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Design a cross-training policy to increase satisfaction and decrease cost

机译:设计交叉培训政策,以增加满意度和降低成本

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This research addresses a new cross-training policy to increase labors' job satisfaction and decrease tasks' labor cost. The cross-training plan is about how to decide which labors should be cross-trained on which tasks. A multiobjective 0–1 integer programming model is formulated for the cross-training policy. The first objective seeks to maximize average satisfaction degree (ASD), and the second objective seeks to minimize average paid salary (APS). The mathematical model is solved with particle swarm optimization algorithm (PSO). And a series of computational experiments are proceeded to analyze the factors impacting on the performance of the cross-training plan. The results indicate that with regards to ASD, the balanced preference structure is better than the extreme one, and with regards to APS, the nonuniform salary structure is better than the uniform one. Those insights will help practioners to make correct decisions.
机译:这项研究涉及新的交叉培训政策,以提高劳动力的工作满意度和减少任务的劳动力成本。交叉培训计划是关于如何决定哪些劳动力应在哪些任务上进行交叉培训。多目标0-1整数编程模型用于交叉训练政策。第一个目的旨在最大限度地提高平均满意度(ASD),第二个目的旨在最大限度地减少支付工资(AP)。用粒子群优化算法(PSO)解决了数学模型。并进行一系列计算实验,以分析影响交叉训练计划性能的因素。结果表明,关于ASD,平衡偏好结构优于极端,并且关于APS,非均匀的薪水结构优于均匀的结构。这些见解将有助于实例化做出正确的决策。

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