基于深度神经网络和卷积神经网络的振动异常检测

C. Deac, G. Deac, R. Parpală, C. Popa, C. E. Cotet
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引用次数: 6

摘要

确定设备的“健康状态”属于状态监测领域。本文在凯斯西储大学提供的现有数据集上,提出了DNN (Deep Neural Network)和CNN (Convolutional Neural Network)两种模型,用于故障诊断中的振动分析。在窗口数据集上使用最优学习率、最小化代价函数对模型进行训练,并通过计算结果之间的损失、准确度和精度进行测试后,保存权重,模型可以在其他真实数据上进行测试。训练后的模型识别由微机电加速度计传感器收集的原始时间序列数据,并根据之前的时间序列条目检测异常。
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Vibration Anomaly Detection using Deep Neural Network and Convolutional Neural Network
Identifying the “health state” of the equipment is the domain of condition monitoring. The paper proposes a study of two models: DNN (Deep Neural Network) and CNN (Convolutional Neural Network) over an existent dataset provided by Case Western Reserve University for analyzing vibrations in fault diagnosis. After the model is trained on the windowed dataset using an optimal learning rate, minimizing the cost function, and is tested by computing the loss, accuracy and precision across the results, the weights are saved, and the models can be tested on other real data. The trained model recognizes raw time series data collected by micro electromechanical accelerometer sensors and detects anomalies based on former times series entries.
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