m and a height above ground of 0.10 m, as can be seen in Fig. 4 and Fig. 5. F. Calculation and Measurement Conditions The calculation of daylight autonomy and useful daylight illuminance, both for computer simulation and measurements, have been developed considering an occupancy hours from 8:00 am to 5:00 pm, with no break to lunch. Given that DA and DAC entirely depends on indoor illuminance values, the illuminance threshold for the calculation is a variable which has three values: 100 lux. 250 lux. 500 lux. These three illuminance threshold are chosen because they contain the average illuminance range recommended in most common uses of architectural spaces. Fig. 5. Inner view of the test cell with lux meter distribution. D. Program The analysis of the daylight autonomy was carried out IV. ANALYSIS OF RESULTS According to the methodology described, the daylight autonomy (DA) and the continuous daylight autonomy (DAC) are calculated in the study points represented in Fig. 4 and Fig. 5, both for computer simulations and annual measurements. These values obtained can show the independence of artificial lighting in the room and therefore the relative energy saving in power consumption, if the value of daylight autonomy is located between 50 and 100%. Table III and Fig. 6 show the daylight dynamic metrics measured at the study points, both from annual measurements and dynamic simulations, for the defined illuminance thresholds of 100, 250 and 500 lux. It is also possible to see in this table the divergences between measurements and simulation, expressed in percentages. 489

TABLE III: DA AND DAC VALUES OBTAINED FOR TEST CELL ILLUMINANCE MEASUREMENTS AND FOR MODEL SIMULATION CALCULATIONS Measurements 100 lux 83% 90% 91% 91% 89% 88% 87% 86% 90% 95% 95% 95% 94% 94% 92% 92% 250 lux 68% 84% 85% 84% 80% 76% 74% 73% 81% 90% 91% 90% 89% 88% 85% 84% 500 lux 53% 72% 74% 72% 67% 63% 54% 45% 71% 84% 84% 83% 81% 79% 74% 73% Simulation 100 lux 85% 89% 89% 89% 88% 88% 87% 86% 89% 91% 91% 91% 91% 90% 90% 89% 250 lux 74% 83% 84% 83% 82% 81% 78% 77% 83% 88% 88% 88% 87% 87% 86% 85% 500 lux 56% 74% 75% 73% 69% 64% 56% 49% 74% 83% 84% 83% 81% 80% 77% 75% Divergence Measurements-Simulation 100 lux 2.0% -1.6% -2.7% -2.0% -1.5% -0.4% 0.1% -0.3% -1.0% -4.2% -4.2% -4.0% -3.2% -3.9% -2.4% -3.2% 250 lux 8.3% -1.6% -1.7% -1.6% 2.8% 5.9% 6.1% 6.2% 2.2% -2.5% -2.8% -2.4% -2.2% -1.2% 1.1% 0.6% 500 lux 5.8% 2.7% 2.0% 1.6% 3.5% 1.1% 3.0% 8.4% 3.8% -0.7% -0.3% -0.5% -0.1% 0.8% 3.4% 3.1% Fig. 6. DA and DAC for test cell and model simulations. As can be deducted from Fig. 6, daylight autonomy (DA) values in measurements are close to those observed in simulations, especially in the half part of the room which is closest to the window (0.6 to 1.8 m), with a maximum deviation of 3.5% for 500 lux. However, there are a slightly bigger divergence for values measured both at 0.2 m from the window and at the bottom of the room, from 2.4 to 3.2 m, with a maximum deviation of 8.3% for 250 lux and 8.4% for 500 lux, respectively. These differences show a small and progressive divergence between measurements and simulations regarding to depth, but they can be considered as acceptable due to the low values for all the illuminance thresholds. In the case of continuous daylight autonomy (DAC) values, it is possible to see that divergences are smaller than in the case of DA, with a maximum deviation of 4.2% for 100 lux, being more coincident for higher illuminance thresholds. Calculation of the bias error for both metrics shows a value of 1.9% for DA and 1.0% for DAC, with a standard deviation (95% reliability) of 6.8% and 4.9%, respectively. In both cases, these divergences are under 10% and, therefore, are acceptable. A comprehensive study has been carried out to validate daylight autonomy and continuous daylight autonomy metrics, calculated with DaySim tool, by comparison with measurements performed in test cells during a whole year. From the results obtained, it is concluded that the use of these metrics through dynamic calculation is adequate for small-sized rooms with one window, located in the 490

Mediterranean area. V. CONCLUSIONS At present, new lighting designs must aim to minimize energy consumption, and as exposed in the introduction, daylight dynamic metrics are one of the most remarkable tools in order to predict and evaluate the behaviour of smart lighting control systems. Nevertheless, a computational simulation process is not reliable until it has been validated by comparison, preferably with real models, so this research develops a validation protocol, in which the dynamic metrics annual results of a predictive simulation model are compared to those calculated with the illuminance values measured into an existing test cell, which is used as a reference. The analysis of the trials results shows that, for three illuminance thresholds of 100, 250 and 500 lux, the mean difference of daylight autonomy between measurements and dynamic simulations is