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Optimal Electricity Supply Bidding by Markov Decision Process

Analyzing the electricity supply bidding process using Markov Decision Process to maximize profit. Explore the transition from regulated to deregulated markets, competition, and decision strategies. Review the model overview and problem formulation.

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Optimal Electricity Supply Bidding by Markov Decision Process

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  1. Optimal Electricity Supply Bidding by Markov Decision Process Presentation Review By: Feng Gao, Esteban Gil, & Kory Hedman IE 513 Analysis of Stochastic Systems Professor Sarah Ryan February 14, 2005 Authors: Haili Song, Chen-Ching Liu, Jacques Lawarree, & Robert Dahlgren

  2. Outline • Introduction • Purpose • Problem Formulation • Model Overview • Summary

  3. Introduction • Electric Industry has Transitioned from Regulated to Deregulated • Regulated: Vertically Integrated, Monopolistic Market • Deregulated: Ideally, Perfect Competition Market • Decision Analysis: Based on Profit & Competition

  4. Introduction Cont’d • Traditional Power System • Generation, Transmission, Distribution, Consumption

  5. Introduction Cont’d • Structure of Power Market • Optimize Resources With Competition

  6. Introduction Cont’d • Day Ahead Market Considered • Inelastic Demand • Generation Companies (GenCos) are Risk-Neutral • GenCos Bid a Price (P) & Quantity (Q) • Bids are Chosen from Cheapest to Most Expensive • Market Clearing Price: P from the Highest Chosen Q • (Similar to the New Zealand & Great Britain Electricity Markets)

  7. Purpose • Overall Objective: Maximize Expected Profit over a Planning Horizon of 7 Days • For all States, Determine Optimal Bidding Strategy. Depends on: • Competitors’ Bidding • Load Forecasting • Remaining Time Horizon (given day i, 7 – i) • Production Limit (Max Available Supply Remaining over Planning Horizon) • Accumulated Data over Time (Past Load & Price Data)

  8. Problem Formulation • States are Defined by 7 Variables: • Peak Load & Peak Price (2) • Off-Peak Load & Off-Peak Price (2) • Current Production Limit for the Remaining Planning Horizon (1) • Load Forecast for the Following Day (2) • Aggregation Limits Number of States • P & D Broken into High, Medium, & Low • Illogical States Ignored: (High P & Low Q, etc.)

  9. Problem Formulation Cont’d • Transition Probability Depends on: • Current State i, Subsequent State j, Decision a • Pr (i, j, a) • Decision Maker Receives Reward • R (i, j, a) • State of the Market Defines the Competitors’ Bids & Decision Maker’s Bidding Options • Bid Prices are Determined Using a Staircase Supply Fn for Varying MW

  10. Problem Formulation Cont’d • MDP Algorithm Considers: • Rewards Based on Load Forecast • Decisions of a State • Competitors’ Bidding Characteristics • Decision Options Affect Transition Probabilities & Rewards • Competitors’ Bids are Independent • Scenarios (s) are exclusive

  11. Model Overview • Probability of Scenario s: • Pr (i, n, k): Probability that Supplier n (n ~= m) Chooses Option k in State i • m is decision maker • Competitors’ Bids are Independent • Remaining Production Limit: • q (i, s, t) is the Q used in period t for scenario s. • Spot Price for Scenario s: SP(i, s, t)

  12. Model Overview Cont’d • Probability to Move from State i to j: • Pr (i, LF (j, t) = Probability that Load Forecast for Day After Tomorrow is LF (j, t) Given Present State i • Reward for Decision Maker, r (i, s):

  13. Model Overview Cont’d • Reward for Transition from i to j & Decision A is Sum of Rewards Weighted by Conditional Probabilities: • V (i, T+1): Total Expected Reward in T+1 Remaining Stages from State i • Solved by Value Iteration

  14. Summary • Introduction • Electric Market is now Competitive • GenCos Bid on Demand • Purpose • MDP Used to Determine Optimal Bidding Strategy • Problem Formulation • Transition Probability Determined by Current State, Subsequent State, & Decision Made • 7 Variables to Define a State • Aggregation Used to Limit Dimensionality Problems • Model Overview • 7 Day Planning Horizon • Objective is to Maximize Summation of Expected Reward • Value Iteration

  15. Questions???

  16. References • Song, H.; Liu, C.-C.; Lawarree, J.; Dahlgren, R.W, “Optimal Electricity Supply Bidding by Markov Decision Process,” IEEE Transactions. Power Systems, Vol. 15, no. 2, pp 618-624, May 2000. • http://www.acclaimimages.com/_gallery/_pages/0037-0409-0607-4216.html

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