Litcius/Paper detail

A review on machine learning-guided design of energy materials

Seongmin Kim, Jiaxin Xu, Wenjie Shang, Zhihao Xu, Eungkyu Lee, Tengfei Luo

2024Progress in Energy17 citationsDOIOpen Access PDF

Abstract

Abstract The development and design of energy materials are essential for improving the efficiency, sustainability, and durability of energy systems to address climate change issues. However, optimizing and developing energy materials can be challenging due to large and complex search spaces. With the advancements in computational power and algorithms over the past decade, machine learning (ML) techniques are being widely applied in various industrial and research areas for different purposes. The energy material community has increasingly leveraged ML to accelerate property predictions and design processes. This article aims to provide a comprehensive review of research in different energy material fields that employ ML techniques. It begins with foundational concepts and a broad overview of ML applications in energy material research, followed by examples of successful ML applications in energy material design. We also discuss the current challenges of ML in energy material design and our perspectives. Our viewpoint is that ML will be an integral component of energy materials research, but data scarcity, lack of tailored ML algorithms, and challenges in experimentally realizing ML-predicted candidates are major barriers that still need to be overcome.

Topics & Concepts

Computer scienceSustainabilityEnergy (signal processing)ScarcitySystems engineeringEfficient energy useRisk analysis (engineering)Industrial engineeringManagement scienceEngineeringMedicineElectrical engineeringEconomicsMicroeconomicsStatisticsMathematicsBiologyEcologyMachine Learning in Materials ScienceFuel Cells and Related MaterialsElectrocatalysts for Energy Conversion
A review on machine learning-guided design of energy materials | Litcius