TL;DR
This paper models and optimizes the interaction between electric autonomous vehicles and power networks, demonstrating potential cost savings and the importance of coordination for societal benefits.
Contribution
It introduces a comprehensive model capturing the coupling of AMoD systems with power networks and proposes algorithms for joint optimization and market-based coordination.
Findings
Coordination can reduce electricity costs by up to $147M/year.
Lack of coordination increases electricity prices by 4.4%.
The proposed algorithms enable efficient joint system management.
Abstract
We study the interaction between a fleet of electric, self-driving vehicles servicing on-demand transportation requests (referred to as Autonomous Mobility-on-Demand, or AMoD, system) and the electric power network. We propose a model that captures the coupling between the two systems stemming from the vehicles' charging requirements and captures time-varying customer demand and power generation costs, road congestion, battery depreciation, and power transmission and distribution constraints. We then leverage the model to jointly optimize the operation of both systems. We devise an algorithmic procedure to losslessly reduce the problem size by bundling customer requests, allowing it to be efficiently solved by off-the-shelf linear programming solvers. Next, we show that the socially optimal solution to the joint problem can be enforced as a general equilibrium, and we provide a dual…
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