Belsare Karan, Singh Manwinder, Gandam Anudeep, Samudrala Varakumari, Singh Rajesh, F Soliman Naglaa, Das Sudipta, D Algarni Abeer
School of Electronics and Electrical Engineering, Lovely Professional University, Phagwara, Punjab, 144411, India.
School of Computer Science and Engineering, Lovely Professional University, Phagwara, Punjab, 144411, India.
Heliyon. 2024 Aug 15;10(16):e36271. doi: 10.1016/j.heliyon.2024.e36271. eCollection 2024 Aug 30.
Environmental safety is one of the key issues that are directly related to a country's prosperity One of the most fundamental aspects of a sustainable economy is waste management and recycling. Better recycling safety and efficiency may be achieved via the use of intelligent devices rather than manual effort. In this research, we describe a machine learning-based architecture for smart trash collection and sorting using the Internet of Things and wireless sensor networks. The goal of this study was to develop an autonomous method for producing an efficient and intelligent waste parameter monitoring system for a novel waste management system, using the Internet of Things (IoT) and Long Range (LoRa) technologies. Several possibilities are explored, all of which may be applied to the development of the three nodes. The number of trash cans, garbage stench, air quality, weight, smoke levels, and waste categories are all tracked in real-time via the Internet of Things and the Thing Speak Cloud Platform, which can be set up in numerous places. In the end, a fog layer-deployed intelligent waste classification framework consists mostly of four layers: input, feature, classification, and output. Using the Thrash Box dataset, the proposed system develops a categorization method into trash classes such as household, medical, and electronic garbage, in addition to object identification. Traditional machine learning methods, such as the multi-kernel support vector machine (SVM) and the Adaboost ensemble classifier, are employed in the classification layer, while the Resnet-101 deep convolutional neural network model is used in the feature layer. Experiments were conducted to evaluate the suggested method's ability to classify garbage and provide accurate predictions about their respective categories. Compared to other state-of-the-art models, the suggested method's performance was shown to be superior in the presented trials.
环境安全是直接关系到一个国家繁荣的关键问题之一。可持续经济最基本的方面之一是废物管理和回收利用。通过使用智能设备而非人工,可以提高回收的安全性和效率。在本研究中,我们描述了一种基于机器学习的架构,用于利用物联网和无线传感器网络进行智能垃圾收集和分类。本研究的目标是开发一种自主方法,利用物联网(IoT)和长距离(LoRa)技术,为新型废物管理系统创建一个高效且智能的废物参数监测系统。我们探索了多种可能性,所有这些都可应用于三个节点的开发。垃圾桶数量、垃圾恶臭、空气质量、重量、烟雾水平和废物类别等均通过物联网和Thing Speak云平台进行实时跟踪,该平台可在多个地点设置。最后,一个部署在雾层的智能废物分类框架主要由四层组成:输入层、特征层、分类层和输出层。使用垃圾盒数据集,除了物体识别外,所提出的系统还开发了一种将垃圾分为家庭垃圾、医疗垃圾和电子垃圾等类别的分类方法。分类层采用传统机器学习方法,如多核支持向量机(SVM)和Adaboost集成分类器,而特征层使用Resnet - 101深度卷积神经网络模型。进行了实验以评估所建议方法对垃圾进行分类并对其各自类别提供准确预测的能力。在所示试验中,与其他现有模型相比,所建议方法的性能表现更优。