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Spatiotemporal Deep-Learning-Based Algal Bloom Prediction for Lake Okeechobee Using Multisource Data Fusion

Title: Spatiotemporal Deep-Learning-Based Algal Bloom Prediction for Lake Okeechobee Using Multisource Data Fusion
Authors: Yufei Tang; Yingqi Feng; Sasha Fung; Veronica Ruiz Xomchuk; Mingshun Jiang; Tim Moore; Jordon Beckler
Source: IEEE Journal of Selected Topics in Applied Earth Observations and Remote Sensing, Vol 15, Pp 8318-8331 (2022)
Publisher Information: IEEE, 2022.
Publication Year: 2022
Collection: LCC:Ocean engineering; LCC:Geophysics. Cosmic physics
Subject Terms: Convolutional long-short term memory (ConvLSTM); deep learning modeling; harmful algal blooms (HABs); multisource data fusion; spatiotemporal prediction; Ocean engineering; TC1501-1800; Geophysics. Cosmic physics; QC801-809
Description: This study focuses on predicting harmful algal bloom (HAB) events in Lake Okeechobee, a shallow lake in Florida. A spatiotemporal deep learning model is employed to predict the levels of cyanobacteria Microcystis aeruginosa present in the lake for a single-day and a 14-day prediction horizon. Datasets collected from remote sensing (i.e., satellite images from January 2018 to December 2020) and from a physics-based simulation model (i.e., daily simulation from January 2018 to December 2020) are available. Owing to the low quality of remote sensing data caused by various environmental and technical issues, the two available datasets are fused together to create a multisource hybrid dataset for deep learning model training. A convolutional long-short term memory (ConvLSTM) deep neural model is trained on the datasets, and the results of the predictions are compared to the true cyanobacterial index for that time period. Findings include the following: 1) the deep learning model, ConvLSTM, shows promising performance for short- and mid-term HAB forecasting; and 2) the hybrid dataset that fuses remote sensing with physics-based modeling (a.k.a. modeling based on fundamental physical and biogeochemical principles) speeds up the model learning and improves its performance significantly. The proposed methodologies are reliable and cost-effective and could be used to forecast algal bloom occurrences in shallow lakes with limited sparse observations.
Document Type: article
File Description: electronic resource
Language: English
ISSN: 2151-1535
Relation: https://ieeexplore.ieee.org/document/9900398/; https://doaj.org/toc/2151-1535
DOI: 10.1109/JSTARS.2022.3208620
Access URL: https://doaj.org/article/dbbf8979eb534e0aaa7bd7f78ead033f
Accession Number: edsdoj.bbf8979eb534e0aaa7bd7f78ead033f
Database: Directory of Open Access Journals