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Towards a Green Supply Chain Based on Smart Urban Traffic Using Deep Learning Approach
Author(s) -
Mohamed El Khaïli,
Loubna Terrada,
Hassan Ouajji,
Abdelaziz Daaif
Publication year - 2022
Publication title -
statistics, optimization and information computing
Language(s) - English
Resource type - Journals
SCImago Journal Rank - 0.297
H-Index - 12
eISSN - 2311-004X
pISSN - 2310-5070
DOI - 10.19139/soic-2310-5070-1203
Subject(s) - supply chain , supply chain management , smart city , process (computing) , exploit , process management , computer science , control (management) , order (exchange) , internet of things , traffic congestion , quality (philosophy) , business , transport engineering , computer security , engineering , marketing , artificial intelligence , philosophy , finance , epistemology , operating system
Green Supply Chain Management (GrSCM) has become one of the most crucial innovation in the Supply Chain Management (SCM). This approach involves environmental concerns and issues into the SCM, thus, companies and authorities tend to exploit the GrSCM through logistics process in order to improve their performance. In this paper, we will give a demonstration of the added value of the Urban Traffific Management (UTM) and its integration in the concept of GrSCM, we also aim to study its impact on the performance improvement in Transport Management with a focus on Air quality improvement. This study proposes a new approach and model based on Deep learning for Urban Traffific Control Management to solve the traffific flflow problem in order to reduce the congestion, improve the air quality and enhance the urban supply chain. Our proposed framework for Data collection and processing is mainly based on Internet of Thing (IoT) technologies for an effificient Smart City.

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