Smart Urban Mobility: The Role of AI in Alleviating Traffic Congestion

Author:

Lungu Mihai Adrian1

Affiliation:

1. 1 Academy of Economic Studies , Bucharest , Romania

Abstract

Abstract This article delves into the impact of intelligence (AI), on easing traffic congestion as cities strive to become more intelligent. It highlights advancements in AI technologies like networks (ANNs) and genetic algorithms (GAs), within the context of urban transportation and movement. The incorporation of intelligence, into transportation systems is motivated by the necessity to adapt to evolving circumstances while emphasizing improvements, in the effectiveness and environmental friendliness of transportation networks. Mobility as a Service (MaaS) combines options like transit, ride-sharing and bike rentals. Through the use of networks AI enhances urban traffic management by predicting congestion and optimizing traffic signal control at intersections. Genetic algorithms play a role, in optimizing vehicle routes by taking into account variables such as travel time and associated expenses. The research indicates a rise in the use of AI in the transportation industry signaling a change, in commuting patterns. This study highlights the significance of progressing AI technologies to meet changing infrastructure requirements and fluctuating traffic trends emphasizing the impact of AI on shaping the urban transportation landscape.

Publisher

Walter de Gruyter GmbH

Reference21 articles.

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