AIMS-EREA -- A framework for AI-accelerated Innovation of Materials for Sustainability -- for Environmental Remediation and Energy Applications
Sudarson Roy Pratihar, Deepesh Pai, Manaswita Nag

TL;DR
AIMS-EREA is a novel AI-driven framework that combines material science theories with generative AI to accelerate the discovery of sustainable materials for environmental remediation and energy applications, reducing time and human effort.
Contribution
This paper introduces AIMS-EREA, a new integrated framework that leverages predictive, analytical, and generative AI to streamline and enhance the discovery process of environmentally friendly materials.
Findings
Successfully applied to develop thermoelectric materials for waste heat conversion.
Reduces discovery time and human effort in material development.
Integrates large chemical databases with AI for optimized material design.
Abstract
Many environmental remediation and energy applications (conversion and storage) for sustainability need design and development of green novel materials. Discovery processes of such novel materials are time taking and cumbersome due to large number of possible combinations and permutations of materials structures. Often theoretical studies based on Density Functional Theory (DFT) and other theories, coupled with Simulations are conducted to narrow down sample space of candidate materials, before conducting laboratory-based synthesis and analytical process. With the emergence of artificial intelligence (AI), AI techniques are being tried in this process too to ease out simulation time and cost. However tremendous values of previously published research from various parts of the world are still left as labor-intensive manual effort and discretion of individual researcher and prone to human…
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Taxonomy
TopicsMachine Learning in Materials Science
