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Bayesian-based on-line applicability evaluation of neural network models in modeling automotive paint spray operations

机译:基于贝叶斯的神经网络模型在汽车喷漆作业建模中的在线适用性评估

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The neural network (NN)models well trained and validated by the same data may exhibit noticeably different predictabilities in applications.This is mainly due to the fact that the knowledge captured by the NNs in training may be different in depth and breadth.In this regard,using a set of nearly equally superior models,instead of a single one,may demonstrate its robustness of system performance prediction in on-line application.An unresolved issue,then,is how to value the prediction by each model of the model set in each application step.In this paper,we introduce a Bayesian-based model-set management method for constructing a statistically superior model set for on-line application.Specifically,this method is for manipulating the model set by assigning statistically most appropriate weights to the model predictions;the weighted model predictions determine overall system behavior.A repeated use of the method keeps the weights updated constantly based on the newly available system data,which makes the model-set-based system performance description more precise and robust.The efficacy of the method is demonstrated by studying an automotive paint spray process where the thin film thickness on vehicle surface should be precisely predicted.
机译:经过相同数据训练和验证的神经网络(NN)模型在应用中可能表现出明显不同的可预测性,这主要是由于NN在训练中捕获的知识可能在深度和广度上有所不同。 ,使用一组几乎相同而又优越的模型,而不是单个模型,可以证明其在在线应用中的系统性能预测的鲁棒性。一个未解决的问题是,如何对模型集的每个模型的预测值进行评估。在本文中,我们介绍了一种基于贝叶斯的模型集管理方法,该方法可构建用于在线应用的统计上优异的模型集。特别是,该方法用于通过对统计上最合适的权重分配模型集来进行操作。模型预测;加权模型预测确定整体系统行为。重复使用该方法可根据新获得的系统数据不断更新权重,该方法的有效性通过研究汽车喷漆工艺来证明,该方法可以精确预测车辆表面的薄膜厚度,从而证明了该方法的有效性。

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