TY - JOUR
T1 - Integrated experiment and simulation co-design
T2 - A key infrastructure for predictive mesoscale materials modeling
AU - Joshi, Shailendra
AU - Bucsek, Ashley
AU - Pagan, Darren C.
AU - Daly, Samantha
AU - Ravindran, Suraj
AU - Marian, Jaime
AU - Bessa, Miguel A.
AU - Kalidindi, Surya R.
AU - Admal, Nikhil C.
AU - Reina, Celia
AU - Ghosh, Somnath
AU - Warren, James A.
AU - Viñals, Jorge
AU - Tadmor, Ellad B.
N1 - Publisher Copyright:
© 2025 Elsevier Ltd
PY - 2025/12
Y1 - 2025/12
N2 - The design of structural and functional materials for specialized applications is experiencing significant growth fueled by rapid advancements in materials synthesis, characterization, and manufacturing, as well as by sophisticated computational materials modeling frameworks that span a wide spectrum of length and time scales in the mesoscale between atomistic and homogenized continuum approaches. This is leading towards a systems-based design methodology that will replace traditional empirical approaches, embracing the principles of the Materials Genome Initiative. However, there are several gaps in this framework as it relates to advanced structural materials development: (1) limited availability and access to high-fidelity experimental and computational datasets, (2) lack of co-design of experiments and simulation aimed at computational model validation, (3) lack of on-demand access to verified and validated codes for simulation and for experimental analyses, and (4) limited opportunities for workforce training and educational outreach. These shortcomings stifle major innovations in structural materials design. This paper describes plans for a community-driven research initiative that addresses current gaps based on best-practice recommendations of leaders in mesoscale modeling, experimentation, and cyberinfrastructure obtained at an NSF-sponsored workshop dedicated to this topic and subsequent discussions. The proposal is to create a hub for Mesoscale Experimentation and Simulation co-Operation (h-MESO)—that will (I) provide curation and sharing of models, data, and codes, (II) foster co-design of experiments for model validation with systematic uncertainty quantification, and (III) provide a platform for education and workforce development. h-MESO will engage experimental and computational experts in mesoscale mechanics and plasticity, along with mathematicians and computer scientists with expertise in algorithms, data science, machine learning, and large-scale cyberinfrastructure initiatives.
AB - The design of structural and functional materials for specialized applications is experiencing significant growth fueled by rapid advancements in materials synthesis, characterization, and manufacturing, as well as by sophisticated computational materials modeling frameworks that span a wide spectrum of length and time scales in the mesoscale between atomistic and homogenized continuum approaches. This is leading towards a systems-based design methodology that will replace traditional empirical approaches, embracing the principles of the Materials Genome Initiative. However, there are several gaps in this framework as it relates to advanced structural materials development: (1) limited availability and access to high-fidelity experimental and computational datasets, (2) lack of co-design of experiments and simulation aimed at computational model validation, (3) lack of on-demand access to verified and validated codes for simulation and for experimental analyses, and (4) limited opportunities for workforce training and educational outreach. These shortcomings stifle major innovations in structural materials design. This paper describes plans for a community-driven research initiative that addresses current gaps based on best-practice recommendations of leaders in mesoscale modeling, experimentation, and cyberinfrastructure obtained at an NSF-sponsored workshop dedicated to this topic and subsequent discussions. The proposal is to create a hub for Mesoscale Experimentation and Simulation co-Operation (h-MESO)—that will (I) provide curation and sharing of models, data, and codes, (II) foster co-design of experiments for model validation with systematic uncertainty quantification, and (III) provide a platform for education and workforce development. h-MESO will engage experimental and computational experts in mesoscale mechanics and plasticity, along with mathematicians and computer scientists with expertise in algorithms, data science, machine learning, and large-scale cyberinfrastructure initiatives.
KW - Experiment/modeling co-design
KW - Functional materials
KW - Science gateway
KW - Uncertainty quantification
UR - https://www.scopus.com/pages/publications/105016827801
UR - https://www.scopus.com/pages/publications/105016827801#tab=citedBy
U2 - 10.1016/j.mechmat.2025.105480
DO - 10.1016/j.mechmat.2025.105480
M3 - Article
AN - SCOPUS:105016827801
SN - 0167-6636
VL - 211
JO - Mechanics of Materials
JF - Mechanics of Materials
M1 - 105480
ER -