AI寻获5种有望取代锂电池的突破性材料

AI寻获5种有望取代锂电池的突破性材料

2025-08-04Technology
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马老师
老张晚上好,我是马老师。今天是8月4日,星期一,晚上11点48分。欢迎收听专为您打造的Goose Pod。
诗仙李白
我是诗仙李白。今晚我们来聊聊,AI寻获5种有望取代锂电池的突破性材料。
马老师
Let's get started. 最近,新泽西理工学院的科研团队,在一位叫Datta的教授带领下,用generative AI,也就是生成式人工智能,干了件大事。他们找到了五种全新的多孔材料,有望彻底改变多价离子电池的江湖格局,你懂的。
诗仙李白
哦?此“AI”为何方神圣?竟有如此通天彻地之能,可凭空造物?
马老师
我认为,你可以把AI理解成一个万中无一的武学奇才。它能阅尽天下武功秘籍——也就是已知的晶体结构数据库——然后在一瞬间,自创出全新的、更厉害的招式,也就是新材料。他们用了双AI模型,一个负责天马行空地创造,一个负责精打细算地评估可行性。
诗仙李白
原来如此,以天工开物之智,破格致诚明之局!此五种奇材,想必是骨骼清奇,经脉通畅,能容纳那些“多价离子”豪侠,在其中大展拳脚,来去自如吧!
诗仙李白
善哉!然则,“锂”究竟有何不妥,竟引得天下英雄,皆欲寻物而代之?
马老师
你懂的,当今天下,“锂”就是武林中的“玄铁”,人人争抢。但全球储量,大半都在南美的“锂三角”,开采又被几家澳洲公司把持。新矿从投入到产出,好比门派从开山到扬名,要足足十六年!
诗仙李白
十六载,人生忽如寄。且此物产地寥寥,岂不令天下受制于人?
马老师
正是!这就像各路高手采得了“药材”,也就是矿石,但都得送到“药王谷”,也就是中国,去炼制成“丹药”,也就是电池。这个process,中国占了主导。This is a bottleneck, 地缘风险很大。
诗仙李白
唉,开山取石,竭泽而渔,非长久之道也。想我辈游历山川,所见青山绿水,岂能为这区区白石,尽数付之东流?
马老师
说得好!所以,我们必须找到一条更sustainable,更可持续发展的路。这才是真正的侠之大者,为国为民,你懂的。
马老师
过去我们找新材料,就像大海捞针,全靠试。那位Datta教授自己都说,最大的困难,不是没想法,而是几百万种材料组合,根本不可能靠人力一个个去试错。效率太低了。
诗仙李白
诚如古之炼丹士,穷经皓首,拥炉百千,偶得一粒金丹。耗尽心血,成败皆付于天命。
马老师
对!但AI就像一位武学奇才,它看遍天下武功,能自创出无敌剑法。它快速筛选亿万种可能,找到那几招制胜奇功。This is a paradigm shift,是武学理念的根本性颠覆。
诗仙李白
此等“机关之术”,虽巧夺天工,然其心可测乎?非人之智,终有隐忧。
马老师
Good question. 这里面确实有ethical concerns,比如算法的偏见,数据的质量,我们必须保证AI的决策过程是透明、可靠的。这是技术发展的必经之路。
诗仙李白
此五种奇材,既已现世,何时能为我辈所用,解能源之忧,温暖万家灯火?
马老师
我认为,它们首先会用在大的地方,比如电网储能,为城市储存风电、太阳能。好比一个巨大的“真气”库,而不是先用在你的手机或电动车上。
诗仙李白
蓄力于渊,待时而发。然则,我等需待何时?
马老师
基于锌的电池,可能8到10年就能看到商业化的影子。其他的,比如用镁和钙的,可能要等上15年。Good things take time,这是个长期的investment。
诗仙李白
十五年……堪比一坛绝世佳酿,静待开坛之日。只盼功成之时,能解生民之渴。
马老师
放眼未来,这个电池储能(BESS)的江湖,到2030年将是千亿美金的市场。但并非只有我们今天聊的这一路兵马能笑傲江湖。
诗仙李白
哦?尚有他路英雄?
马老师
是的,比如钠离子电池,成本更低,也是一股不可小觑的力量。未来的能源格局,一定是百花齐放,万剑归宗!
马老师
好,今天就到这里。AI正以前所未有的速度,为我们开创一个更可持续的能源未来。感谢老张收听Goose Pod。
诗仙李白
期待明日再与君共饮论道。再会。

