使用基于纹理提取的迁移学习方法对低碳钢加工过程中的硬质合金刀具磨损进行噪声稳健分类,以进行预测性维护

Ravi Sekhar , Sharnil Pandya , Pritesh Shah , Hemant Ghayvat , Deepak Sharma , Matthias Renz , Deep Shah , Adeeth Jagdale , Devansh Hukmani , Santosh Saxena , Neeraj Kumar
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引用次数: 0

摘要

与机械振动或基于图像捕捉的预测性维护方法相比,基于声学的智能状态监测是一种可行的替代方法。本研究采用基于纹理分析的迁移学习方法,根据低碳钢加工过程中产生的噪声对刀具磨损进行分类。加工噪声被转换为频谱图图像,并使用四个预先训练好的深度学习模型(SqueezeNet、ResNet50、InceptionV3、GoogLeNet)进行迁移学习,将其分类为高/中/低刀具磨损。此外,每个深度学习模型都应用了三个优化器(RMSPROP、ADAM、SGDM),以提高分类精度。初步结果表明,InceptionV3-RMSPROP 的测试准确率最高,达到 87.50%,其次是 SqueezeNet-RMSPROP 和 ResNet50-SGDM,分别为 75.00% 和 62.50%。不过,从实际加工质量和安全角度来看,SqueezeNet-RMSPROP 更为可取,因为它对刀具磨损最高等级的召回值更大。所提出的声学-纹理提取-转移学习方法特别适用于涉及有限数据集的低成本刀具磨损状况监测。
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Noise robust classification of carbide tool wear in machining mild steel using texture extraction based transfer learning approach for predictive maintenance
Acoustics based smart condition monitoring is a viable alternative to mechanical vibrations or image-capture based predictive maintenance methods. In this study, a texture analysis based transfer learning methodology was applied to classify tool wear based on the noise generated during mild steel machining. The machining acoustics were converted to spectrogram images and transfer learning was applied for their classification into high/medium/low tool wear using four pre-trained deep learning models (SqueezeNet, ResNet50, InceptionV3, GoogLeNet). Moreover, three optimizers (RMSPROP, ADAM, SGDM) were applied to each of the deep learning models to enhance classification accuracies. Primary results indicate that the InceptionV3-RMSPROP obtained the highest testing accuracy of 87.50%, followed by the SqueezeNet-RMSPROP and ResNet50-SGDM at 75.00% and 62.50% respectively. However, SqueezeNet-RMSPROP was determined to be more desirable from a practical machining quality and safety perspective, owing to its greater recall value for the highest tool wear class. The proposed acoustics-texture extraction-transfer learning approach is especially suitable for cost effective tool wear condition monitoring involving limited datasets.
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来源期刊
Results in Control and Optimization
Results in Control and Optimization Mathematics-Control and Optimization
CiteScore
3.00
自引率
0.00%
发文量
51
审稿时长
91 days
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