机器学习和机器人技术与水下机器人的集成应用。

IF 0.8 4区 计算机科学 Q4 AUTOMATION & CONTROL SYSTEMS International Journal of Robotics & Automation Pub Date : 2020-06-09 DOI:10.37628/ijra.v6i2.1120
Akshay Krishnan, K. Parvathy, Venkatesh Donekal
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引用次数: 0

摘要

在地面机器人和飞行无人机的现代时代,自主水下航行器(auv)的重要性不容忽视。通过将定制的传感器包系在远程操作车辆或机载上,AUV能够进行测试、监视、识别和监测水下环境。机器学习(ML)和深度学习以及大量算法已经产生了动态和实时的前沿结果,可以准确地表示水下环境。首先,本文将介绍控制体系结构的理论选择,这些结构决定了AUV的自主程度,然后是特定应用的要求。我们还将触及auv和机器人的效用,以实现水下人类居住的可能性,作为解决日益稀缺的土地的替代方案。它还对海军部门产生了巨大影响,特别是沿海巡逻和保护领海不受不法活动的影响。从研究人员和科学家的研究工作中得出的关于auv和机器人技术的各种问题也被讨论了,这些问题是跨应用的一个刺激。尽管如此,具有特定应用和突破性算法的ML已经提供了巨大的处理能力。因此,本文旨在研究auv如何以更高的效率和更短的时间实现水下地形测绘、矿产勘探、灾害管理、濒危珊瑚礁保护和修复,从而成为该领域进一步研究的基石参考。
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ML & Robotics Integrated with AUVs for Sub-Aquatic Applications.
In the modern era of ground robots and flying Drones, the importance of Autonomous Underwater Vehicles (AUVs) cannot go remiss. Through customized sensor package either tethered to a Remote Operated Vehicle or onboard, an AUV is able to conduct tests, surveil, identify and monitor the underwater environment. Machine Learning (ML) and Deep learning with a vast array of algorithms have led to cutting edge results both dynamic and in real-time to accurately represent the underwater environment. To begin with, this paper will present the theoretical choices available for the control architecture which dictates the extent of autonomy of an AUV, followed by application-specific requirements. We will also touch upon the utility of AUVs and robotics for possibilities of underwater human habitation as an alternative to address the increasing scarcity of land. It has also had a tremendous impact in the naval sector, particularly coastal patrolling and safeguarding territorial waters from nefarious activities. The various issues concerning AUVs and robotics, drawn from the research work of researchers and scientists, that are an irritant across applications are also discussed. Notwithstanding, ML with its application-specific and groundbreaking algorithms has given enormous processing power. Therefore, this paper purports to examine how AUVs have made underwater terrain mapping, mineral exploration, disaster management, conservation and restoration of endangered coral reefs possible with increased efficacy and reduced time, thereby becoming the cornerstone reference for further research in this field.
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来源期刊
CiteScore
1.20
自引率
44.40%
发文量
71
审稿时长
8 months
期刊介绍: First published in 1986, the International Journal of Robotics and Automation was one of the inaugural publications in the field of robotics. This journal covers contemporary developments in theory, design, and applications focused on all areas of robotics and automation systems, including new methods of machine learning, pattern recognition, biologically inspired evolutionary algorithms, fuzzy and neural networks in robotics and automation systems, computer vision, autonomous robots, human-robot interaction, microrobotics, medical robotics, mobile robots, biomechantronic systems, autonomous design of robotic systems, sensors, communication, and signal processing.
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