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Analyzing spatio-temporal variability of aquatic productive components in Northern Bay of Bengal using advanced machine learning models
Journal article   Peer reviewed

Analyzing spatio-temporal variability of aquatic productive components in Northern Bay of Bengal using advanced machine learning models

Jay Karmakar, Ismail Mondal, SK Ariful Hossain, Felix Jose, Subbarao Pichuka, Debaleena Ghosh, Tarun Kumar De, Quang-Oai Lu, Ismail Elkhrachy and Nguyet-Minh Nguyen
Ocean & coastal management, Vol.251, 107074
05-01-2024
Appears in  United Nations Sustainable Development Goals @ FGCU

Abstract

Chl-a Machine learning MODIS Particular organic matter Remote sensing Sundarbans delta
This study documents a novel method for tracking spatio-temporal variability of productivity-related elements, including particulate organic carbon (POC), particular inorganic carbon (PIC), chlorophyll-a (Chl-a), dissolved nitrate, total phosphate, and dissolved phosphate, in the Sundarbans coastal aquatic system over a period of twenty years (2002–2021). Machine learning (ML) algorithms were employed to compute all the parameters from optical remote sensing data. Input data were obtained from the MODIS multispectral imageries bands satellite data sets and data extraction and analysis were performed using SVM regression models. Moving average study of POC and Chl-a concentration along the coastal zone revealed shallow deltaic coagulation, eutrophication, microbial decomposition, and lysis-caused variation and deterioration. However, high ambient temperatures and organic waste decomposition increase dissolved phosphate in inland mangrove creeks before the monsoon. Elevated nutrient levels lead to a reduction in Chl-a and particulate organic carbon is highly correlated with Chl-a to the extent of 0.79 Especially in summer time nutrient loading from agriculture and urban runoff cause harmful algal blooms that destroy aquatic life and degrade ecosystem functions. Even though collecting samples from the field on a seasonal basis for monitoring water quality and aquatic productivity is the ideal approach, it is time-consuming and also uneconomical, given the remoteness of the expansive mangrove forest. This study demonstrates efficacy of cost-effective methods like utilizing satellite data and adopting ML techniques for continuous monitoring of Sundarbans deltaic coast for its water quality and aquatic health. [Display omitted] •Long-term field and remote Sensing datasets have been analysed to evaluate particle inorganic carbon, particulate organic carbon, and chlorophyll concentration in the study area.•Remote sensing data from the MODIS Aqua satellite during 2002–2021 along with in-situ data from eight locations along the coastal zone of Sundarbans used for aquatic productivity mapping.•ML-based empirical models have been examined to ascertain how these variables might change over a 20-year period for supporting long-term prediction.

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UN Sustainable Development Goals (SDGs)

This output has contributed to the advancement of the following goals:

#3 Good Health and Well-Being
#14 Life Below Water
#6 Clean Water and Sanitation

Source: SDGs in the Output

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