2020
DOI: 10.3390/en13153930
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Waste Management and Prediction of Air Pollutants Using IoT and Machine Learning Approach

Abstract: Increasing waste generation has become a significant issue over the globe due to the rapid increase in urbanization and industrialization. In the literature, many issues that have a direct impact on the increase of waste and the improper disposal of waste have been investigated. Most of the existing work in the literature has focused on providing a cost-efficient solution for the monitoring of garbage collection system using the Internet of Things (IoT). Though an IoT-based solution provides the real-time moni… Show more

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Cited by 64 publications
(24 citation statements)
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“…The use of IoT systems for waste management has been observed in the works of [106] who utilize IoT systems to help reduce energy wastage in waste collection by municipalities. Hussain et al [107] develop a waste management system that not only determines if bins are full and need collecting (using data from various sensors placed in the bin) but also predicts the air quality around it using RNNs. The sensing modalities in each of these applications is pretty similar in that they indicate to whether a waste bin is full or not which is then used for route planning.…”
Section: Smart City Servicesmentioning
confidence: 99%
“…The use of IoT systems for waste management has been observed in the works of [106] who utilize IoT systems to help reduce energy wastage in waste collection by municipalities. Hussain et al [107] develop a waste management system that not only determines if bins are full and need collecting (using data from various sensors placed in the bin) but also predicts the air quality around it using RNNs. The sensing modalities in each of these applications is pretty similar in that they indicate to whether a waste bin is full or not which is then used for route planning.…”
Section: Smart City Servicesmentioning
confidence: 99%
“…The machine learning-based classifier SVM and Decision Tree give better results for the classification of images. SVM has been extensively utilized for classification and other various learning purposes and achieves notable accuracy in results with less computational cost [11]. The data points in the classes can be separated based on the chosen hyperplane [12].…”
Section: Problem Statementmentioning
confidence: 99%
“…Machine Learning (ML) combines with multiple statistical approaches in various ways, and many techniques have been developed to perform ML tasks, like SVM, Decision Tree, Naïve Bayes, Neural Networks, and Random Forest [11]. These approaches have been used to perform multiple tasks, including image retrieval, speech recognition, pattern recognition, texture classification, and biometric identification.…”
Section: Dictionary Learningmentioning
confidence: 99%
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