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Nonlinear Hammerstein Model Identification of SOFC using Improved GEO Algorithm

机译:基于改进GEO算法的SOFC非线性Hammerstein模型辨识。

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Solid oxide fuel cell (SOFC) is a nonlinear, multi-input and multi-output system that is hard to model by traditional methodologies. For the purpose of dynamic simulation and control, this paper reports a Hammerstein model identification of the SOFC using improved generalized extremal optimization (GEO) algorithm. During the identification, the static nonlinearity of the Hammerstein model is modeled by a two-layer radial basis function neural network (RBFNN) and the linear part is modeled by an autoregressive with exogenous input (ARX) model. GEO is a global search meta-heuristic, as the Genetic Algorithm (GA) and the simulated annealing (SA), but with the a priori advantage of having only one free parameter to adjust. In this article the improved GEO algorithm is adopted to optimize the hidden centers, the radial basis function widths and the weights of the RBFNN, and the structure of the ARX model at the same time. After the ARX model structure is determined, the least squares (LS) algorithm is used to estimate the parameters of the ARX model. Simulation results have illustrated the applicability of the proposed Hammerstein model in modeling the nonlinear dynamic properties of the SOFC. At the same time, the simulation result comparisons between the Hammerstein model and RBFNN model demonstrate that the Hammerstein model is superior to the RBFNN in predicting the nonlinear dynamic properties of the output voltage for the SOFC. Furthermore, based on this Hammerstein model, valid control strategy studies such as predictive control, robust control can be developed.
机译:固体氧化物燃料电池(SOFC)是非线性,多输入多输出系统,很难用传统方法进行建模。出于动态仿真和控制的目的,本文报告了使用改进的广义极值优化(GEO)算法对SOFC进行Hammerstein模型识别。在识别过程中,通过两层径向基函数神经网络(RBFNN)对Hammerstein模型的静态非线性进行建模,而通过外源输入的自回归(ARX)模型对线性部分进行建模。 GEO是一种全局搜索元启发式算法,与遗传算法(GA)和模拟退火(SA)一样,但具有先验优势,即只需调整一个自由参数即可。本文采用改进的GEO算法对隐藏中心,径向基函数宽度和RBFNN的权重以及ARX模型的结构进行优化。确定ARX模型结构后,使用最小二乘(LS)算法估计ARX模型的参数。仿真结果说明了提出的Hammerstein模型在对SOFC的非线性动力学特性进行建模中的适用性。同时,Hammerstein模型与RBFNN模型之间的仿真结果比较表明,在预测SOFC输出电压的非线性动态特性方面,Hammerstein模型优于RBFNN。此外,基于此Hammerstein模型,可以开发有效的控制策略研究,例如预测控制,鲁棒控制。

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