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Real-time quality monitoring and diagnosis for manufacturing process profiles based on deep belief networks

机译:基于深度置信网络的制造过程配置文件的实时质量监视和诊断

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摘要

A large number of real-time quality data are collected through various sensors in the manufacturing process. However, most process data are high-dimension, nonlinear and high-correlated, so that it is difficult to model the process profiles, which restricts the application of conventional statistical process control technique. Motivated by the powerful ability of deep belief network (DBN) to extract the essential features of input data, this paper develops a real-time quality monitoring and diagnosis scheme for manufacturing process profiles based on DBN. The profiles collected from a manufacturing process are mapped into quality spectra. A novel DBN recognition model for quality spectra is established in the off-line learning phase, which can be applied to monitor and diagnose the process profiles in the on-line phase. The effectiveness of DBN recognition model for manufacturing process profiles is demonstrated by simulation experiment, and a real injection molding process example is applied to analyze the performance. The results show that the proposed DBN model outperforms alternative methods.
机译:在制造过程中,通过各种传感器收集了大量的实时质量数据。但是,大多数过程数据是高维,非线性和高相关性的,因此很难对过程轮廓进行建模,这限制了常规统计过程控制技术的应用。借助深层信念网络(DBN)强大的功能来提取输入数据的基本特征,本文开发了一种基于DBN的制造过程轮廓实时质量监测和诊断方案。从制造过程中收集的轮廓被映射到质量光谱中。在离线学习阶段建立了用于质量谱的新颖DBN识别模型,该模型可用于在线阶段监视和诊断过程轮廓。通过仿真实验证明了DBN识别模型在制造过程中的有效性,并以一个实际的注塑过程为例对性能进行了分析。结果表明,提出的DBN模型优于其他方法。

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