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Particle Swarm Optimization based Maintenance Scheduling using levelized risk method and evaluation of system well being index

机译:基于粒子群优化的维修风险调度方法及系统健康指标评估

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Preventive Maintenance Scheduling of generating units is an important requirement in a power system planning. The maintenance of the various equipments in a power System, especially the maintenance of generators is directly related to the overall reliability of the power system. However, the Maintenance Scheduling(MS)problem is a constrained optimization problem. The objective function of this problem is to reduce the Loss of Load Probability (LOLP) for a power system. This paper presents Particle Swarm Optimization (PSO) technique to solve the constrained optimization problem. The algorithm is tested with a three unit system and well being index is evaluated for the system. The proposed approach aims at providing a feasible maintenance schedule for the generating units.
机译:发电机组的预防性维护调度是电力系统规划中的重要要求。电力系统中各种设备的维护,尤其是发电机的维护,直接关系到电力系统的整体可靠性。但是,维护计划(MS)问题是一个受约束的优化问题。此问题的目标功能是减少电力系统的负载概率损失(LOLP)。本文提出了粒子群优化(PSO)技术来解决约束优化问题。该算法在三单元系统中进行了测试,并对系统的健康指数进行了评估。所提出的方法旨在为发电机组提供可行的维护时间表。

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