A hybrid evolutionary algorithm for economic load dispatch problem considering transmission losses and various operational constraints

H. M. Zahid Iqbal, Ali Shafique
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引用次数: 6

Abstract

Optimization is a mathematical technique that concerns the finding of maxima or minima of functions in some feasible region. There is no business or industry which is not involved in solving optimization problems. A variety of optimization techniques compete for the best solution. Economic Dispatch (ED) is also one of the optimization problem. ED is the process of determining optimal output of available number of electric power generating stations in order to meet total system load, at a minimum possible cost while serving power to the public in a robust and reliable manner satisfying physical and operational constraints. Scarcity of energy resources, ever growing production cost of generation and increased load demand, there is a need to optimize the economic dispatch problem. In this research work, a hybrid technique proposed to solve non-linear ED problem named as Hybrid Particle Swarm Optimization with Gravitational Search Algorithm (HPSO-GSA) considering/neglecting valve point effects, prohibited operating zones, ramp rate limits and transmission losses. In order to evaluate the performance of the proposed Hybrid PSO-GSA algorithm has been tested on different generating unit test systems with different constraints and defined load demands. The simulation results of proposed algorithm are in comparison with the techniques in literature proves the efficiency and effectiveness of the proposed algorithm.
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考虑输电损耗和各种运行约束的负荷经济调度问题的混合进化算法
优化是一种数学技术,涉及在可行区域内寻找函数的最大值或最小值。没有哪个企业或行业不涉及解决优化问题。各种优化技术相互竞争以获得最佳解决方案。经济调度也是优化问题之一。电力编配是指以尽可能低的成本,确定现有发电厂数目的最佳发电量,以应付系统的总负荷,同时以稳健和可靠的方式向公众提供电力,以满足物理和操作上的限制。能源资源稀缺,发电生产成本不断提高,负荷需求不断增加,需要优化经济调度问题。在本研究中,提出了一种考虑/忽略阀点效应、禁止操作区域、匝道速率限制和传输损耗的混合粒子群优化算法(HPSO-GSA)来解决非线性ED问题。为了评估所提出的混合PSO-GSA算法的性能,在不同的发电机组测试系统上进行了不同约束条件和定义负载需求的测试。将所提算法的仿真结果与文献中的技术进行了比较,验证了所提算法的效率和有效性。
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