AI-Based Enhancements for Vehicle-to-Home Integration
Keywords:
AI-Based Enhancements, Vehicle-to-Home IntegrationAbstract
Vehicles and infrastructure involved in different domains are converging, such as from transportation infrastructures evolving along the lines of the Internet of Things to smart cities, which are expected to benefit from plug-in electric vehicles that provide V2H interfaces enabling smart home systems. This seems very suitable for today's smart marketplace. However, with smart functionalities and distributed resources rarely ever occupying center stage, energy management seems more worth considering than being overlooked. In this context, what is especially brought home is the V2H solution that connects a smart household to not only the transportation system but also an autonomous system in which vehicles can provide energy and other services without human intervention. Then, the logical follow-up seems to be the lofty realms of AI that can transform the idea of V2H and its building blocks, such as VPPs, which are the focus of a great deal of research, into a bold sort of autonomous units. AI can do both on the levels of automating vehicle-to-home integration and improving vehicle performance while providing energy for smart homes.
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