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A tool wear monitoring and prediction system based on multiscale deep learning models and fog computing

机译:基于多尺度深度学习模型和雾计算的工具磨损预测系统

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摘要

Tool condition monitoring (TCM) during the manufacturing process is of great significance for ensuring product quality and plays an important role in intelligent manufacturing. Current TCM systems deployed in the local device or cloud computing environment unable meet the requirements of low response latency and high accuracy at the same time. The emerging fog computing provides new solutions for the above problem. This paper presents a tool wear monitoring and prediction (TWMP) system based on deep learning models and fog computing. In order to improve monitoring and prediction accuracy, we propose a multiscale convolutional long short-term memory model (MCLSTM) to complete the tool wear monitoring task and a bi-directional LSTM model (BiLSTM) to complete the tool wear prediction task. To reduce the response latency of the TWMP system, we deploy the MCLSTM model and the BiLSTM model in a fog computing architecture. The fog computing architecture consists of an edge computing layer, a fog computing layer, and a cloud computing layer. The edge computing layer undertakes real-time signal collection task. The fog computing layer undertakes real-time tool wear monitoring task. The cloud computing layer with powerful computing resources undertakes intensive computing and latency-insensitive tasks such as data storage, tool wear prediction, and model training. A twist drill wear monitoring and prediction experiment is conducted to test the performance of the proposed system in terms of accuracy, response time, and network bandwidth consumption.
机译:制造过程中的工具状况监测(TCM)对于确保产品质量并在智能制造中发挥重要作用具有重要意义。目前在本地设备或云计算环境中部署的TCM系统无法同时满足低响应延迟和高精度的要求。新兴雾计算为上述问题提供了新的解决方案。本文介绍了基于深度学习模型和雾计算的工具磨损监控和预测(TWMP)系统。为了提高监控和预测准确性,我们提出了一种多尺度卷积长短期内存模型(MCLSTM)来完成工具磨损监控任务和双向LSTM模型(BILSTM)来完成工具磨损预测任务。为了减少TWMP系统的响应延迟,我们在雾计算架构中部署MCLSTM模型和Bilstm模型。雾计算架构包括边缘计算层,雾计算层和云计算层。边缘计算层进行实时信号收集任务。雾计算层承担实时工具磨损监控任务。具有强大的计算资源的云计算层承担密集的计算和延迟不敏感的任务,如数据存储,工具磨损预测和模型训练。进行扭转钻磨损监测和预测实验,以测试提出的系统的性能,以准确性,响应时间和网络带宽消耗。

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