Analysis of Driver’s Attention through the Internet of Things (IOTs) for Preventing Road Accident of Natural Gas Vehicles

Anyaporn Chaikheatisak, Pornpimol Chaiwuttisak
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Abstract

The objectives of this study were the following: (1) to investigate the correlations between data collected through Internet of Thing (IOT) and unintentional behavior of drivers (2) to create the models based on machine learning techniques to classify unintentional behavior of drivers who drive the natural gas vehicle and (3) to compare the forecasting accuracy of the learning model. Data studied were collected from the system of the natural gas transportation business in Thailand. There were 10,693 records starting from January 1, 2019 to December 31, 2019, for a period of 12 months. Moreover, KNIME Analytics Platform was used to create the model. The research findings were as follows: (1) duration time when the driver is not looking straight, driving speeds, distance coverage of the driver faces that is not looking straight detecting by a camera and the latitude and longitude coordinates have a relationship with unintentional behavior of the driver; and (2) Neural Network with two hidden layer and 5 neurons in the hidden layer performs the highest accuracy (873%), followed by Support Vector Machine with S3.9%, of accuracy. It can be said that Neural Network can be used to create an efficient predictive model.
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基于物联网的天然气车辆驾驶员注意力预防交通事故分析
本研究的目的是:(1)研究通过物联网(IOT)收集的数据与驾驶员无意行为之间的相关性;(2)建立基于机器学习技术的模型,对驾驶天然气汽车的驾驶员的无意行为进行分类;(3)比较学习模型的预测精度。所研究的数据是从泰国天然气运输业务系统中收集的。自2019年1月1日至2019年12月31日,共记录10693条,为期12个月。并利用KNIME分析平台建立模型。研究结果表明:(1)驾驶员不直视的持续时间、行驶速度、摄像机检测的驾驶员不直视面部的距离覆盖范围和经纬度坐标与驾驶员的无意行为有一定的关系;(2) 2隐层5神经元的神经网络准确率最高,为873%,其次是支持向量机,准确率为S3.9%。可以说,神经网络可以用来创建一个高效的预测模型。
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