From the Rock Floor to the Cloud: A Systematic Survey of State-of-the-Art NLP in Battery Life Cycle
By: Tosin Adewumi , Martin Karlsson , Marcus Liwicki and more
Potential Business Impact:
Helps build better batteries using smart computer language.
We present a comprehensive systematic survey of the application of natural language processing (NLP) along the entire battery life cycle, instead of one stage or method, and introduce a novel technical language processing (TLP) framework for the EU's proposed digital battery passport (DBP) and other general battery predictions. We follow the Preferred Reporting Items for Systematic Reviews and Meta-Analyses (PRISMA) method and employ three reputable databases or search engines, including Google Scholar, Institute of Electrical and Electronics Engineers Xplore (IEEE Xplore), and Scopus. Consequently, we assessed 274 scientific papers before the critical review of the final 66 relevant papers. We publicly provide artifacts of the review for validation and reproducibility. The findings show that new NLP tasks are emerging in the battery domain, which facilitate materials discovery and other stages of the life cycle. Notwithstanding, challenges remain, such as the lack of standard benchmarks. Our proposed TLP framework, which incorporates agentic AI and optimized prompts, will be apt for tackling some of the challenges.
Similar Papers
Toward Secure and Compliant AI: Organizational Standards and Protocols for NLP Model Lifecycle Management
Cryptography and Security
Keeps AI language tools safe and private.
Standardising the NLP Workflow: A Framework for Reproducible Linguistic Analysis
Computation and Language
Organizes language data for easier computer analysis.
NLP for Social Good: A Survey of Challenges, Opportunities, and Responsible Deployment
Computation and Language
Helps AI solve big problems for everyone.