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Joint features random forest (JFRF) model for mapping hourly surface PM2.5 over China
Abstract Ambient PM2.5 exerts strong regional pattern for its ability for long-range transport, implying that including the features of surrounding stations may improve the accuracy of machine-learning based model to estimate surface PM2.5 from the satellite-retrieved aerosol optical depth (AOD). However, most of current models either just use single point features, or simply average the observed surface PM2.5 from adjacent stations based on a fixed spatial proportional relationship. The question that how to properly take advantage of the features of surrounding stations for retrieving PM2.5 is still not well addressed. Here we propose an integrated algorithm called joint features random forest (JFRF) model which includes complex feature differences with surrounding stations and the observation of stations to learn the dynamic relations with the PM2.5 of target pixel, rather than the weighted average feature (WAF) only by surface PM2.5 as traditional models (with WAF) used. Results of cross validation suggest better performance of JFRF (R2 = 0.61–0.8; RMSE = 15.97–20.91 μg/m3) than single point feature model (ΔR2 = 0.09–0.3). JFRF also exhibits better performance than traditional models (with WAF) (ΔR2 = 0.05–0.11), particularly in regions with large AOD gradient (accounts for 33% of the total test set), which is of great significance for accurately representing the spatial heterogeneity of PM2.5 (e.g., pollution edging and hot spots areas). And the exclusion of AOD from the features significantly reduced the model performance (ΔR2 = −0.07 ∼ −0.1). Therefore, our study demonstrates the important of the feature differences of surrounding stations and satellite-retrieved AOD in representing the regional pattern of PM2.5 and further helping the machine-learning based model to improve the accuracy in estimating surface PM2.5.
Highlights A novel PM2.5 retrieval method using feature of surrounding stations was developed. Including feature of surrounding stations significantly improves model performance. New method performs better than method with WAF for areas with large AOD gradient. The importance of AOD is greater in the new method than traditional methods with WAF. New method can successfully capture the spatial heterogeneity of PM2.5
Joint features random forest (JFRF) model for mapping hourly surface PM2.5 over China
Abstract Ambient PM2.5 exerts strong regional pattern for its ability for long-range transport, implying that including the features of surrounding stations may improve the accuracy of machine-learning based model to estimate surface PM2.5 from the satellite-retrieved aerosol optical depth (AOD). However, most of current models either just use single point features, or simply average the observed surface PM2.5 from adjacent stations based on a fixed spatial proportional relationship. The question that how to properly take advantage of the features of surrounding stations for retrieving PM2.5 is still not well addressed. Here we propose an integrated algorithm called joint features random forest (JFRF) model which includes complex feature differences with surrounding stations and the observation of stations to learn the dynamic relations with the PM2.5 of target pixel, rather than the weighted average feature (WAF) only by surface PM2.5 as traditional models (with WAF) used. Results of cross validation suggest better performance of JFRF (R2 = 0.61–0.8; RMSE = 15.97–20.91 μg/m3) than single point feature model (ΔR2 = 0.09–0.3). JFRF also exhibits better performance than traditional models (with WAF) (ΔR2 = 0.05–0.11), particularly in regions with large AOD gradient (accounts for 33% of the total test set), which is of great significance for accurately representing the spatial heterogeneity of PM2.5 (e.g., pollution edging and hot spots areas). And the exclusion of AOD from the features significantly reduced the model performance (ΔR2 = −0.07 ∼ −0.1). Therefore, our study demonstrates the important of the feature differences of surrounding stations and satellite-retrieved AOD in representing the regional pattern of PM2.5 and further helping the machine-learning based model to improve the accuracy in estimating surface PM2.5.
Highlights A novel PM2.5 retrieval method using feature of surrounding stations was developed. Including feature of surrounding stations significantly improves model performance. New method performs better than method with WAF for areas with large AOD gradient. The importance of AOD is greater in the new method than traditional methods with WAF. New method can successfully capture the spatial heterogeneity of PM2.5
Joint features random forest (JFRF) model for mapping hourly surface PM2.5 over China
Dong, Lechao (author) / Li, Siwei (author) / Xing, Jia (author) / Lin, Hao (author) / Wang, Shansi (author) / Zeng, Xiaoyue (author) / Qin, Yaming (author)
Atmospheric Environment ; 273
2022-01-21
Article (Journal)
Electronic Resource
English
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