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A Biologically Inspired Framework for the Intelligent Control of Mechatronic Systems and Its Application to a Micro Diving Agent

机译:机电系统智能控制的生物学启发框架及其在微型潜水员中的应用

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摘要

Mechatronic systems are becoming an intrinsic part of our daily life, and the adopted control approach in turn plays an essential role in the emulation of the intelligent behavior. In this paper, a framework for the development of intelligent controllers is proposed. We highlight that robustness, prediction, adaptation, and learning, which may be considered the most fundamental traits of all intelligent biological systems, should be taken into account within the project of the control scheme. Hence, the proposed framework is based on the fusion of a nonlinear control scheme with computational intelligence and also allows mechatronic systems to be able to make reasonable predictions about its dynamic behavior, adapt itself to changes in the plant, learn by interacting with the environment, and be robust to both structured and unstructured uncertainties. In order to illustrate the implementation of the control law within the proposed framework, a new intelligent depth controller is designed for a microdiving agent. On this basis, sliding mode control is combined with an adaptive neural network to provide the basic intelligent features. Online learning by minimizing a composite error signal, instead of supervised off-line training, is adopted to update the weight vector of the neural network. The boundedness and convergence properties of all closed-loop signals are proved using a Lyapunov-like stability analysis. Numerical simulations and experimental results obtained with the microdiving agent demonstrate the efficacy of the proposed approach and its suitableness for both stabilization and trajectory tracking problems.
机译:机电一体化系统已成为我们日常生活中不可或缺的一部分,而采用的控制方法又在模拟智能行为中起着至关重要的作用。本文提出了一种智能控制器的开发框架。我们强调指出,在控制方案的项目中应考虑健壮性,预测性,适应性和学习性,它们可以被视为所有智能生物系统的最基本特征。因此,提出的框架基于非线性控制方案与计算智能的融合,并且还使机电系统能够对其动态行为做出合理的预测,使其适应植物的变化,并通过与环境的交互进行学习,并应对结构化和非结构化不确定性。为了说明所提出的框架内控制律的实现,针对微潜水剂设计了一种新型的智能深度控制器。在此基础上,将滑模控制与自适应神经网络相结合以提供基本的智能功能。通过最小化复合误差信号的在线学习,而不是有监督的离线训练,来更新神经网络的权向量。使用类Lyapunov稳定性分析证明了所有闭环信号的有界性和收敛性。用微潜水剂获得的数值模拟和实验结果证明了该方法的有效性及其适用于稳定和轨迹跟踪问题。

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  • 来源
    《Mathematical Problems in Engineering》 |2018年第17期|9648126.1-9648126.16|共16页
  • 作者单位

    Univ Fed Rio Grande do Norte, RoboTeAM, Robot & Machine Learning, Natal, RN, Brazil;

    Hamburg Univ Technol, Inst Mech & Ocean Engn, Hamburg, Germany;

    Hamburg Univ Technol, Inst Mech & Ocean Engn, Hamburg, Germany;

    Hamburg Univ Technol, Inst Mech & Ocean Engn, Hamburg, Germany;

    Siemens Corp Technol, 1936 Univ Ave, Berkeley, CA 94704 USA;

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