调查样本地区氮氧化物水平预测模型和智能交通系统的使用情况

Q2 Environmental Science
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引用次数: 0

摘要

人工智能(AI)不同于自然智能,它拥有机器解决问题的能力。随着基于人工智能的模型越来越多地为预测空气污染提供可靠的方法,它们正变得越来越普遍。智能交通系统(ITS)有望成为可持续交通的重要解决方案。这些系统通过适当提高流动性,将通过交通防止空气污染在一个地区的集中。本研究旨在研究空气污染预测中使用的基于人工智能的模型,并证明智能交通系统在改善与交通相关的空气污染方面的有效性。以空气污染严重的科贾埃利省为样本地区,使用自适应神经模糊(ANFIS)和人工神经网络(ANN)对通过 Dilovası 区的轻型和重型车辆排放的与交通相关的氮氧化物污染物数量进行了建模。结果与道路运输排放计算程序(COPERT4)的输出结果进行了比较。评估结果显示,ANFIS 在氮氧化物污染物建模方面表现更好。根据预测结果,在氮氧化物超标的情况下,建议使用智能交通系统,将车辆引导至替代路线。为使用该系统,提出并评估了根据路线改道情况,按不同比例(包括单牌车、双牌车和轻型车)改道的方案。对方案结果的评估表明,在智能交通系统的协助下,将大量汽车改道至替代路线可显著减少排放量。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Investigation of models predicting NOx level in the sample region and the use of intelligent transportation system

Artificial intelligence (AI), unlike natural intelligence, possesses the ability to problem-solving activities by machines. As AI-based models increasingly provide robust approaches to predicting air pollution, they are becoming more widespread. Intelligent transportation systems (ITS) are poised to be significant solutions for sustainable mobility. These systems, by appropriately enhancing mobility, will prevent the concentration of air pollution in a region through transportation. This study aims to examine AI-based models used in air pollution prediction and demonstrate the effectiveness of intelligent transportation systems in improving transportation-related air pollution. As a sample region, Kocaeli Province, which has highly polluted air, the amounts of transportation-related NOx pollutants emitted from light and heavy vehicles passing through the Dilovası district were modeled using Adaptive Neuro-Fuzzy (ANFIS) and Artificial Neural Networks (ANN). The results were compared with the outputs of the Calculations of Emissions from Road Transport (COPERT4) program. The evaluations revealed that ANFIS performed better in modeling NOx pollutants. Based on the prediction results, in case of exceeding the NOx limit, an intelligent transportation system redirecting vehicles to alternative routes was suggested. For the use of this system, scenarios proposing the redirection of cars in varying proportions, including single-plate, double-plate, and light vehicles, depending on route redirection, were proposed and evaluated. The evaluation of scenario results showed that redirecting a large number of cars to alternative routes with the assistance of ITS resulted in a significant decrease in emissions.

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来源期刊
Environmental Challenges
Environmental Challenges Environmental Science-Environmental Engineering
CiteScore
8.00
自引率
0.00%
发文量
249
审稿时长
8 weeks
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