挤压
自愈水凝胶
3D打印
材料科学
3D生物打印
复合材料
生物医学工程
组织工程
高分子化学
工程类
作者
Weihong Chai,Yalong An,Xingli Wang,Zhe Yang,Qinghua Wei
出处
期刊:PubMed
日期:2025-07-17
卷期号:11 (7)
摘要
Extrusion-based 3D bioprinting is prevalent in tissue engineering, but enhancing precision is critical as demands for functionality and accuracy escalate. Process parameters (nozzle diameter d, layer height h, printing speed v1, extrusion speed v2) significantly influence hydrogel deposition and structure formation. This study optimizes these parameters using an orthogonal experimental design and grey relational analysis. Hydrogel filament formability and the die swell ratio served as optimization objectives. A response mathematical model linking parameters to grey relational grade was established via support vector regression (SVR). Particle Swarm Optimization (PSO) then determined the optimal parameter combination: d = 0.6 mm, h = 0.3 mm, v1 = 8 mm/s, and v2 = 8 mm/s. Comparative experiments showed the optimized parameters predicted by the model with a mean error of 5.15% for printing precision, which outperformed random sets. This data-driven approach reduces uncertainties inherent in conventional simulation methods, enhancing predictive accuracy. The methodology establishes a novel framework for optimizing precision in extrusion-based 3D bioprinting.
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