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Abnormal Driving Detection Based on Accelerometer and Gyroscope Sensor on Smartphone using Artificial Neural Network (ANN) Algorithm

机译:基于人工神经网络算法的智能手机加速度传感器和陀螺仪传感器异常驾驶检测

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Transportation has become one of the needs of human life. One of the most used transportation in Indonesia is a motorcycle. This transportation is reliable, has a wide variety of uses, is capable of handling traffic jams, and is very economical. But motorbikes have a relatively high risk for the safety of the rider compared to cars. With driver behavior and road congestion conditions, accidents often occur. In this research, we observed the movement of the driver through a smartphone and built an application that was able to provide a warning to motorists. In this system we use 2 types of sensors, Accelerometer and Gyroscope sensors which are generally the basic features of a smartphone. We adopt a Machine Learning-based movement identification process with an Artificial Neural Network (ANN) algorithm. ANN will do what movements it does based on the data obtained from the Accelerometer and Gyroscope sensor values. The application is installed on a smartphone and put it on a vehicle with a fixed position. The device will calculate the activity based on several predetermined categories of the driver status. The status categories are normal, zig-zag, sleepy, turn right, turn left, U-turn, sudden braking, sudden acceleration, and speed bumps. The level of accuracy generated by Machine Learning using the Artificial Neural Network Algorithm in this research was 96,2%.
机译:运输已成为人类生活的需求之一。印度尼西亚最常用的运输之一是摩托车。这种运输可靠,拥有各种各样的用途,能够处理交通拥堵,是非常经济的。但与汽车相比,摩托车的风险相对较高。随着驾驶员行为和道路拥堵条件,经常发生事故。在这项研究中,我们观察了驾驶员通过智能手机的运动,并建立了能够向驾驶者提供警告的应用程序。在该系统中,我们使用2种类型的传感器,加速度计和陀螺仪传感器,这些传感器通常是智能手机的基本功能。我们采用基于机器学习的运动识别过程,具有人工神经网络(ANN)算法。 Ann将根据从加速度计和陀螺仪传感器值获得的数据进行操作。该应用程序安装在智能手机上,并将其放在具有固定位置的车辆上。该设备将基于若干预定类别的驱动器状态计算活动。状态类是正常的,Zig-Zag,困,右转,左转,掉头,突然制动,突然加速和速度凸起。在该研究中使用人工神经网络算法产生的机器学习产生的精度水平为96,2%。

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