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Remote-sensing-based algorithms for water quality monitoring in Olushandja Dam, north-central Namibia
Author(s) -
Taimi S. Kapalanga,
Zvikomborero Hoko,
Webster Gumindoga,
Loyd Chikwiramakomo
Publication year - 2020
Publication title -
water science and technology water supply
Language(s) - English
Resource type - Journals
eISSN - 1607-0798
pISSN - 1606-9749
DOI - 10.2166/ws.2020.290
Subject(s) - turbidity , water quality , total suspended solids , environmental science , hydrology (agriculture) , linear regression , suspended solids , algae , algorithm , environmental engineering , mathematics , statistics , ecology , chemical oxygen demand , biology , geology , geotechnical engineering , wastewater
Frequent and continuous water quality monitoring of Olushandja Dam in Namibia is needed to inform timely decision making. This study was carried out from November 2014 to June 2015 with Landsat 8 reflectance values and field measured water quality data that were used to develop regressionanalysis-based retrieval algorithms. Water quality parameters considered included turbidity, total suspended solids (TSS), nitrates, ammonia, total nitrogen (TN), total phosphorus (TP) and total algae counts. Results show that turbidity levels exceeded the recommended limits for raw water for potable water treatment while TN and TP values are within acceptable values. Turbidity, TN, and TP and total algae count showed a medium to strong positive linear relationship between Landsat predicted and measured water quality data while TSS showed a weak linear relationship. The regression coefficients between predicted and measured values were: turbidity (R1⁄4 0.767); TN (R1⁄4 0.798,); TP (R1⁄4 0.907); TSS (R1⁄4 0.284,) and total algae count (R1⁄4 0.851). Prediction algorithms are generally the best fit to derive water quality parameters. Remote sensing is recommended for frequent and continuous monitoring of Olushandja Dam as it has the ability to provide rapid information on the spatio-temporal variability of surface water quality.

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