Sustainable Fuels for Long-Haul Truck Engines: A 1D-CFD Analysis

A. Volza, A. Pisapia, S. Caprioli, C. Rinaldini, E. Mattarelli
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Abstract

Heavy duty engines for long-haul trucks are quite difficult to electrify, due to the large amount of energy that should be stored on-board to achieve a range comparable to that of conventional fuels. In particular, this paper considers a stock engine with a displacement of 12.9 L, developed by the manufacturer in two different versions. As a standard diesel, the engine is able to deliver about 420 kW at 1800 rpm, whereas in the compressed natural gas configuration the maximum power output is 330 kW, at the same speed. Three possible alternatives to these fossil fuels are considered in this study: biodiesel (HVOlution by Eni), bio-methane and green hydrogen.While the replacement of diesel and compressed natura gas with biofuels does not need significant hardware modifications, the implementation of a hydrogen spark ignition combustion system requires a deep revision of the engine concept. For a more straightforward comparison among the alternative fuels, the same engine platform has been considered.The hydrogen engine has been optimized with the support of CFD-1D simulation (GT-Power), using models calibrated with experimental data, obtained on the diesel and compressed natural gas versions. The numerical tool includes a predictive combustion model (SI-Turb), also calibrated with experimental data on a hydrogen prototype.The study shows that the implementation of a combustion system running on lean mixtures of hydrogen, permits to cancel the emissions of CO2, while maintaining the same power output of the compressed natural gas / bio-methane engine (but about 20% lower than the biodiesel). Moreover, the concentration of NOx is very low (<20 ppm) at all the operating conditions, enabling a strong simplification of the after-treatment system, at least in comparison to the original diesel/biodiesel version. Finally, the hydrogen solution exhibits an average increase of approximately 9% in efficiency respect to the compressed natural gas configuration, but it remains less efficient if compared to its biodiesel counterpart (-11%).
用于长途卡车发动机的可持续燃料:1D-CFD 分析
用于长途运输卡车的重型发动机很难实现电气化,因为要实现与传统燃料相当的续航能力,必须在机上储存大量能量。本文特别考虑了一款排量为 12.9 升的发动机,该发动机由制造商开发,有两个不同的版本。作为标准柴油发动机,该发动机在 1800 rpm 转速下可输出约 420 kW 的功率,而在压缩天然气配置下,相同转速下的最大功率输出为 330 kW。本研究考虑了这些化石燃料的三种可能替代品:生物柴油(埃尼公司的 HVOlution)、生物甲烷和绿色氢气。虽然用生物燃料替代柴油和压缩天然气不需要对硬件进行重大改动,但实施氢气火花点火燃烧系统需要对发动机概念进行深入修改。为了更直观地比较各种替代燃料,我们采用了相同的发动机平台。氢气发动机在 CFD-1D 仿真(GT-Power)的支持下进行了优化,使用的模型是根据柴油和压缩天然气版本的实验数据校准的。该数值工具包括一个预测燃烧模型(SI-Turb),也是根据氢气原型机的实验数据进行校准的。研究表明,采用贫氢混合物燃烧系统可以消除二氧化碳的排放,同时保持与压缩天然气/生物甲烷发动机相同的功率输出(但比生物柴油低约 20%)。此外,在所有工作条件下,氮氧化物的浓度都非常低(小于 20 ppm),从而大大简化了后处理系统,至少与最初的柴油/生物柴油版本相比是如此。最后,与压缩天然气配置相比,氢气解决方案的效率平均提高了约 9%,但与生物柴油相比,其效率仍然较低(-11%)。
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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