Application of machine learning in optimizing thermochemical conversion processes with pre-treatment to get higher bio-oil yield from biomass waste

Optimization of thermochemical conversion of biomass waste into biooil using machine learning technique

Authors

  • Srinivasan Kandasamy Sundaresan Department of Electronics and Communication Engineering, Mohamed Sathak AJ College of Engineering, IT Park, Siruseri, Rajiv Gandhi Salai (OMR), Chennai, Tamil Nadu – 603103, India.
  • Kamarajan Murugan aDepartment of Electronics and Communication Engineering, Mohamed Sathak AJ College of Engineering, IT Park, Siruseri, Rajiv Gandhi Salai (OMR), Chennai, Tamil Nadu – 603103, India.
  • Ravichandran Cingaram Department of Chemistry, Easwari Engineering College, Bharathi Salai, Ramapuram, Chennai, Tamil Nadu – 600089, India

DOI:

https://doi.org/10.56042/ijct.v31i1.6357

Keywords:

Biomass waste, Bio-oil, Machine learning, Pearson matrix, Pre-treatment, Thermochemical liquefaction

Abstract

Improving the bio-oil yield was a challenging part in the thermochemical conversion processes. Implementing suitable pre-treatment technology to improve the biomass characteristics is an effective technique to increase the yield. In this study, a multi variate random forest algorithm was used to optimize the pre-treatment method in order to improve the biomass characteristics. The data collected from many previous studies were analysed to identify the importance of biomass characteristics in bio-oil yield. The correlation between biomass characteristics and bio-oil yield, was analysed using pearson method and the important influencing parameters %C and %H have a very good positive correlation with a coefficient value range 0.455 to 0.818. Among the six pre-treatment methods analysed, thermochemical pre-treatment method was found effective with more than 95% improvement of many biomass characteristics. The range of voting given to the parameters identify %H be the important characteristic optimized first. The suggested method was validated by laboratory experiments and %accuracy between predicted and calculated biomass characteristic values showed more than 90% accuracy for all the biomass characteristic parameters tested in this study.

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Published

2024-01-04

How to Cite

Application of machine learning in optimizing thermochemical conversion processes with pre-treatment to get higher bio-oil yield from biomass waste: Optimization of thermochemical conversion of biomass waste into biooil using machine learning technique. (2024). Indian Journal of Chemical Technology (IJCT), 31(1), 11-19. https://doi.org/10.56042/ijct.v31i1.6357

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