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Feedforward neural network and ANFIS-based approaches to forecasting the off-cam energy characteristics of Kaplan turbine

机译:前馈神经网络和基于ANFIS的方法,以预测KAPLAN涡轮机的越野电源特性

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摘要

The determination of the energy characteristics of a Kaplan hydraulic turbine is based on numerous measuring points during extensive and expensive experimental model tests in laboratory and on-site prototype tests at the hydropower plant. The results of those experimental researches are valuable insofar as they are detailed and comprehensive. In order to reduce the number of modes, in which the double-regulated turbine has to be tested with the aim of obtaining the off-cam energy characteristics in unknown operating modes, the application of contemporary artificial neural networks models is presented in the paper. The rationalization of the turbine test conditions may not be at the expense of the quality of the obtained characteristics. Two types of neural networks, feedforward neural networks and adaptive network-based fuzzy inference system with different partitioning methods, were used. The reliability of applied method was considered by analyzing and validating the predicted turbine energy parameters with the results obtained in the highly sophisticated laboratory.
机译:KAPLAN液压涡轮机的能量特性的确定基于在水电站的实验室和现场原型测试中的广泛昂贵的实验模型试验中的许多测量点。这些实验研究的结果是有价值的,因为它们是详细和全面的。为了减少模型的数量,其中必须通过以未知的操作模式获得越野能量特性的目的,在纸张中提出了当代人工神经网络模型的应用。涡轮试验条件的合理化可能不牺牲所获得的特性的质量。使用两种类型的神经网络,具有不同分区方法的前馈神经网络和基于自适应网络的模糊推理系统。通过在高复杂的实验室中获得的结果,通过分析和验证预测的涡轮能量参数来考虑应用方法的可靠性。

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