Multi-objectivization of short-term unit commitment under uncertainty using evolutionary algorithm

Anupam Trivedi, D. Sharma, D. Srinivasan
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引用次数: 10

Abstract

The short-term unit commitment problem is traditionally solved as a single-objective optimization problem with system operation cost as the only objective. This paper presents multi-objectivization of the short-term unit commitment problem in uncertain environment by considering reliability as an additional objective along with the economic objective. The uncertainties occurring due to unit outage and load forecast error are incorporated using loss of load probability (LOLP) and expected unserved energy (EUE) reliability indices. The multi-objectivized unit commitment problem in uncertain environment is solved using our earlier proposed multi-objective evolutionary algorithm [1]. Simulations are performed on a test system of 26 thermal generating units and the results obtained are benchmarked against the study [2] where the unit commitment problem was solved as a reliability-constrained single-objective optimization problem. The simulation results demonstrate that the proposed multi-objectivized approach can find solutions with considerably lower cost than those obtained in the benchmark. Further, the efficiency and consistency of the proposed algorithm for multi-objectivized unit commitment problem is demonstrated by quantitative performance assessment using hypervolume indicator.
不确定条件下短期机组承诺的多目标化进化算法
机组短期投入问题传统上是一个以系统运行成本为唯一目标的单目标优化问题。本文将可靠性作为经济目标的附加目标,研究了不确定环境下机组短期承诺问题的多目标化问题。利用负荷损失概率(LOLP)和预期未服务能量(EUE)可靠性指标,将机组停运和负荷预测误差所引起的不确定性结合起来。采用我们提出的多目标进化算法[1]解决了不确定环境下的多目标机组承诺问题。在26台火电机组的测试系统上进行了仿真,并将仿真结果与[2]进行了对比,[2]将机组承诺问题求解为一个有可靠性约束的单目标优化问题。仿真结果表明,所提出的多目标方法能以较低的成本找到较优解。利用hypervolume指标对多目标机组承诺问题进行定量性能评价,验证了该算法的有效性和一致性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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