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LSTM Based Prediction and Time-Temperature Varying Rate Fusion for Hydropower Plant Anomaly Detection: A Case Study

机译:基于LSTM的水电厂异常检测预测和时温变化率融合:案例研究

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Data-driven based predictive maintenance is vital in hydropower plant management, since early detections on the emerging problem can save invaluable time and cost. The overheating of bearings of turbines and generators is one of the major problems for the continuous operations of hydropower plants. A reliable forecast of bearing temperature helps designers in preparing future bearings and setting up the operating range of bearing temperatures. In this study, the fusion algorithm between Long Short Term Memory (LSTM) neural networks based effective slide-window regression model with time-temperature varying rate based anomaly detection framework is developed for detecting component and temporal anomalies of 56 MW Francis Pumped Storage Hydropower (PSH) plant in predictable and noisy domains. Data sets of all sensors were collected for a period of ten year ranging from 2007 to 2017 used for the train and test dataset. The predicted upper guide bearing temperature values were compared with the actual bearing temperature values in order to verify the performance of the model. The data analysis results shows anomaly is validated on the PSH plant.
机译:基于数据驱动的预测性维护对水电厂管理至关重要,因为尽早发现新出现的问题可以节省宝贵的时间和成本。涡轮和发电机轴承的过热是水力发电厂连续运行的主要问题之一。可靠的轴承温度预测有助于设计人员准备将来的轴承并设定轴承温度的工作范围。在这项研究中,基于长短期记忆(LSTM)神经网络的有效滑动窗口回归模型与基于时温度变化率的异常检测框架之间的融合算法被开发出来,用于检测56 MW弗朗西斯抽水蓄能电站的组分和时间异常( (PSH)植物处于可预测和嘈杂的领域。从2007年到2017年的十年中,收集了所有传感器的数据集,用于火车和测试数据集。将预测的上引导轴承温度值与实际轴承温度值进行比较,以验证模型的性能。数据分析结果表明,该异常已在PSH工厂上得到验证。

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