Droplet evolution prediction in material jetting via tensor time series analysis

Additive Manufacturing - Tập 66 - Trang 103461 - 2023
Luis Javier Segura1, Zebin Li2, Chi Zhou2, Hongyue Sun2
1Department of Industrial Engineering, University of Louisville, Louisville, KY 40292, United States
2Department of Industrial and Systems Engineering, University at Buffalo, SUNY Buffalo, NY 14260, United States

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