Author:
Liu Muyuan,Hu Jing,Huang Yuzhou,He Junyu,Effiong Kokoette,Tang Tao,Huang Shitao,Perianen Yuvna Devi,Wang Feier,Li Ming,Xiao Xi
Abstract
Abstract
The timeliness of monitoring is essential to algal bloom management. However, acquiring algal bio-indicators can be time-consuming and laborious, and bloom biomass data often contain a large proportion of extreme values limiting the predictive models. Therefore, to predict algal blooms from readily water quality parameters (i.e. dissolved oxygen, pH, etc), and to provide a novel solution to the modeling challenges raised by the extremely distributed biomass data, a Bayesian scale-mixture of skew-normal (SMSN) model was proposed. In this study, our SMSN model accurately predicted over-dispersed biomass variations with skewed distributions in both rivers and lakes (in-sample and out-of-sample prediction R2
ranged from 0.533 to 0.706 and 0.412 to 0.742, respectively). Moreover, we successfully achieve a probabilistic assessment of algal blooms with the Bayesian framework (accuracy >0.77 and macro-F
1 score >0.72), which robustly decreased the classic point-prediction-based inaccuracy by up to 34%. This work presented a promising Bayesian SMSN modeling technique, allowing for real-time prediction of algal biomass variations and in-situ probabilistic assessment of algal bloom.
Funder
Fundamental Research Funds for the Central Universities
Key Research and Development Program of Guangxi Province
National Natural Science Foundation of China
Natural Science Foundation of Zhejiang Province
Key Laboratory of Marine Ecological Monitoring and Restoration Technologies of the Ministry of Natural Resources of China
Science Foundation of Donghai Laboratory
Funding for ZJU Tang Scholar to X. X.
Subject
Public Health, Environmental and Occupational Health,General Environmental Science,Renewable Energy, Sustainability and the Environment
Cited by
4 articles.
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