As the adaptive cruise control system (ACCS) on vehicles is well-developed today, vehicle manufacturers have increasingly employed this technology in new-generation intelligent vehicles. Pulse-and-glide (PnG) strategy is an efficacious driving strategy to diminish fuel consumption in traditional oil-fueled vehicles. However, current studies rarely focus on the verification of the energy-saving effect of PnG on an electric vehicle (EV) and embedding PnG in ACCS. This paper proposes a pulse-and-glide-driven adaptive cruise control system (PGACCS) model which leverages PnG strategy as a parallel function with cruise control (CC) and verifies that PnG is an efficacious energy-saving strategy on EV by optimizing the energy cost of the PnG operation using Intelligent Genetic Algorithm and Particle Swarm Optimization (IGPSO). This paper builds up a simulation model of an EV with regenerative braking and ACCS based on which the performance of PGACCS and regenerative braking is evaluated; the PnG energy performance is optimized and the effect of regenerative braking on PnG energy performance is evaluated. As a result of PnG optimization, the PnG operation in the PGACCS could cut down 28.3% energy cost of the EV compared to the CC operation in the traditional ACCS which verifies that PnG is an effective energy-saving strategy for EV and PGACCS is a promising option for EV.
翻译:由于对车辆的适应性巡航控制系统(ACCS)今天发展良好,车辆制造商越来越多地在新一代智能车辆中使用这种技术。脉冲和滑翔(PnG)战略是减少传统油燃料车辆燃料消耗的有效驱动战略,但目前研究很少侧重于核查PnG对电动车辆(EV)和将PnG嵌入ACCS的节能效应。本文建议采用脉冲和滑翔驱动型适应性巡航控制系统(PGACCS)模式,利用PnG战略作为巡航控制(CC)的平行功能,并核实PnG是节能节能节能战略,利用Intelligent Getrolegal Algorithm和Pret Swarm Optimization(IGPGSO)优化PNG操作的节能成本成本成本成本成本成本。本文可以建立一个具有再生性调压和ACCS的EVS的模拟模型,根据这一模型,PGCS和再生性节能节能战略的绩效正在评估PnG的节能操作。