Data-Driven Turbine Modeling and Load Rejection Analysis

Xiaoping Jiang, Xuan Liu, Ziting Wang, Zhenye Xu, Chao Shi, Y. Zheng
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Abstract

The full characteristic model of hydraulic turbine must be considered in the research of control and transition process calculation of hydraulic turbine generator unit. In order to obtain the full characteristic model of hydraulic turbine, it is indispensable to reasonably extend the high-efficiency working condition characteristic area to the low-efficiency area according to the comprehensive characteristic curve. In this paper, BP(back propagation) neural network is used to process the comprehensive characteristic curve of hydraulic turbine to obtain the full characteristic model. In view of the defects of traditional BP neural network, such as slow convergence speed, long training time and easy oscillation in the learning process, BP neural network is improved. The improved BP neural network is used to train the model of flow and torque characteristics, and then the full characteristic model of hydraulic turbine is trained by using the value point to extend the flow and torque characteristic data. Experiments demonstrate that the full characteristic model established by the improved BP neural network algorithm has higher accuracy. Finally, the full characteristic model is used to calculate the load rejection transition process. The results demonstrate that the full characteristic model is suitable for the calculation of hydraulic turbine transition process and meets the requirements of engineering application.
数据驱动的涡轮建模与甩负荷分析
在水轮发电机组控制和过渡过程计算研究中,必须考虑水轮机全特性模型。为了获得水轮机的全特性模型,必须根据综合特性曲线将高效工况特征区合理地延伸到低效率区。本文采用BP(反向传播)神经网络对水轮机综合特性曲线进行处理,得到水轮机的全特性模型。针对传统BP神经网络收敛速度慢、训练时间长、学习过程容易振荡等缺陷,对BP神经网络进行了改进。采用改进的BP神经网络对水轮机流量和转矩特性模型进行训练,然后利用值点对水轮机流量和转矩特性数据进行扩展,训练出水轮机全特性模型。实验表明,改进的BP神经网络算法建立的全特征模型具有较高的精度。最后,利用全特征模型对甩负荷过渡过程进行了计算。结果表明,该全特性模型适用于水轮机过渡过程的计算,满足工程应用的要求。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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