Integrating large scale wind farms in fuzzy mid term unit commitment using PSO

H. Siahkali, M. Vakilian
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引用次数: 8

Abstract

This paper presents a new approach for unit commitment (UC); where a large scale wind power exists and the wind speed has a fuzzy characteristic; by using particle swarm optimization method (PSO). In this approach, the system reserve requirements, the requirement of having a load balance, and the wind power availability constraints are realized. A proper modeling of these constraints is an important issue in power system scheduling. Since these constraints are ldquofuzzyrdquo in nature, any crisp treatment of them in this problem may lead to over conservative solutions. In this paper, a fuzzy optimization-based method is developed to solve power system UC problem with a fuzzy objective function and its constraints. This fuzzy mid term UC problem is, at first, converted to a crisp formulation and then is solved by PSO. This method is applied to unit commitment of a 12-unit test system and the results of the particle swarm optimization method are compared with the results of the conventional numerical methods such as mixed integer nonlinear programming (MINLP). Numerical tests results show that near optimal schedules are obtained, by application of this method. Also this method provides a balance between the costs and the constraints satisfaction.
基于PSO的大型风电场模糊中期机组承诺集成
提出了一种新的机组承诺(UC)方法;当存在大规模风力发电,风速具有模糊特征时;采用粒子群优化方法(PSO)。该方法实现了系统储备需求、负载均衡需求和风电可用性约束。对这些约束进行合理的建模是电力系统调度中的一个重要问题。由于这些约束在本质上是不模糊的,因此在这个问题中对它们的任何清晰处理都可能导致过于保守的解决方案。本文提出了一种基于模糊优化的电力系统统一控制问题求解方法,该方法具有模糊目标函数及其约束条件。首先将这种模糊的中期UC问题转化为一个清晰的公式,然后用粒子群算法求解。将该方法应用于一个12单元测试系统的单元承诺问题,并与混合整数非线性规划(MINLP)等传统数值方法的结果进行了比较。数值试验结果表明,应用该方法可获得近似最优调度。该方法还提供了成本和约束满足之间的平衡。
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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