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Generator maintenance scheduling in power systems using metaheuristic-based hybrid approaches

机译:使用基于元启发式混合方法的电力系统发电机维护计划

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摘要

The effective maintenance scheduling of power system generators is very important for the economical and reliable operation of a power system. This represents a tough scheduling problem which continues to present a challenge for efficient optimization solution techniques. This paper presents the application of metaheuristic approaches, such as a genetic algorithm (GA), simulated annealing (SA) and their hybrid for generator maintenance scheduling (GMS) in power systems using an integer representation. This paper mainly focuses on the application of GA/SA and GA/SA/heuristic hybrid approaches. GA/SA hybrid uses the probabilistic acceptance criterion of SA within the GA framework. GA/SA/heuristic hybrid combines heuristic approaches within the GA/SA hybrid to seed the initial population. A case study is formulated in this paper as an integer programming problem using a reliability-based objective function and typical problem constraints. The implementation and performance of the metaheuristic approaches and their hybrid for the test case study are discussed. The results obtained are promising and show that the hybrid approaches are less sensitive to the variations of technique parameters and offer an effective alternative for solving the generator maintenance scheduling problem.
机译:电力系统发电机的有效维护计划对于电力系统的经济可靠运行非常重要。这代表了一个棘手的调度问题,继续对有效的优化解决方案技术提出了挑战。本文介绍了元启发式方法的应用,例如遗传算法(GA),模拟退火(SA)及其在电力系统中使用整数表示的发电机维护调度(GMS)的混合方法。本文主要关注GA / SA和GA / SA /启发式混合方法的应用。 GA / SA混合使用GA框架内SA的概率验收标准。 GA / SA /启发式混合体结合了GA / SA混合体中的启发式方法,为初始种群提供了种子。本文使用基于可靠性的目标函数和典型问题约束条件,将案例研究表述为整数规划问题。讨论了元启发式方法及其在测试案例研究中的混合方法的实现和性能。获得的结果令人鼓舞,表明混合方法对技术参数的变化不太敏感,并为解决发电机维护计划问题提供了有效的替代方法。

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