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Vehicle Fuel Consumption Prediction Method Based on Driving Behavior Data Collected from Smartphones

机译:基于智能手机收集的驾驶行为数据的车辆燃料消耗预测方法

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Transportation is an important factor that affects energy consumption, and driving behavior is one of the main factors affecting vehicle fuel consumption. The purpose of this paper is to improve fuel consumption monitoring databases based on mobile phone data. Based on the mobile phone terminals and on-board diagnostic system (OBD) installed in taxis, driving behavior data and fuel consumption data are extracted, respectively. By matching the driving behavior data collected by a mobile phone with the fuel consumption data collected by OBD, the correlation between driving behavior and fuel consumption is explored, so that vehicle fuel consumption could be predicted based on mobile phone data. The fuel consumption prediction models are built using back propagation (BP) neural network, support vector regression (SVR), and random forests. The results show that the average speed, average speed except for idle (ASEI), average acceleration, average deceleration, acceleration time percentage, deceleration time percentage, and cruising time percentage are important indicators for fuel consumption evaluation. All three models could predict fuel consumption accurately, with an absolute relative error less than 10%. The random forest model is proved to have the highest accuracy and runs faster, making it suitable for wide application. This method lays a foundation for monitoring database improvement and fine management of urban transportation fuel consumption.
机译:运输是影响能源消耗的重要因素,驾驶行为是影响车辆燃料消耗的主要因素之一。本文的目的是根据手机数据改善燃料消耗监控数据库。基于安装在出租车中的移动电话终端和板载诊断系统(OBD),分别提取驾驶行为数据和燃料消耗数据。通过匹配由由OBD收集的燃料消耗数据由移动电话收集的驾驶行为数据,探索了驾驶行为和燃料消耗之间的相关性,从而可以基于移动电话数据预测车辆燃料消耗。燃料消耗预测模型使用后传播(BP)神经网络,支持向量回归(SVR)和随机林。结果表明,平均速度,平均速度除了空闲(ASEI),平均加速度,平均减速,加速时间百分比,减速时间百分比和巡航时间百分比是燃料消耗评估的重要指标。所有三种模型都可以准确地预测燃料消耗,绝对相对误差小于10%。随机森林模型被证明具有最高的精度并更快地运行,使其适用于广泛应用。该方法为监测数据库改进和城市交通燃料消耗的精细管理奠定了基础。

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