Online Decision-Making Under Uncertainty for Vehicle-to-Building Systems
Rishav Sen, Yunuo Zhang, Fangqi Liu, Jose Paolo Talusan, Ava Pettet, Yoshinori Suzue, Ayan Mukhopadhyay, Abhishek Dubey

TL;DR
This paper models vehicle-to-building energy management as a Markov decision process to optimize EV charging and discharging, addressing uncertainties and large decision spaces, and demonstrates superior performance over existing methods.
Contribution
It introduces a novel MDP-based framework with online search and heuristics for V2B optimization, overcoming limitations of previous single-shot approaches.
Findings
Significantly outperforms state-of-the-art methods in energy cost reduction.
Effectively manages large state and action spaces with domain-specific heuristics.
Validated with real data from Nissan's EV testbed.
Abstract
Vehicle-to-building (V2B) systems integrate physical infrastructures, such as smart buildings and electric vehicles (EVs) connected to chargers at the building, with digital control mechanisms to manage energy use. By utilizing EVs as flexible energy reservoirs, buildings can dynamically charge and discharge them to optimize energy use and cut costs under time-variable pricing and demand charge policies. This setup leads to the V2B optimization problem, where buildings coordinate EV charging and discharging to minimize total electricity costs while meeting users' charging requirements. However, the V2B optimization problem is challenging because of: (1) fluctuating electricity pricing, which includes both energy charges (/kW); (2) long planning horizons (typically over 30 days); (3) heterogeneous chargers with varying charging rates, controllability, and…
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Taxonomy
TopicsElectric Vehicles and Infrastructure · Smart Grid Energy Management · Electric and Hybrid Vehicle Technologies
