An Internet of Things based Waste Management System using Hybrid Machine Learning Technique

Arunkumar M S, S. P, S. R, D. S
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Abstract

The most significant aspects of creating smart cities is waste management. Recycling and landfilling are two methods of waste management that lead to the demolition of trash. Because of population expansion, it is difficult to maintain cleanliness in urban areas. Because the machine learning (ML) and Internet of Things (IoT) eases the gathering, integration, and processing of diverse kinds of information, it provides an agile solution for classification and real-time monitoring. It is our intention to create a waste management scheme based on the IoT. The IoT has been used to keep tabs on people's movements and to help with garbage management. A machine learning technique called Decision Tree with Extreme Learning Machine was used to analyze data about a city (DT-ELM). The single classifier requires iterative training, which is time consuming, but the suggested hybrid model does not. Decision trees use traits that are good at classifying. Additional weights for the selected features are calculated to improve their categorization accuracy. We use the entropy theory to map the decision tree to ELM in order to get accurate prediction results. The garbage kind, truck size, and waste source may all be analyzed thanks to the network. In order to take the proper action, the waste management centers were informed of this information. An experiment was conducted to test the efficiency of an IoT -based trash management system.
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基于混合机器学习技术的物联网废物管理系统
创建智慧城市最重要的方面是废物管理。回收和填埋是垃圾管理的两种方法,导致垃圾的拆除。由于人口膨胀,很难保持城市地区的清洁。由于机器学习(ML)和物联网(IoT)简化了各种信息的收集、集成和处理,因此它为分类和实时监控提供了敏捷的解决方案。我们的目的是创建一个基于物联网的废物管理方案。物联网已被用于监视人们的活动,并帮助进行垃圾管理。一种被称为决策树和极限学习机的机器学习技术被用于分析一个城市的数据(DT-ELM)。单一分类器需要迭代训练,这是耗时的,但建议的混合模型不需要。决策树使用善于分类的特征。计算所选特征的附加权重以提高其分类精度。为了得到准确的预测结果,我们利用熵理论将决策树映射到ELM。垃圾种类、卡车大小、垃圾来源都可以通过网络进行分析。为了采取适当的行动,废物管理中心被告知这一信息。通过实验测试了基于物联网的垃圾管理系统的效率。
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