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首页> 外文期刊>Atmospheric Pollution Research >Multiple-inputa??multiple-output general regression neural networks model for the simultaneous estimation of traffic-related air pollutant emissions
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Multiple-inputa??multiple-output general regression neural networks model for the simultaneous estimation of traffic-related air pollutant emissions

机译:同时估算与交通有关的空气污染物排放的多输入多输出通用回归神经网络模型

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摘要

Traffic-related air pollutant emissions have become a global environmental problem, especially in urban areas. The estimation of pollutant emissions is based on complex models that require the use of detailed travel-activity data, which is often unavailable and in particular, in developing countries. In order to overcome this issue, an alternative multiple-inputa??multiple-output general regression neural network model, based on basic socioeconomic and transport related indicators, is proposed for the simultaneous prediction of sulphur oxides (SOx), nitrogen oxides (NOx), ammonia (NH3), non-methane volatile organic compounds (NMVOC) and particulate matter emissions at the national level. The best model, created using only six inputs, has MAPE (mean absolute percentage error) values on testing in the range of 12a??15% for all studied pollutants, except NMVOC (MAPE??=??21%). The obtained predictions for SOx, NH3 and PM10 emissions were in good agreement with the reported emissions (R2??a?¥??0.93), while the predictions for NOx and NMVOC are somewhat less accurate (R2??a????0.85). It can be concluded that the presented ANN approach can offer a simple and relatively accurate alternative method for the estimation of traffic-related air pollutant emissions.
机译:与交通有关的空气污染物排放已成为全球环境问题,尤其是在城市地区。污染物排放的估算基于复杂的模型,这些模型需要使用详细的旅行活动数据,而这些数据通常不可用,尤其是在发展中国家。为了克服这个问题,提出了一种基于基本社会经济和运输相关指标的多输入多输出多回归一般回归神经网络模型,用于同时预测硫氧化物(SOx),氮氧化物(NOx) ,氨(NH3),非甲烷挥发性有机化合物(NMVOC)和国家一级的颗粒物排放。仅使用六个输入创建的最佳模型,对于所有研究的污染物,除NMVOC以外,MAPE(平均绝对百分比误差)值在12a≤15%的范围内(MAPE≤21%)。所获得的SOx,NH3和PM10排放预测值与报告的排放量(R2≤a≥¥ 0.93)吻合良好,而NOx和NMVOC的预测准确性较低(R2≤a≤0.1)。 0.85)。可以得出结论,提出的人工神经网络方法可以提供一种简单且相对准确的替代方法,用于估算与交通有关的空气污染物排放。

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