Quantum-Powered Optimization for Electric Vehicle Charging Infrastructure Deployment
- URL: http://arxiv.org/abs/2411.06684v1
- Date: Mon, 11 Nov 2024 03:03:20 GMT
- Title: Quantum-Powered Optimization for Electric Vehicle Charging Infrastructure Deployment
- Authors: Nazmush Sakib, Xin Chen,
- Abstract summary: A mathematical model is developed to identify the optimal placement of electric vehicle charging stations.
The model is validated using a real-world case study and solved using commercially available quantum computers from D-Wave.
- Score: 3.406797377411835
- License:
- Abstract: The infrastructure development of electric vehicle charging stations (EVCS) is critical to the integration of electrical vehicles (EVs) into transportation systems, which requires significant investment and has long-term impact on the adoption of EVs. In this paper, a mathematical model is developed to identify the optimal placement of EVCS by utilizing a novel quantum annealing (QA) algorithm and quantum computation (QC). The objective of the optimization model is to determine the locations of EVCS that maximize their service quality for EV users. The model is validated using a real-world case study and solved using commercially available quantum computers from D-Wave. The case study shows that the QA algorithm can find the optimal placement of EVCS within seconds. The quality of the solutions obtained using QC is not sensitive to the shape or size of the area where EVCS are to be deployed.
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