利用基于树的算法确定亚兹德市 PM10 浓度季节性变化中与天气和某些类型的空气污染物有关的有效因素

Q4 Engineering
Zohre Ebrahimi-Khusfi, Mohsen Ebrahimi-Khusfi, Ali Reza Nafarzadegan, Mojtaba Soleimani-Sardo
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引用次数: 0

摘要

简介本研究旨在利用随机森林(RF)和极端梯度提升(Xgboost)模型确定影响亚兹德市 10 微米以下颗粒物(PM10)季节性变化的天气参数和空气污染物。材料与方法:所需数据来自 2018 年至 2022 年。应用 Levene 检验调查 4 个不同季节 PM10 值方差的显著差异,并使用 Boruta 算法选择最佳预测变量。RF 和 Xgboost 模型使用三分之二的输入数据进行了训练,并使用剩余数据集进行了测试。根据 R2、均方根误差 (RMSE)、平均绝对误差 (MAE) 和 Nash-Sutcliffe 模型效率系数 (NSE) 对它们的性能进行了评估。结果显示在所有研究季节,RF 在预测 PM10 方面都表现出较高的性能(R2 > 0.85;RMSE < 22)。沙尘浓度和相对湿度对春季 PM10 变化的影响大于其他变量。在夏季,风向和臭氧被认为是影响 PM10 浓度的最重要变量。在秋季和冬季,空气污染物和沙尘浓度对 PM10 的影响最大。结论射频模型可以解释亚兹德市 85% 以上的 PM10 季节性变化。建议使用该模型来预测其他具有类似气候和环境条件地区的空气污染物变化。研究结果还有助于提供合适的解决方案,减少亚兹德市 PM10 污染的危害。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Determining Effective Factors Regarding Weather and Some Types of Air Pollutants in Seasonal Changes of PM10 Concentration Using Tree-Based Algorithms in Yazd City
Introduction: This study was carried out with the aim of determining weather parameters and air pollutants affecting seasonal changes of particulate matter of less than 10 microns (PM10) in Yazd city using Random Forest (RF) and extreme gradient boosting (Xgboost) models. Materials and Methods: The required data was obtained from 2018 to 2022. Levene’s test was applied to investigate the significant difference in the variance of PM10 values in 4 different seasons, and Boruta algorithm was used to select the best predictive variables. RF and Xgboost models were trained using two-thirds of the input data and were tested using the remaining data set. Their performance was evaluated based on R2, Root Mean Squared Error (RMSE), Mean Absolute Error (MAE), and Nash–Sutcliffe Model Efficiency Coefficient (NSE). Results: The RF showed a higher performance in predicting PM10 in all the study seasons (R2  > 0.85; RMSE < 22). The contribution of dust concentration and relative humidity in spring PM10 changes was more than other variables. For summer, wind direction and ozone were identified as the most important variables affecting PM10 concentration. In the autumn and winter, air pollutants and dust concentration had the greatest effect on PM10, respectively. Conclusion: RF model could explain more than 85% of PM10 seasonal variability in Yazd city. It is recommended to use the model to predict the changes of this air pollutant in other regions with similar climatic and environmental conditions. The results can also be useful for providing suitable solutions to reduce PM10 pollution hazards in Yazd city
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来源期刊
Journal of Environmental Health and Sustainable Development
Journal of Environmental Health and Sustainable Development Engineering-Engineering (miscellaneous)
CiteScore
1.10
自引率
0.00%
发文量
24
审稿时长
9 weeks
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