水电站动力学研究的模糊模型

N. Kishor, S. Singh, A. S. Raghuvanshi, P. Sharma
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引用次数: 5

摘要

本文采用模糊模型对水电厂进行动态辨识。工厂数据由Pade和h-∞近似的一阶,二阶,三阶和四阶有理传递函数模型生成。仿真结果为:(1)随机负载扰动下闸门伺服电机位置和水轮机转速;(2)闸门位置和发展水轮机功率。以平稳阶跃波信号为输入,对Takagi-Sugeno模糊模型结构进行识别,并将识别出的模型在验证数据集上进行推广,以随机阶跃波信号为输入。模糊规则通过Gustafson-Kessel聚类从数据中提取,使用积空间和点向投影技术确定前因式
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Fuzzy Models for the Study of Hydro Power Plant Dynamics
In this paper, the hydro power plant dynamics is identified using fuzzy models. The plant data is generated from Pade and H-infinity approximated first, second, third and fourth-order rational transfer function models. The models are simulated as (i) gate-servo motor position and turbine speed with random load disturbance and (ii) gate position and developed turbine power. Takagi-Sugeno fuzzy model structures are identified with smooth stepped wave signal input and the identified model is generalized on its validation data set and with random stepped wave signal as input. The fuzzy rules are extracted from data by means of Gustafson-Kessel clustering with antecedents determined using product-space and point-wise projection techniques
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