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A stochastic mathematical program with complementary constraints for market-wide power generation and transmission expansion planning

机译:具有互补约束的随机数学程序,用于市场范围内的发电和输电扩展计划

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摘要

In the restructured electricity markets, the generators and the Independent System Operator (ISO) play important roles in the balance of electricity supply and demand. We consider a mixed integer bi-level model reformulated as a mathematical program with complementary constraints (MPCC) in which a single conceptual leader decides the transmission line expansion plan and generators plan for generation capacity expansion in the upper level. The overall objective is to maximize the total social welfare, which consists of buyer surplus, producer surplus and transmission rents. In the lower level, generators will maximize their operational profits by interaction with the ISO to decide their generation amounts. Meanwhile, the lower-level objective of the ISO is to maximize the social welfare by dispatching the electricity to satisfy demand and set the locational marginal prices (LMPs). Reformulating the complementarity constraints with binary variables results in a mixed integer program that can be solved to global optimality. However in reality, the demand and fuel cost will fluctuate with uncertainties such as climate change or natural resource limitations. A moment matching method for scenario generation can capture the uncertainties by producing a scenario tree. Then we combine the scenario tree with the mixed integer program to obtain a two-stage stochastic program where the first stage corresponds to the upper level investment decisions and the second stage represents the lower level operations. The extensive form of the stochastic program cannot be solved in our numerical example within a reasonable time limit. To reduce the computation time, a scenario reduction algorithm is applied to select fewer scenarios with properties similar to the original scenarios. Finally we solve the stochastic mixed-integer program with the Progressive Hedging Algorithm (PHA), which is a scenario-based decomposition heuristic. We compare the results of the stochastic program and a deterministic optimization using expected values. The capacity expansion plan obtained with the stochastic program has higher expected social welfare than the expected value solution. The stochastic program yields a solution that hedges against uncertainty by lower generation expansion levels and fewer transmission lines to be built.
机译:在重组的电力市场中,发电机和独立系统运营商(ISO)在电力供需平衡中发挥着重要作用。我们考虑将混合整数双层模型重新构造为具有互补约束(MPCC)的数学程序,在该模型中,一个概念上的负责人决定输电线路扩展计划,而发电机计划则用于高层发电容量的扩展。总体目标是使总的社会福利最大化,其中包括购买者剩余,生产者剩余和传输租金。在较低级别,发电机将通过与ISO互动来决定其发电量,从而最大化其运营利润。同时,ISO的下级目标是通过分配电力以满足需求并设置地方边际价格(LMP)来最大化社会福利。用二进制变量重新构成互补约束会产生一个混合整数程序,可以将其求解为全局最优性。但是实际上,需求和燃料成本会随着诸如气候变化或自然资源限制之类的不确定因素而波动。用于场景生成的矩匹配方法可以通过生成场景树来捕获不确定性。然后,我们将场景树与混合整数程序结合起来,以获得两阶段随机程序,其中第一阶段对应于较高级别的投资决策,第二阶段对应于较低级别的操作。在合理的时限内,我们的数值示例无法解决随机程序的广泛形式。为了减少计算时间,应用了场景缩减算法来选择具有与原始场景相似的属性的更少场景。最后,我们使用基于对冲的分解启发式算法-渐进式对冲算法(PHA)解决了随机混合整数程序。我们比较了随机程序的结果和使用期望值的确定性优化。通过随机计划获得的能力扩展计划具有比预期价值解决方案更高的预期社会福利。随机程序产生了一种解决方案,该方案通过降低发电量的扩展水平和减少构建的传输线来对冲不确定性。

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    Wu, Yang Hua;

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  • 年度 2014
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  • 原文格式 PDF
  • 正文语种 en
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