Come back when you are charged! Self-Organized Charging for Electric
Vehicles
- URL: http://arxiv.org/abs/2106.11025v1
- Date: Tue, 8 Jun 2021 08:36:16 GMT
- Title: Come back when you are charged! Self-Organized Charging for Electric
Vehicles
- Authors: Benjamin Leiding
- Abstract summary: We propose an ecosystem for (semi-)autonomous electric vehicles (EVs) that allow them to utilize their "free"-time, at night, to access public and private charging infrastructure, charge their batteries, and get back home before the owner needs the car again.
We utilize the concept of the Machine-to-Everything Economy (M2X Economy) and outline a decentralized ecosystem for smart machines that transact, interact and collaborate via blockchain-based smart contracts.
- Score: 1.0660480034605242
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: Dwindling nonrenewable fuel reserves, progressing severe environmental
pollution, and accelerating climate change require society to reevaluate
existing transportation concepts. While electric vehicles (EVs) have become
more popular and slowly gain widespread adoption, the corresponding battery
charging infrastructures still limits EVs' use in our everyday life. This is
especially true for EV owners that do not have the option to operate charging
hardware, such as wall boxes, at their premises. Charging an EV without an
at-home wall box is time-consuming since the owner has to drive to the charger,
charge the vehicle while waiting nearby, and finally drive back home. Thus, a
convenient and easy-to-use solution is required to overcome the issue and
incentivize EVs for daily commuters. Therefore, we propose an ecosystem and a
service platform for (semi-)autonomous electric vehicles that allow them to
utilize their "free"-time, e.g., at night, to access public and private
charging infrastructure, charge their batteries, and get back home before the
owner needs the car again. To do so, we utilize the concept of the
Machine-to-Everything Economy (M2X Economy) and outline a decentralized
ecosystem for smart machines that transact, interact and collaborate via
blockchain-based smart contracts to enable a convenient battery charging
marketplace for (semi-)autonomous EVs.
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