人工神经网络
多层感知器
空气污染
预测建模
计算机科学
领域(数学)
机器学习
人工智能
感知器
污染
环境科学
数学
生物
纯数学
化学
有机化学
生态学
作者
Sheen Mclean Cabaneros,John Kaiser Calautit,Ben Richard Hughes
标识
DOI:10.1016/j.envsoft.2019.06.014
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.
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