Statistical Models for Predicting Oil Composition from Hydrothermal Liquefaction of Biomass
Seshasayee Mahadevan Subramanya, Nicholas Rios, Abbey J. Kollar, Rachel Stofanak, Katherine Maloney, Kayley E. Waltz, Lucas Powers, Chinmayee Rane, Phillip E. Savage
Abstract
We used 352 published data points to develop multivariate linear regression, regression tree, and random forest models that predict the chemical composition of light oil from hydrothermal liquefaction of biomass. The mean absolute error calculated from ten-fold cross-validation indicates the random forest model had the best predictive ability, followed by regression tree and multivariate linear regression models. The random forest method is also more scalable than multivariate linear regression for data points outside the range of the dataset. The decision tree methods yield minimal information for improving understanding of the HTL process chemistry. Multivariate linear regression, on the other hand, identified previously unknown ternary interactions. For example, interactions involving lipid, lignin, and protein increase the abundance of N-containing compounds in the light oil. Further experimentation with lipid, lignin, and protein model compounds showed the formation of large amounts of undesirable long-chain amides in oil. This work shows that using multiple statistical models can further deepen the understanding of the HTL process in addition to providing tools that predict process outcomes.