The Role of Intelligent Transportation Systems and Artificial
Intelligence in Energy Efficiency and Emission Reduction
- URL: http://arxiv.org/abs/2401.14560v1
- Date: Thu, 25 Jan 2024 23:07:32 GMT
- Title: The Role of Intelligent Transportation Systems and Artificial
Intelligence in Energy Efficiency and Emission Reduction
- Authors: Omar Rinchi and Ahmad Alsharoa and Ibrahem Shatnawi and Anvita Arora
- Abstract summary: We explore the role of intelligent transportation systems (ITSs) and artificial intelligence (AI) in future enhanced energy and emission reduction (EER)
More specifically, we discuss the impact of sensors at different levels of ITS on improving EER.
We also investigate the potential networking connections in ITSs and provide an illustration of how they improve EER.
- Score: 4.847470451539329
- License: http://creativecommons.org/publicdomain/zero/1.0/
- Abstract: Despite the technological advancements in the transportation sector, the
industry continues to grapple with increasing energy consumption and vehicular
emissions, which intensify environmental degradation and climate change. The
inefficient management of traffic flow, the underutilization of transport
network interconnectivity, and the limited implementation of artificial
intelligence (AI)-driven predictive models pose significant challenges to
achieving energy efficiency and emission reduction. Thus, there is a timely and
critical need for an integrated, sophisticated approach that leverages
intelligent transportation systems (ITSs) and AI for energy conservation and
emission reduction. In this paper, we explore the role of ITSs and AI in future
enhanced energy and emission reduction (EER). More specifically, we discuss the
impact of sensors at different levels of ITS on improving EER. We also
investigate the potential networking connections in ITSs and provide an
illustration of how they improve EER. Finally, we discuss potential AI services
for improved EER in the future. The findings discussed in this paper will
contribute to the ongoing discussion about the vital role of ITSs and AI
applications in addressing the challenges associated with achieving energy
savings and emission reductions in the transportation sector. Additionally, it
will provide insights for policymakers and industry professionals to enable
them to develop policies and implementation plans for the integration of ITSs
and AI technologies in the transportation sector.
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