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Advances in materials and machine learning techniques for energy storage devices: A comprehensive review

Prit Thakkar, Sachi Khatri, Drashti Dobariya, Darpan I. Patel, Bishwajit Dey, Alok Kumar Singh

2024Journal of Energy Storage56 citationsDOIOpen Access PDF

Abstract

The increasing global need for energy supply in modern society has created a pressing need to explore new materials for renewable energy technologies. However, conventional trial and error methods in materials science are often tedious as well as costly, making it challenging to meet the growing demands. In recent years, machine learning (ML) become a prominent research strategy transfigure the discovery of materials. This review offers a concise summary of the elementary ML procedures and widely used algorithms in the field of materials science. It particularly emphasizes the latest advancements in utilizing ML for predicting material properties and developing materials for energy-related fields like Li-Ion batteries, Super-Capacitors, and Hybrid Systems. Furthermore, the review discusses the contributions of ML to experimental research. This review intents to serve as a guiding resource for future developments of ML in materials science.

Topics & Concepts

Computer scienceResource (disambiguation)Field (mathematics)Renewable energyEnergy storageSystems engineeringRisk analysis (engineering)NanotechnologyData scienceBiochemical engineeringManagement scienceEngineeringElectrical engineeringMaterials scienceQuantum mechanicsMedicinePhysicsMathematicsComputer networkPower (physics)Pure mathematicsAdvancements in Battery MaterialsSupercapacitor Materials and FabricationAdvanced Battery Technologies Research
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