Zhang Jianyong
Hohai University
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Featured researches published by Zhang Jianyong.
ieee international conference on power system technology | 2014
Cai Changchun; Deng Lihua; Dai Weili; Zhang Jianyong
With the development of distributed and micro-grid technology, more and more micro-grid will connect into the power system. The dynamic simulation of distributed network should consider the affection of micro-grid. This paper proposes a micro-grid equivalent modeling method based on the characteristic model. The characteristic model can simplify the detailed model of micro-grid without missing the characteristic information under connected mode. Characteristic model is presented by a low-order time-varying difference equation and the difference equations are equal to the micro-grid dynamic characteristic. Voltage and power of the Point of Common Couple(PCC) are collected for the input and output of the characteristic model respectively. Recursive damped least square algorithm is used for the parameter estimation and the measured vector is normalized for improving the convergence of the algorithm. An micro-grid system is built for the simulation of micro-grid in DIgSILENT, and simulation results show that the dynamic equivalent based on characteristic model can well describe the dynamic characteristic of the detailed model of micro-grid, and the modeling method is validity.
ieee international conference on power system technology | 2014
Cai Changchun; Wu Min; Deng Lihua; Deng Zhixiang; Zhang Jianyong
A simplified equivalent model of microgrid, based on the RBF Artificial Neural Network, is present in this paper. The proposed model is suitable for the dynamic studies of microgrids. Nonlinear mapping of RBF neural network describes the dynamic characteristics of the Point of Common Couple(PCC) of micro-grid under the connected mode. The development model is evaluated using the voltage, current and power of the PCC as the input and output of the RBF neural network in the train process. The PSO algorithm is used for the parameter optimization of RBF and improved the generalization of the dynamic model. The simulation results show the proposed modeling method in this paper is suitable and effective, and the RBF neural network based dynamic model can describe the dynamic characteristics of micro-grid accurately.
High Voltage Engineering | 2012
Zhang Jianyong
Archive | 2014
Cai Changchun; Deng Lihua; Xue Yuncan; Hu Gang; Zhang Jianyong
Archive | 2014
Cai Changchun; Deng Lihua; Qin Chuan; Jin Yuqing; Zhang Jianyong
Archive | 2013
Cai Changchun; Ju Ping; Jin Yuqing; Qin Chuan; Zhang Jianyong
Journal of Hohai University | 2008
Zhang Jianyong
Archive | 2017
Cai Changchun; Zhang Jianyong; Deng Lihua; Dai Weili; Jin Yuqing; Jiang Bing
Archive | 2017
Cai Changchun; Dai Weili; Zhang Jianyong; Deng Lihua; Xue Yuncan; Jiang Bing
Archive | 2015
Cai Changchun; Deng Lihua; Jiang Bing; Zhang Jianyong; Deng Zhixiang; Wu Xing