带神经网络补偿的极点配置广义最小方差自校正控制

GENERALIZED POLE PLACEMENT SELF-TUNING CONTROL WITH NEURAL NETWORK COMPENSATION

  • 摘要: 首先用一个常规线性模型对被控对象进行辨识,再对线性模型辨识的余差用一个神经网络进行补偿.线性模型和神经网络共同构成对象的辨识模型,并基于这一模型提出了一种显式极点配置广义最小方差自校正控制.该方法适用于非线性对象,且具有较高精度和较快的收敛速度,具有较强的鲁棒性.

     

    Abstract: The Controlled plant is identified using normal linear model, and then the deviation identified by linear model is compensated via a neural network. The identification model is composed of a linear model and a neural network. Based on this model, an explicit generalized pole placement self-tuning control algorithm with neural network compensation is proposed. This algorithm is suitable for nonlinear system, and has higher precision, faster convergent speed and stronger robustness.

     

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