lower of 2% with a standard deviation of 6.8%, and the mean difference for continuous daylight autonomy is 1.0% with a standard deviation of 4.9%. It is concluded that the use of these two metrics by calculation with DaySim tool is adequate for small-sized rooms with one window, located in the Mediterranean area. In this way, the use of test cells provided tangible and precise information to validate dynamic simulations. The exposed methodology also allows to validate the use of these indicators in rooms with variable size, window size and location, so further investigation is required. ACKNOWLEDGMENT The results presented were funded by the government of Spain through the research and development projects Energy Rehabilitation of tertiary buildings in Mediterranean climate by optimizing Solar Protection Systems (ref BIA2014-53949-R) and Efficient design for biodynamic lighting to promote the circadian rhythm in shift work centers (ref BIA2017-86997-R). The authors wish to express their gratitude for all the technical and financial support provided. [4] I. Acosta, C. Munoz, M. A. Campano, and J. Navarro, Analysis of daylight factors and energy saving allowed by windows under overcast sky conditions, Renewable Energy, vol. 77, 2015, pp. 194-207. [5] M.A. Haq, M.Y. Hassan, H. Abdullah, H.A. Rahman, M. P. Abdullah, F. Hussin, and D. M. Said, A review on lighting control technologies in commercial buildings, their performance and affecting factors, Renewable and Sustainable Energy Reviews, vol. 33, 2014, pp. 268-279. [6] D. H. W. Li, A review of daylight illuminance determinations and energy implications, Applied Energy, vol. 87, 2010, pp. 2109-2118. [7] S. Treado, G. Gillette, and T. Kusuda, Daylighting with windows, skylights, and clerestories, Energy and Buildings, vol. 6, 1984, pp. 319-330. [8] H. H. Alzoubi and A. H. A. Zoubi, Assessment of building façade performance in terms of daylighting and the associated energy consumption in architectural spaces: Vertical and horizontal shading devices for southern exposure facades, Energy Conversion and Management, vol. 51, 2010, pp. 1592-1599. [9] I. Acosta, C. Munoz, M. A. Campano, and J. Navarro, Analysis of daylight factors and energy saving allowed by windows under overcast sky conditions, Renewable Energy, vol. 77, 2015, pp. 194-207. [10] CIE, International lighting vocabulary, Commission Internationale de l Éclairage, 2011. [11] C. F. Reinhart, J. Mardaljevic, and Z. Rogers, Dynamic daylight performance metrics for sustainable building design, Leukos, vol. 3, no. 1, 2006, pp. 7-31. [12] CIE, Test cases to assess the accuracy of lighting computer programs, Commission Internationale de l Éclairage, 2006. [13] M. Maamari and N. F. Adra, Application of the CIE test cases to assess the accuracy of lighting computer programs, Energy and Buildings, vol. 38, 2006, pp. 869-877. [14] Association Suisse des Electriciens, Éclairage intérieur par la lumière du jour, Association Suisse Des Electriciens, Swiss Norm SN 418911, 1989. [15] A. Galatioto and M. Beccali, Aspects and issues of daylighting assessment: A review study, Renewable and Sustainable Energy Reviews, vol. 66, 2016, pp. 852-860. [16] A. L. León, R. Suárez, P. Bustamante, M. A. Campano, and D. Moreno, Design and performance of test cells as an energy evaluation model of facades in a Mediterranean building area, Energies, vol. 10, no. 11, 1816, 2017, pp. 1-16. [17] Ergonomics of the Thermal Environment. Instruments for Measuring Physical Quantities, ISO Standard 7726-2002. [18] C. F. Reinhart and P. F. Breton, Experimental validation of Autodesk (r) 3Ds Max (r) Design 2009 and Daysim 3.0, 2009, pp. 7-35. [19] U. S. Department of Energy, Energy plus energy simulation software. [20] R. Perez, R. Seals, and J. Michalsky, All-weather model for sky luminance distribution-preliminary configuration and validation, Solar Energy, vol. 50, no. 3, 1993, pp. 235-245. [21] CIE, Spatial distribution of daylight - CIE standard general sky, Commission Internationale de l Éclairage, 2003. REFERENCES [1] J.C. Lam, D. H. W. Li, and S. O. Cheung, An analysis of electricity end-use in air-conditioned office buildings in Hong Kong, Building and Environment, vol. 38, no. 3, 2003, pp. 493-498. [2] N. Armaroli and V. Balzani, Towards an electricity-powered world, Energy & Environmental Science, vol. 4, 2011, pp. 3193-3222. [3] W. Ryckaert, C. Lootens, J. Geldof, and P. Hanselaer, Criteria for energy efficient lighting in buildings, Energy and Buildings, vol. 42, no. 3, 2010, pp. 341-347. M. A. Campano is a professor at the Department of Building Construction I, University of Seville, Spain. He is a member of the research group TEP-130, which is focused on sustainability, energy efficiency, lighting, acoustics and optics related to building design and heritage refurbishment. He develops research on the field of energy efficiency, indoor environmental comfort and daylighting, as well as their relationship with the architectural design. 491