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Connectivity-based optimization of vehicle route and speed for improved fuel economy

机译:基于连接性的车辆路线和速度优化,以提高燃油经济性

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摘要

Traditionally, vehicle route planning problem focuses on route optimization based on traffic data and surrounding environment. This paper proposes a novel extended vehicle route planning problem, called vehicle macroscopic motion planning (VMMP) problem, to optimize vehicle route and speed simultaneously using both traffic data and vehicle characteristics to improve fuel economy for a given expected trip time. The required traffic data and neighbouring vehicle dynamic parameters can be collected through the vehicle connectivity (e.g. vehicle-to-vehicle, vehicle-to-infrastructure, vehicle-to-cloud, etc.) developed rapidly in recent years. A genetic algorithm based co-optimization method, along with an adaptive real-time optimization strategy, is proposed to solve the proposed VMMP problem. It is able to provide the fuel economic route and reference speed for drivers or automated vehicles to improve the vehicle fuel economy. A co-simulation model, combining a traffic model based on SUMO (Simulation of Urban MObility) with a Simulink powertrain model, is developed to validate the proposed VMMP method. Four simulation studies, based on a real traffic network, are conducted for validating the proposed VMMP: (1) ideal traffic environment without traffic light and jam for studying the fuel economy improvement, (2) traffic environment with traffic light for validating the proposed traffic light penalty model, (3) traffic environment with traffic light and jam for validating the proposed adaptive real-time optimization strategy, and (4) investigating the effect of different powertrain platforms to fuel economy using two different vehicle platforms. Simulation results show that the proposed VMMP method is able to improve vehicle fuel economy significantly. For instance, comparing with the fastest route, the fuel economy using the proposed VMMP method is improved by up to 15%.
机译:传统上,车辆路线规划问题侧重于基于交通数据和周围环境的路线优化。本文提出了一种新颖的扩展车辆路线计划问题,称为车辆宏观运动计划(VMMP)问题,该问题可同时使用交通数据和车辆特性来优化车辆路线和速度,以在给定的预期行程时间内提高燃油经济性。可以通过近年来快速发展的车辆连通性(例如,车辆到车辆,车辆到基础设施,车辆到云等)来收集所需的交通数据和相邻的车辆动态参数。为了解决提出的VMMP问题,提出了一种基于遗传算法的协同优化方法,以及一种自适应实时优化策略。它能够为驾驶员或自动驾驶汽车提供燃油经济性路线和参考速度,以改善车辆燃油经济性。开发了一种联合仿真模型,将基于SUMO(城市交通仿真)的交通模型与Simulink动力总成模型相结合,以验证所提出的VMMP方法。进行了四次基于真实交通网络的仿真研究,以验证建议的VMMP:(1)没有交通灯和拥堵的理想交通环境,以研究燃油经济性改善;(2)带有交通灯的交通环境,以验证建议的交通轻罚模型,(3)带有交通信号灯和拥堵的交通环境,用于验证所提出的自适应实时优化策略,以及(4)研究使用两种不同车辆平台的不同动力总成平台对燃油经济性的影响。仿真结果表明,提出的VMMP方法能够显着提高车辆的燃油经济性。例如,与最快的路线相比,使用建议的VMMP方法的燃油经济性提高了15%。

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