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Preventive maintenance scheduling using analysis of variance-based ant lion optimizer

机译:使用基于方差的蚁群优化程序分析进行预防性维护计划

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Purpose - Generator maintenance scheduling (GMS) is an essential task for electric power utilities as the periodical maintenance activity enhances the lifetime and also ensures the reliable and continuous operation of generating units. Though numerous meta-heuristic algorithms have been reported for the GMS solution, enhancing the existing techniques or developing new optimization procedure is still an interesting research task. The meta-heuristic algorithms are population based and the selection of their algorithmic parameters influences the quality of the solution. This paper aims to propose statistical tests guided meta-heuristic algorithm for solving the GMS problems. Design/methodology/approach - The intricacy characteristics of the GMS problem in power systems necessitate an efficient and robust optimization tool. Though several meta-heuristic algorithms have been applied to solve the chosen power system operational problem, tuning of their control parameters is a protracting process. To prevail over the previously mentioned drawback, the modern meta-heuristic algorithm, namely, ant lion optimizer (ALO), is chosen as the optimization tool for solving the GMS problem. Findings - The meta-heuristic algorithms are population based and require proper selection of algorithmic parameters. In this work, the ANOVA (analysis of variance) tool is proposed for selecting the most feasible decisive parameters in algorithm domain, and the statistical tests-based validation of solution quality is described. The parametric and non-parametric statistical tests are also performed to validate the selection of ALO against the various competing algorithms. The numerical and statistical results confirm that ALO is a promising tool for solving the GMS problems. Originality/value - As a first attempt, ALO is applied to solve the GMS problem. Moreover, the ANOVA-based parameter selection is proposed and the statistical tests such as Wilcoxon signed rank and one-way ANOVA are conducted to validate the applicability of the intended optimization tool. The contribution of the paper can be summarized in two folds: the ANOVA-based ALO for GMS applications and statistical tests-based performance evaluation of intended algorithm.
机译:目的-发电机维护计划(GMS)是电力公司的一项重要任务,因为定期维护活动可以延长使用寿命,并确保发电机组的可靠和连续运行。尽管已经为GMS解决方案报告了许多元启发式算法,但是增强现有技术或开发新的优化程序仍然是一项有趣的研究任务。元启发式算法是基于总体的,其算法参数的选择会影响解决方案的质量。本文旨在提出统计测试指导的元启发式算法来解决GMS问题。设计/方法/方法-电力系统中GMS问题的复杂性特征需要一种有效且强大的优化工具。尽管已经应用了几种元启发式算法来解决所选的电力系统运行问题,但是调整其控制参数是一个耗时的过程。为了克服前面提到的缺点,选择了现代的元启发式算法,即蚁群优化器(ALO)作为解决GMS问题的优化工具。研究结果-元启发式算法基于种群,需要适当选择算法参数。在这项工作中,提出了ANOVA(方差分析)工具来选择算法领域中最可行的决定性参数,并描述了基于统计测试的解决方案质量验证。还执行了参数和非参数统计测试,以针对各种竞争算法验证ALO的选择。数值和统计结果证实,ALO是解决GMS问题的有前途的工具。创意/价值-首次尝试使用ALO解决GMS问题。此外,提出了基于ANOVA的参数选择,并进行了Wilcoxon签名秩和单向ANOVA等统计测试,以验证目标优化工具的适用性。本文的贡献可以归纳为两个方面:针对GMS应用的基于ANOVA的ALO和预期算法的基于统计测试的性能评估。

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