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Using An Artificial Neural Network Prediction Model To Optimize Work-in-process Inventory Level For Wafer Fabrication

机译:使用人工神经网络预测模型优化晶圆制造的在制品库存水平

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摘要

A proper selection of a work-in-process (WIP) inventory level has great impact onto the productivity of wafer fabrication processes, which can be properly used to trigger the decision of when to release specific wafer lots. However, the selection of an optimal WIP is always a tradeoff amongst the throughput rate, the cycle time and the standard deviation of the cycle time. This study focused on finding an optimal WIP value of wafer fabrication processes by developing an algorithm integrating an artificial neural network (ANN) and the sequential quadratic programming (SQP) method. With this approach, it offered an effective and systematic way to identify an optimal WIP level. Hence, the efficiency of finding the optimal WIP level was greatly improved.
机译:正确选择在制品(WIP)库存水平会对晶圆制造工艺的生产率产生重大影响,可以适当地用来触发何时下达特定晶圆批号的决定。但是,最佳WIP的选择始终是吞吐率,循环时间和循环时间标准偏差之间的权衡。这项研究的重点是通过开发一种集成人工神经网络(ANN)和顺序二次规划(SQP)方法的算法来找到晶圆制造工艺的最佳WIP值。通过这种方法,它提供了一种有效的系统方法来确定最佳WIP级别。因此,极大地提高了找到最佳WIP级别的效率。

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