Machine Learning-Assisted High-Donor-Number Electrolyte Additive Screening toward Construction of Dendrite-Free Aqueous Zinc-Ion Batteries

IF 16 1区 材料科学 Q1 CHEMISTRY, MULTIDISCIPLINARY ACS Nano Pub Date : 2025-01-07 DOI:10.1021/acsnano.4c13312
Haoran Luo, Qianzhi Gou, Yujie Zheng, Kaixin Wang, Ruduan Yuan, Sida Zhang, Wei Fang, Ziga Luogu, Yuzhi Hu, Huaping Mei, Bingye Song, Kuan Sun, John Wang, Meng Li
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Abstract

The utilization of electrolyte additives has been regarded as an efficient strategy to construct dendrite-free aqueous zinc-ion batteries (AZIBs). However, the blurry screening criteria and time-consuming experimental tests inevitably restrict the application prospect of the electrolyte additive strategy. With the rise of artificial intelligence technology, machine learning (ML) provides an avenue to promote upgrading of energy storage devices. Herein, we proposed an intriguing ML-assisted method to accelerate the development efficiency of electrolyte additives on dendrite-free AZIBs. Concretely, we selected the Gutmann donor number (DN value) as a screen parameter, which can reflect the interaction between solvent molecules and ions, and proposed an integrated ML model that can predict the DN values of organic molecules via molecular fingerprints, thereby achieving the screening of electrolyte additives. Then, combined with experimental tests and theoretical calculations, the influence law of three additive molecules with different DN values on the thermodynamic stability of the Zn anode and its corresponding optimization mechanisms were revealed; the DN values of the additives are in positive correlation with the electrochemical performance of the Zn anode. Especially, an isopropyl alcohol (IPA) additive with a high DN value (36) integrated with various Zn-based cells presented a superior electrochemical performance, including a high calendar life (1500 h), a stable Coulombic efficiency (99% within 450 cycles), and a favorable cycling retention. This work pioneers ML techniques for predicting DN values for electrolyte additives, offering a compelling investigation method for the investigation of AZIBs.

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机器学习辅助高给体电解质添加剂筛选构建无枝晶锌离子水电池
电解质添加剂的使用是制备无枝晶锌离子电池的有效方法。然而,筛选标准的模糊和耗时的实验测试不可避免地限制了电解质添加剂策略的应用前景。随着人工智能技术的兴起,机器学习为推动储能设备升级提供了途径。在此,我们提出了一种有趣的ml辅助方法来加速电解质添加剂在无枝晶azib上的开发效率。具体而言,我们选择了能够反映溶剂分子与离子相互作用的Gutmann供体数(DN值)作为筛选参数,并提出了一个可以通过分子指纹预测有机分子DN值的集成ML模型,从而实现了电解质添加剂的筛选。然后,结合实验测试和理论计算,揭示了不同DN值的3种添加剂分子对Zn阳极热力学稳定性的影响规律及其优化机制;添加剂的DN值与锌阳极的电化学性能呈正相关。特别是,具有高DN值(36)的异丙醇(IPA)添加剂与各种锌基电池集成,表现出优异的电化学性能,包括高日历寿命(1500 h),稳定的库仑效率(450次循环内99%)和良好的循环保留。这项工作开创了预测电解质添加剂DN值的ML技术,为azib的研究提供了一种令人信服的研究方法。
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来源期刊
ACS Nano
ACS Nano 工程技术-材料科学:综合
CiteScore
26.00
自引率
4.10%
发文量
1627
审稿时长
1.7 months
期刊介绍: ACS Nano, published monthly, serves as an international forum for comprehensive articles on nanoscience and nanotechnology research at the intersections of chemistry, biology, materials science, physics, and engineering. The journal fosters communication among scientists in these communities, facilitating collaboration, new research opportunities, and advancements through discoveries. ACS Nano covers synthesis, assembly, characterization, theory, and simulation of nanostructures, nanobiotechnology, nanofabrication, methods and tools for nanoscience and nanotechnology, and self- and directed-assembly. Alongside original research articles, it offers thorough reviews, perspectives on cutting-edge research, and discussions envisioning the future of nanoscience and nanotechnology.
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