A novel approach to predict chlorophyll-a in coastal-marine ecosystems using multiple linear regression and principal component scores
Autor: | Jayaseelan Benjamin Franklin, Ramalingam Kirubagaran, T. Sathish, Nambali Valsalan Vinithkumar |
---|---|
Rok vydání: | 2020 |
Předmět: |
Chlorophyll
0106 biological sciences Biomass (ecology) Chlorophyll A 010604 marine biology & hydrobiology Function (mathematics) Collinearity 010501 environmental sciences Aquatic Science Oceanography 01 natural sciences Pollution Data-driven Abundance (ecology) Phytoplankton Principal component analysis Statistics Linear regression Linear Models Seawater Marine ecosystem Ecosystem 0105 earth and related environmental sciences Mathematics |
Zdroj: | Marine Pollution Bulletin. 152:110902 |
ISSN: | 0025-326X |
DOI: | 10.1016/j.marpolbul.2020.110902 |
Popis: | Chlorophyll-a is an established indexing marker for phytoplankton abundance and biomass amongst primary food producers in an aquatic ecosystem. Understanding and modeling the level of Chlorophyll-a as a function of environmental parameters have been found to be very beneficial for the management of the coastal ecosystems. This study developed a mathematical model to predict Chlorophyll-a concentrations based on a data driven modeling approach. The prediction model was developed using principal component analysis (PCA) and multiple linear regression analysis (MLR) approaches. The predictive success (R2) of the model was found to be ~84.8% for first approach and ~83.8% for the second approach. A final model was generated using a combined principal component scores (PCS) and MLR approach that involves fewer parameters and has a predictive ability of 83.6%. The PCS-MLR method helped to identify the relationship amongst dependent as well as predictor variables and eliminated collinearity problems. The final model is quite simple and intuitive and can be used to understand real system operations. |
Databáze: | OpenAIRE |
Externí odkaz: |