Faculty of Mechanical Engineering and Aeronautics, Rzeszow University of Technology, 35-959, Rzeszow, Poland.
Environ Sci Pollut Res Int. 2024 Jan;31(5):6944-6959. doi: 10.1007/s11356-023-31022-5. Epub 2023 Dec 29.
One of the increasingly common methods to counteract the increased fuel consumption of vehicles is start-stop technology. This paper introduces a methodology which presents the process of measuring and creating a computational model of CO emissions using artificial intelligence techniques for a vehicle equipped with start-stop technology. The method requires only measurement data of velocity, acceleration of vehicle, and gradient of road to predict the emission of CO. In this paper, three methods of machine learning techniques were analyzed, while the best prediction results are shown by the gradient boosting method. For the developed models, the results were validated using the coefficient of determination, the mean squared error, and based on visual evaluation of residual and instantaneous emission plots and CO emission maps. The developed models present a novel methodology and can be used for microscale environmental analysis.
一种越来越常见的抵消车辆燃料消耗增加的方法是启停技术。本文介绍了一种方法,该方法使用人工智能技术来测量和创建配备启停技术的车辆的 CO 排放计算模型。该方法仅需要测量车辆的速度、加速度和道路坡度的数据即可预测 CO 的排放。在本文中,分析了三种机器学习技术的方法,而梯度提升方法显示了最佳的预测结果。对于开发的模型,使用确定系数、均方误差以及基于残差和瞬时排放图和 CO 排放图的视觉评估来验证结果。开发的模型提出了一种新的方法,可用于微观环境分析。