Predictive Optimal Control of Mild Hybrid Trucks

S. Pramanik, S. Anwar
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引用次数: 1

Abstract

Fuel consumption, subsequent emissions and safe operation of class 8 vehicles are of prime importance in recent days. It is imperative that a vehicle operates in its true optimal operating region, given a variety of constraints such as road grade, load, gear shifts, battery state of charge (for hybrid vehicles), etc. In this paper, a research study is conducted to evaluate the fuel economy and subsequent emission benefits when applying predictive control to a mild hybrid line-haul truck. The problem is solved using a combination of dynamic programming with backtracking and model predictive control. The specific fuel-saving features that are studied in this work are dynamic cruise control, gear shifts, vehicle coasting and torque management. These features are evaluated predictively as compared to a reactive behavior. The predictive behavior of these features is a function of road grade. The result and analysis show significant improvement in fuel savings along with NOx benefits. Out of the control features, dynamic cruise (predictive) control and dynamic coasting showed the most benefits, while predictive gear shifts and torque management (by power splitting between battery and engine) for this architecture did not show fuel benefits but provided other benefits in terms of powertrain efficiency.
轻度混合动力卡车的预测最优控制
最近,燃油消耗、后续排放和8级车辆的安全运行是最重要的。考虑到各种各样的限制因素,如道路坡度、负载、换挡、电池充电状态(对于混合动力汽车)等,车辆必须在真正的最佳运行区域内运行。本文对一种轻度混合动力运输卡车进行预测控制,评估其燃油经济性和后续排放效益。采用带回溯的动态规划和模型预测控制相结合的方法解决了该问题。本文研究的具体节油特性包括动态巡航控制、换挡、车辆滑行和扭矩管理。与反应性行为相比,这些特性被预测性地评估。这些特征的预测行为是道路等级的函数。结果和分析表明,在节省燃料和减少氮氧化物方面有了显著的改善。在控制特性中,动态巡航(预测)控制和动态滑行显示出最大的好处,而预测换挡和扭矩管理(通过电池和发动机之间的功率分配)在这种架构中没有显示出燃油效益,但在动力系统效率方面提供了其他好处。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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