燃料效率
汽车工程
环境科学
运输工程
远程信息处理
流量(计算机网络)
温室气体
交通拥挤
能源消耗
模拟
计算机科学
环境经济学
工程类
电信
计算机安全
生态学
生物
电气工程
经济
作者
Matthew Barth,Kanok Boriboonsomsin
标识
DOI:10.1016/j.trd.2009.01.004
摘要
Surface transportation consumes a vast quantity of fuel and accounts for about a third of the US CO2 emissions. In addition to the use of more fuel-efficient vehicles and carbon-neutral alternative fuels, fuel consumption and CO2 emissions can be lowered through a variety of strategies that reduce congestion, smooth traffic flow, and reduce excessive vehicle speeds. Eco-driving is one such strategy. It typically consists of changing a person’s driving behavior by providing general static advice to the driver (e.g. do not accelerate too quickly, reduce speeds, etc.). In this study, we investigate the concept of dynamic eco-driving, where advice is given in real-time to drivers changing traffic conditions in the vehicle’s vicinity. This dynamic strategy takes advantage of real-time traffic sensing and telematics, allowing for a traffic management system to monitor traffic speed, density, and flow, and then communicates advice in real-time back to the vehicles. By providing dynamic advice to drivers, approximately 10–20% in fuel savings and lower CO2 emissions are possible without a significant increase in travel time. Based on simulations, it was found that in general, higher percentage reductions in fuel consumption and CO2 emission occur during severe compared to less congested scenarios. Real-world experiments have also been carried out, showing similar reductions but to a slightly smaller degree.
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