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Generation Maintenance Scheduling for Generation Expansion Planning Using a Multi-Objective Binary Gravitational Search Algorithm

机译:多目标二进制引力搜索算法的发电扩张计划发电维护计划

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Generation maintenance scheduling (GMS) is an important and effective part of Generation expansion planning (GEP) problem. Preventive-maintenance schedules need to be optimized to trade-off between two con?icting objectives, reducing the overall cost and improving the reliability. This paper presents a multi-objective binary gravitational search algorithm (BGSA) for solving GMS problem of generation systems as a sub-problem of the main GEP problem. In the proposed method, a fuzzy membership function is defined for each term in the objective function. There are three objective functions in this problem. The first objective function is leveling reserve capacity when unit maintenance outages are considered. The second and the third objectives which are also objectives of the main GEP problem, are to minimize the operation and maintenance (O&M) cost and the reliability index of Expected Energy Not Supplied (EENS). As GMS problem is a sub-problem of the main GEP problem, it is solved for a typical solution of the main GEP problem. The proposed method is applied to solve GMS problem for 4-bus test system from Grainger & Stevenson and IEEE-RTS 24-bus test system for a planning horizon of one year and two years, respectively. To verify the capability of the proposed BGSA based method, a binary genetic algorithm (BGA) method is also implemented to solve GMS problem and then the results are compared.
机译:发电维护计划(GMS)是发电扩展计划(GEP)问题的重要和有效部分。需要优化预防性维护计划,以在两个相互冲突的目标之间进行权衡,从而降低总体成本并提高可靠性。本文提出了一种用于解决发电系统GMS问题的多目标二进制重力搜索算法(BGSA),作为主要GEP问题的子问题。在提出的方法中,为目标函数中的每个术语定义了模糊隶属函数。这个问题有三个目标函数。第一个目标功能是在考虑单元维护停机时平衡备用容量。也是主要GEP问题的目标的第二和第三个目标是最小化运营和维护(O&M)成本以及未提供预期能源(EENS)的可靠性指标。由于GMS问题是主要GEP问题的子问题,因此可以解决主要GEP问题的典型解决方案。该方法用于解决Grainger&Stevenson提出的4总线测试系统和IEEE-RTS 24总线测试系统的GMS问题,分别计划了一年和两年的规划时间。为了验证所提出的基于BGSA的方法的能力,还采用了二进制遗传算法(BGA)来解决GMS问题,然后对结果进行比较。

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