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Prediction of daily maximum ozone threshold exceedances by preprocessing and ensemble artificial intelligence techniques: Case study of Hong Kong

机译:通过预处理和集成人工智能技术预测每日最大臭氧阈值超标:香港案例研究

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摘要

The objective of this study was to apply preprocessing and ensemble artificial intelligence classifiers to forecast daily maximum ozone threshold exceedances in the Hong Kong area. Preprocessing methods, including over-sampling, under-sampling, and the synthetic minority over-sampling technique, were employed to address the imbalance data problem. Ensemble algorithms are proposed to improve the classifier's accuracy. Moreover, a distance-based regional data set was generated to capture ozone transportation characteristics. The results show that a combination of preprocessing methods and ensemble algorithms can effectively forecast ozone threshold exceedances. Furthermore, this study advises on the relative importance of the different variables for ozone pollution prediction and confirms that regional data facilitate better forecasting. The results of this research can be promoted by the Hong Kong authorities for improving the existing forecasting tools. Moreover, the results can facilitate researchers' selection of the appropriate techniques in their future research. (C) 2016 Elsevier Ltd. All rights reserved.
机译:这项研究的目的是应用预处理和集成人工智能分类器来预测香港地区每天的最大臭氧阈值超出量。预处理方法包括过采样,欠采样和合成少数过采样技术,用于解决不平衡数据问题。提出了集成算法以提高分类器的准确性。此外,还生成了一个基于距离的区域数据集,以捕获臭氧的运输特征。结果表明,预处理方法和集成算法的组合可以有效地预测臭氧阈值超出。此外,本研究建议了臭氧变量预测中不同变量的相对重要性,并确认区域数据有助于更好地进行预测。香港当局可以推广这项研究的结果,以改进现有的预报工具。而且,结果可以促进研究人员在未来的研究中选择合适的技术。 (C)2016 Elsevier Ltd.保留所有权利。

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