Professional headshot of Qingxu Jin

Qingxu Jin

Assistant Professor

Department of Civil and Environmental Engineering, College of Engineering

Engineering Bldg, 428 S Shaw Ln Room 3576

Biography

Dr. Qingxu "Bill" Jin is currently an Assistant Professor at Michigan State University (MSU) within the Department of Civil and Environmental Engineering. He is also the principal investigator of the Resilient, Intelligent, Sustainable & Energy-efficient (RISE) Infrastructure Materials Lab at MSU. Dr. Jin earned his Ph.D. in Civil and Environmental Engineering from the Georgia Institute of Technology, with a minor in Materials Science. He served as a guest researcher in the Materials and Structu

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Education

Ph.D., Civil and Environmental Engineering, Georgia Institute of Technology

M.S., Civil and Environmental Engineering, University of Michigan

M.S., Natural Resources and Environmental, University of Michigan

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Awards

NSF CMMI’s Game Changer Academies (C-GCA) Panel Fellow, Division of Civil, Mechanical and Manufacturing Innovation (CMMI), NSF. (2024)

ASCE ExCEEd Fellow, American Society of Civil Engineers (ASCE). (2024)

STEM Ambassador, STEM Ambassador Program (STEMAP), MSU (2021)

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Publications

Ni, X., Leon-Miquel, M., Greiner, Q. R., Paul, A., and Jin, Q.* (2023), “Crack sealers for the preservation of concrete bridge decks: A synthesis of a national survey and literature review”, Journal of Infrastructure Preservation and Resilience, 4 (1), 23 https://doi.org/10.1186/s43065-023-00091-8

Leon-Miquel, M., Silva-Retamal, J., Aparicio, D., Rangelov, M., Jin, Q.*, and Paul, A.* (2023), “Novel application of Chilean natural pozzolan for sustainable strain-hardening cementitious composite”, Resources, Conservation & Recycling, 179, 107098 https://doi.org/10.1016/j.resconrec.2023.107098

Xu, K.*, Jin, Q.*, Li, J., Li, V. C., Kurtis, K. E., and Monteiro, P. J. M. (2023), “In-situ microtomography image segmentation for characterizing strain-hardening cementitious composites under tension using machine learning”, Cement and Concrete Research, 169, 107164 https://doi.org/10.1016/j.cemconres.2023.107164

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