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Multilayer perceptron for simulation models reduction: Application to a sawmill workshop

机译:用于简化仿真模型的多层感知器:在锯木厂车间的应用

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摘要

Simulation is often used to evaluate supply chain or workshop management. This simulation task needs models, which are difficult to construct. The aim of this work is to reduce the complexity of a simulation model design. The proposed approach combines discrete and continuous approaches in order to construct speeder and simpler reduced model. The simulation model focuses on bottlenecks with a discrete approach according to the theory of constraints. The remaining of the workshop must be taken into account in order to describe how the bottlenecks are fed. It is modeled through a continuous approach thanks to a neural network. In particular, we use a multilayer perceptron. The structure of the network is determined by using a pruning procedure. For validation, this approach is applied to the modelisation of a sawmill workshop.
机译:仿真通常用于评估供应链或车间管理。该模拟任务需要模型,这些模型很难构建。这项工作的目的是减少仿真模型设计的复杂性。所提出的方法结合了离散方法和连续方法,以构建更快,更简单的简化模型。仿真模型根据约束理论着重于采用离散方法的瓶颈。为了说明如何解决瓶颈问题,必须考虑车间的其余部分。借助神经网络,可以通过连续方法对其进行建模。特别是,我们使用了多层感知器。网络的结构是通过修剪过程确定的。为了验证,此方法适用于锯木厂车间的建模。

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