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基于CNN-GRU的冷水机组传感器偏差故障诊断方法
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Fault Diagnosis Method of Chiller Sensor Deviation Based on CNN-GRU
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    摘要:

    针对冷水机组传感器偏差故障识别率低的问题,提出一种基于卷积神经网络 (Convolutional Neural Network,CNN)和门控递归单元(Gated Recurrent Unit,GRU)融合网络模 型(CNN-GRU)的冷水机组传感器偏差故障诊断方法. 该方法利用GRU记忆冷水机组因每个 传感器动态响应特性不同造成的其每个传感器不同的时间相关性,克服了CNN在冷水机组传 感器偏差故障诊断中仅能提取时间序列实时特征的缺点. 首先采用CNN自动提取传感器时间 序列的实时特征,然后利用具有长短期记忆能力的GRU实现对冷水机组传感器不同时间相关 性的记忆,从而充分利用时间序列中的特征信息对数据进行表征建模,进而有效提升了冷水 机组传感器偏差故障识别率. 将该方法与CNN、主成分分析和自动编码器方法进行比较,实验 结果表明:温度类和压力类传感器的偏差故障识别率分别在 85%以上和 90%以上;验证样本 得到了83%以上的偏差故障识别率,验证了该方法的泛化能力良好;该方法对于同一传感器、 故障大小互为相反数的偏差故障的故障识别率均具有良好的对称性;该方法的偏差故障识别 率高于其他方法,尤其对于很小的偏差故障的识别率具有更明显的优势.

    Abstract:

    To solve the problem of low error fault recognition rate of chiller sensors deviation,a sensor error fault diagnosis method based on Convolutional Neural Network(CNN)and Gated Recurrent Unit(GRU)fusion Net? work model(CNN-GRU)is proposed. This method utilizes GRU to remember the different time correlation of each sensor due to the different dynamic response characteristics of each sensor of the chiller,and overcomes the short? coming that CNN can only extract the real-time characteristics of time series in the fault diagnosis of sensor deviation of the chiller. First,the sensor real-time characteristics of time series are automatically extracted using CNN,and then GRU with a short and long-term memory capacity is used to realize the different time correlation of memory for the chiller sensor,so as to make full use of the feature information in the time series to characterize and model the data,and effectively improve the fault recognition rate of chiller sensor bias. Compared with CNN,PCA and autoen? coder methods,the experimental results show that the error fault identification rates of temperature and pressure sensors are more than 85% and 90%,respectively. The identification rate of deviation fault is more than 83%,which proves that the generalization ability of this method is good. The method has good symmetry for the fault recognition rates of the same sensor and the fault magnitudes are opposite to each other. The error fault identification rate of this method is higher than that of other methods,and especially for small error fault identification rate,it shows more ob? vious superiority.

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李冬辉 ?,赵墨刊 ,高龙.基于CNN-GRU的冷水机组传感器偏差故障诊断方法[J].湖南大学学报:自然科学版,2022,49(2):74~82

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  • 在线发布日期: 2022-03-04
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