TY - JOUR T1 - Modeling water quality parameters in the surface waters of Samanlı and Safran Rivers, Turkey AU - Hızal Yücesoy, Fehime Jülide AU - Ozan, Ferdi AU - Kanmaz, Nergiz AU - Koçal, Osman PY - 2021 DA - July DO - 10.29228/JIENS.52018 JF - Journal of Innovative Engineering and Natural Science JO - JIENS PB - İdris Karagöz WT - DergiPark SN - 2791-7630 SP - 61 EP - 84 VL - 1 IS - 1 LA - en AB - In this study, the water quality of the Samanlı and Safran Rivers, passing through Yalova Province, were examined in terms of physicochemical parameters, alkalinity and content of inorganic nutrients (nitrate, nitrite, phosphate). The sampling from five station located on the Samanlı and Safran Rivers was performed for fiftythree weeks. Linear and nonlinear Models were applied by the aid of Matlab, Microsoft Excel programs and Multiple Linear Regression Model. 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