This year's symposium will focus on innovations in nanoscale materials characterization including new method development as well as industry-specific applications. Submissions are also invited for special sessions focused on machine learning for materials characterization and imaging (in conjunction with the AI TechConnect Conference); and on industrial applications of x-ray scattering methods.
Back to Top ↑2022 Symposium Sessions | ||
Monday June 13 | ||
10:30 | Advanced Characterization Opportunities at Academic Centers of Excellence | |
1:30 | Material Characterization & Imaging | |
Tuesday June 14 | ||
9:00 | Characterization with Scanning Probe Microscopy | |
1:30 | Machine Learning for Characterization | |
2022 Symposium Program | ||
Monday June 13 | ||
10:30 | Advanced Characterization Opportunities at Academic Centers of Excellence | Chesapeake A |
Session chair: Alex Norman, Modern Meadow, US | ||
10:30 | Imaging and analysis - an engine for the discovery and innovation N. Yao, Princeton University, US | |
10:55 | Effect of user fees on core facility income and user behavior: It’s not what you think J. Hunter, University of Wisconsin-Madison, US | |
11:20 | The North Carolina Research Triangle Nanotechnology Network (RTNN) J.L. Jones, North Carolina State University, US | |
1:30 | Material Characterization & Imaging | Chesapeake A |
Session chair: Greg Haugstad, University of Minnesota, US | ||
1:30 | Comparison Analysis of 2D Nanomaterial Dispersions using Analytical Ultracentrifugation and Microscopy Methods C. Sims, National Institute of Standards and Technology, US | |
1:55 | Nanoplastic arrays – a new order of microspectroscopy standards A. Madison, D. Westly, B. Ilic, C. Copeland, A. Pintar, C. Camp, J. Liddle, S. Stavis, National Institute of Standards and Technology, US | |
2:15 | Ceramic sintering and properties characterization based on solid mechanics H. Camacho Montes, Y. Espinosa Almeyda, J.D. Gamboa Garay, L.E. Barraza de León, A. Vega Siverio, I.M. Espinoza Ochoa, J.A. Otero Hernández, R. Rodríguez Ramos, B.J. Mederos Madrazo, F.J. Sabina, R.K. Bordia, Universidad Autónoma de Ciudad Juárez, MX | |
2:35 | Rheo-Raman microscopy for crystallization and crosslinking A. Kotula, National Institute of Standards and Technology, US | |
2:55 | Rapid multiphoton autofluorescence lifetime imaging of retinal tissue Y-I Chen, T.D. Nguyen, Y-J Chang, S-C Liao, Y-A Kuo, S. Hong, G. Rylander III, S.R. Santacruz, T. Yeh, University of Texas at Austin, US | |
Tuesday June 14 | ||
9:00 | Characterization with Scanning Probe Microscopy | Chesapeake 10 |
Session chair: Greg Haugstad, University of Minnesota, US | ||
9:00 | Quantitative Piezoresponse Force Microscopy for Every User J. Killgore, National Institute of Standards and Technology, US | |
9:25 | Nanoscale Materials Analysis using AFM-IR L. Gong, 3M Company, US | |
9:50 | Friction Property of Ti3C2Tx MXene at the Nanoscale A. Colak, Clarkson University, US | |
10:15 | Enhancing or Diminishing Sensitivity in Multifrequency AFM B. Eslami, Widener, US | |
1:30 | Machine Learning for Characterization | Chesapeake 10 |
Session chair: Alex Norman, Modern Meadow, US | ||
1:30 | Machine Learning for Automated Experiments in Charged Particle Beam Tools A. Belianinov, Sandia National Laboratories, US | |
1:55 | Machine learning for recognition and classification of AFM images I. Sokolov, Tufts University, US | |
2:20 | Deep learning to predict structure property relationships with AFM D. Yablon, I. Chakraborty, SurfaceChar LLC, Cognite, US | |
2:40 | Automated Classification of Defected Images by Means of Machine Learning for Improved Analysis of Vehicle Undercarriages W.V. Giegerich, A. Stone, L. Forte III, P.J. Schneider, K.W. Oh, University at Buffalo, US | |
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