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Applying moving back-propagation neural network and moving fuzzy neuron network to predict the requirement of critical spare parts

机译:应用移动反向传播神经网络和移动模糊神经元网络预测关键零件的需求

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摘要

The critical spare parts (CSP) are vital to machine operation, which also have the characteristic of more expensive, larger demand variation, longer purchasing lead time than non-critical spare parts. Therefore, it is an urgent issue to devise a way to forecast the future required amount of CSP accurately.rnThis investigation proposed moving back-propagation neural network (MBPN) and moving fuzzy neuron network (MFNN) to effectively predict the CSP requirement so as to provide as a reference of spare parts control. This investigation also compare prediction accuracy with other forecasting methods, such like grey prediction method, back-propagation neural network (BPN), fuzzy neuron network (FNN), etc. All of the prediction methods evaluated the real data, which are provided by famous wafer testing factories in Taiwan, the effectiveness of the proposed methods is demonstrated through a real case study.
机译:关键备件(CSP)对机器操作至关重要,与非关键备件相比,关键备件还具有更昂贵,需求变化更大,采购提前期长的特点。因此,提出一种准确预测未来CSP需求量的方法迫在眉睫。本研究提出了移动反向传播神经网络(MBPN)和移动模糊神经元网络(MFNN)来有效地预测CSP需求,从而作为备件控制的参考。本研究还将预测准确性与其他预测方法进行了比较,例如灰色预测方法,反向传播神经网络(BPN),模糊神经元网络(FNN)等。所有预测方法均对真实数据进行了评估,这些方法均由著名的在台湾的晶圆测试工厂中,通过实际案例证明了所提出方法的有效性。

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