大语言建模协助天然多酚作为绿色沉淀剂回收废旧电池

IF 3.9 2区 化学 Q2 CHEMISTRY, MULTIDISCIPLINARY
Huijun Huang, Mei Chen, Yajing Zhang, Xiaoling Wang, Qiuping Xie, Yiran Pu, Yuanmeng He, Limin Zhu, Yunxiang He, Junling Guo
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引用次数: 0

摘要

由于需要缓解全球变暖和减少对化石燃料的依赖,对储能电池的需求不断增长,导致了对废电池的环境担忧。有效回收这些电池对于防止污染和回收镍(Ni2+)、钴(Co2+)和锰(Mn2+)等有价值的金属离子至关重要。传统的电池回收湿法冶金方法虽然有效,但往往涉及有害的化学物质和过程。天然多酚由于能够与金属离子配合,提供了一种更环保的选择。然而,优化多酚选择以实现高效回收仍然是一项劳动密集型的挑战。本研究提出了一种将天然多酚作为绿色沉淀剂与大型语言模型(LLM) GPT-4相结合的策略,以增强废电池中金属离子的沉淀和回收。通过利用GPT-4在自然语言处理中的能力,我们实现了人类研究人员和LLM之间的动态迭代合作,优化了不同实验条件下多酚的选择。结果表明,单宁酸对Ni2+、Co2+和Mn2+的沉淀率分别为94.8、96.7和96.7%,优于常规方法。GPT-4的集成提高了过程的效率和准确性,通过减少二次污染和利用可生物降解材料来确保环境的可持续性。这一创新战略展示了将人工智能驱动的分析与绿色化学相结合的潜力,以解决电池回收挑战,为更可持续、更高效的方法铺平了道路。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Large Language Modeling to Assist Natural Polyphenols as Green Precipitants for Recycling Spent Batteries

Large Language Modeling to Assist Natural Polyphenols as Green Precipitants for Recycling Spent Batteries
The growing demand for energy storage batteries, driven by the need to alleviate global warming and reduce fossil fuel dependency, has led to environmental concerns surrounding spent batteries. Efficient recycling of these batteries is essential to prevent pollution and recover valuable metal ions such as nickel (Ni2+), cobalt (Co2+), and manganese (Mn2+). Conventional hydrometallurgical methods for battery recycling, while effective, often involve harmful chemicals and processes. Natural polyphenols offer a greener alternative due to their ability to coordinate with metal ions. However, optimizing polyphenol selection for efficient recovery remains a labor-intensive challenge. This study presents a strategy combining natural polyphenols as green precipitants with the power of GPT-4, a large language model (LLM), to enhance the precipitation and recovery of metal ions from spent batteries. By leveraging the capabilities of GPT-4 in natural language processing, we enable a dynamic, iterative collaboration between human researchers and the LLM, optimizing polyphenol selection for different experimental conditions. The results show that tannic acid achieved precipitation rates of 94.8, 96.7, and 96.7% for Ni2+, Co2+, and Mn2+, respectively, outperforming conventional methods. The integration of GPT-4 enhances both the efficiency and accuracy of the process, ensuring environmental sustainability by minimizing secondary pollution and utilizing biodegradable materials. This innovative strategy demonstrates the potential of combining artificial intelligence-driven analysis with green chemistry to address battery recycling challenges, paving the way for more sustainable and efficient methods.
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来源期刊
Langmuir
Langmuir 化学-材料科学:综合
CiteScore
6.50
自引率
10.30%
发文量
1464
审稿时长
2.1 months
期刊介绍: Langmuir is an interdisciplinary journal publishing articles in the following subject categories: Colloids: surfactants and self-assembly, dispersions, emulsions, foams Interfaces: adsorption, reactions, films, forces Biological Interfaces: biocolloids, biomolecular and biomimetic materials Materials: nano- and mesostructured materials, polymers, gels, liquid crystals Electrochemistry: interfacial charge transfer, charge transport, electrocatalysis, electrokinetic phenomena, bioelectrochemistry Devices and Applications: sensors, fluidics, patterning, catalysis, photonic crystals However, when high-impact, original work is submitted that does not fit within the above categories, decisions to accept or decline such papers will be based on one criteria: What Would Irving Do? Langmuir ranks #2 in citations out of 136 journals in the category of Physical Chemistry with 113,157 total citations. The journal received an Impact Factor of 4.384*. This journal is also indexed in the categories of Materials Science (ranked #1) and Multidisciplinary Chemistry (ranked #5).
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