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Workforce grouping and assignment with learning-by-doing and knowledge transfer

机译:劳动力分组和分配,边做边学和知识转移

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We consider a workforce allocation problem in which workers learn both by performing a job and by observing the performance of and interacting with co-located colleagues. As a result, an organisation can benefit from both effectively assigning individuals to jobs and grouping workers into teams. A challenge often faced when solving workforce allocation models that recognise learning is that learning curves are non-linear. To overcome this challenge, we identify properties of an optimal solution to a non-linear programme for grouping workers into teams and assigning the resulting teams to sets of jobs. With these properties identified, we reformulate the non-linear programme to a mixed integer programme that can be solved in much less time. We analyse (near-)optimal solutions to this model to derive managerial insights.
机译:我们考虑了劳动力分配问题,在该问题中,工人既可以通过执行工作,也可以通过观察同位同事的表现并与之互动来学习。结果,组织可以从有效地分配个人到工作以及将工人分组到团队中受益。解决识别学习的劳动力分配模型时,经常面临的挑战是学习曲线是非线性的。为了克服这一挑战,我们确定了非线性程序的最佳解决方案的属性,该程序用于将工人分组为团队并将最终的团队分配给工作组。识别出这些属性后,我们将非线性程序重新构造为可以用更少的时间解决的混合整数程序。我们分析此模型的(近)最优解决方案,以得出管理方面的见解。

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