Negative Air Ion (NAI) Dynamics over Zhejiang Province, China, Based on Multivariate Remote Sensing Products
-
Published:2023-01-27
Issue:3
Volume:15
Page:738
-
ISSN:2072-4292
-
Container-title:Remote Sensing
-
language:en
-
Short-container-title:Remote Sensing
Author:
Tao Sichen12, Sun Zongchen1, Lin Xingwen1, Zhang Zhenzhen1ORCID, Wu Chaofan1, Zhang Zhaoyang1, Zhou Benzhi34, Zhao Zhen1, Cao Chenchen1, Guan Xinyu1, Zhuang Qianjin5, Wen Qingqing5, Xu Yuling6
Affiliation:
1. College of Geography and Environmental Sciences, Zhejiang Normal University, Jinhua 321004, China 2. Zhenhai Luotuo Middle School, Ningbo Education Bureau, Ningbo 315202, China 3. Research Institute of Subtropical Forestry, Chinese Academy of Forestry, Hangzhou 311400, China 4. Qianjiangyuan Forest Ecosystem Research Satation, National Forestry and Grassland Administration, Hangzhou 311400, China 5. Nanshan Provincial Nature Reserve Management Center, Jinhua 321000, China 6. Zhejiang Jinhua Ecological and Environmental Monitoring Center, Jinhua 321000, China
Abstract
Negative air ions (NAIs), which are known as the “air vitamin”, have been widely used as a measure of air cleanness. Field observation provides an alternative way to record site-level NAIs. However, these observations fail to capture the regional distribution of NAIs due to the limited number of sites. In this study, satellite-based bio-geophysical parameters from the climate, topography, air quality, vegetation, and anthropogenic intensity were used to estimate the daily NAIs with the Random Forest model (RF). In situ NAI observations over Zhejiang Province, China were incorporated into the model. Daily NAIs were averaged to capture the spatio-temporal distribution. The results showed that (1) the RF algorithm performed better than traditional regression analysis and the common BP neural network to generate regional NAIs at a spatial scale of 500 m over the larger scale, with an RMSE of 258.62, R2 of 0.878 for model training, and R2 of 0.732 for model testing; (2) in the variable importance measures (VIM) analysis, 87.96% of the NAI variance was caused by the elevation, aspect, slope, surface temperature, solar-induced chlorophyll fluorescence (SIF), relative humidity (RH), and the concentration of carbon monoxide (CO), while path analysis indicated that SIF was one of the most important factors affecting NAI concentration across the whole region; (3) NAI concentrations in 87.16% of the region were classified above grade III (>500 ions cm−3), which was able to meet the needs of human health maintenance; (4) the highest NAI concentration was distributed over the southwest of the Zhejiang Province, where forest land dominates. The lowest NAI concentration was mostly found in the northeast regions, where urban areas are well-developed; and (5) among different land types, the NAI concentrations were ranked as forest land > water bodies > barren > grassland > croplands > urban and built-up. Among different seasons, summer and winter have the highest and lowest NAIs, respectively. Our study provided a substantial reference for ecosystem services assessment in Zhejiang Province.
Funder
Jinhua Science and Technology Research Program Department of Science and Technology of Zhejiang Province in China
Subject
General Earth and Planetary Sciences
Reference41 articles.
1. Villa, F., Ceroni, M., Bagstad, K., Johnson, G., and Krivov, S. (2020, November 05). ARIES (ARtificial Intelligence for Ecosystem Services): A New Tool for Ecosystem Services Assessment, Planning, and Valuation. Available online: http://bioecon-network.org/pages/11th_2009/Villa.pdf. 2. Effect of Atmospheric Pollution on Air Ion Concentration;Skromulis;Energy Procedia,2017 3. Jiang, S.Y., Ma, A., and Ramachandran, S. (2018). Negative Air Ions and Their Effects on Human Health and Air Quality Improvement. Int. J. Mol. Sci., 19. 4. Value of ecosystem services in China;Chen;Chin. Sci. Bull.,2000 5. Assessment of ecosystem services in restoration programs in China: A systematic review;Wen;Ambio,2020
Cited by
4 articles.
订阅此论文施引文献
订阅此论文施引文献,注册后可以免费订阅5篇论文的施引文献,订阅后可以查看论文全部施引文献
|
|