基于交通与气候大数据的公路交通事故时间变化研究

IF 1 4区 工程技术 Q4 ENGINEERING, CIVIL
Donghyeok Park, Kyeongjoo Kwon, Juneyoung Park
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引用次数: 0

摘要

人为排放的温室气体加速了全球变暖,并导致气温进一步升高。全球变暖增加了温暖天气和季节增多、寒冷天气和季节减少的可能性。此外,它还会导致降水模式的变化。在早期的研究中,随着环境温度的升高,认知能力下降,撞车的风险增加。早些时候,使用各种方法开发了碰撞频率模型,但考虑气候变化影响的时间序列碰撞频率预测研究很少。因此,本研究的目的是利用大数据确定坠机与气候变化之间的相关性,并利用计量经济学模型和深度学习模型开发坠机频率模型。计量经济模型使用传统的时间序列方法——自回归积分移动平均和带外生变量的自回归积分移动平均。深度学习模型使用长短期记忆。本研究综合考虑气候变化和交通因素,探讨交通事故的发生。此外,它与早期的研究在详细说明独立变量对碰撞的影响方面有所不同。通过研究结果,可以确定气候变化对交通事故的影响,并为改善交通安全提供工程依据。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Exploration of highway accidents temporal changes using traffic and climate big data
Anthropogenic emissions of greenhouse gases accelerate global warming and contribute to further temperature increases. Global warming increases the likelihood of a shift towards more warm days and seasons and fewer cold days and seasons. Additionally, it causes changes in precipitation patterns. In earlier research, as ambient temperatures increase, cognitive performance decreases and the risk of crashing increases. Earlier, crash-frequency models were developed using various methodologies, but time-series crash-frequency prediction studies considering the effects of climate change are scarce. Therefore, the purpose of this study is to identify the correlation between crashes and climate change using big data and to develop crash-frequency models using an econometric model and a deep-learning model. Econometric models use autoregressive-integrated moving average and autoregressive-integrated moving average with exogenous variable that are traditional time-series methodologies. Deep-learning models use long short-term memory. This study approached crash occurrence by comprehensively considering climate change and traffic factors. Also, it differs from earlier studies in detailing the influence of independent variables on crashes. Through the results, the impact of climate change on accidents can be identified and it can contribute as an engineering basis for improving traffic safety.
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来源期刊
CiteScore
3.70
自引率
0.00%
发文量
15
审稿时长
>12 weeks
期刊介绍: Municipal Engineer publishes international peer reviewed research, best practice, case study and project papers reports. The journal proudly enjoys an international readership and actively encourages international Panel members and authors. The journal covers the effect of civil engineering on local community such as technical issues, political interface and community participation, the sustainability agenda, cultural context, and the key dimensions of procurement, management and finance. This also includes public services, utilities, and transport. Research needs to be transferable and of interest to a wide international audience. Please ensure that municipal aspects are considered in all submissions. We are happy to consider research papers/reviews/briefing articles.
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