TY - JOUR
T1 - Element Optimization in NASICON Phosphates Enhances Sodium Storage Performance
AU - Wen, Yuanxutong
AU - Kong, Xiangpeng
AU - Rong, Qiang
AU - Lin, Peiling
AU - Shi, Qunxiong
AU - Li, Ze
AU - Su, Xuping
AU - Meng, Jiaqi
AU - Wang, Qidi
AU - Luo, Zimeng
AU - Jiao, Xingxing
AU - Song, Zhongxiao
AU - Liu, Yangyang
AU - Ding, Shujiang
AU - Li, Long
N1 - Publisher Copyright:
© 2025 Wiley-VCH GmbH.
PY - 2025/7/29
Y1 - 2025/7/29
N2 - NASICON materials have undergone significant development, transitioning from single-transition-metal systems like sodium vanadium phosphate to multi-element compositions designed for diverse performance metrics. This review highlights the iterative advancements in NASICON materials, focusing on their evolution, challenges, and future directions. Early single-element systems offer stability but face limitations such as high costs and low capacities, driving research toward dual- and multi-element systems to achieve higher capacity, better low-temperature performance, and enhance cost-effectiveness. Despite progress, challenges remain in elemental optimization, including synthesis inconsistencies, limited electrochemical analysis techniques, and unclear doping mechanisms. These issues hinder the precise understanding of material behavior and optimization strategies. To address these challenges, key pathways are proposed for future research: multifunctional elemental optimization, high-entropy materials for synergistic effects, gradient doping for precise control, and AI-driven approaches for accelerating material discovery and performance analysis. AI, particularly machine learning and deep learning, offers transformative potential in optimizing NASICON materials and shortening development cycles. By integrating advanced characterization, computational modeling, and interdisciplinary innovations, this review aims to provide a comprehensive understanding of NASICON materials and pave the way for their widespread application in sodium-ion batteries.
AB - NASICON materials have undergone significant development, transitioning from single-transition-metal systems like sodium vanadium phosphate to multi-element compositions designed for diverse performance metrics. This review highlights the iterative advancements in NASICON materials, focusing on their evolution, challenges, and future directions. Early single-element systems offer stability but face limitations such as high costs and low capacities, driving research toward dual- and multi-element systems to achieve higher capacity, better low-temperature performance, and enhance cost-effectiveness. Despite progress, challenges remain in elemental optimization, including synthesis inconsistencies, limited electrochemical analysis techniques, and unclear doping mechanisms. These issues hinder the precise understanding of material behavior and optimization strategies. To address these challenges, key pathways are proposed for future research: multifunctional elemental optimization, high-entropy materials for synergistic effects, gradient doping for precise control, and AI-driven approaches for accelerating material discovery and performance analysis. AI, particularly machine learning and deep learning, offers transformative potential in optimizing NASICON materials and shortening development cycles. By integrating advanced characterization, computational modeling, and interdisciplinary innovations, this review aims to provide a comprehensive understanding of NASICON materials and pave the way for their widespread application in sodium-ion batteries.
KW - NASICON materials
KW - element optimization
KW - new-subtype material development
KW - sodium-ion batteries
KW - trace doping
UR - https://www.scopus.com/pages/publications/105009621670
U2 - 10.1002/smll.202502098
DO - 10.1002/smll.202502098
M3 - 文献综述
C2 - 40613249
AN - SCOPUS:105009621670
SN - 1613-6810
VL - 21
JO - Small
JF - Small
IS - 30
M1 - 2502098
ER -