Conceptual Development of an Autonomous Underwater Robot Design for Monitoring and Harvesting Invasive Weeds

D. Modungwa, F. Mekuria, Mzuziwezulu Kekana
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引用次数: 2

Abstract

The design of a biomimicry autonomous underwater robot for monitoring and harvesting invasive weeds in lakes is presented in this paper. The systematic design of the robot focuses on integrating 5G-AI-IoT as effective technological tools to autonomously monitor and harvest invasive weeds in order to replace traditional weed control approaches. The robustness and versatility of the robotic platform to structural topology and autonomous navigation that uses convolutional neural network methods and unsupervised learning techniques will be demonstrated. The robotic concept design will investigate real time sensing, mapping and visualization of the invasive weeds. The system based on real-time mapping information obtained from the swarm of drones will also manage the control of the underwater robots equipped with smart networked sensors using State of the Art IoT technologies. The mechanical dislodging machine will be guided to the mapped areas and accurately controlled and guided through smart sensors via the 5G Ultra-reliable Low-Latency Communication Control (URLLC) and tactile control system to dislodge the invasive weed with no impact on other organisms and the biodiversity of the lake.
自主水下杂草监测与收获机器人的概念发展
介绍了一种用于湖泊入侵杂草监测和采集的仿生自主水下机器人的设计。机器人的系统设计侧重于整合5G-AI-IoT作为有效的技术工具,自主监测和收获入侵杂草,以取代传统的杂草控制方法。将展示机器人平台对结构拓扑和自主导航的鲁棒性和多功能性,该平台使用卷积神经网络方法和无监督学习技术。机器人概念设计将研究入侵杂草的实时传感、制图和可视化。该系统基于从无人机群中获得的实时地图信息,还将使用最先进的物联网技术管理配备智能网络传感器的水下机器人的控制。通过5G超可靠低延迟通信控制(URLLC)和触觉控制系统,将机械移出机引导到地图区域,通过智能传感器进行精确控制和引导,在不影响其他生物和湖泊生物多样性的情况下移出入侵杂草。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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