Autonomous Guided Vehicle for Smart Warehousing

Prakash Ganesan, P. R, Felix Mathan M, M. M
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Abstract

The rapidly growing trend of online shopping and the increasing surge of global trading has led to major shifts in the way we handle logistics. Logistics is the most important aspect to improve efficiency and warehouses are a core part of logistics. Even today, a vast majority of the warehouses use human labour to move and manage all the items in them. This is not only extremely tiring but also slow and expensive. Therefore, a sure-fire method to improve efficiency is by using robots. This is the concept that this paper suggests and tests. An autonomous robot without any human intervention can map a whole warehouse using its own in-built sensors, in this case, a LIDAR, and use this map to automatically move to its desired position. Simultaneously, it will plan the shortest path to that destination and avoid any obstacles that might come in its path. This robot can replace human sorters and greatly reduce waiting time and costs. This study proves that an autonomous future in any factory is not only easy but also inexpensive and widely obtainable. It also illustrates the vast potential that comes with algorithmic technology applied in traditional fields.
智能仓储的自动导向车辆
快速增长的网上购物趋势和日益激增的全球贸易导致我们处理物流的方式发生了重大变化。物流是提高效率最重要的方面,仓库是物流的核心部分。即使在今天,绝大多数仓库仍然使用人力来搬运和管理里面的所有物品。这不仅非常累人,而且又慢又贵。因此,提高效率的一个可靠方法是使用机器人。这是本文提出和检验的概念。无需人工干预的自主机器人可以使用其内置传感器(在这种情况下是激光雷达)绘制整个仓库的地图,并使用该地图自动移动到所需位置。同时,它会规划到目的地的最短路径,并避开可能遇到的任何障碍。该机器人可以代替人工分拣,大大减少等待时间和成本。这项研究证明,任何工厂的自动化未来不仅容易实现,而且成本低廉,而且可广泛实现。这也说明了算法技术在传统领域应用的巨大潜力。
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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