## AI Discovers Promising New Materials for Next-Generation Batteries **Report Provider:** ScienceDaily **Publication Date:** August 2, 2025 **Topic:** Artificial Intelligence, Energy Storage, Materials Science ### Overview Researchers at the New Jersey Institute of Technology (NJIT), led by Professor Dibakar Datta, have successfully employed generative artificial intelligence (AI) to accelerate the discovery of novel porous materials for multivalent-ion batteries. This breakthrough offers a potential solution to the challenges associated with lithium-ion batteries, such as global supply issues and sustainability concerns. The AI-driven approach has identified five entirely new porous transition metal oxide structures that demonstrate significant promise for revolutionizing energy storage. ### Key Findings and Conclusions * **AI-Driven Material Discovery:** The NJIT team utilized a novel dual-AI approach, combining a Crystal Diffusion Variational Autoencoder (CDVAE) and a Large Language Model (LLM), to rapidly explore and identify new crystal structures. * **Five New Promising Materials:** The AI system successfully discovered five entirely new porous transition metal oxide structures. * **Advantages of Multivalent-Ion Batteries:** These new materials are designed to accommodate multivalent ions (e.g., magnesium, calcium, aluminum, zinc), which carry two or three positive charges. This allows multivalent-ion batteries to potentially store significantly more energy compared to lithium-ion batteries. * **Addressing Multivalent Ion Challenges:** The larger size and greater electrical charge of multivalent ions have historically made them difficult to integrate efficiently into battery materials. The newly discovered porous structures feature large, open channels that facilitate the quick and safe movement of these bulky ions. * **Validation of AI Discoveries:** The AI-generated structures were validated through quantum mechanical simulations and stability tests, confirming their potential for experimental synthesis and real-world applications. * **Scalable Method for Material Exploration:** The research establishes a rapid and scalable method for exploring advanced materials beyond batteries, with potential applications in electronics and other clean energy solutions. ### Critical Information and Context * **The Problem:** The primary hurdle in developing next-generation batteries was the sheer impossibility of testing millions of material combinations through traditional laboratory experiments. * **The Solution:** Generative AI provided a "fast, systematic way to sift through that vast landscape and spot the few structures that could truly make multivalent batteries practical." * **AI Tools Used:** * **Crystal Diffusion Variational Autoencoder (CDVAE):** Trained on vast datasets of known crystal structures, enabling it to propose novel materials. * **Large Language Model (LLM):** Tuned to identify materials closest to thermodynamic stability, crucial for practical synthesis. * **Significance of Porous Structures:** The "large, open channels" within the discovered materials are critical for the efficient movement of "bulky multivalent ions quickly and safely." * **Broader Implications:** Professor Datta emphasized that this research is not just about battery materials but about creating a "rapid, scalable method to explore any advanced materials... without extensive trial and error." ### Future Plans The NJIT team plans to collaborate with experimental laboratories to synthesize and test the AI-designed materials, aiming to advance the development of commercially viable multivalent-ion batteries. ### Numerical Data and Tables While no specific numerical data or tables were provided in the excerpt, the key "finding" is the discovery of **five entirely new porous transition metal oxide structures**. The "data" is implicitly the vast number of material combinations that the AI was able to sift through, which would be impossible for traditional methods. ### Relevant News Identifiers * **Source:** ScienceDaily * **URL:** `https://www.sciencedaily.com/releases/2025/08/250802022915.htm` * **Keywords:** Batteries; Engineering and Construction; Graphene; Consumer Electronics; Energy and Resources; Physics; Materials Science; Engineering

AI just found 5 powerful materials that could replace lithium batteries

Read original at ScienceDaily

Researchers from New Jersey Institute of Technology (NJIT) have used artificial intelligence to tackle a critical problem facing the future of energy storage: finding affordable, sustainable alternatives to lithium-ion batteries.In research published in Cell Reports Physical Science, the NJIT team led by Professor Dibakar Datta successfully applied generative AI techniques to rapidly discover new porous materials capable of revolutionizing multivalent-ion batteries.

These batteries, using abundant elements like magnesium, calcium, aluminum and zinc, offer a promising, cost-effective alternative to lithium-ion batteries, which face global supply challenges and sustainability issues.Unlike traditional lithium-ion batteries, which rely on lithium ions that carry just a single positive charge, multivalent-ion batteries use elements whose ions carry two or even three positive charges.

This means multivalent-ion batteries can potentially store significantly more energy, making them highly attractive for future energy storage solutions.However, the larger size and greater electrical charge of multivalent ions make them challenging to accommodate efficiently in battery materials -- an obstacle that the NJIT team's new AI-driven research directly addresses."

One of the biggest hurdles wasn't a lack of promising battery chemistries -- it was the sheer impossibility of testing millions of material combinations," Datta said. "We turned to generative AI as a fast, systematic way to sift through that vast landscape and spot the few structures that could truly make multivalent batteries practical."

This approach allows us to quickly explore thousands of potential candidates, dramatically speeding up the search for more efficient and sustainable alternatives to lithium-ion technology."To overcome these hurdles, the NJIT team developed a novel dual-AI approach: a Crystal Diffusion Variational Autoencoder (CDVAE) and a finely tuned Large Language Model (LLM).

Together, these AI tools rapidly explored thousands of new crystal structures, something previously impossible using traditional laboratory experiments.The CDVAE model was trained on vast datasets of known crystal structures, enabling it to propose completely novel materials with diverse structural possibilities.

Meanwhile, the LLM was tuned to zero in on materials closest to thermodynamic stability, crucial for practical synthesis."Our AI tools dramatically accelerated the discovery process, which uncovered five entirely new porous transition metal oxide structures that show remarkable promise," said Datta.

"These materials have large, open channels ideal for moving these bulky multivalent ions quickly and safely, a critical breakthrough for next-generation batteries."The team validated their AI-generated structures using quantum mechanical simulations and stability tests, confirming that the materials could indeed be synthesized experimentally and hold great potential for real-world applications.

Datta emphasized the broader implications of their AI-driven approach: "This is more than just discovering new battery materials -- it's about establishing a rapid, scalable method to explore any advanced materials, from electronics to clean energy solutions, without extensive trial and error."With these encouraging results, Datta and his colleagues plan to collaborate with experimental labs to synthesize and test their AI-designed materials, pushing the boundaries further towards commercially viable multivalent-ion batteries.

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