globalchange  > 过去全球变化的重建
DOI: 10.3390/ijerph16111992
WOS记录号: WOS:000472132900120
论文题名:
Applying Deep Neural Networks and Ensemble Machine Learning Methods to Forecast Airborne Ambrosia Pollen
作者: Zewdie, Gebreab K.1; Lary, David J.1; Levetin, Estelle2; Garuma, Gemechu F.3
通讯作者: Zewdie, Gebreab K.
刊名: INTERNATIONAL JOURNAL OF ENVIRONMENTAL RESEARCH AND PUBLIC HEALTH
ISSN: 1660-4601
出版年: 2019
卷: 16, 期:11
语种: 英语
英文关键词: Ambrosia pollen ; random forest ; extreme gradient boosting ; deep neural networks ; machine learning ; ECMWF ; pollen allergy
WOS关键词: RAGWEED POLLEN ; ALLERGENIC POLLENS ; CLIMATE-CHANGE ; BETULA POLLEN ; TRANSPORT ; ALNUS ; URBAN ; ADMISSIONS ; WEATHER ; CORYLUS
WOS学科分类: Environmental Sciences ; Public, Environmental & Occupational Health
WOS研究方向: Environmental Sciences & Ecology ; Public, Environmental & Occupational Health
英文摘要:

Allergies to airborne pollen are a significant issue affecting millions of Americans. Consequently, accurately predicting the daily concentration of airborne pollen is of significant public benefit in providing timely alerts. This study presents a method for the robust estimation of the concentration of airborne Ambrosia pollen using a suite of machine learning approaches including deep learning and ensemble learners. Each of these machine learning approaches utilize data from the European Centre for Medium-Range Weather Forecasts (ECMWF) atmospheric weather and land surface reanalysis. The machine learning approaches used for developing a suite of empirical models are deep neural networks, extreme gradient boosting, random forests and Bayesian ridge regression methods for developing our predictive model. The training data included twenty-four years of daily pollen concentration measurements together with ECMWF weather and land surface reanalysis data from 1987 to 2011 is used to develop the machine learning predictive models. The last six years of the dataset from 2012 to 2017 is used to independently test the performance of the machine learning models. The correlation coefficients between the estimated and actual pollen abundance for the independent validation datasets for the deep neural networks, random forest, extreme gradient boosting and Bayesian ridge were 0.82, 0.81, 0.81 and 0.75 respectively, showing that machine learning can be used to effectively forecast the concentrations of airborne pollen.


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资源类型: 期刊论文
标识符: http://119.78.100.158/handle/2HF3EXSE/139636
Appears in Collections:过去全球变化的重建

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作者单位: 1.Univ Texas Dallas, William B Hanson Ctr Space Sci, Richardson, TX 75080 USA
2.Univ Tulsa, Dept Biol Sci, Tulsa, OK 74104 USA
3.Univ Quebec Montreal, Inst Earth & Environm Sci, Montreal, PQ H2L 2C4, Canada

Recommended Citation:
Zewdie, Gebreab K.,Lary, David J.,Levetin, Estelle,et al. Applying Deep Neural Networks and Ensemble Machine Learning Methods to Forecast Airborne Ambrosia Pollen[J]. INTERNATIONAL JOURNAL OF ENVIRONMENTAL RESEARCH AND PUBLIC HEALTH,2019-01-01,16(11)
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