目标与机会平衡规划及其在发电公司最优竞价策略构建中的应用

G. Lu, F. Wen, X. Zhao, C. Chung, K. Wong
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引用次数: 0

摘要

在许多研究领域中存在的随机问题可以通过期望值模型(EVM)、机会约束规划(CCP)和相关机会规划(DCP)三种方法来解决。然而,这些方法在处理相同的现实问题时,有时会给出不同甚至相反的结果。本文基于有效决策前沿曲线的概念,提出了一种新的随机规划方法,即目标与机会平衡规划方法,该方法可以更合理、更灵活、更适用地解决随机问题,并且可以减少上述三种方法的冲突。通过构建电力市场环境下具有风险管理的发电公司最优竞价策略,验证了该方法的有效性。采用蒙特卡罗模拟遗传算法求解规划模型。
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Balance Programming between Target and Chance with Application in Building Optimal Bidding Strategies for Generation Companies
Stochastic problems existing in many research domains could be solved through three kinds of methods viz. expected value model (EVM), chance-constrained programming (CCP), and dependent chance programming (DCP). However, these methods, sometimes, give different or even contrary results when dealing with the same real world problems. This paper proposes a new stochastic programming method, termed as balance programming between target and chance, based on the concept of effective decision frontier curve, which can solve the stochastic problems in a more rational, flexible, and applicable manner, and can diminish conflicts of the three above-mentioned methods. The effectiveness of the proposed method is demonstrated by building optimal bidding strategies for generation companies with risk management in the electricity market environment. A genetic algorithm with Monte Carlo simulation is employed to solve the programming model.
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