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城市农耕机器人的设计与实现

Design and Implementation of an Urban Farming Robot.

作者信息

Moraitis Michail, Vaiopoulos Konstantinos, Balafoutis Athanasios T

机构信息

Institute of Bio-Economy & Agro-Technology, Centre of Research & Technology Hellas, Dimarchou Georgiadou 118, 38333 Volos, Greece.

出版信息

Micromachines (Basel). 2022 Feb 2;13(2):250. doi: 10.3390/mi13020250.

DOI:10.3390/mi13020250
PMID:35208374
原文链接:https://pmc.ncbi.nlm.nih.gov/articles/PMC8877115/
Abstract

Urban agriculture can be shortly defined as the growing of plants and/or the livestock husbandry in and around cities. Although it has been a common occupation for the urban population all along, recently there is a growing interest in it both from public bodies and researchers, as well as from ordinary citizens who want to engage in self-cultivation. The modern citizen, though, will hardly find the free time to grow his own vegetables as it is a process that requires, in addition to knowledge and disposition, consistency. Given the above considerations, the purpose of this work was to develop an economic robotic system for the automatic monitoring and management of an urban garden. The robotic system was designed and built entirely from scratch. It had to have suitable dimensions so that it could be placed in a balcony or a terrace, and be able to scout vegetables from planting to harvest and primarily conduct precision irrigation based on the growth stage of each plant. Fertigation and weed control will also follow. For its development, a number of technologies were combined, such as Cartesian robots' motion, machine vision, deep learning for the identification and detection of plants, irrigation dosage and scheduling based on plants' growth stage, and cloud storage. The complete process of software and hardware development to a robust robotic platform is described in detail in the respective sections. The experimental procedure was performed for lettuce plants, with the robotic system providing precise movement of its actuator and applying precision irrigation based on the specific needs of the plants.

摘要

都市农业可简定义为在城市及其周边种植植物和/或进行畜牧养殖。尽管它一直是城市居民的常见职业,但近来公共机构、研究人员以及想要从事自我种植的普通市民对其兴趣与日俱增。然而,现代市民几乎很难找到空闲时间来自己种植蔬菜,因为这一过程除了需要知识和意愿外,还需要连贯性。考虑到上述因素,这项工作的目的是开发一种用于城市花园自动监测和管理的经济型机器人系统。该机器人系统完全从零开始设计和构建。它必须具有合适的尺寸,以便能够放置在阳台或露台上,并能够从种植到收获全程监测蔬菜,主要根据每株植物的生长阶段进行精准灌溉。施肥和杂草控制也将随之进行。为了开发该系统,结合了多种技术,如笛卡尔机器人的运动、机器视觉、用于植物识别和检测的深度学习、基于植物生长阶段的灌溉剂量和调度以及云存储。软件和硬件开发到一个强大的机器人平台的完整过程将在各相应章节中详细描述。针对生菜进行了实验,该机器人系统能根据植物的特定需求精确移动其执行器并进行精准灌溉。

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