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Inclusion of phone use while driving data in predicting distraction-affected crashes

机译:在预测受分心影响的碰撞时纳入驾驶数据时的手机使用情况

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Introduction: Given the tremendous number of lives lost or injured, distracted driving is an important safety area to study. With the widespread use of cellphones, phone use while driving has become the most common distracted driving behavior. Although researchers have developed safety performance functions (SPFs) for various crash types, SPFs for distraction-affected crashes are rarely studied in the literature. One possible reason is the lack of critical distracted behavior information in the commonly used safety data (i.e., roadway inventory, traffic, and crash counts). Recently, the frequency of phone use while driving (referred to as phone use data) is recorded by mobile application companies and has become available to safety researchers. The primary objective of this study is to examine if phone use data can potentially predict distracted-affected crashes. Method: The authors first integrated phone use data with roadway inventory, traffic, and crash data in Texas. Then, the Random Forest (RF) algorithm was applied to assess the significance of the feature phone use while driving for predicting the number of distraction-affected crashes on a road segment. Further, this study developed two SPFs for distraction affected crashes with and without the phone use data, separately. Both SPFs were assessed in terms of model fitting and prediction performances. Results: RF results rank the frequency of phone use as an important factor contributing to the number of distraction-affected crashes. Performance evaluations indicated that the inclusion of phone use data in the SPFs consistently improved both fitting and prediction abilities to predict distracted-affected crashes. Practical Applications: The phone use data provide new insights into the safety analyses of distraction-affected crashes, which cannot be achieved by only using the conventional roadway inventory and crash data. Therefore, safety researchers and practitioners are encouraged to incorporate the emerging data sources in reducing distraction-affected crashes. (c) 2021 National Safety Council and Elsevier Ltd. All rights reserved.
机译:简介:鉴于有大量生命损失或受伤,分心驾驶是一个需要研究的重要安全领域。随着手机的广泛使用,开车时使用手机已成为最常见的分心驾驶行为。尽管研究人员已经为各种碰撞类型开发了安全性能函数 (SPF),但文献中很少研究受分心影响的碰撞的 SPF。一个可能的原因是常用的安全数据(即道路库存、交通和碰撞计数)中缺乏关键的分心行为信息。最近,移动应用公司记录了驾驶时使用手机的频率(称为手机使用数据),并可供安全研究人员使用。本研究的主要目的是检查手机使用数据是否可以潜在地预测受分心影响的崩溃。方法:作者首先将电话使用数据与德克萨斯州的道路库存、交通和车祸数据相结合。然后,应用随机森林(RF)算法评估驾驶时使用功能手机对预测路段上受分心影响的碰撞数量的重要性。此外,本研究开发了两种 SPF,用于在有和没有手机使用数据的情况下受分心影响的崩溃。根据模型拟合和预测性能评估了两个SPF。结果:射频结果将手机使用频率列为导致分心影响的崩溃数量的重要因素。性能评估表明,在SPF中包含手机使用数据始终提高了预测分心影响碰撞的拟合和预测能力。实际应用:手机使用数据为受干扰的碰撞的安全分析提供了新的见解,而仅使用传统的道路清单和碰撞数据是无法实现的。因此,鼓励安全研究人员和从业人员将新兴数据源纳入减少受分心影响的碰撞。(c) 2021 年国家安全委员会和爱思唯尔有限公司。保留所有权利。

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