铁路道口事故数据模型 DAOP VII Madiun

Septia Astuti, Puspita Dewi, Windi Nopriyanto, Ahmad Ependi, I. Utomo
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引用次数: 0

摘要

本研究旨在寻找最合适的铁路平交道口事故数据回归模型,以获得对 DAOP VII Madiun 死亡人数有显著影响的因素。使用的变量包括道路宽度、右坡、左坡、列车频率、道口类型、大公里视角、小公里视角、预警系统、道路状况、道口闸门类型、左右警戒标志和隆隆声带标记。研究采用了泊松回归模型和负二项回归模型结果的比较方法。结果发现,负二叉回归模型的 Akaike 信息标准和均方根误差均小于泊松模型。由此可以得出结论,负二项回归模型是对 DAOP VII 马迪恩平交道口事故数据建模的更好选择。根据建模结果,对平交道口事故死亡人数有显著影响的因素是道路宽度、道路状况、道口闸门类型以及有无警戒标志。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Pemodelan Data Kecelakaan pada Perlintasan Sebidang Kereta Api DAOP VII Madiun
The study aims to find the most suitable regression model of railroad level crossings accident data to obtain factors significantly affect the number of fatalities in DAOP VII Madiun. The variables used were road width, right slope, left slope, train frequency, type of crossing, large kilometer angle of view, small kilometer angle of view, Early Warning System, road status, type of crossing gates, left and right caution sign, and rumble band markings. The study used comparing method between the results of the Poisson regression model and the Negative Binomial regression model. It is found that the Negative Binomial regression model has a smaller Akaike Information Criteria and Root Mean Square Error than the Poisson model. It can be concluded that the Negative Binomial regression model is a better choice in modeling accident data in DAOP VII Madiun level crossing. Based on the modeling result, the factors significantly affect the number of fatalities in level crossings accident are road width, road status, type of crossing gate, and the presence or absence of caution signs.
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