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dc.contributor.advisor
dc.contributor.authorLaabar, Jihed
dc.contributor.authorRajathurai, Soban
dc.date.accessioned2023-10-25T16:10:39Z
dc.date.available2023-10-25T16:10:39Z
dc.date.issued2023
dc.identifierno.inn:inspera:144979010:147357675
dc.identifier.urihttps://hdl.handle.net/11250/3098752
dc.description.abstractBekreftelse fra programsansvarlig på at det holder kun med engelsk sammendrag. Grunnet masteroppgaven er skrevet på engelsk.
dc.description.abstractWaste management is a critical issue worldwide. One of the major challenges in waste management is the efficient collection and transportation of waste from the source to the disposal facility. Research shows that systematic adoption of data-driven technologies (e.g. Machine Learning and Internet-of-Things) can assist public utilities (Kommune) by a) improving the waste collection management process, and b) minimizing the total incurred cost (Misra et al., 2018; Komninos, 2007). Thus, in this work, we show that systematic adoption of data-driven techniques can significantly improve the waste collection process and minimize the incurred cost to public utilities. In order to perform experiments, we generated a synthetic dataset motivated by a real-life urban environment. Also, we aimed to present different approaches to cost-benefit analysis in the targeted scenario. Our study shows that the systematic use of Internet-of-Things-based smart garbage bins, smart transportation algorithms, and Machine Learning can significantly reduce the total incurred cost of public utilities operating in this space.
dc.languageeng
dc.publisherInland Norway University
dc.titleData Driven Waste Management in Smart Cities
dc.typeMaster thesis


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