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Neural network-based meta-modelling approach for estimating spatial distribution of air pollutant levels

机译:基于神经网络的元建模方法估算空气污染物水平的空间分布

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摘要

Continuous measurements of the air pollutant concentrations at monitoring stations serve as a reliable basis for air quality regulations. Their availability is however limited only at locations of interest. In most situations, the spatial distribution beyond these locations still remains uncertain as it is highly influenced by other factors such as emission sources, meteorological effects, dispersion and topographical conditions. To overcome this issue, a larger number of monitoring stations could be installed, but it would involve a high investment cost. An alternative solution is via the use of a deterministic air quality model (DAQM), which is mostly adopted by regulatory authorities for prediction in the temporal and spatial domain as well as for policy scenario development. Nevertheless, the results obtained from a model are subject to some uncertainties and it requires, in general, a significant computation time. In this work, a meta-modelling approach based on neural network evaluation is proposed to improve the estimated spatial distribution of the pollutant concentrations. From a dispersion model, it is suggested that the spatially-distributed pollutant levels (i.e. ozone, in this study) across a region under consideration is a function of the grid coordinates, topographical information, solar radiation and the pollutant's precursor emission. Initially, for training the model, the input-output relationship is extracted from a photochemical dispersion model called The Air Pollution Model and Chemical Transport Model (TAPM-CTM), and some of those input-output data are correlated with the ambient measurements collected at monitoring stations. Here, improved radial basis function networks, incorporating a proposed technique for selection of the network centres, will be developed and trained by using the data obtained and the forward selection approach. The methodology is then applied to estimate the ozone concentrations in the Sydney basin, Australia. Once executed, apart from the advantage of inexpensive computation, it provides more reliable results of the estimation and offers better predictions of ozone concentrations than those obtained by using the TAPM-CTM model only, when compared to the measurement data collected at monitoring stations.
机译:在监测站连续测量空气污染物的浓度可作为空气质量法规的可靠依据。但是,它们的可用性仅在感兴趣的位置受到限制。在大多数情况下,这些位置之外的空间分布仍然不确定,因为它受到其他因素(例如排放源,气象影响,分散和地形条件)的高度影响。为了克服这个问题,可以安装更多数量的监视站,但是这将涉及高投资成本。一种替代解决方案是通过使用确定性空气质量模型(DAQM),监管机构通常采用该模型来进行时空域的预测以及制定政策方案。尽管如此,从模型获得的结果仍存在一些不确定性,并且通常需要大量的计算时间。在这项工作中,提出了一种基于神经网络评估的元建模方法,以改善污染物浓度的估计空间分布。从弥散模型中可以看出,所考虑区域内污染物的空间分布水平(即本研究中的臭氧)是网格坐标,地形信息,太阳辐射和污染物前体排放的函数。最初,为了训练模型,从称为空气污染模型和化学迁移模型(TAPM-CTM)的光化学分散模型中提取输入-输出关系,并将其中一些输入-输出数据与在监测站。在这里,将通过使用获得的数据和前向选择方法来开发和训练结合了建议的用于选择网络中心的技术的改进的径向基函数网络。然后将该方法应用于估算澳大利亚悉尼盆地中的臭氧浓度。一旦执行后,与仅使用TAPM-CTM模型获得的估算值相比,与在监控站收集的测量数据相比,它不仅提供了廉价的计算优势,而且还提供了更可靠的估算结果,并提供了更好的臭氧浓度预测。

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