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A hybrid model for predicting carbon monoxide from vehicular exhausts in urban environments

机译:用于预测城市环境中车辆尾气中一氧化碳的混合模型

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Several deterministic-based air quality models evaluate and predict the frequently occurring pollutant concentration well but, in general, are incapable of predicting the 'extreme' concentrations. In contrast, the statistical distribution models overcome the above limitation of the deterministic models and predict the 'extreme' concentrations. However, the environmental damages are caused by both extremes as well as by the sustained average concentration of pollutants. Hence, the model should predict not only 'extreme' ranges but also the 'middle' ranges of pollutant concentrations, i.e. the entire range. Hybrid modelling is one of the techniques that estimates/predicts the 'entire range' of the distribution of pollutant concentrations by combining the deterministic based models with suitable statistical distribution models (Jakeman, et al., 1988). In the present paper, a hybrid model has been developed to predict the carbon monoxide (CO)(2) concentration distributions at one of the traffic intersections, Income Tax Office (ITO), in the Delhi city, where the traffic is heterogeneous(3) in nature and meteorology is 'tropical'. The model combines the general finite line source model (GFLSM) as its deterministic, and log logistic distribution (LLD) model, as its statistical components. The hybrid (GFLSM-LLD) model is then applied at the ITO intersection. The results show that the hybrid model predictions match with that of the observed CO concentration data within the 5-99 percentiles range. The model is further validated at different street location, i.e. Sirifort roadway. The validation results show that the model predicts CO concentrations fairly well (d = 0.91) in 10-95 percentiles range. The regulatory compliance is also developed to estimate the probability of exceedance of hourly CO concentration beyond the National Ambient Air Quality Standards (NAAQS) of India. (c) 2005 Elsevier Ltd. All rights reserved.
机译:几种基于确定性的空气质量模型可以很好地评估和预测经常发生的污染物浓度,但总的来说,它们无法预测“极端”浓度。相反,统计分布模型克服了确定性模型的上述限制,并预测了“极限”浓度。但是,对环境的损害既是由于极端情况造成的,也是由于污染物的平均浓度持续升高造成的。因此,该模型不仅应预测污染物浓度的“极限”范围,还应预测污染物浓度的“中间”范围,即整个范围。混合建模是通过将基于确定性的模型与合适的统计分布模型相结合来估算/预测污染物浓度分布的“整个范围”的技术之一(Jakeman等,1988)。在本文中,我们开发了一种混合模型来预测在交通不均一的德里市的一个交通路口所得税办公室(ITO)处的一氧化碳(CO)(2)浓度分布(3) )在自然界和气象学上是“热带的”。该模型将通用有限线源模型(GFLSM)作为确定性模型,以及对数逻辑分布(LLD)模型作为其统计组成部分。然后将混合(GFLSM-LLD)模型应用于ITO交叉点。结果表明,混合模型的预测结果与5-99%范围内观察到的CO浓度数据的预测结果相符。在不同的街道位置(即Sirifort道路)进一步验证了该模型。验证结果表明,该模型可以在10-95%的范围内很好地预测CO浓度(d = 0.91)。还制定了法规遵从性,以估算超过印度国家环境空气质量标准(NAAQS)的每小时CO浓度超标的可能性。 (c)2005 Elsevier Ltd.保留所有权利。

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