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Scientific Article details

Title IoT-Fnabled Smart City Waste Management using Machine Learning Analytics
ID_Doc 45792
Authors Bakhshil, T; Ahmed, M
Title IoT-Fnabled Smart City Waste Management using Machine Learning Analytics
Year 2018
Published
DOI
Abstract Waste collection and management presents a major challenge for municipalities wanting to achieve cleaner urban environments. Smart city infrastructure incorporating the Internet of Things (IoT) paradigm offers substantial advantages in terms of real-time waste monitoring capability. Basic sensory monitoring by itself, however, falls short of achieving optimal waste management without comprehensive data analytics. To this end, the present work proposes an off-the-shelf IoT-based waste monitoring solution, combined with back-end data analytics for efficient waste collection. The work employs Raspberry Pi and ultrasonic sensors, mounted on waste-bins in a specific area of a cooperating municipality for waste capacity monitoring. Real-time bin status and machine learning analytics are used to identify present as well as predict future waste collection scheduling. Dynamic collection servicing routes are accordingly mapped for utilization by waste collection vehicles. During a ten-day trial and validation period, it was observed that the proposed design increases fuel efficiency by up to 46% and a reduction in collection times by up to 18%. In addition to the noted quantitative improvements, the proposed scheme can also aid in optimizing long-term waste policies in smart city environments using the recorded statistics.
Author Keywords Internet of Things; Smart City; Machine Learning; Optimization Theory
Index Keywords Index Keywords
Document Type Other
Open Access Open Access
Source Conference Proceedings Citation Index - Science (CPCI-S)
EID WOS:000455653000011
WoS Category Energy & Fuels
Research Area Energy & Fuels
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