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A practical implementation of Robust Evolving Cloud-based Controller with normalized data space for heat-exchanger plant

机译:带有标准化数据空间的热交换器工厂鲁棒演进云控制器的实际实现

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The RECCo control algorithm, presented in this article, is based on the fuzzy rule-based (FRB) system named ANYA which has non-parametric antecedent part. It starts with zero fuzzy rules (clouds) in the rule base and evolves its structure while performing the control of the plant. For the consequent part of RECCo PID-type controller is used and the parameters are adapted in an online manner. The RECCo does not require any off-line training or any type of model of the controlled process (e.g. differential equations). Moreover, in this article we propose a normalization of the cloud (data) space and an improved adaptation law of the controller. Due to the normalization some of the evolving parameters can be fixed while the new adaptation law improves the performance of the controller in the starting phase of the process control. To assess the performance of the RECCo algorithm, firstly a comparison study with classical PID controller was performed on a model of a plate heat-exchanger (PHE). Tuning the PID parameters was done using three different techniques (Ziegler-Nichols, Cohen-Coon and pole placement). Furthermore, a practical implementation of the RECCo controller for a real PHE plant is presented. The PHE system has nonlinear static characteristic and a time delay. Additionally, the real sensor's and actuator's limitations represent a serious problem from the control point of view. Besides this, the RECCo control algorithm autonomously learns and evolves the structure and adapts its parameters in an online unsupervised manner. (C) 2016 Elsevier B.V. All rights reserved.
机译:本文介绍的RECCo控制算法是基于名为ANYA的基于模糊规则(FRB)的系统,该系统具有非参数的先行部分。它从规则库中的零个模糊规则(云)开始,并在执行工厂控制时演化其结构。对于RECCo的后续部分,使用PID型控制器,并且以在线方式调整参数。 RECCo不需要任何离线培训或任何类型的受控过程模型(例如微分方程)。此外,在本文中,我们提出了云(数据)空间的规范化和控制器的改进适应律。由于标准化,一些不断发展的参数可以得到固定,而新的适应律则可以在过程控制的开始阶段提高控制器的性能。为了评估RECCo算法的性能,首先对板式热交换器(PHE)的模型与经典PID控制器进行了比较研究。使用三种不同的技术(Ziegler-Nichols,Cohen-Coon和极点放置)完成PID参数的调整。此外,还介绍了实际PHE设备的RECCo控制器的实际实现。 PHE系统具有非线性静态特性和时间延迟。另外,从控制的角度来看,实际传感器和执行器的局限性是一个严重的问题。除此之外,RECCo控制算法以在线无人监督的方式自主学习和发展结构并调整其参数。 (C)2016 Elsevier B.V.保留所有权利。

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