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Machine learning assisted analysis and prediction of rubber formulation using existing databases

Wei Deng, Yuehua Zhao, Yafang Zheng, Yuan Yin, Yan Huan, Lijun Liu, Dapeng Wang

2024Artificial Intelligence Chemistry13 citationsDOIOpen Access PDF

Abstract

Designing rubber formulations can greatly benefit from using a database that stores the formulations and corresponding property data of rubber composites. Such a database can expedite the decision-making process by swiftly identifying the most suitable formulations for specific applications. However, the management of a rubber formulation database encounters various issues, including missing formulation and property data, as well as data entry errors. These issues can impede the decision-making processes and even result in incorrect decisions being made. In this study, machine learning (ML) algorithms were applied to analyze rubber formulation databases. Our findings highlight the success of the ML algorithm in effectively filling in missing data and identifying erroneous data. Furthermore, it demonstrates the accurate prediction of properties for untested formulations within the pre-determined database space. The results underline the outstanding performance of ML algorithms in expediting the rubber formulation design process and emphasize their immense potential to play a prominent role in the advancement of rubber composites.

Topics & Concepts

ExpeditingNatural rubberProperty (philosophy)DatabaseComputer scienceProcess (computing)Data miningSpace (punctuation)EngineeringMaterials scienceSystems engineeringOperating systemComposite materialEpistemologyPhilosophyMachine Learning in Materials ScienceComputational Drug Discovery MethodsSoftware Engineering Research
Machine learning assisted analysis and prediction of rubber formulation using existing databases | Litcius