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福建省空气负氧离子分布特征及气象预测模型北大核心CSCD
引用本文:张春桂.福建省空气负氧离子分布特征及气象预测模型北大核心CSCD[J].应用气象学报,2023,34(2):193-205.
作者姓名:张春桂
作者单位:1.福建省气象科学研究所, 福州 350008
基金项目:福建省科技计划社会发展引导性(重点)项目(2020Y0072)。
摘    要:负氧离子是评价空气新鲜和清洁程度的重要指标。利用2018—2021年福建省负氧离子观测站数据分析负氧离子浓度的时空变化特征,并采用多元线性回归方法、多元逻辑回归方法和LightGBM机器学习方法建立负氧离子浓度预测模型。结果表明:福建省负氧离子资源十分丰富,中海拔区(350~550 m)年平均负氧离子浓度最高,低海拔区次之,高海拔区最小。负氧离子浓度日变化特征呈一峰一谷型,04:00—06:00(北京时,下同)达到峰值,12:00—13:00达到谷值;中海拔区负氧离子浓度季节变化较大,季节平均浓度从大到小依次为春季、夏季、冬季、秋季,而高、低海拔区季节变化相对较小。福建省不同海拔地区负氧离子浓度与湿度、降水和能见度均呈显著正相关,负氧离子浓度与气温、风速和气压显著相关,但不同海拔地区的相关性有所不同。机器学习方法对不同海拔地区负氧离子浓度数值的拟合效果比多元线性回归方法有明显提升,对负氧离子浓度等级拟合的准确率比多元逻辑回归方法提高7%~12%,且在绝大部分等级上的准确率均高于多元逻辑回归方法。

关 键 词:空气负氧离子  气象因子  LightGBM机器学习  时空变化特征  预测模型
收稿时间:2022-09-27

Distribution Characteristics and Meteorological Prediction Model of Air Negative Oxygen Ions in Fujian
Institution:1.Fujian Institute of Meteorological Science, Fuzhou 3500082.Fujian Key Laboratory of Severe Weather, Fuzhou 350008
Abstract:The concentration of negative oxygen ions in air is an important index to evaluate the freshness and cleanliness of air. In recent years, it has become one hot topic concerned by governments and the public. From 2018 to 2021, Fujian has set up a number of observation stations for negative oxygen ions and meteorological factors over the entire province including seashore, mountain, humanities landscape areas, with good representativeness, reliability and continuity. Using the local observations, the spatial and temporal variations of negative oxygen ions concentration in Fujian is analyzed, and the negative oxygen ions concentration and grade prediction models are established based on multiple linear regression method and LightGBM machine learning method. The results show that, negative oxygen ions in Fujian is very rich and is very good for human health. The annual average concentration is between 708-8315 cm-3, which is highest in high altitude, next in low altitude, and the concentration in middle altitude is the smallest. Overall, the annual average concentration of negative oxygen ions of nearly 80% site is beyond the standard of fresh air defined by World Health Organization. The diurnal variation of the concentration of negative oxygen ions show the characteristics of a peak and a trough, with the peak value mainly occurring at 0400-0600 BT and the trough value at 1200-1300 BT. The seasonal variation of negative oxygen ions concentration is more complex. The seasonal variation in the middle altitude area is greater, the seasonal average concentration in descending order is spring, summer, winter and autumn, while the seasonal variation in the high and low altitude area is relatively small. The main meteorological factors affecting the concentration of negative oxygen ions are temperature, humidity, precipitation, wind speed, air pressure and visibility. The concentration of negative oxygen ions is significantly positively correlated with humidity, precipitation and visibility at different altitudes, while the concentration of negative oxygen ions is significantly correlated with air temperature, wind speed and air pressure, but the correlation is different at different altitudes. The comparisons indicate the effects of LightGBM machine learning model are better than those of the traditional multiple linear regression model at different altitudes. The overestimation of negative oxygen ions concentration prediction is significantly improved, and the prediction grade of negative oxygen ions concentration can be improved by up to 12%. The results of logistic regression show that the traditional logistic regression basically has no predictive ability for small samples, while the LightGBM method has good learning ability in the case of small samples or unbalanced samples.
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