湖南大学学报(自然科学版)
湖南大學學報(自然科學版)
호남대학학보(자연과학판)
JOURNAL OF HUNAN UNIVERSITY(NATURAL SCIENCES EDITION)
2009年
12期
40-44
,共5页
李培强%刘志勇%李欣然%汪(风)
李培彊%劉誌勇%李訢然%汪(風)
리배강%류지용%리흔연%왕(풍)
电力系统%综合负荷%负荷建模%模糊系统%神经网络%综合能力
電力繫統%綜閤負荷%負荷建模%模糊繫統%神經網絡%綜閤能力
전력계통%종합부하%부하건모%모호계통%신경망락%종합능력
electric power systems%composite power load%power load modeling%fuzzy systems%neural network%synthesizing ability
针对电力电子设备综合负荷模型难以用机理模型描述的现状,构造了动态综合负荷的模糊神经网络模型.该模型具有模糊推理和神经网络的优点,能很好地逼近动态负荷的模型输出.通过对已知实测建模数据的训练,分析了模糊神经网络负荷模型的前件参数、结论参数的辨识策略,阐述了模糊隶属度和模糊规则的形成过程.对负荷构成相异的4组实测变电站负荷数据,用其中1组建模数据进行训练,得出模糊模型结构和参数,用该模型去拟合其他3组数据,对模糊神经网络负荷模型的综合能力进行验证.实例表明,该模糊神经网络负荷模型不仅具有很强的自描述能力和收敛性,而且具有良好的综合描述能力.
針對電力電子設備綜閤負荷模型難以用機理模型描述的現狀,構造瞭動態綜閤負荷的模糊神經網絡模型.該模型具有模糊推理和神經網絡的優點,能很好地逼近動態負荷的模型輸齣.通過對已知實測建模數據的訓練,分析瞭模糊神經網絡負荷模型的前件參數、結論參數的辨識策略,闡述瞭模糊隸屬度和模糊規則的形成過程.對負荷構成相異的4組實測變電站負荷數據,用其中1組建模數據進行訓練,得齣模糊模型結構和參數,用該模型去擬閤其他3組數據,對模糊神經網絡負荷模型的綜閤能力進行驗證.實例錶明,該模糊神經網絡負荷模型不僅具有很彊的自描述能力和收斂性,而且具有良好的綜閤描述能力.
침대전력전자설비종합부하모형난이용궤리모형묘술적현상,구조료동태종합부하적모호신경망락모형.해모형구유모호추리화신경망락적우점,능흔호지핍근동태부하적모형수출.통과대이지실측건모수거적훈련,분석료모호신경망락부하모형적전건삼수、결론삼수적변식책략,천술료모호대속도화모호규칙적형성과정.대부하구성상이적4조실측변전참부하수거,용기중1조건모수거진행훈련,득출모호모형결구화삼수,용해모형거의합기타3조수거,대모호신경망락부하모형적종합능력진행험증.실례표명,해모호신경망락부하모형불부구유흔강적자묘술능력화수렴성,이차구유량호적종합묘술능력.
In order to overcome the trouble that mechanism power load models are difficult to describe composite load characteristics of power electronics equipment, this paper put forward a kind of fuzzy neural power load model based on ANFIS (adaptive-network-based fuzzy inference system). Integrating the advantages of fuzzy inference and neural network, the model can accurately represent the output behavior of dynamic power load. Through training and optimizing the neural network with the measured field data, the authors obtained the before-condition parameters and conclusion-parameters of the model. Combining the application instance, the authors elaborated the procedure forming fuzzy subordination parameter and fuzzy rule. To verify the synthesizing ability of the model, the authors applied 4 data samples at power substation field to model dynamic power load. One of them was used to identify the model, and the others were used to test the model. The results show that the fuzzy neural network model has not only excellent self-description ability but also strong synthesizing ability.