求解经济负荷调度问题的粒子群算法

Gyan Vihar
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引用次数: 3

摘要

本文研究的是互联系统的潮流优化问题。本文研究了一种高效、可靠的基于进化的方法来解决具有线路潮流和电压约束的经济负荷调度问题。本文采用粒子群算法求解ELD。粒子群优化算法是一种基于群体运动和智能的鲁棒随机计算技术。该工作介绍了PSO算法的概念概述和详细解释,并展示了如何将其用于解决ELD问题。讨论了传统寻找ELD方法的固有缺陷,并与其他寻找ELD的进化方法进行了比较。对不同进化规划方法进行了比较研究,结果表明,粒子群算法具有较好的可重复性和较短的求解时间。通过一个具有不同成本函数和电压约束的六台发电机互联系统,验证了该方法的可行性。并将结果与G.A.法进行了比较
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Particle Swarm Optimization for Solving Economic Load Dispatch Problem 
This work deals with the optimization of power flow through interconnected system. The work deals with efficient and reliable evolutionary based approach to solve the economic load dispatch (ELD) with line flows and voltage constraints. The work employs PSO algorithm for ELD. PSO is a robust, stochastic computational technique based on movement and intelligence of swarm. The work introduces a conceptual overview and detailed explanation of PSO algorithm as well as shows how it can be used for solving ELD problems. Inherent shortcoming of the traditional methods of finding the ELD is discussed along with other evolutionary methods of finding ELD. A comparative study of different evolutionary programming technique is done and it is shown that particle swarm optimization offer a better result with greater repeatability and lesser time. The feasibility of the proposed method is demonstrated by using a six generator interconnected system having different cost functions and voltage constraints. The results are compared with those obtained by G.A.
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