Machine Learning for Automation of Warehouse Activities

V. Hristov, D. Slavov, I. Damyanov, G. Mladenov
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引用次数: 1

Abstract

This paper presents machine learning approaches for automation of activities in warehouses. Integrating machine learning in supply chain management can help automate a number of mundane tasks and allow enterprises to focus on more strategic and impactful business activities. The various machine learning models presented are designed to work with low-cost hardware. The models were studied with different sizes of the input data and the most appropriate ones were selected according to set criteria. Their ability to run on Raspberry Pi single-board computer has been explored and performance characteristics in inference mode have been experimentally established.
仓库活动自动化的机器学习
本文介绍了用于仓库活动自动化的机器学习方法。将机器学习集成到供应链管理中可以帮助实现许多日常任务的自动化,并使企业能够专注于更具战略性和影响力的业务活动。提出的各种机器学习模型旨在与低成本硬件一起工作。对不同大小的输入数据进行模型研究,并根据设定的标准选择最合适的模型。它们在树莓派单板计算机上的运行能力已经被探索,并且在推理模式下的性能特征已经被实验建立。
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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