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一种新的事故频率预测框架:基于大墨尔本基于主体活动模型的地理支持向量回归。

A novel framework for crash frequency prediction: Geographic support vector regression based on agent-based activity models in Greater Melbourne.

机构信息

Department of Engineering, School of Computing, Engineering and Mathematical Sciences, La Trobe University, Plenty Rd, Bundoora, VIC 3086, Australia.

Urban and Regional Planning, Social Inquiry, School of Humanities and Social Sciences, La Trobe University, Department of Social Inquiry, Plenty Rd, Bundoora, VIC 3086, Australia.

出版信息

Accid Anal Prev. 2024 Nov;207:107747. doi: 10.1016/j.aap.2024.107747. Epub 2024 Aug 19.

Abstract

The field of spatial analysis in traffic crash studies can often enhance predictive performance by addressing the inherent spatial dependence and heterogeneity in crash data. This research introduces the Geographical Support Vector Regression (GSVR) framework, which incorporates generated distance matrices, to assess spatial variations and evaluate the influence of a wide range of factors, including traffic, infrastructure, socio-demographic, travel demand, and land use, on the incidence of total and fatal-or-serious injury (FSI) crashes across Greater Melbourne's zones. Utilizing data from the Melbourne Activity-Based Model (MABM), the study examines 50 indicators related to peak hour traffic and various commuting modes, offering a detailed analysis of the multifaceted factors affecting road safety. The study shows that active transportation modes such as walking and cycling emerge as significant indicators, reflecting a disparity in safety that heightens the vulnerability of these road users. In contrast, car commuting, while a consistent factor in crash risks, has a comparatively lower impact, pointing to an inherent imbalance in the road environment. This could be interpreted as an unequal distribution of risk and safety measures among different types of road users, where the infrastructure and policies may not adequately address the needs and vulnerabilities of pedestrians and cyclists compared to those of car drivers. Public transportation generally offers safer travel, yet associated risks near train stations and tram stops in city center areas cannot be overlooked. Tram stops profoundly affect total crashes in these areas, while intersection counts more significantly impact FSI crashes in the broader metropolitan area. The study also uncovers the contrasting roles of land use mix in influencing FSI versus total crashes. The proposed framework presents an approach for dynamically extracting distance matrices of varying sizes tailored to the specific dataset, providing a fresh method to incorporate spatial impacts into the development of machine learning models. Additionally, the framework extends a feature selection technique to enhance machine learning models that typically lack comprehensive feature selection capabilities.

摘要

交通碰撞研究中的空间分析领域通过解决碰撞数据中的固有空间依赖性和异质性,通常可以提高预测性能。本研究引入了地理支持向量回归(GSVR)框架,该框架结合了生成的距离矩阵,以评估空间变化,并评估包括交通、基础设施、社会人口统计学、出行需求和土地利用在内的广泛因素对大墨尔本区域内总碰撞和致命或严重伤害(FSI)碰撞发生率的影响。本研究利用墨尔本基于活动的模型(MABM)的数据,检查了与高峰小时交通和各种通勤模式相关的 50 个指标,对影响道路安全的多方面因素进行了详细分析。研究表明,步行和骑自行车等主动交通方式是重要的指标,反映了这些道路使用者安全状况的差异,使他们更加脆弱。相比之下,汽车通勤虽然是碰撞风险的一个持续因素,但影响相对较小,表明道路环境存在内在的不平衡。这可以解释为不同类型的道路使用者之间的风险和安全措施分配不均,基础设施和政策可能没有充分考虑到行人与骑自行车者的需求和脆弱性,而这些需求和脆弱性与汽车司机相比有所不同。公共交通通常提供更安全的出行,但不能忽视市中心地区火车站和电车车站附近的相关风险。电车车站对这些地区的总碰撞有深远的影响,而交叉口数量对更广泛的大都市区的 FSI 碰撞影响更大。研究还揭示了土地利用组合在影响 FSI 与总碰撞方面的不同作用。所提出的框架提出了一种动态提取特定数据集的不同大小的距离矩阵的方法,为将空间影响纳入机器学习模型的开发提供了一种新方法。此外,该框架还扩展了一种特征选择技术,以增强通常缺乏全面特征选择能力的机器学习模型。

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