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Explicit nonlinear predictive control algorithms for Laguerre filter and sparse least square support vector machine-based Wiener model

机译:LAGUERRE滤波器和稀疏最小二乘支持向量机的Wiener模型的显式非线性预测控制算法

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In this paper, three computationally proficient model predictive control (MPC) algorithms for least square support vector machine (LSSVM)-based Wiener model are described. A Wiener model with Laguerre filter as dynamic linear part and LSSVM approximator as nonlinear static part is considered. Even though having excellent approximation abilities, LSSVM suffers from lack of sparseness. A pruning algorithm for LSSVM model is proposed and its comparison is made with classical pruning algorithm. The proposed pruning algorithm is able to remove 99% of support vectors with no remarkable drop in modelling accuracy. Using pruned Wiener model, three computationally efficient MPC algorithms are described. In the first algorithm, linearization of Wiener model is performed at every sampling interval and therefore control vector is determined by carrying out a quadratic optimization task. In the second algorithm, control signal is determined by an explicit control law and parameters of this control law are computed by performing lower-upper (LU) factorization of a matrix and solving linear equations without any online optimization. In the third algorithm, the parameters of explicit control law are calculated directly by another LSSVM approximator, which is trained offline. The advantages and effectiveness of proposed methods are demonstrated on the benchmark pH neutralization reactor. The control performance and computational efficiency of proposed algorithms are compared with computationally complex nonlinear MPC, which repeats a nonlinear optimization task at every sampling interval. The impact of pruning on model accuracy, computational efficiency and control accuracy is also discussed.
机译:本文描述了基于最小二乘支持向量机(LSSVM)的维纳模型的三种计算熟练的模型预测控制(MPC)算法。考虑了一种以拉盖尔滤波器作为动态线性部分,以最小二乘支持向量机逼近器作为非线性静态部分的维纳模型。尽管LSSVM具有很好的逼近能力,但它缺乏稀疏性。提出了一种LSSVM模型的剪枝算法,并与经典的剪枝算法进行了比较。提出的剪枝算法能够去除99%的支持向量,而建模精度没有显著下降。使用剪枝维纳模型,描述了三种计算效率高的MPC算法。在第一种算法中,在每个采样间隔对维纳模型进行线性化,因此通过执行二次优化任务来确定控制向量。在第二种算法中,控制信号由显式控制律确定,该控制律的参数通过对矩阵进行上下(LU)分解和求解线性方程组来计算,而无需任何在线优化。在第三种算法中,显式控制律的参数由另一个离线训练的LSSVM逼近器直接计算。在基准pH中和反应器上验证了所提出方法的优点和有效性。将所提算法的控制性能和计算效率与计算复杂的非线性MPC进行了比较,MPC在每个采样间隔重复一个非线性优化任务。文中还讨论了剪枝对模型精度、计算效率和控制精度的影响。

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