首页|Data from Mapua University Broaden Understanding of Machine Learning [Prediction of Hydrogen Adsorption and Moduli of Metal-Organic Frameworks (MOFs) Using Machine Learning Strategies]

Data from Mapua University Broaden Understanding of Machine Learning [Prediction of Hydrogen Adsorption and Moduli of Metal-Organic Frameworks (MOFs) Using Machine Learning Strategies]

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A new study on artificial intelligence is now available. According to news reporting originating from Manila, Philippines, by NewsRx correspondents, research stated, “For hydrogen-powered vehicles, the efficiency cost brought about by the current industry choices of hydrogen storage methods greatly reduces the system’s overall efficiency.” Funders for this research include Office of Directed Research For Innovation And Value Enhancement (Drive) of Mapua University. Our news correspondents obtained a quote from the research from Mapua University: “The physisorption of hydrogen fuel onto metal-organic frameworks (MOFs) is a promising alternative storage method due to their large surface areas and exceptional tunability. However, the massive selection of MOFs poses a challenge for the efficient screening of top-performing MOF structures that are capable of meeting target hydrogen uptakes. This study examined the performance of 13 machine learning (ML) models in the prediction of the gravimetric and volumetric hydrogen uptakes of real MOF structures for comparison with simulated and experimental results. Among the 13 models studied, 12 models gave an R2 greater than 0.95 in the prediction of both the gravimetric and the volumetric uptakes in MOFs.”

Mapua UniversityManilaPhilippinesAsiaCyborgsElementsEmerging TechnologiesGasesHydrogenInorganic ChemicalsMachine Learning

2024

Robotics & Machine Learning Daily News

Robotics & Machine Learning Daily News

ISSN:
年,卷(期):2024.(Mar.4)
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