The measurement of aromaticity in biochars is generally conducted using solid state 13C nuclear magnetic resonance spectroscopy, which is expensive, time-consuming, and only accessible in a small number of research-intensive universities. Mathematical modelling could be a viable alternative to predict biochar aromaticity from other much easier accessible parameters (e.g. elemental composition). In this research, Genetic Programming (GP), an advanced machine learning method, is used to develop new prediction models. In order to identify and evaluate the performance of prediction models, an experimental data set with 98 biochar samples collected from the literature was utilized. Due to the benefits of the intelligence iteration and learning o...
The reliability of different models to predict the biochemical methane potential (BMP) of various pl...
This degree project studies implementation and comparison of different AI models to predict (1) soli...
Lignin depolymerization has been studied for decades to produce carbon-neutral chemicals/biofuels an...
Three models were examined to predict C aromaticity (f(a)) of biochars based on either their element...
Biochar production via pyrolysis of various organic waste has potential to reduce dependence on conv...
The combination of analytical chemistry and simulation methods provides more complete information ab...
Funding Information: The authors gratefully acknowledge support from the Aalto University Internal S...
Abstract: High-potential molecules derived from biomass sources may suitably replace or supple-ment ...
This study underpins quantitative relationships that account for the combined effects that starting ...
This study discusses biochar and machine learning application. Concept of biochar, machine learning ...
Biochar application is a promising strategy for the remediation of contaminated soil, while ensuring...
While the properties of biochar are closely related to its functional groups, it is unclear under wh...
Prior to the manufacture of new chemicals, regulations mandate a thorough review of the chemicals un...
Machine learning has proven to be a powerful tool for accelerating biofuel development. Although num...
Screening a large number of biologically derived molecules for potential fuel compounds without reco...
The reliability of different models to predict the biochemical methane potential (BMP) of various pl...
This degree project studies implementation and comparison of different AI models to predict (1) soli...
Lignin depolymerization has been studied for decades to produce carbon-neutral chemicals/biofuels an...
Three models were examined to predict C aromaticity (f(a)) of biochars based on either their element...
Biochar production via pyrolysis of various organic waste has potential to reduce dependence on conv...
The combination of analytical chemistry and simulation methods provides more complete information ab...
Funding Information: The authors gratefully acknowledge support from the Aalto University Internal S...
Abstract: High-potential molecules derived from biomass sources may suitably replace or supple-ment ...
This study underpins quantitative relationships that account for the combined effects that starting ...
This study discusses biochar and machine learning application. Concept of biochar, machine learning ...
Biochar application is a promising strategy for the remediation of contaminated soil, while ensuring...
While the properties of biochar are closely related to its functional groups, it is unclear under wh...
Prior to the manufacture of new chemicals, regulations mandate a thorough review of the chemicals un...
Machine learning has proven to be a powerful tool for accelerating biofuel development. Although num...
Screening a large number of biologically derived molecules for potential fuel compounds without reco...
The reliability of different models to predict the biochemical methane potential (BMP) of various pl...
This degree project studies implementation and comparison of different AI models to predict (1) soli...
Lignin depolymerization has been studied for decades to produce carbon-neutral chemicals/biofuels an...