发明名称 Adaptive superconductive magnetic energy storage (SMES) control method and system
摘要 The adaptive superconductive magnetic energy storage (SMES) control method and system control a SMES device connected to a power generation system. A radial basis function neural network (RBFNN) connected to the controller adaptively adjusts gain constants of the controller. A processor executes an improved particle swarm optimization (IPSO) procedure to train the RBFNN from input-output training data created by the IPSO, and thereafter generate starting weights for the neural network. Tests carried out show that the proposed adaptive SMES controller maintains the DC capacitor voltage constant, thus improving the efficiency of wind energy transfer. The power output (reactive and real) of the SMES device improves the voltage profile following large voltage dips and provides added damping to the system.
申请公布号 US8933572(B1) 申请公布日期 2015.01.13
申请号 US201314018314 申请日期 2013.09.04
申请人 King Fahd University of Petroleum and Minerals 发明人 Abdur-Rahim Abu Hamed;Khan Muhammad Haris
分类号 F03D9/00;H02P9/04;H02P9/00;F03D7/00 主分类号 F03D9/00
代理机构 代理人 Litman Richard C.
主权项 1. In a wind turbine electrical power generator system that includes a superconductive magnetic energy storage (SMES) device, a SMES controller, and a neural network executing on a processor connected to the SMES controller, an adaptive superconductive magnetic energy storage (SMES) control method, comprising the steps of: comparing a power generator reference power and voltage signal with a measured power and voltage signal from the electrical power generator system in order to generate a reference error signal based on any differences between the reference and the measured signals; transmitting the reference error signal to an input of the SMES controller; the SMES controller, responsive to the reference error signal, commanding the SMES device to change its real power contribution, ΔPSM, and its reactive power contribution, ΔQSM, to the power generator system; sending signals from the neural network to the SMES controller to adaptively adjust gain and time constant controller parameters, Kpg, Kvg, Tpg, Tvg of the SMES controller, where Kpg is SMES controller gain (generator real power), Kvg is SMES controller gain (generator real voltage), Tpg is SMES controller time response (generator real power) and Tvg is SMES controller time response (generator real voltage); generating starting weights for the neural network; and adaptively and iteratively adjusting the neural network weights responsive to error signals generated from differences between output power of the power generator system and the power generator reference power.
地址 Dhahran SA