Screening a large number of biologically derived molecules for potential fuel compounds without recourse to experimental testing is important in identifying understudied yet valuable molecules. Experimental testing, although a valuable standard for measuring fuel properties, has several major limitations, including the requirement of testably high quantities, considerable expense, and a large amount of time. This paper discusses the development of a general-purpose fuel property tool, using machine learning, whose outcome is to screen molecules for desirable fuel properties. BioCompoundML adopts a general methodology, requiring as input only a list of training compounds (with identifiers and measured values) and a list of testing compounds ...
Biofuels have been widely recognized as potential solutions to addressing the climate crisis and str...
Demand for the development of an automated and integrated refining process for biofuels has increase...
The measurement of aromaticity in biochars is generally conducted using solid state 13C nuclear magn...
Screening a large number of biologically derived molecules for potential fuel compounds without reco...
Abstract: High-potential molecules derived from biomass sources may suitably replace or supple-ment ...
Machine learning has proven to be a powerful tool for accelerating biofuel development. Although num...
The accurate prediction of biodiesel fuel properties and determination of its optimal fatty acid (FA...
Copyright © 2016 by ASME. The next generation of alternative fuels is being investigated through adv...
Diminishing oil reserve, escalating energy dependence, and the environmental impact of fossil fuel u...
One of the many potential benefits of biomass-derived fuels is lower emissions of particulate matter...
11-19Improving the bio-oil yield is a challenging part in the thermochemical conversion processes of...
Fuel Genome Project aims at addressing the forward problem of fuel property prediction and the inver...
Differences in chemical profiles of various essential oils (EOs) come from the fact that each plant ...
Machine learning (ML) has emerged as a significant tool in the field of biorefinery, offering the ca...
The next generation of alternative fuels is being investigated through advanced chemical and biologi...
Biofuels have been widely recognized as potential solutions to addressing the climate crisis and str...
Demand for the development of an automated and integrated refining process for biofuels has increase...
The measurement of aromaticity in biochars is generally conducted using solid state 13C nuclear magn...
Screening a large number of biologically derived molecules for potential fuel compounds without reco...
Abstract: High-potential molecules derived from biomass sources may suitably replace or supple-ment ...
Machine learning has proven to be a powerful tool for accelerating biofuel development. Although num...
The accurate prediction of biodiesel fuel properties and determination of its optimal fatty acid (FA...
Copyright © 2016 by ASME. The next generation of alternative fuels is being investigated through adv...
Diminishing oil reserve, escalating energy dependence, and the environmental impact of fossil fuel u...
One of the many potential benefits of biomass-derived fuels is lower emissions of particulate matter...
11-19Improving the bio-oil yield is a challenging part in the thermochemical conversion processes of...
Fuel Genome Project aims at addressing the forward problem of fuel property prediction and the inver...
Differences in chemical profiles of various essential oils (EOs) come from the fact that each plant ...
Machine learning (ML) has emerged as a significant tool in the field of biorefinery, offering the ca...
The next generation of alternative fuels is being investigated through advanced chemical and biologi...
Biofuels have been widely recognized as potential solutions to addressing the climate crisis and str...
Demand for the development of an automated and integrated refining process for biofuels has increase...
The measurement of aromaticity in biochars is generally conducted using solid state 13C nuclear magn...