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首页> 外文期刊>Automatica >Bilateral telerobotic system using Type-2 fuzzy neural network based moving horizon estimation force observer for enhancement of environmental force compliance and human perception
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Bilateral telerobotic system using Type-2 fuzzy neural network based moving horizon estimation force observer for enhancement of environmental force compliance and human perception

机译:双侧托管系统使用基于2型模糊神经网络的移动地平线估计力观察者,用于增强环境力依从性和人类感知

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摘要

This paper firstly develops a novel force observer using Type-2 Fuzzy Neural Network (T2FNN)-based Moving Horizon Estimation (MHE) to estimate external force/torque information and simultaneously filter out the system disturbances. Then, by using the proposed force observer, a new bilateral teleoperation system is proposed that allows the slave industrial robot to be more compliant to the environment and enhances the situational awareness of the human operator by providing multi-level force feedback. Compared with existing force observer algorithms that highly rely on knowing exact mathematical models, the proposed force estimation strategy can derive more accurate external force/torque information of the robots with complex mechanism and with unknown dynamics. Applying the estimated force information, an external-force-regulated Sliding Mode Control (SMC) strategy with the support of machine vision is proposed to enhance the adaptability of the slave robot and the perception of the operator about various scenarios by virtue of the detected location of the task object. The proposed control system is validated by the experiment platform consisting of a universal robot (UR10), a haptic device and an RGB-D sensor. (C) 2019 Elsevier Ltd. All rights reserved.
机译:本文首先使用Type-2模糊神经网络(T2FNN)的移动地平线估计(MHE)开发了一种新的力量观测器来估计外力/扭矩信息并同时过滤滤除系统干扰。然后,通过使用所提出的力量观察器,提出了一种新的双侧遥操作系统,使得奴隶工业机器人更符合环境,并通过提供多级力反馈来增强人类运营商的情境意识。与现有力观察者算法相比,高度依赖于了解确切的数学模型,所提出的力估计策略可以获得具有复杂机制的机器人的更准确的外力/扭矩信息,并且具有未知的动态。应用估计的力信息,具有支持机器视觉的外部力调节的滑动模式控制(SMC)策略,以提高从机器人的适应性和通过检测到的位置对各种场景对操作者的感知任务对象。所提出的控制系统由由通用机器人(UR10),触觉设备和RGB-D传感器组成的实验平台进行验证。 (c)2019年elestvier有限公司保留所有权利。

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