Kalman-Particle Filter Used for Particle Swarm Optimization of Economic Dispatch Problem

Reza Khorshidi, F. Shabaninia, M. Vaziri, S. Vadhva
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引用次数: 6

Abstract

This paper presents an effective evolutionary method to solve the Economic Dispatch (ED) problem with units having prohibited operating zones. The Kalman filter is an efficient recursive filter that estimates the state of a dynamic system from a series of noisy measurements in the Total Power Generation (TPG). ED is an example of a dynamic system algorithm that has been widely used for determination most economical generation profile to optimize the overall electricity prices. ED is a non-smooth problem when valve-point effects of generation units are considered. This paper applies Kalman - Particle filter (KF-PF) to the ED state estimation problem that has been optimized with Particle Swarm Optimization (PSO), with the emphasis to avoid the solution being trapped in local optimas [1], [2]. Kalman and particle filter are used to estimate TPG as state of ED problem. The performance of the KF-PF has been tested on a typical system and compared with others proposed in the literatures. The comparison results show that the efficiency of proposed approach can reach higher quality solutions.
卡尔曼-粒子滤波用于经济调度问题的粒子群优化
本文提出了一种有效的演化方法来解决机组有禁作区时的经济调度问题。卡尔曼滤波器是一种有效的递归滤波器,可以根据总发电量(TPG)中的一系列噪声测量来估计动态系统的状态。动态系统算法已被广泛用于确定最经济的发电配置,以优化整体电价。当考虑发电机组的阀点效应时,电动力学是一个非光滑问题。本文将Kalman - Particle filter (KF-PF)应用于用粒子群算法(Particle Swarm Optimization, PSO)优化后的ED状态估计问题,重点是避免解陷入局部最优状态[1],[2]。用卡尔曼滤波和粒子滤波估计TPG作为ED问题的状态。在一个典型系统上测试了KF-PF的性能,并与文献中提出的其他系统进行了比较。对比结果表明,所提出的方法可以获得更高质量的解。
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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