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Resumen de A hybrid PSO optimized SVM-based model for predicting a successful growth cycle of the Spirulina platensis from raceway experiments data

Paulino José García Nieto Árbol académico, María Esperanza García Gonzalo, J.R. Alonso Fernández, C. Díaz Muñiz

  • In this research work, a practical new hybrid model to predict the successful growth cycle of Spirulina platensis was proposed. The model was based on Particle Swarm Optimization (PSO) in combination with support vector machines (SVMs). This optimization mechanism involved kernel parameter setting in the SVM training procedure, which significantly influences the regression accuracy. PSO–SVM-based models, which are based on the statistical learning theory, were successfully used here to predict the Chlorophyll a (Chl-a) concentration (output variable) as a function of the following input variables: pH, optical density, oxygen concentration, nitrate concentration, phosphate concentration, salinity, water temperature and irradiance. Regression with three different kernels (linear, quadratic and RBF) was performed and determination coefficients of 0.94, 0.97, and 0.99, respectively, were obtained. The PSO–SVM-based model goodness of fit to experimental data (Chl-a concentration) confirmed the good performance of this model. Indeed, it is well-known that Chl-a is an extremely important biomolecule, critical in photosynthesis, which allows plants to obtain energy from light and it is one of the most often used algal biomass estimator. The model also allowed to know the most influent parameters in the growth of the S. platensis. Finally, conclusions of this study are exposed.


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