Spindle Condition Monitoring with a Smart Vibration Sensor and an Optimized Deep Neural Network

Lo-Eng Oh, Emil Pitz, K. Pochiraju
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Abstract

This paper presents a spindle condition monitoring methodology using a low-power smart vibration sensor and a near real-time deep neural network classifier. The most frequent spindle failures, such as imbalance, ingression, and evidence of a crash with the workpiece, are analyzed in this study. Experiments were designed to induce various failure events to monitor the spindle behavior using conventional vibration, current and temperature sensors, and an intelligent vibration sensor. The smart sensor is a device with internal signal processing identifying eight dominant frequencies and the amplitude/power distributions. It requires low power and generates narrow bandwidth messages that can be communicated wirelessly. A Fog device and a test plan are designed to monitor and store a dataset needed to train a Deep Neural Network (DNN) classifier. The Fog device generates temperature, current, and vibration signals from sensors connected to the spindle and sends them to data storage in the cloud. The signals were analyzed using both conventional vibration analysis and AI-based classifiers. The data from the smart sensor are used to train an optimized DNN, and the spindle defect classification performance is measured. With 960 data points per failure mode and training data taken over 960 minutes of operation, the optimized DNNs can classify the spindle states with an accuracy of 98%. The study shows real-time spindle condition classification feasibility over long periods using inexpensive and low-power smart vibration sensors.
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基于智能振动传感器和优化深度神经网络的主轴状态监测
本文提出了一种基于低功耗智能振动传感器和近实时深度神经网络分类器的主轴状态监测方法。最常见的主轴故障,如不平衡,侵入,并与工件碰撞的证据,分析在本研究中。采用传统的振动传感器、电流传感器、温度传感器和智能振动传感器,设计了各种故障事件诱导实验,以监测主轴的行为。智能传感器是一种内部信号处理装置,可以识别8个主要频率和振幅/功率分布。它需要低功耗,并产生可以无线通信的窄带宽消息。设计了一个Fog设备和一个测试计划来监控和存储训练深度神经网络(DNN)分类器所需的数据集。Fog设备从连接到主轴的传感器产生温度、电流和振动信号,并将其发送到云端的数据存储中。使用传统的振动分析和基于人工智能的分类器对信号进行分析。利用智能传感器的数据训练优化后的深度神经网络,并测量主轴缺陷分类性能。每个故障模式有960个数据点,训练数据超过960分钟,优化后的dnn可以以98%的准确率对主轴状态进行分类。研究表明,采用低成本、低功耗的智能振动传感器对主轴状态进行长期实时分类是可行的。
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来源期刊
CiteScore
3.80
自引率
9.10%
发文量
25
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