期刊论文详细信息
Remote Sensing
A Remote Sensing and Machine Learning-Based Approach to Forecast the Onset of Harmful Algal Bloom
Mohamed Sultan1  Moein Izadi1  Karem Abdelmohsen1  Racha El Kadiri2  Amin Ghannadi3 
[1] Department of Geological and Environmental Sciences, Western Michigan University, Kalamazoo, MI 49008, USA;Department of Geosciences, Middle Tennessee State University, Murfreesboro, TN 37132, USA;Department of Surveying Engineering, Arak University of Technology, Arak 39455-38138, Iran;
关键词: harmful algal bloom forecasting;    remote sensing;    data mining;    machine learning;   
DOI  :  10.3390/rs13193863
来源: DOAJ
【 摘 要 】

In the last few decades, harmful algal blooms (HABs, also known as “red tides”) have become one of the most detrimental natural phenomena in Florida’s coastal areas. Karenia brevis produces toxins that have harmful effects on humans, fisheries, and ecosystems. In this study, we developed and compared the efficiency of state-of-the-art machine learning models (e.g., XGBoost, Random Forest, and Support Vector Machine) in predicting the occurrence of HABs. In the proposed models the K. brevis abundance is used as the target, and 10 level-02 ocean color products extracted from daily archival MODIS satellite data are used as controlling factors. The adopted approach addresses two main shortcomings of earlier models: (1) the paucity of satellite data due to cloudy scenes and (2) the lag time between the period at which a variable reaches its highest correlation with the target and the time the bloom occurs. Eleven spatio-temporal models were generated, each from 3 consecutive day satellite datasets, with a forecasting span from 1 to 11 days. The 3-day models addressed the potential variations in lag time for some of the temporal variables. One or more of the generated 11 models could be used to predict HAB occurrences depending on availability of the cloud-free consecutive days. Findings indicate that XGBoost outperformed the other methods, and the forecasting models of 5–9 days achieved the best results. The most reliable model can forecast eight days ahead of time with balanced overall accuracy, Kappa coefficient, F-Score, and AUC of 96%, 0.93, 0.97, and 0.98 respectively. The euphotic depth, sea surface temperature, and chlorophyll-a are always among the most significant controlling factors. The proposed models could potentially be used to develop an “early warning system” for HABs in southwest Florida.

【 授权许可】

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