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一种基于神经网络和参数优化的隐式广义预测控制
引用本文:高琳,孙海蓉,杨怀申.一种基于神经网络和参数优化的隐式广义预测控制[J].华北电力大学学报,2009,36(5).
作者姓名:高琳  孙海蓉  杨怀申
作者单位:华北电力大学控制科学与工程学院,河北,保定,071003
摘    要:提出一种基于神经网络和参数优化的预测控制方法。首先利用带有动量项的改进BP神经网络辨识系统模型,在辨识过程中使用粒子群算法(PSO)对改进BP网络的初始权值/偏置、学习率、动量系数等辨识参数进行学习优化,解决这些参数的取值问题;然后将辨识得到的模型用于隐式广义预测自校正控制中,使用遗传算法(GA)对控制过程进行优化,寻找最优的控制参数(预测时域、控制时域、控制加权系数、柔化系数)。将该方法应用在热工系统中,仿真结果表明了方法的有效性。

关 键 词:改进BP网络  隐式广义预测自校正控制  粒子群算法  遗传算法  参数优化

A kind of implicit generalized predictive control based on neural network and parameter optimization
Abstract:A kind of predictive control based on neural network(NN) and parameter optimization is put forward in this paper.Firstly,system model is identified by using improved BP NN with momentum coefficient.Particle swarm optimization (PSO) algorithm is used to optimize the parameters of NN weighting initial value and offset initial value,speed of learning and momentum coefficient in identification process of improved BP NN,solving the problem that it's difficult to determine the value of them.Subsequently,NN model optimized by PSO is used in implicit self-correcting generalized predictive control process.Genetic algorithm(GA) is used to optimize predictive control process and to find the optimal control parameters(predictive length,control length,control weight number and soft coefficient).The application in thermal process shows the method is effective.
Keywords:improved BP neural network  implicit self-correcting generalized predictive control  particle swarm optimization algorithm  genetic algorithm  parameter optimization
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