[北京市区空气花粉含量的季节预测模型]。

Q2 Environmental Science 环境科学 Pub Date : 2024-11-08 DOI:10.13227/j.hjkx.202312004
Zuo-Fang Zheng, Yao-Ting Wang, Wen Qi, Hua Gao
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引用次数: 0

摘要

空气中的花粉被认为是可引起人类过敏反应的空气污染物之一,可导致一系列过敏性疾病的发生或加重。最新研究显示,北京城区变应性鼻炎患者花粉过敏原阳性率超过80%。准确的花粉含量预测可以为易感群体提供更有效的帮助。利用2021 - 2022年北京城区多个站点的花粉季节实测资料,分析了北京城区花粉含量的时空分布特征。结果表明:影响北京市区春季花粉含量的气象因子主要有日平均风速、3日平均气温、水汽压、日平均、气温和积温;影响秋季花粉含量的主要气象因子为3日平均气温、水汽压、最低地表温度和日平均气温。此外,研究还发现,北京城区当前空气花粉含量与气象要素之间存在一致的空间相关性,但这种相关性存在显著的季节差异。在此基础上,运用Granger因果检验方法筛选影响北京城区空气花粉含量的主要气象因子,并基于支持向量机方法(SVM)和多元线性回归理论建立了北京城区不同季节空气花粉含量的预测模型。对2023年预测结果的检验表明,考虑季节差异的SVM模型和多元线性回归模型均能较好地预测花粉含量的日分布趋势。花粉含量预测值与实测值的总体相关系数分别为0.693和0.636 (P <0.01)。此外,两种模型对年内几次重度花粉污染事件均有较好的预测能力。2023年春季,SVM模型和线性模型的预测精度分别为61.2%和60.1%。秋季预报准确率分别为68.1%和66.7%。性能优于现有商业模型,特别是在重污染事件预测的跨层误差改进方面。研究结果为进一步完善北京地区空气花粉含量预测技术提供了参考价值。
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[Seasonal Prediction Model for Airborne Pollen Content in Beijing Urban Area].

Airborne pollen is considered to be one of the air pollutants that can cause allergic reactions in humans, leading to the occurrence or aggravation of a series of allergic diseases. The latest study showed that the positive rate of pollen allergens in allergic rhinitis patients in urban areas of Beijing exceeded 80%. Accurate prediction of pollen content could provide more effective assistance to susceptible populations. Based on the measured data from multiple stations in the urban area of Beijing during the pollen season from 2021 to 2022, the spatiotemporal distribution characteristics of pollen content were analyzed. The results showed that the main meteorological factors affecting spring pollen content in the urban area of Beijing were daily average wind speed, 3-day average temperature, water vapor pressure, daily average, temperature, and accumulated temperature. The main meteorological factors affecting autumn pollen content were 3-day average temperature, water vapor pressure, minimum surface temperature, and daily average temperature. In addition, it was found that there was a consistent spatial correlation between the current air pollen content and meteorological elements in the urban area of Beijing, but this correlation had significant seasonal differences. Furthermore, the Granger causality test method was applied to select the main meteorological factors that affected airborne pollen content in the urban area of Beijing, and two prediction models for air pollen content in the Beijing urban area for different seasons were established based on the support vector machine method (SVM) and multiple linear regression theory. The test of the prediction results for 2023 showed that both the SVM model considering seasonal differences and the multiple linear regression model could predict the daily distribution trend of pollen content well. The overall correlation coefficients between the predicted pollen content and the measured values were 0.693 and 0.636 (P <0.01), respectively. Additionally, both models had good predictive ability for several severe content pollen pollution events within the year. In the spring of 2023, the prediction accuracy of the SVM model and linear model were 61.2% and 60.1%, respectively. During autumn, the prediction accuracy was 68.1% and 66.7%, respectively. The performance was better than that of existing business models, especially in the cross-level error improvement of heavy pollution event prediction. The research results provide reference value for further improving the prediction technology of airborne pollen content in the Beijing area.

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来源期刊
环境科学
环境科学 Environmental Science-Environmental Science (all)
CiteScore
4.40
自引率
0.00%
发文量
15329
期刊介绍:
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