材料科学
法拉第效率
阳极
电解质
轨道能级差
阴极
分子轨道
锌
金属
化学工程
溶解度
水溶液
电化学
无机化学
相间
分子
电池(电)
电偶阳极
金属有机骨架
阳离子聚合
密度泛函理论
离子液体
质子化
电镀(地质)
钒酸盐
能量密度
纳米尺度
相位反转
溴化铵
作者
L L Zhang,Shuyu Bi,Xijun Liu,Qiangchao Sun,Xionggang Lu,Hongwei Cheng
摘要
ABSTRACT The commercialization of aqueous zinc‐ion batteries has long been hindered by side reactions stemming from zinc anode interfacial instability. Organic molecular additives offer an effective solution. Here, using lowest unoccupied molecular orbital (LUMO) energy and solubility as dual screening criteria, a novel high‐precision Organic Molecular Attention Prediction Graph Neural Network is developed to enable high‐throughput screening of organic additives. Through Shapley Additive exPlanations and density of states calculations, carbonyl electron localization is established as the dominant descriptor governing interfacial dynamics. α‐ketoglutaric acid (Ket) was selected as the optimal additive based on this principle. Strong coordination between its electronegative carbonyl groups enables the formation of a gradient‐structured solid‐electrolyte interphase on the Zn surface, resulting in uniform Zn 2+ flux distribution and significantly enhancing interfacial reversibility. Experimental demonstrates Zn||Cu cells achieve a high average Coulombic efficiency of 99.93% over 3500 cycles, while Zn||Zn cells exhibit unprecedented longevity of 4550 h (187 days) at 5.0 mA·cm −2 with calendar life exceeding 7000 h, and maintain stability even at ultra‐high current densities of 30 mA·cm −2 . Full cells paired with high‐loading (∼10 mg cm −2 ) ammonium vanadate cathodes retain over 80% capacity after 600 cycles. This study establishes a closed‐loop framework of screening, providing a new pathway for metal battery systems.
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