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Eco-PiNN: A Physics-informed Neural Network for Eco-toll Estimation

2023-01-13 19:34:18
Yan Li (1), Mingzhou Yang (1), Matthew Eagon (1), Majid Farhadloo (1), Yiqun Xie (2), William F. Northrop (1), Shashi Shekhar (1) ((1) University of Minnesota, (2) University of Maryland)

Abstract

The eco-toll estimation problem quantifies the expected environmental cost (e.g., energy consumption, exhaust emissions) for a vehicle to travel along a path. This problem is important for societal applications such as eco-routing, which aims to find paths with the lowest exhaust emissions or energy need. The challenges of this problem are three-fold: (1) the dependence of a vehicle's eco-toll on its physical parameters; (2) the lack of access to data with eco-toll information; and (3) the influence of contextual information (i.e. the connections of adjacent segments in the path) on the eco-toll of road segments. Prior work on eco-toll estimation has mostly relied on pure data-driven approaches and has high estimation errors given the limited training data. To address these limitations, we propose a novel Eco-toll estimation Physics-informed Neural Network framework (Eco-PiNN) using three novel ideas, namely, (1) a physics-informed decoder that integrates the physical laws of the vehicle engine into the network, (2) an attention-based contextual information encoder, and (3) a physics-informed regularization to reduce overfitting. Experiments on real-world heavy-duty truck data show that the proposed method can greatly improve the accuracy of eco-toll estimation compared with state-of-the-art methods.

Abstract (translated)

URL

https://arxiv.org/abs/2301.05739

PDF

https://arxiv.org/pdf/2301.05739.pdf


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