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A matheuristic for workforce planning with employee learning and stochastic demand

机译:具有员工学习能力和随机需求的劳动力规划数学方法

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This paper focuses on the opportunity to direct the development of responsive capacity by recognising that individuals learn through experience when designing workforce plans. We focus on the operations of a product manufacturer that seeks to maximise profit by selling multiple products, while recognising that demands for each product is uncertain. As such, we study a stochastic integer program wherein an organisation can hedge against uncertainty in demand both by holding inventory (at a cost) and building a more responsive production process. Solving this stochastic program presents many computational difficulties, including the fact that quantitative models of human learning are non-linear and the explosion of instance size that result from modelling uncertainty with scenarios. As a result, we propose a matheuristic for this problem and with an extensive computational study demonstrate its ability to produce high-quality solutions in little time.
机译:本文通过认识到个人在设计员工计划时会从经验中学习,着重于指导响应能力发展的机会。我们专注于一家产品制造商的运营,该制造商试图通过销售多种产品来实现利润最大化,同时意识到每种产品的需求都是不确定的。因此,我们研究了一个随机整数程序,其中组织可以通过持有库存(按成本)和建立响应速度更快的生产流程来对冲需求不确定性。解决该随机程序存在许多计算困难,包括以下事实:人类学习的定量模型是非线性的,并且由于用场景对不确定性进行建模而导致实例大小激增。结果,我们提出了解决该问题的数学方法,并通过广泛的计算研究证明了其在短时间内产生高质量解决方案的能力。

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