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基于主成分分析的多任务学习和注意力机制的泵站运行参数趋势预测与运行报警模型

Trend Prediction and Operation Alarm Model Based on PCA-Based MTL and AM for the Operating Parameters of a Water Pumping Station.

作者信息

Shao Zhiyu, Mei Xin, Liu Tianyuan, Li Jingwei, Tang Hongru

机构信息

School of Electrical, Energy and Power Engineering, Yangzhou University, No. 88 South University Road, Yangzhou 225009, China.

出版信息

Sensors (Basel). 2024 Aug 21;24(16):5416. doi: 10.3390/s24165416.

Abstract

In order to effectively predict the changing trend of operating parameters in the pump unit and carry out fault diagnosis and alarm processes, a trend prediction model is proposed in this paper based on PCA-based multi-task learning (MTL) and an attention mechanism (AM). The multi-task learning method based on PCA was used to process the operating data of the pump unit to make full use of the historical data to extract the key common features reflecting the operating state of the pump unit. The attention mechanism (AM) is introduced to dynamically allocate the weight coefficient of common feature mapping for highlighting the key common features and improving the prediction accuracy of the model when predicting the trend of data change for new working conditions. The model is tested with the actual operating data of a pumping station unit, and the calculation results of different models are compared and analyzed. The results show that the introduction of multi-task learning and attention mechanisms can improve the stability and accuracy of the trend prediction model compared with traditional single-task learning and static common feature mapping weights. According to the threshold analysis of the monitoring statistical parameters of the model, a multi-stage alarm model of pump unit operation condition monitoring can be established, which provides a theoretical basis for optimizing operation and maintenance management strategy in the process of pump station management.

摘要

为有效预测泵机组运行参数的变化趋势并进行故障诊断与报警处理,本文提出一种基于主成分分析(PCA)的多任务学习(MTL)和注意力机制(AM)的趋势预测模型。基于PCA的多任务学习方法用于处理泵机组的运行数据,以充分利用历史数据提取反映泵机组运行状态的关键共同特征。引入注意力机制(AM)动态分配共同特征映射的权重系数,以突出关键共同特征并提高模型在预测新工况数据变化趋势时的预测精度。利用某泵站机组的实际运行数据对模型进行测试,并对不同模型的计算结果进行比较分析。结果表明,与传统单任务学习和静态共同特征映射权重相比,引入多任务学习和注意力机制可提高趋势预测模型的稳定性和准确性。通过对模型监测统计参数的阈值分析,可建立泵机组运行状态监测的多阶段报警模型,为泵站管理过程中的运行维护管理策略优化提供理论依据。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/a560/11360716/760936b33ca9/sensors-24-05416-g001.jpg

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