ELECTRIC VEHICLES AND INTERNET OF THINGS ENABLED IN SMART CITIES
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Abstract
The convergence of Electric Vehicles (EVs) and the Internet of Things (IoT) has emerged as a transformative force in the development of smart cities. This paper explores the integration of EVs and IoT technologies, examining their synergies and the potential impact on urban sustainability, transportation efficiency, and overall city management. In the context of smart cities, EVs play a pivotal role in reducing carbon emissions and enhancing energy efficiency. The adoption of IoT in conjunction with EVs introduces a dynamic layer of connectivity, enabling real-time data exchange and smart decision-making. This paper delves into the various facets of this integration, emphasizing the benefits and challenges associated with the fusion of these two technologies.
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