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首页> 外文期刊>Proceedings of the Institution of Mechanical Engineers >Intelligent computationally efficient modelling of multi-input multi-output non-linear dynamical process plants: An industrial steam generator case study
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Intelligent computationally efficient modelling of multi-input multi-output non-linear dynamical process plants: An industrial steam generator case study

机译:多输入多输出非线性动力过程工厂的智能计算高效建模:工业蒸汽发生器案例研究

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摘要

Most of the process plants have intrinsic non-linear, time-varying, non-minimum phase and coupling characteristics that result in a highly time-consuming and tedious task to derive complicated non-linear dynamic equations governing on such types of processes. On the other hand, even though such equations can be analytically extracted, they have not worked out in most cases yet. To find a simple fix that can address these hurdles associated with analytical modelling, two types of non-analytical models, namely, simulator and predictor, are proposed based on a computationally efficient technique so-called locally linear neuro-fuzzy modelling. That is, a simulator model as well as a specially structured long-term predictor model that is built based on a sequential arrangement of single-stage predictor models is presented for multi-input multi-output non-linear dynamical process plants and feasibly applied to a real water-tube steam generator for the first time. An adaptive evolving algorithm named linear model tree contributes to estimate the parameters of neuro-fuzzy simulator and predictor models. Furthermore, an order selection method based on Lipschitz theory, whose merit is being totally independent from developing any model prior to commencing tedious modelling trials, is also proposed for the first time by defining a modified Lipschitz index to remedy the order determination problem within the very first steps of black-box non-linear system identification. The blend of such a fully modelling-independent order selection algorithm and a unique type of computationally inexpensive non-linear neuro-fuzzy model lessens the overall computational burden of modelling procedure that represents a great concern in a black-box system identification approach. The recorded data from a real water-tube steam generator operating at Abbot Power plant unit of Champaign, IL, were exploited to carry out experimental modelling in order to reveal the pros and cons of the presented models.
机译:大多数过程工厂都具有固有的非线性,时变,非最小相位和耦合特性,从而导致耗时且繁琐的任务来推导控制此类过程的复杂非线性动力学方程。另一方面,即使可以解析地提取这样的方程式,但在大多数情况下它们尚未解决。为了找到可以解决与分析建模相关的这些障碍的简单解决方法,基于一种称为局部线性神经模糊建模的高效计算技术,提出了两种类型的非分析模型,即模拟器和预测器。即,针对多输入多输出非线性动态过程工厂,提出了一种仿真器模型以及一种基于单阶段预测器模型的顺序排列构建的特殊结构的长期预测器模型,并将其应用于真正的水管蒸汽发生器。一种名为线性模型树的自适应进化算法有助于估计神经模糊仿真器和预测器模型的参数。此外,还首次提出了一种基于Lipschitz理论的订单选择方法,该方法的优点是完全不依赖于在进行冗长的建模试验之前开发任何模型,其方法是通过定义修改后的Lipschitz指数来解决订单确定问题。黑匣子非线性系统识别的第一步。这种完全独立于建模的顺序选择算法与独特类型的计算便宜的非线性神经模糊模型的混合,减轻了建模过程的总体计算负担,这代表了黑匣子系统识别方法中的重大问题。利用在伊利诺伊州尚佩恩的Abbot电厂装置中运行的真实水管式蒸汽发生器的记录数据进行了实验建模,以揭示所提出模型的优缺点。

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