This paper presents a neural network recommender system algorithm for assigning vehicles to routes based on energy and cost criteria. In this work, we applied this new approach to efficiently identify the most cost-effective medium and heavy duty truck (MDHDT) powertrain technology, from a total cost of ownership (TCO) perspective, for given trips. We employ a machine learning based approach to efficiently estimate the energy consumption of various candidate vehicles over given routes, defined as sequences of links (road segments), with little information known about internal dynamics, i.e using high level macroscopic route information. A complete recommendation logic is then developed to allow for real-time optimum assignment for each route, subject to the operational constraints of the fleet. We show how this framework can be used to (1) efficiently provide a single trip recommendation with a top-$k$ vehicles star ranking system, and (2) engage in more general assignment problems where $n$ vehicles need to be deployed over $m \leq n$ trips. This new assignment system has been deployed and integrated into the POLARIS Transportation System Simulation Tool for use in research conducted by the Department of Energy's Systems and Modeling for Accelerated Research in Transportation (SMART) Mobility Consortium
翻译:本文介绍了根据能源和成本标准将车辆分配到航线的神经网络建议系统算法; 在这项工作中,我们运用了这一新的方法,从总所有权成本(TCO)角度,高效率地确定特定旅行中最具成本效益的中型和重型载重卡车(MDHDDT)动力器技术; 我们采用了基于机器的学习方法,有效估计特定航线上各种候选车辆的能源消耗量,按连接序列(公路段)定义,对内部动态知之甚少,即使用高水平的大型航线信息; 然后,我们开发了完整的建议逻辑,以便能够根据车队的业务限制,为每条路线实时进行最优化的指派; 我们展示了如何利用这一框架,以便:(1) 高效地提供单程建议,采用最高价值一公里的车辆星级系统;(2) 处理更一般的派任问题,即需要部署超过$leqn的车辆,即需要部署超过$leqn的行程; 新的派任系统已经部署,并纳入POLARIS运输系统模拟工具,用于能源部系统和加速研究联盟运输模型的运输系统进行的研究。