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An efficient technique to solve combined economic and emission dispatch problem using modified Ant colony optimization

机译:一种改进的蚁群优化算法解决经济与排放联合调度问题

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摘要

Economic load dispatch is one of the vital purposes in electrical power system operation, management and planning. Economic dispatch problem is one of the most important problems in electric power system operation. In large scale system, the problem is more complex and difficult to find out optimal solution because it is nonlinear function and it contains number of local optimal. Combined economic emission dispatch (CEED) problem is to schedule the committed generating units outputs to meet the required load demand at minimum operating cost with minimum emission simultaneously. The main aim of economic load dispatch is to reduce the total production cost of the generating system and at the same time the necessary equality and inequality constraints should also be fulfilled. This leads to the development of CEED techniques. There are various techniques proposed by several researchers to solve CEED problem based on optimization techniques. But still some problems such as slower convergence and higher computational complexity exist in using the optimization techniques such as GA for solving CEED problem. This paper proposes an efficient and reliable technique for combined fuel cost economic optimization and emission dispatch using the Modified Ant Colony Optimization algorithm (MACO) to produce better optimal solution. The simulation results reveal the significant performance of the proposed MACO approach.
机译:经济负荷分配是电力系统运行,管理和规划的重要目的之一。经济调度问题是电力系统运行中最重要的问题之一。在大型系统中,该问题较为复杂,因为它是非线性函数并且包含局部最优值,所以很难找到最优解。组合经济排放调度(CEED)问题是,以最小的运行成本和最小的排放量同时调度承诺的发电机组输出,以满足所需的负载需求。经济负荷分配的主要目的是降低发电系统的总生产成本,同时还应满足必要的平等和不平等约束。这导致了CEED技术的发展。基于优化技术,一些研究人员提出了各种技术来解决CEED问题。但是,使用遗传算法等优化技术解决CEED问题仍然存在收敛速度较慢,计算复杂度较高的问题。本文提出了一种有效而可靠的技术,该方法利用改进的蚁群优化算法(MACO)结合燃料成本经济性优化和排放调度,以产生更好的最优解决方案。仿真结果表明了所提出的MACO方法的显着性能。

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