基于机器学习的机器人自动控制故障检测与状态估计

IF 2.3 Q2 COMPUTER SCIENCE, THEORY & METHODS Array Pub Date : 2023-09-01 DOI:10.1016/j.array.2023.100298
Rajesh Natarajan , Santosh Reddy P , Subash Chandra Bose , H.L. Gururaj , Francesco Flammini , Shanmugapriya Velmurugan
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引用次数: 3

摘要

在商业和工业部门,自动机器人控制机制,包括机器人,末端执行器和锚包含组件,经常被用来提高服务质量。机器人系统必须安装在各种工业用途的生产线上,这也增加了机器人、终端控制器和/或设备故障的风险。根据其自动调节,这可能会伤害工作场所的人员和其他物品,并导致质量下降。在当今先进的系统和技术下,安全和稳定至关重要。因此,系统配备了故障管理能力,用于识别开发中的缺陷,并在即将使用故障诊断方法时评估其对系统活动的影响。为了为机器人自动化系统提供自适应控制、故障检测和状态估计,以便在复杂环境中可靠地运行,本研究描述了有效的技术。提出了一种基于加速梯度下降的支持向量机(AGDSVM)和高斯滤波(GF)的自动控制系统故障检测和状态估计方法。该系统被称为(AGDSVM + GF)。系统的评估指标包括准确率、故障检测率、状态估计率、计算时间、错误率和能耗。结果表明,该系统能有效地进行故障检测和状态估计,并提供智能控制和自动控制。
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Fault detection and state estimation in robotic automatic control using machine learning

In the commercial and industrial sectors, automatic robotic control mechanisms, which include robots, end effectors, and anchors containing components, are often utilized to enhance service quality. Robotic systems must be installed in manufacturing lines for a variety of industrial purposes, which also increases the risk of a robot, end controller, and/or device malfunction. According to its automated regulation, this may hurt people and other items in the workplace in addition to resulting in a reduction in quality operation. With today's advanced systems and technology, security and stability are crucial. Hence, the system is equipped with fault management abilities for the identification of developing defects and assessment of their influence on the system's activity in the upcoming utilizing fault diagnostic methodologies. To provide adaptive control, fault detection, and state estimation for robotic automated systems intended to function dependably in complicated contexts, efficient techniques are described in this study. This paper proposed a fault detection and state estimation using Accelerated Gradient Descent based support vector machine (AGDSVM) and gaussian filter (GF) in automatic control systems. The Proposed system is called (AGDSVM + GF). The proposed system is evaluated with the following metrics accuracy, fault detection rate, state estimation rate, computation time, error rate, and energy consumption. The result shows that the proposed system is effective in fault detection and state estimation and provides intelligent control automatic control.

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来源期刊
Array
Array Computer Science-General Computer Science
CiteScore
4.40
自引率
0.00%
发文量
93
审稿时长
45 days
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