基于多维多工况数据的水轮机机组状态趋势预测研究

Q3 Engineering
Xiaoping Jiang, Xiang Gao, C. Shi
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引用次数: 1

摘要

针对水轮机灵活运行工况和状态趋势难以准确预测的问题,本文提出了BP-LSTM分类预测的串级模型,该模型可以识别现有融合数据的工况,进而预测不同工况的测量点。基于水轮机机组压力参数,采用改进的BP神经网络确定水轮机机组运行工况,并对分类后的数据进行重新划分,建立多元LSTM预测模型。通过对多元LSTM预测模型的结构、网络层数、隐层神经元数等参数进行优化,最终建立了水轮机机组时间序列BP-LSTM分类预测的级联模型。通过实验验证和分析,BP-LSTM分类预测模型可以预测分类后的测点在不同工况下的运行趋势。与其他模型相比,BP-LSTM模型具有更高的预测精度和更好的预测效果。BP-LSTM时间序列分类预测的串级模型为水轮机机组预测控制的研究提供了模型基础。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Research on State Trend Prediction of Hydraulic Turbine Units Based on Mult-dimensional and Multi-condition Data
Aiming at the problem that it is difficult to accurately predict the flexible operation conditions and state trend of hydraulic turbine, in this paper a cascade model of BP-LSTM classification prediction is proposed, which can identify the working conditions of existing fusion data, and then predict the measuring points of different working conditions. Based on the pressure parameters of hydraulic turbine units, the improved BP neural network is used to determine the operation conditions of hydraulic turbine units, and the classified data is redivided to establish the multivariate LSTM prediction model. By optimizing the parameters of the multivariate LSTM prediction model, such as the structure, the number of network layers and the number of hidden layer neurons, finally established the cascade model of BP-LSTM classification prediction of time series of hydraulic turbine units. Through experimental verification and analysis, BP-LSTM classification prediction model can predict the operation trend of measuring points under different working conditions after classification. Compared with other models, BP-LSTM model has higher prediction accuracy and better effect. The cascade model of BP-LSTM classification prediction of time series provides a model basis for the research of predictive control of hydraulic turbine units.
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来源期刊
International Journal of Fluid Machinery and Systems
International Journal of Fluid Machinery and Systems Engineering-Industrial and Manufacturing Engineering
CiteScore
1.80
自引率
0.00%
发文量
32
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