Smart/Intelligent Grid Development and Deployment in Thailand (Smart Thai) WADE Smart Grid Model Initiative Summary presentation

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1 THAILAND-EC COOPERATION FACILITY PHASE II (TEC II) Smart/Intelligent Grid Development and Deployment in Thailand (Smart Thai) WADE Smart Grid Model Initiative Summary presentation Dr. Weerakorn Ongsakul Dean, School of Environment, Resources and Development, Asian Institute of Technology 21 st June 2013 Pullman Bangkok King Power, Thailand Materials will be available on WADE THAI website:

2 Outline Introduction Model Development Model Application and Result Summary

3 INTRODUCTION

4 Project Origin Smart Thai Project under cooperation with European Commission Component 3: Supporting the introduction of pilot system Sub-contract for Simulation Model Development by AIT 4

5 Project Detail Duties Design and Develop a Smart grid Simulation Model using Excel software and environment based on WADE economic model. Detail of the model will be finalized in consultation with Smart Thai team. Gather and verify current extensive data for the model. Conduct quantitative analysis based on developed model 5

6 Project Setup Contract signed late 2011 Project personnel A PhD student under Dr. Weerakorn supervision Work process Collaborate with Smart Thai staffs in order to finalize model requirements, modeling approaches, etc. Model development by AIT cooperation with Smart Thai staffs 6

7 Project Outcome 1. Simulation model for Smart grid in Thailand based on WADE economic model using Excel software and environment 2. Report on model development and quantitative analysis based on developed model 7

8 MODEL DEVELOPMENT 8

9 Model Idea WADE inputs extension inputs WADE model WADE Smart grid extension extension outputs 9

10 Model Idea 1. The model should follow WADE aspects 2. Model data shall follow Thailand s policy, plans 3. The model should include load dynamic 4. Pattaya city is chosen as the main data source 10

11 Structure and Development Load/feeder profiles collection Generation capacity information Load modeling Prioritize by cost and environmental effect Feeder modeling Priority list load dispatch System demand modeling Generation capacity requirement Other calculations Other calculations 11

12 Structure and Development Load/feeder profiles collection Load modeling Feeder modeling Represent smart system Generation capacity information Prioritize by cost and environmental effect Priority list load dispatch System demand modeling Generation capacity requirement Other calculations Other calculations 12

13 Structure and Development Worksheet Type of data Load model Hourly normalized load profile of each load type (categorized by tariff plan) Average daily peak of each profile Feeder model Combination of load per feeder Monthly distributed peak ratio Yearly distributed peak ratio Annualized demand and energy consumption growth Average distribution system losses o Equipment losses o Line losses o Substation losses Feeder financial Capital cost, Operation and maintenance cost per component 13

14 Structure and Development Worksheet Type of data Generation info* Existing and future capacity of selected CG and DE technology according to WADE model Expected load factor of each generation technology Reserve margin percentage Average transmission system losses Generation Average capital cost, O&M cost by technology of generation finance* according to WADE model Average fuel cost Average transmission and distribution costs, financial term, return on capital by technology according to WADE model Emission calc* Emission factor for NO X, SO 2, PM 10 and CO 2 by technology of generation according to WADE model Heat rate by technology 14

15 Assumptions and Limitations PEA Smart grid features System works automatically in normal and emergency conditions Provide better sensing and monitoring the real-time status Manage power consumption effectively Reduce peak load Add in electrical support for renewable energy sources Two-way communication with individual electrical appliances and applications Facilitate sale and purchase of electricity to the parties Support electric vehicle Support residential and office building automation Source: draft PEA Smart grid roadmap 15

16 Assumptions and Limitations Smart grid features assumed in the model System works automatically in normal and emergency conditions Provide better sensing and monitoring the real-time status Manage power consumption effectively Reduce peak load Add in electrical support for renewable energy sources Two-way communication with individual electrical appliances and applications Facilitate sale and purchase of electricity to the parties Support electric vehicle Support residential and office building automation Source: draft PEA Smart grid roadmap 16

17 Assumptions and Limitations Additional Assumptions and Limitations 1) Load information is accounted for area of Pattaya city 2) Only peak shifting is considered as load dynamic to ease calculation and inspection of outcomes 3) A shifted profile shall consume the same amount of energy as normal one to emphasize on controlling ability of smart grid by peak shifting 5) Home automation cost is not included; however communication backbone cost for AMI system is included 6) Because it is difficult to state which generation site should be included serving the modeled area. As a result only a fraction from country generation capacity is applied to simulation, a scale factor is considered by calculation 17

18 Scenario development 1. Business as Usual (BAU) scenario Percentage of each generation type remains the same as in PDP No smart system applied 2. Smart grid case (Modified case) scenarios Each load profile is modified by a peak shifting Energy consumption remains the same Three cases are considered as 5%, 10% and 15% on peak reduction. 3. Smart grid with energy conservation case (Modified case +EC) scenarios Every parameters are as the same as previous one Energy consumption is reduced by 5% on average 18

19 MODEL APPLICATION AND RESULTS 19

20 Model application The area in consideration is Pattaya city There are 6 substations within coverage named Banglamung 100 MW capacity Chom Tien 100 MW capacity Pattaya Tai 100 MW capacity Khao Mai Kaew 50 MW capacity Pattaya Nua 100 MW capacity Pattaya Tai 2* 50 MW capacity *Only 5 of them are modeled due to lack of profile data 20

