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Application of artificial neural network to estimate power generation and efficiency of a new axial flux permanent magnet synchronous generator

机译:人工神经网络在新型轴向磁通永磁同步发电机发电及效率估算中的应用

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摘要

An estimation study on the output power and the efficiency of a new-designed axial flux permanent magnet synchronous generator (AFPMSG) is performed. For the estimation algorithm, a multi-layer feedforward artificial neural network (ANN) is developed. Various experimental results from the generator have been used for the training purpose in the cases of different electrical loads and rotational speeds. Some experimental data is kept out of the training process for testing the network and the errors have been evaluated after the formation of the network. According to the findings, a network with three layers has been adequate to achieve very good error percentage between the ANN and laboratory studies. The maximal testing error percentages are found to be nearly 3% and 4% for the output power and efficiency estimations, respectively. According to that finding, the developed ANN has a good property that it can be used in place of the designed generator, especially when the generator mathematical model is required. In addition, since power and efficiency are important for present applications, the present tool can be used to estimate the data for those characteristics of the machines and even it can be beneficial for the applications, where a nonlinear relationship among the power generation, generator efficiency, speed and load is required. (C) 2017 Hydrogen Energy Publications LLC. Published by Elsevier Ltd. All rights reserved.
机译:对新型轴向磁通永磁同步发电机(AFPMSG)的输出功率和效率进行了估算研究。对于估计算法,开发了多层前馈人工神经网络(ANN)。在不同的电负载和转速的情况下,已将发电机的各种实验结果用于训练目的。一些实验数据被排除在训练过程之外以测试网络,并且在网络形成之后已经评估了错误。根据调查结果,三层网络足以在人工神经网络和实验室研究之间实现非常高的错误率。对于输出功率和效率估计,发现最大测试误差百分比分别接近3%和4%。根据该发现,开发的人工神经网络具有良好的性能,可以代替设计的发电机使用,特别是在需要发电机数学模型的情况下。另外,由于功率和效率对于当前应用很重要,因此本工具可用于估计机器这些特性的数据,甚至对发电,发电机效率之间呈非线性关系的应用也可能是有益的,需要速度和负载。 (C)2017氢能出版物有限公司。由Elsevier Ltd.出版。保留所有权利。

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