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Chlorophyll-a unveiled: unlocking reservoir insights through remote sensing in a subtropical reservoir

Environmental Monitoring and Assessment 2024 14 citations ? Citation count from OpenAlex, updated daily. May differ slightly from the publisher's own count. Score: 50 ? 0–100 AI score estimating relevance to the microplastics field. Papers below 30 are filtered from public browse.
Linton F. Munyai, Kudzai Shaun Mpakairi, Tatenda Dalu Tatenda Dalu Tatenda Dalu Linton F. Munyai, Tatenda Dalu Tatenda Dalu Tatenda Dalu Tatenda Dalu Tatenda Dalu Linton F. Munyai, Tatenda Dalu Tatenda Dalu Tatenda Dalu Tatenda Dalu Tatenda Dalu Tatenda Dalu Farai Dondofema, Faith F. Muthivhi, Faith F. Muthivhi, Tatenda Dalu Farai Dondofema, Linton F. Munyai, Farai Dondofema, Tatenda Dalu Farai Dondofema, Tatenda Dalu Tatenda Dalu Farai Dondofema, Farai Dondofema, Linton F. Munyai, Tatenda Dalu Tatenda Dalu Linton F. Munyai, Linton F. Munyai, Farai Dondofema, Linton F. Munyai, Linton F. Munyai, Farai Dondofema, Tatenda Dalu Linton F. Munyai, Tatenda Dalu Tatenda Dalu Tatenda Dalu Linton F. Munyai, Farai Dondofema, Tatenda Dalu Linton F. Munyai, Tatenda Dalu Linton F. Munyai, Linton F. Munyai, Tatenda Dalu Tatenda Dalu Tatenda Dalu

Summary

Researchers used satellite data from Landsat-8 and Sentinel-2 combined with machine learning to estimate chlorophyll-a concentrations — a measure of algae levels — in a South African reservoir. This remote sensing approach enables water managers to monitor reservoir health continuously without costly field sampling, helping detect harmful algal blooms earlier.

Effective water resources management and monitoring are essential amid increasing challenges posed by population growth, industrialization, urbanization, and climate change. Earth observation techniques offer promising opportunities to enhance water resources management and support informed decision-making. This study utilizes Landsat-8 OLI and Sentinel-2 MSI satellite data to estimate chlorophyl-a (chl-a) concentrations in the Nandoni reservoir, Thohoyandou, South Africa. The study estimated chl-a concentrations using random forest models with spectral bands only, spectral indices only (blue difference absorption (BDA), fluorescence line height in the violet region (FLH_violet), and normalized difference chlorophyll index (NDCI)), and combined spectral bands and spectral indices. The results showed that the models using spectral bands from both Landsat-8 OLI and Sentinel-2 MSI performed comparably. The model using Sentinel-2 MSI had a higher accuracy of estimating chl-a when spectral bands alone were used. Sentinel-2 MSI's additional red-edge spectral bands provided a notable advantage in capturing subtle variations in chl-a concentrations. Lastly, the -chl-a concentration was higher at the edges of the Nandoni reservoir and closer to the reservoir wall. The findings of this study are crucial for improving the management of water reservoirs, enabling proactive decision-making, and supporting sustainable water resource management practices. Ultimately, this research contributes to the broader understanding of the application of earth observation techniques for water resources management, providing valuable information for policymakers and water authorities.

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