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Fault Diagnosis In Injection Moulding Via Cavity Pressure Signals

机译:通过型腔压力信号的注塑成型故障诊断

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In this paper we demonstrate the feasibility of applying pattern recognition techniques for monitoring and diagnosis to an injection moulding process. Mould cavity pressure signals collected during the process are utilized for monitoring and diagnosis. Principal component analysis is applied to reduce the dimensionality of multivariate signals to a univariate representative signal, while preserving the characteristics of the original signals. Process 'fingerprints' are gleaned through wavelet decomposition and multi-resolution analysis of the 'reduced' signal. Feature elements defined from these fingerprints are interpreted by an artificial neural network for process condition monitoring and fault diagnosis. The experimental results indicate that this approach is effective for 'run to run' process monitoring, diagnostics and control. The diagnostic system can be updated adaptively as new process faults are identified.
机译:在本文中,我们演示了将模式识别技术应用于注塑成型过程的监视和诊断的可行性。在该过程中收集的模具型腔压力信号用于监控和诊断。应用主成分分析可将多元信号的维数减少为单变量代表信号,同时保留原始信号的特征。通过“分解”信号的小波分解和多分辨率分析来收集过程“指纹”。由这些指纹定义的特征元素由人工神经网络解释,用于过程状态监视和故障诊断。实验结果表明,这种方法对于“运行到运行”过程的监视,诊断和控制是有效的。当发现新的过程故障时,可以自适应地更新诊断系统。

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