Civil Engineering Department, College of Engineering and Petroleum, Kuwait University, Safat, Kuwait.
Int J Inj Contr Saf Promot. 2023 Dec;30(4):593-611. doi: 10.1080/17457300.2023.2242331. Epub 2023 Aug 11.
The current work presented a comparative analysis of traffic demand and safety skills before and after control measures during the COVID-19 epidemic, acquired time-series change data curves, and constructed a prediction model after determining the trend of traffic demand over time. From a data analysis perspective, the paper draws some interesting conclusions about long span, coarse sampling studies. In terms of the study population, the paper did focus on the specificity of the global epidemic. Kuwait was selected as a case study. Traffic demand analysis was conducted using a Structural Equation Model (SEM), Auto-Regressive Integrated Moving Average (ARIMA), and safety skills questionnaire along with flow charts and demographic variables. These methods were utilized to study the impact of COVID-19 on traffic congestion and safety skills as well as to forecast the future traffic volumes. Results showed that traffic congestion had a significant reduction during COVID-19 as a result of the preventive safety measures taken to control the spread of the virus. Such reduced traffic volume was associated with a decrease in traffic violations and an increase in the safety skills and PM skills of drivers.
当前的工作对 COVID-19 疫情期间控制措施前后的交通需求和安全技能进行了比较分析,获取了时间序列变化数据曲线,并在确定交通需求随时间变化的趋势后构建了预测模型。从数据分析的角度来看,本文对跨度长、采样粗的研究得出了一些有趣的结论。在研究人群方面,本文确实关注了全球疫情的特殊性。选择科威特作为案例研究。使用结构方程模型(SEM)、自回归综合移动平均(ARIMA)以及安全技能问卷和流程图以及人口统计学变量对交通需求进行了分析。这些方法用于研究 COVID-19 对交通拥堵和安全技能的影响,并预测未来的交通量。结果表明,由于采取了预防安全措施来控制病毒的传播,COVID-19 期间的交通拥堵显著减少。这种交通量的减少与交通违法行为的减少以及驾驶员安全技能和 PM 技能的提高有关。