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Nonlinear model identification and adaptive model predictive control using neural networks

机译:基于神经网络的非线性模型辨识和自适应模型预测控制

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摘要

This paper presents two new adaptive model predictive control algorithms, both consisting of an on-line process identification part and a predictive control part. Both parts are executed at each sampling instant. The predictive control part of the first algorithm is the Nonlinear Model Predictive Control strategy and the control part of the second algorithm is the Generalized Predictive Control strategy. In the identification parts of both algorithms the process model is approximated by a series-parallel neural network structure which is trained by a recursive least squares (ARLS) method. The two control algorithms have been applied to: 1) the temperature control of a fluidized bed furnace reactor (FBFR) of a pilot plant and 2) the autopilot control of an F-16 aircraft. The training and validation data of the neural network are obtained from the open-loop simulation of the FBFR and the nonlinear F-16 aircraft models. The identification and control simulation results show that the first algorithm outperforms the second one at the expense of extra computation time.
机译:本文提出了两种新的自适应模型预测控制算法,均由在线过程识别部分和预测控制部分组成。这两部分都在每个采样时刻执行。第一种算法的预测控制部分是非线性模型预测控制策略,第二种算法的控制部分是广义预测控制策略。在这两种算法的识别部分中,过程模型都是通过递归最小二乘(ARLS)方法训练的串并联神经网络结构来近似的。这两种控制算法已应用于:1)中试工厂的流化床炉反应器(FBFR)的温度控制,以及2)F-16飞机的自动驾驶仪控制。神经网络的训练和验证数据是从FBFR和非线性F-16飞机模型的开环仿真获得的。识别和控制仿真结果表明,第一种算法优于第二种算法,但要花费额外的计算时间。

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