Estimating global demand for land-based transportation services using the shared socioeconomic pathways scenario framework

Joan Nkiriki, P. Jaramillo, N. Williams, Alex Davis, D. Armanios
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Abstract

The global demand for transportation is growing owing to accelerated socioeconomic development worldwide. If the current modes of transportation, consisting mostly of personal internal combustion engine vehicles, dominate this growth, greenhouse gas emissions will rise and worsen the climate crisis. A key empirical challenge in understanding the barriers and opportunities for low-carbon transportation systems in developing countries is the lack of demand data. Because existing country-specific transport demand models focus on countries with robust historical datasets, it has been difficult to estimate the service demand for developing countries. To address this limitation, we develop a log–log regression model linking socioeconomic variables with demand for land-based passenger and freight transport services. Using socioeconomic data from the shared socioeconomic pathways (SSPs) developed for climate analysis, we then produce scenario-based estimates for land-based transportation services for 179 countries around the world. The global average annual land-based passenger demand growth rate ranges between 1.3% and 4.1%, while the annual growth rate for land-based freight demand ranges between 3.1% and 3.6% across the 30 years between 2020 and 2050. Middle-income countries in Asia such as India and China, show the highest expected transport demand across all scenarios. Meanwhile, the results suggest that low-income countries in the sub-Saharan African region are likely to experience the largest growth in demand for passenger and freight transport services. These two trends come together at an inflection point around the year 2030. Prior to 2030, the transport demand was the highest in East Asia. After 2030, there is an ascendancy in transport demand in South Asia and sub-Saharan Africa, whereby the cumulative demand share of these two regions reaches near parity with that of East Asia by 2050. Sustainably meeting this growing demand will require the adoption of data-driven transport planning tools and leveraging cross-linkages across other energy sectors such as electricity.
使用共享社会经济路径情景框架估算全球陆基运输服务需求
随着世界范围内社会经济的加速发展,全球对交通运输的需求正在不断增长。如果目前主要由个人内燃机车辆组成的交通方式主导这一增长,温室气体排放量将增加,并加剧气候危机。在了解发展中国家低碳交通系统的障碍和机遇方面,一个关键的经验挑战是缺乏需求数据。由于现有的具体国家运输需求模型侧重于具有可靠历史数据集的国家,因此很难估计发展中国家的服务需求。为了解决这一限制,我们开发了一个log-log回归模型,将社会经济变量与陆地客运和货运服务的需求联系起来。利用为气候分析开发的共享社会经济路径(ssp)的社会经济数据,我们对全球179个国家的陆上交通服务进行了基于情景的估计。2020年至2050年的30年间,全球陆上客运需求年均增长率在1.3%至4.1%之间,陆上货运需求年均增长率在3.1%至3.6%之间。在所有情景中,印度和中国等亚洲中等收入国家的交通需求预期最高。同时,研究结果表明,撒哈拉以南非洲地区的低收入国家可能会经历客运和货运服务需求的最大增长。这两种趋势将在2030年左右出现拐点。在2030年之前,东亚的交通需求是最高的。2030年后,南亚和撒哈拉以南非洲地区的运输需求将上升,到2050年,这两个地区的累计需求份额将接近东亚。可持续地满足这一不断增长的需求将需要采用数据驱动的交通规划工具,并利用电力等其他能源部门的交叉联系。
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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