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首页> 外文期刊>American journal of engineering and applied sciences >Solving the Periodic Maintenance Scheduling Problem via Genetic Algorithm to Balance Workforce Levels and Maintenance Cost | Science Publications
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Solving the Periodic Maintenance Scheduling Problem via Genetic Algorithm to Balance Workforce Levels and Maintenance Cost | Science Publications

机译:用遗传算法解决定期维修计划问题,平衡劳动力水平和维修成本科学出版物

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> Problem statement: In this article we address the multi-objective Periodic Maintenance Scheduling Problem (PMSP) of scheduling a set of cyclic maintenance operations for a given set of machines through a specified planning period to minimize the total variance of workforce levels measured in man-hours and maintenance costs with equal weights. Approach: The article proposed a mixed integer non-linear math programming model and a linearised model for the PMSP. Also, we proposed a Genetic Algorithm (GA) for solving the problem using a new genome representation considered as a new addition to the maintenance scheduling literature. The algorithms were compared on a set of representative test problems. Results: The developed GA proves its capability and superiority to find good solutions for the PMSP and outperforms solutions found by the commercial optimization package CPLEX. The results indicated that the developed algorithms were able to identify optimal solutions for small size problems up to 5 machines and 6 planning periods.The GAs defined solutions in 22 seconds consuming less than two kilobytes with a reliability of 0.84 while the nonlinear and linear models consumes on average 705 and 37 kilobytes respectively. Conclusion: The developed GA could define solutions of average performance of 0.34 and 0.8 for the linearized algorithm compared with lower bound defined by the nonlinear math programming model. We hope to expand the developed algorithms for integrating maintenance planning and aggregate production planning problems.
机译: > 问题陈述:在本文中,我们解决了多目标定期维护计划问题(PMSP),该问题通过给定的一组机器为指定的机器安排一组周期性的维护操作计划周期,以使以相同工时和维护成本衡量的同等权重的劳动力水平的总差异最小。 方法:本文针对PMSP提出了混合整数非线性数学编程模型和线性化模型。此外,我们提出了一种遗传算法(GA),使用一种新的基因组表示来解决该问题,该新的基因组表示被视为维护计划文献中的新增内容。在一组代表性的测试问题上对算法进行了比较。 结果:开发的GA证明了其为PMSP寻找好的解决方案的能力和优势,并且胜过了商业优化软件包CPLEX所找到的解决方案。结果表明,所开发的算法能够为多达5台机器和6个计划周期的小型问题识别最佳解决方案.GA定义的解决方案在22秒内消耗不到2 KB的数据,可靠性为0.84,而非线性和线性模型消耗平均分别为705和37 KB。 结论:与非线性数学编程模型定义的下界相比,开发的遗传算法可以为线性化算法定义平均性能为0.34和0.8的解。我们希望扩展已开发的算法,以整合维护计划和汇总生产计划问题。

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