The Application of Machine Learning Algorithms in Predicting the Usage of IoT-based Cleaning Dispensers: Machine Learning Algorithms in Predicting the Usage if IoT-based Dispensers

Tobechi Obinwanne, Chibuzor Udokwu, P. Brandtner
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Abstract

Internet of Things (IoT) based liquid cleaning dispensers are being increasingly used in public buildings for personal sanitation purposes. However, it is not always easy for facility managers to keep track of, as well as predict product usage. Most devices deployed at facilities still require the facility/building manager or staff at the facility, to check the devices from time to time. In recent years, the need to effectively utilize these devices as well as anticipate usage rates has become necessary because the time lag between refilling the dispensers and their being out of service can pose health risks. This paper thus explores how machine learning (ML) algorithms can be applied to improve the availability of IoT-based liquid cleaning dispensers. The goal of the paper is to apply machine learning in predicting the daily usage volumes of cleaning solutions, thereby increasing the efficiency of the cleaning dispensers. The paper compares different machine learning algorithms to determine the best algorithm for predicting the usage patterns of IoT-based cleaning dispensers, thereby, develops a predictive model that can be applied to improve the availability of cleaning products in IoT-based dispensers. The results of the analysis show that the Random Forest algorithm performed best among the evaluated models using regression performance measures. Hence, ML algorithms can be applied to help building or sanitation managers improve the availability of cleaning products in IoT-based cleaning dispensers, ultimately improving the user experience.
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机器学习算法在预测基于物联网的清洁分配器使用中的应用:机器学习算法在预测基于物联网的分配器使用中的应用
基于物联网(IoT)的液体清洁分配器越来越多地用于公共建筑中的个人卫生目的。然而,对于设施管理人员来说,跟踪和预测产品的使用情况并不总是那么容易。在设施中部署的大多数设备仍然需要设施/建筑物管理员或设施的工作人员不时检查设备。近年来,有必要有效利用这些设备并预测使用率,因为在重新填充分配器和分配器停止使用之间的时间间隔可能会造成健康风险。因此,本文探讨了如何应用机器学习(ML)算法来提高基于物联网的液体清洁分配器的可用性。本文的目标是应用机器学习来预测清洁溶液的日常使用量,从而提高清洁分配器的效率。本文比较了不同的机器学习算法,以确定预测基于物联网的清洁售货机使用模式的最佳算法,从而开发了一个预测模型,可用于提高基于物联网的售货机中清洁产品的可用性。分析结果表明,随机森林算法在使用回归性能度量的评估模型中表现最好。因此,机器学习算法可以应用于帮助建筑或卫生管理人员提高基于物联网的清洁分配器中清洁产品的可用性,最终改善用户体验。
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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