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A novel real-time non-linear wavelet-based model predictive controller for a coupled tank system

机译:一种新颖的基于非线性小波的耦合坦克系统模型预测控制器

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This article presents the design, simulation and real-time implementation of a constrained non-linear model predictive controller for a coupled tank system. A novel wavelet-based function neural network model and a genetic algorithm online non-linear real-time optimisation approach were used in the non-linear model predictive controller strategy. A coupled tank system, which resembles operations in many chemical processes, is complex and has inherent non-linearity, and hence, controlling such system is a challenging task. Particularly important is low-level control where often instability and oscillatory responses are observed. This article designs a wavelet neural network with high predicting precision and time-frequency localisation characteristics for an online prediction model in the non-linear model predictive controller to show the effectiveness of this approach in controlling the liquid at low level. To speed up the training process, a fast global search stochastic non-linear conjugate wavelet gradient algorithm is initially used to train the wavelet neural network structure before the genetic algorithm optimisation technique is utilised to tune adaptively the wavelet neural network parameters. The non-linear model predictive controller algorithm is tested for both approaches: first, in a simulation using identified models, and second, in a real-time practical application to a single-input single-output system coupled tank system. The results show an excellent control performance with respect to mean square error and average control energy values obtained.
机译:本文介绍了耦合坦克系统的约束非线性模型预测控制器的设计,仿真和实时实现。在非线性模型预测控制策略中,采用了基于小波的函数神经网络模型和遗传算法在线非线性实时优化方法。类似于许多化学过程中的操作的耦合罐系统复杂且具有固有的非线性,因此,控制这种系统是一项艰巨的任务。尤其重要的是低电平控制,经常观察到不稳定和振荡响应。本文针对非线性模型预测控制器中的在线预测模型设计了一种具有高预测精度和时频定位特性的小波神经网络,以证明该方法在控制低液位方面的有效性。为了加快训练过程,在使用遗传算法优化技术自适应地调整小波神经网络参数之前,首先使用快速全局搜索随机非线性共轭小波梯度算法训练小波神经网络结构。针对这两种方法对非线性模型预测控制器算法进行了测试:首先,在使用已识别模型的仿真中,其次,在对单输入单输出系统耦合坦克系统的实时实际应用中。结果表明,在均方误差和平均控制能量值方面,控制性能极佳。

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