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.
翻译:生态船估测问题量化了车辆沿途旅行的预期环境成本(例如能源消耗、排气排放),这一问题对于生态路线等社会应用十分重要,生态路线是为了找到排气排放或能源需求最低的途径,这一问题的挑战有三重:(1) 车辆的生态船估测问题依赖其物理参数;(2) 缺乏获得生态船料数据的机会;(3) 环境信息(例如路段相邻部分的连接)对道路段生态船龄的影响; 以往的生态船估测工作主要依赖纯数据驱动的方法,而且由于培训数据有限,估算错误很高; 为了解决这些限制,我们提出一个新的生态船估测,基于物理的、知情的神经网络框架(Eco-PinNN),采用三种新颖的想法,即(1) 将汽车发动机物理定律纳入网络的物理了解的解码器,(2) 以关注为基础的背景信息编码,以及(3) 以物理学为根据的正规化方法,在现实世界上大大降低对地质船龄的精确度。