基于云的液压装置鲁棒进化控制器

P. Angelov, I. Škrjanc, S. Blažič
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引用次数: 48

摘要

本文介绍了一种新的基于云的在线自进化控制器(RECCo)。这种类型的控制器有一个无参数的前提(IF)部分。提出了两种类型的结果-本地有效的pid类型控制器和本地有效的mrc类型控制器。提出了相应的自适应律,实现了后续部分参数的自主调谐。该RECCo控制器在对被控对象进行控制的同时,从自己的行为中自主学习。它不使用任何离线预训练,也不使用植物的显式模型(例如以微分方程的形式)。已经证明,完全自主和无监督的方式(仅基于数据密度并从作为数据空间的控制超表面选择代表性原型/焦点)可以生成和自调整/学习非线性控制器结构并在在线模式下发展。在一个模拟水工装置上对该算法进行了验证。给出了一个例子,主要是为了证明所提出的概念。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Robust evolving cloud-based controller for a hydraulic plant
In this paper a novel online self-evolving cloud-based controller (RECCo) is introduced. This type of controller has a parameter-free antecedent (IF) part. Two types of consequents are proposed - a locally valid PID-type controller and a locally valid MRC-type one. Corresponding adaptive laws are proposed to tune the parameters in consequent part autonomously. This RECCo controller learns autonomously from its own actions while performing the control of the plant. It does not use any off-line pre-training nor the explicit model (e.g. in a form of differential equations) of the plant. It has been demonstrated that a fully autonomously and in an unsupervised manner (based only on the data density and selecting representative prototypes/focal points from the control hyper-surface acting as a data space) it is possible to generate and self-tune/learn a non-linear controller structure and evolve it in on-line mode. The proposed algorithm is tested on a simulated hydraulic plant. The example is provided aiming mainly to prove the proposed concept.
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