改进未来旅游需求预测:采用开放科学跨学科方法的途径

IF 32 1区 工程技术 Q1 ENERGY & FUELS
S. Yeh, J. Gil, P. Kyle, P. Kishimoto, Pierpaolo Cazzola, Matteo Craglia, O. Edelenbosch, Panagiotis Fragkos, L. Fulton, Yuan Liao, Luis Martinez, D. McCollum, Joshua Miller, R. Pereira, J. Teter
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引用次数: 4

摘要

交通运输占全球化石燃料二氧化碳排放量的24%。各国政府在制定可行和公平的缓解战略以减少能源消耗和管理向低碳运输系统的过渡方面面临挑战。为了实现地方和全球交通减排目标,政策制定者需要对未来交通需求进行更现实/更复杂的预测,以更好地了解减少温室气体排放所需行动的速度和深度。在本文中,我们认为缺乏当前和历史旅行需求的高质量数据以及跨学科研究阻碍了交通规划和向低碳交通未来的可持续过渡。我们呼吁在开放数据、数据科学、行为建模和政策分析方面开展更大的跨学科合作议程。这些进展可以减少一些主要的不确定性,并有助于为改善未来交通系统的可持续性绩效提供基于证据的解决方案。本文还指出了一些必要的努力和方向,以便为政策制定者提供有力的见解。我们提供了这些努力如何从国际运输能源建模开放数据项目和开放科学跨学科合作中受益的例子。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Improving future travel demand projections: a pathway with an open science interdisciplinary approach
Transport accounts for 24% of global CO2 emissions from fossil fuels. Governments face challenges in developing feasible and equitable mitigation strategies to reduce energy consumption and manage the transition to low-carbon transport systems. To meet the local and global transport emission reduction targets, policymakers need more realistic/sophisticated future projections of transport demand to better understand the speed and depth of the actions required to mitigate greenhouse gas emissions. In this paper, we argue that the lack of access to high-quality data on the current and historical travel demand and interdisciplinary research hinders transport planning and sustainable transitions toward low-carbon transport futures. We call for a greater interdisciplinary collaboration agenda across open data, data science, behaviour modelling, and policy analysis. These advancemets can reduce some of the major uncertainties and contribute to evidence-based solutions toward improving the sustainability performance of future transport systems. The paper also points to some needed efforts and directions to provide robust insights to policymakers. We provide examples of how these efforts could benefit from the International Transport Energy Modeling Open Data project and open science interdisciplinary collaborations.
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来源期刊
Progress in Energy and Combustion Science
Progress in Energy and Combustion Science 工程技术-工程:化工
CiteScore
59.30
自引率
0.70%
发文量
44
审稿时长
3 months
期刊介绍: Progress in Energy and Combustion Science (PECS) publishes review articles covering all aspects of energy and combustion science. These articles offer a comprehensive, in-depth overview, evaluation, and discussion of specific topics. Given the importance of climate change and energy conservation, efficient combustion of fossil fuels and the development of sustainable energy systems are emphasized. Environmental protection requires limiting pollutants, including greenhouse gases, emitted from combustion and other energy-intensive systems. Additionally, combustion plays a vital role in process technology and materials science. PECS features articles authored by internationally recognized experts in combustion, flames, fuel science and technology, and sustainable energy solutions. Each volume includes specially commissioned review articles providing orderly and concise surveys and scientific discussions on various aspects of combustion and energy. While not overly lengthy, these articles allow authors to thoroughly and comprehensively explore their subjects. They serve as valuable resources for researchers seeking knowledge beyond their own fields and for students and engineers in government and industrial research seeking comprehensive reviews and practical solutions.
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