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Production Quality Modeling Based on Regression Rules Extracted from Trained Artificial Neural Networks

机译:基于培训人工神经网络提取的回归规则的生产质量建模

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Although artificial neural network has been successfully applied to a variety of application problems, it is difficult to explain how the neural network achieves the goal. Yet in production quality modeling, the knowledge of how output characteristics varies with input attributes gives a great help to forecasting, monitoring and controlling in the production process. In this paper, a production quality modeling method based on regression rules extracted from artificial neural networks is proposed. Each rule corresponds to a subregion of the input space and a linear function that approximates the network output for all the samples in this subregion. Experiments on real industrial data demonstrate that the proposed approach not only can successfully extract simple and useful rules indicating important system information, but also have better performances than existing rule extraction methods and traditional statistical methods.
机译:尽管人工神经网络已成功应用于各种应用问题,但很难解释神经网络如何实现目标。然而,在生产质量建模中,对输出特性如何因输入属性而变化的知识提供了很大程度上有助于预测生产过程中的预测,监控和控制。本文提出了一种基于从人工神经网络中提取的回归规则的生产质量建模方法。每个规则对应于输入空间的子区域和线性函数,其近似于该子区域中所有样本的网络输出。实际工业数据的实验表明,所提出的方法不仅可以成功提取简单和有用的规则,表明重要的系统信息,而且比现有的规则提取方法和传统统计方法更好。

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