An identification method for spring energy storage fault of onload tap changer based on neural network response surface model
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TM403.4

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    Abstract:

    In order to precisely identify the spring energy storage failure in an onload tap changer (OLTC), an identification method is developed for spring energy storage failure of the OLTC based on the neural network response surface model. Firstly, the fault simulation model of the OLTC was established through the finite element method. Then, the training samples of the response surface model were generated from the uniform experiments and simulations, and the neural network response surface model was therefore constructed by training these samples. Finally, the mechanical parameters of the spring energy storage deficiency were identified using the multiobjective identification algorithm constructed by desirability function, and the identification results of spring insufficient energy storage faults of the UCL type OLTC was validated by simulation. The Results show that the fault of spring insufficient energy storage can be identified accuratelyvia the neural network response surface model. The maximum relative error between the identified result and the reference data is 3.93%, which can verifie the effectiveness of this method.

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刘志远,缪辉,于晓军,邹洪森,陈大鹏.基于神经网络响应面模型的有载分接开关弹簧储能故障的识别[J].电力科学与技术学报英文版,2021,36(3):203-210. Liu Zhiyuan, Miao Hui, Yu Xiaojun, Zou Hongsen, Chen Dapeng. An identification method for spring energy storage fault of onload tap changer based on neural network response surface model[J]. Journal of Electric Power Science and Technology,2021,36(3):203-210.

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  • Received:
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  • Online: August 26,2021
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