基于特征结构分配线性二次型调节器设计的状态空间控制器的神经遗传综合。

João Viana da Fonseca Neto, Ivanildo Silva Abreu, Fábio Nogueira da Silva
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引用次数: 34

摘要

针对状态空间控制器的综合问题,提出了一种基于线性二次型调节器设计的多变量动态系统特征结构分配神经遗传模型。神经遗传模型是遗传算法和递归神经网络(RNN)的融合,分别用于加权矩阵的选择和代数Riccati方程解的选择。采用四阶电路模型来评估计算智能范式的收敛性和控制设计方法的性能。遗传搜索收敛性评价是根据适应度函数统计和RNN收敛性进行的,RNN收敛性评价是通过能量和范数的景观作为参数偏差的函数进行的。通过脉冲响应、奇异值和模态分析,在时域和频域评估了控制问题的解决方案。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Neural-genetic synthesis for state-space controllers based on linear quadratic regulator design for eigenstructure assignment.

Toward the synthesis of state-space controllers, a neural-genetic model based on the linear quadratic regulator design for the eigenstructure assignment of multivariable dynamic systems is presented. The neural-genetic model represents a fusion of a genetic algorithm and a recurrent neural network (RNN) to perform the selection of the weighting matrices and the algebraic Riccati equation solution, respectively. A fourth-order electric circuit model is used to evaluate the convergence of the computational intelligence paradigms and the control design method performance. The genetic search convergence evaluation is performed in terms of the fitness function statistics and the RNN convergence, which is evaluated by landscapes of the energy and norm, as a function of the parameter deviations. The control problem solution is evaluated in the time and frequency domains by the impulse response, singular values, and modal analysis.

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