A Study on the Analysis of Falling Objects from Vehicle Accidents through AI Learning-Based Keyword Analysis

Hyeongjun Kim
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Abstract

Traffic accidents caused by road drops have been steadily increasing in recent years, and have become a social issue. In this study, keyword analysis using big data-based AI was conducted to prevent accidents caused by domestic road drops based on traffic accident data from 2015 to 2019. Keyword analysis performed text mining using Python. According to the analysis, the biggest causes of road drop accidents were poor loading and overloading. Consequently a crackdown on small trucks within the haulage industry is urgently needed. Meanwhile, road managers do not have the authority to crack down on the vehicles that are in violation of domestic load regulations, and the method of fixing the load has not been specifically proposed as a law or a related clause. Therefore, there is a problem in that the criteria for determining violations when cracking down on poor loading can only be changed according to the supervision of the regulator. In order to address the limits of the crackdown on poorly loaded vehicles in Korea, preparing a manual that can be used for driver training or crackdown is urgently required, also new legal regulations that dictate specific standards are needed with haste. In future research, new R&D research projects such as the prevention of road drop by classification of the type of traffic accident and analysis of road drop type data mining using big data should be proposed.
基于AI学习的汽车事故坠物分析关键字分析研究
近年来,由路面下降引起的交通事故一直在稳步增加,并已成为一个社会问题。本研究基于2015 - 2019年的交通事故数据,利用基于大数据的人工智能进行关键词分析,预防国内道路掉落事故。关键字分析使用Python进行文本挖掘。据分析,造成路面跌落事故的最大原因是装载不良和超载。因此,迫切需要在运输行业内打击小型卡车。与此同时,道路管理者没有权力对违反国内载重规定的车辆进行打击,固定载重的方法也没有作为法律或相关条款具体提出。因此,在打击不良负荷时,判定违规的标准只能根据监管机构的监督而改变,这是一个问题。为了解决国内对载重不足车辆的管制的局限性,迫切需要制定驾驶员培训或管制手册,并尽快制定明确标准的法律规定。在未来的研究中,应提出新的研发研究项目,如通过交通事故类型分类预防道路跌落、利用大数据分析道路跌落类型数据挖掘等。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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