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Mark A. Ganter

Researcher at University of Washington

Publications -  77
Citations -  2338

Mark A. Ganter is an academic researcher from University of Washington. The author has contributed to research in topics: Solid modeling & Signed distance function. The author has an hindex of 22, co-authored 77 publications receiving 2067 citations.

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A review of process development steps for new material systems in three dimensional printing (3DP)

TL;DR: In this paper, the authors present a review of the literature relevant to each step in 3D printing implementation, including powder formulation, method selection, binder formulation and testing, printing process specification, and post-processing specification.
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3D-printed mechanochromic materials.

TL;DR: It was determined that the filament production and printing process did not degrade the spiropyran units or polymer chains and that the mechanical properties of the specimens prepared with the custom filament were in good agreement with those from commercial PCL filament.
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Real-time finite element modeling for surgery simulation: an application to virtual suturing

TL;DR: A new real-time methodology based on linear FE analysis that is appropriate for a wide range of surgical simulation applications is presented, characterized by high model resolution, low preprocessing time, unrestricted multipoint surface contact, and adjustable boundary conditions.
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Production of Materials with Spatially-Controlled Cross-Link Density via Vat Photopolymerization

TL;DR: An efficient method to produce objects comprising spatially controlled and graded cross-link densities using vat photopolymerization additive manufacturing (AM) and changes in mechanical properties such as increased strain-to-break in inhomogeneous structures in comparison with homogeneous variants are measured.
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The validity of computer-generated graphic images of forest landscape

TL;DR: This study examines the validity of using computer-generated graphic images of forest landscapes as decision-making aids for visual quality management and finds photographs have been found to be acceptable surrogates for actual landscapes for judging visual quality.