Generative Artificial Intelligence Extracts Structure-Function Relationships from Plants for New Materials
Rachel K. Luu, Jingyu Deng, Mohammed Shahrudin Ibrahim, Nam-Joon Cho, Ming Dao, Subra Suresh, Markus J. Buehler

TL;DR
This paper introduces a novel AI framework that combines generative models with interdisciplinary literature to discover and design new plant-inspired materials with adaptive properties, validated through laboratory experiments.
Contribution
It presents the first integrated AI approach leveraging literature from multiple fields to extract structure-function relationships and design bioinspired materials.
Findings
Generated a new pollen-based adhesive with tunable properties
Validated AI-designed materials through laboratory testing
Demonstrated AI's capability to propose experimentally feasible hypotheses
Abstract
Large language models (LLMs) have reshaped the research landscape by enabling new approaches to knowledge retrieval and creative ideation. Yet their application in discipline-specific experimental science, particularly in highly multi-disciplinary domains like materials science, remains limited. We present a first-of-its-kind framework that integrates generative AI with literature from hitherto-unconnected fields such as plant science, biomimetics, and materials engineering to extract insights and design experiments for materials. We focus on humidity-responsive systems such as pollen-based materials and Rhapis excelsa (broadleaf lady palm) leaves, which exhibit self-actuation and adaptive performance. Using a suite of AI tools, including a fine-tuned model (BioinspiredLLM), Retrieval-Augmented Generation (RAG), agentic systems, and a Hierarchical Sampling strategy, we extract…
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Taxonomy
TopicsPlant and Biological Electrophysiology Studies · Advanced Materials and Mechanics · Machine Learning in Materials Science
