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A review of artificial neural network models for ambient air pollution prediction

机译:人工神经网络模型在环境空气污染预测中的应用

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摘要

Research activity in the field of air pollution forecasting using artificial neural networks (ANNs) has increased dramatically in recent years. However, the development of ANN models entails levels of uncertainty given the black-box nature of ANNs. In this paper, a protocol by Maier et al. (2010) for ANN model development is presented and applied to assess journal papers dealing with air pollution forecasting using ANN models. The majority of the reviewed works are aimed at the long-term forecasting of outdoor PM10, PM2.5, and oxides of nitrogen, and ozone. The vast majority of the identified works utilised meteorological and source emissions predictors almost exclusively. Furthermore, ad-hoc approaches are found to be predominantly used for determining optimal model predictors, appropriate data subsets and the optimal model structure. Multilayer perceptron and ensemble-type models are predominantly implemented. Overall, the findings highlight the need for developing systematic protocols for developing powerful ANN models.
机译:近年来,使用人工神经网络(ANN)进行空气污染预测的研究活动急剧增加。然而,鉴于人工神经网络的黑匣子性质,人工神经网络模型的发展需要一定程度的不确定性。在本文中,Maier等人的协议。 (2010年)提出了ANN模型的开发方法,并用于评估使用ANN模型处理空气污染预测的期刊论文。大部分经过审查的工作都是针对室外PM10,PM2.5,氮氧化物和臭氧的长期预报。绝大多数已查明的作品几乎全部利用了气象和源排放预测因子。此外,发现临时方法主要用于确定最佳模型预测变量,适当的数据子集和最佳模型结构。多层感知器和集成型模型是主要实现的。总体而言,研究结果强调了开发系统协议以开发强大的ANN模型的必要性。

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