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Research and Application of an Air Quality Early Warning System Based on a Modified Least Squares Support Vector Machine and a Cloud Model

机译:基于改进的最小二乘支持向量机和云模型的空气质量预警系统的研究与应用

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摘要

The worsening atmospheric pollution increases the necessity of air quality early warning systems (EWSs). Despite the fact that a massive amount of investigation about EWS in theory and practicality has been conducted by numerous researchers, studies concerning the quantification of uncertain information and comprehensive evaluation are still lacking, which impedes further development in the area. In this paper, firstly a comprehensive warning system is proposed, which consists of two vital indispensable modules, namely effective forecasting and scientific evaluation, respectively. For the forecasting module, a novel hybrid model combining the theory of data preprocessing and numerical optimization is first developed to implement effective forecasting for air pollutant concentration. Especially, in order to further enhance the accuracy and robustness of the warning system, interval forecasting is implemented to quantify the uncertainties generated by forecasts, which can provide significant risk signals by using point forecasting for decision-makers. For the evaluation module, a cloud model, based on probability and fuzzy set theory, is developed to perform comprehensive evaluations of air quality, which can realize the transformation between qualitative concept and quantitative data. To verify the effectiveness and efficiency of the warning system, extensive simulations based on air pollutants data from Dalian in China were effectively implemented, which illustrate that the warning system is not only remarkably high-performance, but also widely applicable.
机译:日益严重的大气污染增加了空气质量预警系统(EWS)的必要性。尽管许多研究人员对EWS进行了理论和实用性的大量研究,但仍缺乏有关不确定信息量化和综合评估的研究,这阻碍了该领域的进一步发展。本文首先提出了一个全面的预警系统,该系统包括两个重要的必不可少的模块,分别是有效的预报和科学评估。对于预测模块,首先开发了一种结合数据预处理和数值优化理论的新型混合模型,以实现对空气污染物浓度的有效预测。特别是,为了进一步提高预警系统的准确性和鲁棒性,实施了区间预测以量化预测所产生的不确定性,这可以通过为决策者使用点预测来提供重要的风险信号。对于评估模块,建立了基于概率和模糊集理论的云模型,以进行空气质量的综合评估,从而可以实现定性概念和定量数据之间的转换。为了验证预警系统的有效性和有效性,有效地基于来自中国大连的空气污染物数据进行了广泛的模拟,这表明该预警系统不仅具有出色的性能,而且具有广泛的适用性。

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