Realistic U.S. Long-Haul Drive Cycle for Vehicle Simulations, Costing, and Emissions Analysis

Rob Jones, Moritz Köllner, K. Moreno-Sader, Dávid Kovács, Thaddaeus Delebinski, Reza Rezaei, William H. Green
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Abstract

Although heavy-duty trucks constitute the backbone of freight transportation in the United States, they also contribute significantly to greenhouse gas emissions. Various alternative powertrains to reduce emissions have been assessed, but few specific to U.S. long-haul applications with a consistent basis of assumptions. To enable a more accurate assessment for all stakeholders, a representative drive cycle for long-haul truck operations in the United States is introduced (USLHC8) for modeling and simulation purposes. This was generated from 58,000 mi of real driving data through a unique random microtrip selection algorithm. USLHC8 covers a total driving time of 10 h 47 min, an average vehicle speed of 55.58 mph, and road grade ranging from −6% to +6%. To establish a benchmark for further powertrain comparisons, a vehicle-level simulation of a conventional diesel powertrain was paired with USLHC8. Benchmarks are presented for fuel consumption, well-to-wheel emissions, and total cost to society under different scenarios (present-day, mid-term, and long-term).
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用于车辆模拟、成本计算和排放分析的真实美国长途驾驶周期
虽然重型卡车是美国货运的支柱,但它们也是温室气体排放的主要来源。人们对各种可减少排放的替代动力系统进行了评估,但很少有针对美国长途运输应用的一致假设基础。为了对所有利益相关者进行更准确的评估,我们引入了美国长途卡车运营的代表性驱动循环(USLHC8),用于建模和模拟。这是通过独特的随机微行程选择算法,从 58,000 英里的真实驾驶数据中生成的。USLHC8 的总驾驶时间为 10 h 47 min,平均车速为 55.58 mph,道路坡度为 -6% 至 +6%。为了建立进一步比较动力总成的基准,传统柴油动力总成的车辆级模拟与 USLHC8 配对。在不同的情景(当前、中期和长期)下,给出了燃料消耗、从油井到车轮的排放以及社会总成本的基准。
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