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Application of BP neural network in turbo-generator harmonic analysis under negative-sequence loss conditions

机译:BP神经网络在负序损耗条件下的汽轮发电机谐波分析中的应用

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This work is the application of back propagation neural network (BP NN) on the world's first AP1000 third generation 1250 MVA nuclear half-speed (4-pole) turbo-generator in harmonic analysis. Large-capacity generator is the mainstream of nuclear power future, which leads the trend of nuclear power development and also faces many problems need to be tackled as soon as possible. Harmonic distortion is a predominant factor influent turbo-generator's output power quality and power system operations. In order to solve the problem, this paper presents an application control strategy to estimate the harmonics in the AP1000 nuclear turbo-generator unit using BP neural network, by which the neural structure can be used for harmonic analysis and power quality control. Simulation results prove that the method can realize the ability of self-learning. Meanwhile, the application results identify that BP neural network is an effective technology to calculate and analyze the harmonics in AP1000 large-capacity generator system under various negative-sequence loss conditions, and pave the path of the further theory research and the application practice a good solid foundation at the same time.
机译:这项工作是将反向传播神经网络(BP NN)应用于世界上第一台AP1000第三代1250 MVA核半速(4极)涡轮发电机的谐波分析。大容量发电机是核电未来的主流,这引领了核电发展的趋势,也面临着许多亟待解决的问题。谐波失真是影响涡轮发电机输出功率质量和电力系统运行的主要因素。为了解决该问题,本文提出了一种应用控制策略,通过BP神经网络来估计AP1000核电发电机组的谐波,从而可以将神经结构用于谐波分析和电能质量控制。仿真结果表明,该方法可以实现自学习能力。同时,应用结果表明,BP神经网络是计算和分析AP1000大容量发电机系统在各种负序损耗条件下的谐波的有效技术,为进一步的理论研究和应用实践铺平了道路。同时打下坚实的基础。

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