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Monitoring linear profiles using Artificial Neural Networks with run rules

机译:使用具有运行规则的人工神经网络监控线性配置文件

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摘要

In some applications, a relation between a response variable and one or more explanatory variables (referred as a "profile") characterizes the quality of a process. Profile monitoring is commonly performed through statistical methods, while machine learning schemes have not received much attention in this regard. In this paper, a control chart based on Artificial Neural Networks (ANN) is proposed to monitor linear profiles in phase II. In the proposed control chart, some novel run rules as the major contribution of this paper are also used to enhance the efficiency of the control chart and for faster detection of shifts. Simulation results revealed a good performance of the proposed control chart based on average run length (ARL) criterion. Further, a systematic ANN-based diagnostic procedure was proposed to identify which parameter has changed in the process. Finally, the implementation of the proposed scheme was illustrated through a real calibration example from the field of chemical engineering.
机译:在一些应用中,响应变量与一个或多个解释变量之间的关系(参考“配置文件”)表征过程的质量。简介监控通常通过统计方法进行,而机器学习方案在这方面没有受到大量关注。在本文中,提出了一种基于人工神经网络(ANN)的控制图来监视II阶段的线性轮廓。在拟议的控制图中,一些新颖的运行规则作为本文的主要贡献也用于提高控制图的效率,并更快地检测换档。仿真结果表明,基于平均运行长度(ARL)标准,所提出的控制图的良好性能。此外,提出了一种基于系统的基于安基的诊断程序,以确定该过程中发生了哪些参数。最后,通过来自化学工程领域的实际校准示例来说明所提出的方案的实施。

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