Spatiotemporal Hybrid Air Pollution Early Warning System of Urban Agglomeration Based on Adaptive Feature Extraction and Hesitant Fuzzy Cognitive Maps

Xiaoyang Gu, Hongmin Li, Henghao Fan
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Abstract

Long-term exposure to air pollution will pose a serious threat to human health. Accurate prediction can help people reduce exposure risks and promote environmental pollution control. However, most previous studies have ignored the spatial spillover of air pollution, i.e., that the current region’s air quality is also correlated with that of geographically adjacent areas. Therefore, this paper proposes an innovative spatiotemporal hybrid early warning system based on adaptive feature extraction and improved fuzzy cognition maps. Firstly, a spatial spillover analysis model based on the Moran index and local gravitational clustering was proposed to capture the diffusion and concentration characteristics of air pollution between regions. Then, an adaptive feature extraction model based on an optimized Hampel filter was put forward to process and correct the outliers in the original series. Finally, a hesitant fuzzy information optimized fuzzy cognitive maps model was proposed to forecast the air quality of urban agglomeration. The experimental results show that the air quality forecasting accuracy of urban agglomerations can be significantly improved when the geographical conditions and other interactions among cities are comprehensively considered, and the proposed model outperformed other benchmarks and can be used as a powerful analytical tool during urban agglomeration air quality management.
基于自适应特征提取和犹豫模糊认知地图的城市群大气污染时空混合预警系统
长期暴露在空气污染中会对人体健康造成严重威胁。准确的预测可以帮助人们降低暴露风险,促进环境污染控制。然而,以往的研究大多忽略了空气污染的空间外溢性,即当前区域的空气质量也与地理相邻区域的空气质量相关。为此,本文提出了一种基于自适应特征提取和改进模糊认知图的创新时空混合预警系统。首先,提出了基于Moran指数和局部引力聚类的空间溢出分析模型,以捕捉区域间空气污染的扩散和浓度特征。然后,提出了一种基于优化Hampel滤波器的自适应特征提取模型,对原始序列中的异常值进行处理和校正。最后,提出了一个犹豫模糊信息优化模糊认知地图模型来预测城市群的空气质量。实验结果表明,综合考虑城市间的地理条件和其他相互作用,可以显著提高城市群空气质量预测的准确性,并且该模型优于其他基准,可以作为城市群空气质量管理的有力分析工具。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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