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A dynamic neural network for nonlinear process modeling and control.

机译:用于非线性过程建模和控制的动态神经网络。

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A novel approach, which uses intrinsically dynamic neurons inspired from biological control systems, is presented in this work for input/output modeling of nonlinear dynamical processes. The network structure containing these dynamic nodes, with nonlinear weights in a feedback architecture, is called the Recurrent Dynamic Neuron Network (RDNN).; For SISO applications the RDNN is shown to have arbitrary dynamic order {dollar}n le N{dollar} (where N is the number of neurons) and relative degree {dollar}r = 1{dollar}. CSTR case studies show that the RDNN does an excellent job of predicting nonlinearities such as asymmetric dynamic response and significantly outperforms linear models and more traditional neural network models in open-loop simulations. Input-output linearization (IOL) techniques are used to globally linearize the RDNN for use within the internal model control (IMC) framework. Closed-loop simulations with these CSTR examples show that the RDNN performs robustly when used within this control framework.; For MIMO applications the RDNN is shown to have arbitrary dynamic order {dollar}n le N{dollar}, vector relative degree {dollar}underbrace{lcub}(1cdots1){rcub}limitssb{lcub}1{lcub}times{rcub}M{rcub}{dollar} (where M is the number of outputs), and is able to represent systems with input multiplicities. A binary distillation column case study demonstrates that the RDNN performs well in both open- and closed-loop simulations. For this 2 x 2 MIMO application, open-loop simulations show that the RDNN predicts the asymmetric nonlinear output responses. The RDNN is shown to be easily implemented in MIMO model-based control applications including model predictive control (MPC) and IOL/IMC. Simulations show that a combination of closed-loop and open-loop identification for the RDNN model results in a model-based controller which achieves robust control performance. Linearized optimal control and nonlinear optimal control MPC applications are implemented, with both performing comparably.; Finally, the RDNN is used to model and control the reactor/regenerator section of the Amoco model IV FCCU. For this 4 x 4 control problem, the RDNN model performed well in both open- and closed-loop simulations. For closed-loop simulations the linearized optimal MPC approach is implemented. The performance is excellent for both disturbance rejection and setpoint tracking simulations.
机译:在这项工作中提出了一种新颖的方法,该方法使用了从生物控制系统中激发出来的内在动态神经元,用于非线性动力学过程的输入/输出建模。包含这些动态节点的网络结构在反馈体系结构中具有非线性权重,称为递归动态神经元网络(RDNN)。对于SISO应用,显示RDNN具有任意动态阶数(n是神经元数)和相对度{r} = 1 {dollar}。 CSTR案例研究表明,RDNN在预测非线性(如不对称动态响应)方面表现出色,并且在开环仿真中明显优于线性模型和更传统的神经网络模型。输入输出线性化(IOL)技术用于全局线性化RDNN,以在内部模型控制(IMC)框架内使用。用这些CSTR示例进行的闭环仿真表明,当在此控制框架内使用RDNN时,其性能稳定。对于MIMO应用,RDNN显示为具有任意动态阶次{dollar} n le N {dollar},向量相对度{dollar} underbrace {lcub}(1cdots1){rcub} limitssb {lcub} 1 {lcub} times {rcub} M {rcub} {dollar}(其中M是输出数),并且能够表示具有输入多重性的系统。二元精馏塔案例研究表明,RDNN在开环和闭环模拟中均表现良好。对于此2 x 2 MIMO应用,开环仿真表明RDNN可以预测非对称非线性输出响应。 RDNN被证明可以轻松地在基于MIMO模型的控制应用中实现,包括模型预测控制(MPC)和IOL / IMC。仿真表明,对于RDNN模型,闭环和开环识别的组合产生了基于模型的控制器,该控制器实现了鲁棒的控制性能。实现了线性化的最优控制和非线性的最优控制MPC应用程序,两者性能相当。最后,RDNN用于对Amoco IV型FCCU的反应器/再生器部分进行建模和控制。对于此4 x 4控制问题,RDNN模型在开环和闭环仿真中均表现良好。对于闭环仿真,实现了线性化的最佳MPC方法。该性能对于干扰抑制和设定点跟踪仿真均非常出色。

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