Mel Spectrogram Analysis for Punching Machine Operating State Classification with CNNs

Dominik Mittel, Sebastian Pröll, F. Kerber, Thorsten Schöler
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Abstract

Data driven analysis and optimization of production processes has become a pivotal instrument to use enterprise resources more efficiently and to improve product quality. However, availability and quality requirements still limit the prevalence of big data and learning techniques in industrial applications. Therefore, retrofitting sensors to brownfield systems has been suggested as a solution to acquire relevant real-time process data. In this paper, a low-cost retrofit approach to analyze the operating state of manually operated punching machines based on sound analysis is presented. The machine operating states provide additional information about the metal forming process, required for the enterprise resource planning (ERP) system to optimally schedule orders in prefabrication and plan available resources. As an analysis tool, a transfer learning approach with a convolutional neural network was used to assess data accuracy and prediction results. The input data consists of Mel Spectrogram images acquired by sound sensors retrofitted to the punching machines. The experiments show that the adapted EfficentNet-B0 achieves an accuracy, sensitivity, and precision of approximately 98 % on unseen data in real environment thus demonstrating the applicability of the implemented system.
基于cnn的冲床工作状态分类Mel谱图分析
数据驱动的生产过程分析和优化已成为更有效地利用企业资源和提高产品质量的关键手段。然而,可用性和质量要求仍然限制了大数据和学习技术在工业应用中的普及。因此,建议将传感器改造到棕地系统中,作为获取相关实时过程数据的解决方案。提出了一种基于声音分析的人工冲床运行状态分析的低成本改造方法。机器运行状态提供了关于金属成形过程的额外信息,企业资源规划(ERP)系统需要这些信息来优化预制订单和计划可用资源。作为分析工具,使用卷积神经网络的迁移学习方法来评估数据的准确性和预测结果。输入数据由安装在冲床上的声音传感器获得的Mel谱图图像组成。实验表明,改进后的EfficentNet-B0在实际环境中对未见过的数据处理的准确度、灵敏度和精密度均达到98%左右,证明了所实现系统的适用性。
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