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Algebraic and adaptive learning in neural control systems.

机译:神经控制系统中的代数和自适应学习。

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摘要

A systematic approach is developed for designing adaptive and reconfigurable nonlinear control systems that are applicable to plants modeled by ordinary differential equations. The nonlinear controller comprising a network of neural networks is taught using a two-phase learning procedure realized through novel techniques for initialization, on-line training, and adaptive critic design. A critical observation is that the gradients of the functions defined by the neural networks must equal corresponding linear gain matrices at chosen operating points. On-line training is based on a dual heuristic adaptive critic architecture that improves control for large, coupled motions by accounting for actual plant dynamics and nonlinear effects. An action network computes the optimal control law; a critic network predicts the derivative of the cost-to-go with respect to the state. Both networks are algebraically initialized based on prior knowledge of satisfactory pointwise linear controllers and continue to adapt on line during full-scale simulations of the plant.; On-line training takes place sequentially over discrete periods of time and involves several numerical procedures. A backpropagating algorithm called Resilient Backpropagation is modified and successfully implemented to meet these objectives, without excessive computational expense. This adaptive controller is as conservative as the linear designs and as effective as a global nonlinear controller. The method is successfully implemented for the full-envelope control of a six-degree-of-freedom aircraft simulation. The results show that the on-line adaptation brings about improved performance with respect to the initialization phase during aircraft maneuvers that involve large-angle and coupled dynamics, and parameter variations.
机译:开发了一种用于设计自适应和可重构非线性控制系统的系统方法,该系统适用于用常微分方程建模的工厂。包含神经网络网络的非线性控制器使用两阶段学习程序进行教学,该过程通过新颖的技术实现,用于初始化,在线训练和自适应批评家设计。一个关键的观察是,由神经网络定义的函数的梯度必须等于在选定的工作点处相应的线性增益矩阵。在线培训基于双重启发式自适应批评家体系结构,该体系结构通过考虑实际的植物动力学和非线性效应来改善对大型耦合运动的控制。行动网络计算最佳控制律;评论家网络预测了该州的去向成本的派生。这两个网络都是基于令人满意的逐点线性控制器的先验知识进行代数初始化的,并在工厂的全面模拟过程中继续在线适应。在线培训在不连续的时间段内顺序进行,并涉及几种数值程序。改进了一种称为弹性反向传播的反向传播算法,并成功实现了这些目标,而没有过多的计算开销。这种自适应控制器与线性设计一样保守,与全局非线性控制器一样有效。该方法已成功实现,用于六自由度飞机仿真的全包络控制。结果表明,在涉及大角度和耦合动力学以及参数变化的飞机操纵过程中,在线自适应在初始化阶段方面带来了改进的性能。

著录项

  • 作者

    Ferrari, Silvia.;

  • 作者单位

    Princeton University.;

  • 授予单位 Princeton University.;
  • 学科 Engineering Aerospace.
  • 学位 Ph.D.
  • 年度 2002
  • 页码 232 p.
  • 总页数 232
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类 航空、航天技术的研究与探索;
  • 关键词

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