Predicting drying curves in algal biorefineries using Gaussian process autoregressive Models
College
Gokongwei College of Engineering
Department/Unit
Center for Engineering and Sustainable Development Research
Document Type
Article
Source Title
Digital Chemical Engineering
Volume
4
Publication Date
2022
Abstract
In algal biofuel production, drying of the microalgal biomass is considered the most energy-intensive process. To save on operating costs, optimal control of the drying process should be guided by accurate mathematical models of the biomass parameters, particularly its moisture content. In this paper, we propose the use of Gaussian process autoregressive models (GPAR) for long-range moisture content prediction in the vacuum drying of algal biofuels. Our experiments involve the drying of Chlorococcum infusionum, wherein the measured variables are temperature, pressure, and moisture ratio. By computing the root mean squared error (RMSE) on test data, we demonstrate the superiority of GPAR to other models, namely Neural Networks, Support Vector Machines, Random Forest, Gradient Boosting, and Autoregressive Models for the same task. Through automatic relevance determination kernels, GPAR also found that the most significant predictors are the pressure readings. In the future, GPAR can potentially be used for the predictive control of the drying process, leading to more efficient biorefinery operations.
html
Recommended Citation
Pilario, K. S., Ching, P. L., Calapatia, A. A., & Culaba, A. B. (2022). Predicting drying curves in algal biorefineries using Gaussian process autoregressive Models. Digital Chemical Engineering, 4 Retrieved from https://animorepository.dlsu.edu.ph/faculty_research/14338
Disciplines
Chemical Engineering
Keywords
Microalgae—Drying
Upload File
wf_no