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A multi-skilled workforce optimisation in maintenance logistics networks by multi-thread simulated annealing algorithms

机译:多线模拟退火算法维护物流网络中多熟的劳动力优化

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摘要

The sustainability of service and manufacturing operations rely heavily on the availability of equipment and assets. High availability of assets can be achieved with effective maintenance strategies. In this direction, we study a multi-skilled workforce planning problem to establish a resilient maintenance service network for high-value assets. We improve the efficiency of the maintenance network by optimising the workforce capacity in repair shops and achieving workforce heterogeneity by cross-training. As a solution strategy, we develop a two-stage iterative heuristic algorithm. At the first stage, the set of all feasible cross-training policies is effectively and systematically searched via a state-of-art multi-thread simulated annealing (MTSA) metaheuristic to find a policy(ies) that achieves the minimum cost. Further, the developed MTSA algorithm is enhanced with the multi-neighbourhood feature to escape from local optimality and implemented via parallel programming techniques. In the second stage, workforce capacity and spare parts inventory levels are optimised for the cross-training policy found at the first stage by a queuing approximation and a greedy heuristic. The MTSA obtains the lowest cost in 91 cases out of 128 compared to genetic algorithm (GA), variable neighbourhood search (VNS), an improved single-thread simulated annealing algorithm (SA) and integer programming-based clustering (IPBC) algorithms.
机译:服务和制造业务的可持续性严重依赖于设备和资产的可用性。通过有效的维护策略可以实现资产的高可用性。在这方面,我们研究了多熟的劳动力规划问题,为高价值资产建立了一个有弹性的维护服务网络。我们通过优化维修店的劳动力容量以及通过交叉训练实现劳动力异质性的劳动力容量来提高维护网络的效率。作为解决方案策略,我们开发了一种两级迭代启发式算法。在第一阶段,通过最先进的多线程模拟退火(MTSA)Metaheuristic来有效和系统地搜索所有可行的交叉训练策略,以找到实现最低成本的策略(IE)。此外,利用多邻域特征来增强开发的MTSA算法以逃离局部最优性并通过并行编程技术实现。在第二阶段,劳动力容量和备件库存水平针对排队近似和贪婪启发式在第一阶段发现的交叉培训政策进行了优化。与遗传算法(GA),可变邻域搜索(VNS),改进的单线模拟退火算法(SA)和基于整数基于编程的聚类(IPBC)算法相比,MTSA获得了128例中的最低成本。

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