21 Model application Tariff types Sep-2010 Number % 1. Residential (lower than 150 kwh) 19, Residential (higher than 150 kwh) 96, Small business 15, Medium business Large business Specific business Government office or Non-profit organization Agricultural pumping Temporary loads 3, Total 135, Source: 21

22 Model application Collected load model from PEA Load profile Model name Peak demand [KW] Average Residence (<150kwh/ month) House_A 4.0 Average Residence (>150kwh/ month) House_B 7.0 Average Small general service Small_C 29.0 Average Medium general service Medium_D Average Large general service Large_E Average Government and non-profit Gov_G Average Specific business (Hotel) Hotel_F 50.0 Peak demand Load profile Model name [KW] Local Grocery store Grocery_P 16.8 Local Residence House_P 39.1 Local Bank Bank_P 62.9 Local Nightclub Nightclub_P Local School School_P Local Government office Gov_P Local Factory Factory_P Local Shopping mall Mall_P Local Hotel Hotel_P Local Hospital Hospital_P

23 Model application Generated profiles Load profile Model name Peak demand [KW] Generated Residence#1 House_C 2.9 Generated Residence#2 House_D 0.5 Generated Residence#3 House_F 1.2 Generated Residence#4 House_G 0.5 Generated Residence#5 House_H 3.4 Generated Residence#6 House_I 5.8 Generated Residence#7 House_PF 5.2 Generated Residence#8 House_PM 1.7 Generated Residence#9 House_PH 1.8 Generated Residence#10 House_PT

24 Model application kw kw house_g house_d house_f house_c house_h house_a grocery_p small_c house_p gov_g bank_p 24

25 Model application kw kw 2, , , , , , hotel_f nightclub_p school_p gov_p medium_d factory_p large_e mall_p hotel_p hospital_p 25

26 Model application Feeder curve fitting Chom Tien feeder Pattaya Tai feeder Actual 1st_fit 2nd_fit Actual 1st_fit 2nd_fit 26

27 Model application System load 330, , , , , , , , , ,000 Actual-data Model-data 27

28 Model application Generation system information Generation technology Base capacity Scaled capacity Dispatch [MW] [KW] priority Coal steam turbine 2, ,301 6 Lignite steam turbine 2, ,137 1 Oil steam turbine , Gas steam turbine 3, , Base capacity Generation technology Combine cycle gas turbine 16, , [MW] Diesel gas turbine , Diesel engine Hydropower 3, ,339 2 Interconnection 2, ,893 3 Scaled capacity [KW] Coal CHP ,927 7 Oil CHP Gas CHP 1, , Biomass 1, , Nuclear power - - Biogas Solar PV Wind turbine Hydro power small Waste to energy Dispatch priority 28

29 Model application Generation system information Generation technology Capital cost O&M cost Fuel cost T&D cost [Baht/kW] [Baht/kWh] [Baht/kWh] [Baht/kW] Coal steam turbine 33, , Lignite steam turbine 32, , Oil steam turbine 24, , Gas steam turbine 13, Capital cost O&M 18, cost Fuel cost T&D cost Generation technology Combine cycle gas turbine 17, [Baht/kW] [Baht/kWh] 18, [Baht/kWh] [Baht/kW] Diesel gas turbine 13, Coal CHP , , , , Diesel engine 13, Oil CHP , , , , Hydropower 59, Gas CHP , , , Interconnection - Biomass- 46, , , Nuclear power 35, Biogas , , , Solar PV 41, , Wind turbine 50, , Hydro power small 178, , Waste to energy 35, ,

30 Model application Generation system emission factor Generation technology NO X SO 2 PM 10 [kg/gj] [kg/gj] [kg/gj] Coal steam turbine Lignite steam turbine Oil steam turbine Gas steam turbine/ccgt Diesel gas turbine/engine Coal CHP Oil CHP Gas CHP Biomass Biogas Fuel Type CO2 [kg/gj] Natural Gas 56 Furnace oil 77 Diesel 74 Lignite 101 Technology Heat rate [kj/kwh] Steam Thermal 10,259 Combined Cycle 8,063 Gas Turbine 13,576 Diesel Engine 11,089 Combined Heat and Power 8,633 Biomass/Biogas 24,000 Waste to energy 20,000 30

31 Findings and results System profile (MW) 310 Weekday BAU Case1 Case2 Case3 Case1+EC Case2+EC Case3+EC 31

32 Findings and results System growth 700 5,000 Demand[MW] ,000 3,000 2,000 1,000 Consumption[GWh] average peak demand average energy consumption case1 peak demand case1 energy consumption 32

33 Findings and results Overall cost Costs[Mil.Baht] 160, , , , ,000 60, ,000 20,000 - BAU Case1 Case1+EC BAU Case1 Case1+EC BAU Case1 Case1+EC Capacity investment costs O&M costs generation fuel cost Smart system Costs 33

34 Findings and results Costs [M. Baht] BAU Case1 Case1+EC Capital investment 4, , , T&D investment Feeder investment Smart system investment - 1, , Generation O&M cost 3, , , Generation fuel cost 36, , , Feeder O&M cost 2, , , Smart system O&M cost Different 1, ,

35 Findings and results CO2 emission Other pollutant emission CO2 Emission[kTon] 1,400 1,200 1, Emission[kTon] NOX SOX PM10 35

36 SUMMARY 36

37 Summary Extensive information of Thailand power system and Pattaya city is gathered and utilized A model depicting parts of smart grid system is developed regard WADE aspects Model results showed reasonable potential of smart grid application as expected 37

38 THANK YOU FOR YOUR ATTENTION 38