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Optimal Electricity Supply Bidding by Markov Decision Process

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Authors: Haili Song, Chen-Ching Liu, Jacques Lawarree, & Robert Dahlgren. Presentation Review By: ... Song, H.; Liu, C.-C.; Lawarree, J.; Dahlgren, R.W, ... – PowerPoint PPT presentation

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Title: Optimal Electricity Supply Bidding by Markov Decision Process


1
Optimal Electricity Supply Bidding by Markov
Decision Process
  • Authors Haili Song, Chen-Ching Liu, Jacques
    Lawarree, Robert Dahlgren

Presentation Review By Feng Gao, Esteban Gil,
Kory Hedman IE 513 Analysis of Stochastic
Systems Professor Sarah Ryan February 14, 2005
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 Contd
  • Traditional Power System
  • Generation, Transmission, Distribution,
    Consumption

5
Introduction Contd
  • Structure of Power Market
  • Optimize Resources With Competition

6
Introduction Contd
  • 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 Contd
  • 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 Makers Bidding Options
  • Bid Prices are Determined Using a Staircase
    Supply Fn for Varying MW

10
Problem Formulation Contd
  • 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 Contd
  • 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 Contd
  • Reward for Transition from i to j Decision A is
    Sum of Rewards Weighted by Conditional
    Probabilities
  • V (i, T1) Total Expected Reward in T1
    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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