GMS considering uncertainty in wind power in a wind-hydrothermal power system

Y. Yare, G. Venayagamoorthy
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引用次数: 5

Abstract

An optimal preventive generator maintenance scheduling (GMS) in a smart grid environment comprising wind-hydrothermal energy resources is presented in this paper. GMS problem is solved with the aim of maximizing economic benefits subject to satisfying system constraints. This GMS formulation becomes a challenging problem because of the variability and intermittency of wind speed and the incorporation of uncertainty in wind generation. The objective is to perform preventive GMS in such a manner that the annual generation cost is minimized, the annual cost saving is increased while all operating constraints are satisfied in the presence of uncertainty in wind generation. Discrete modified particle swarm optimization (MPSO-D) algorithm is used to solve this problem. The results presented on a typical Nigerian power system show the potential and benefits obtainable from increasing wind power penetration.
考虑风热发电系统中风电不确定性的GMS
提出了一种基于风热能源的智能电网环境下发电机预防性维护的最优调度方法。GMS问题是在满足系统约束条件下,以经济效益最大化为目标来解决的。由于风速的可变性和间歇性以及风力发电的不确定性,这种GMS公式成为一个具有挑战性的问题。目标是在风力发电存在不确定性的情况下,在满足所有运行约束的情况下,以最小的年发电成本,增加年成本节约的方式进行预防性GMS。离散修正粒子群优化算法(MPSO-D)用于解决这一问题。以典型的尼日利亚电力系统为例给出的结果显示了增加风力发电渗透率的潜力和效益。
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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