通过将机器学习与藻类生物聚合物相结合推动 3D 打印技术的发展

IF 6.2 3区 工程技术 Q1 ENGINEERING, CHEMICAL ChemBioEng Reviews Pub Date : 2024-02-02 DOI:10.1002/cben.202300054
Abu Danish Aiman Bin Abu Sofian, Hooi Ren Lim, Dr. Kit Wayne Chew, Prof. Pau Loke Show
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引用次数: 0

摘要

机器学习(ML)与藻类生物聚合物在三维打印中的整合是一个新兴领域,有可能给各行各业带来革命性的变化。这篇综述文章深入探讨了这一领域所面临的挑战和取得的进展,首先探讨了这一领域所面临的关键问题,即对可持续和高效增材制造工艺的需求。文章探讨了海藻类生物聚合物(如海藻酸盐和卡拉胶)在三维打印中的可行性,强调了它们的环境效益和技术挑战。研究还探讨了人工智能在增强材料选择、预测建模和质量控制方面的作用,展示了这种协同作用如何显著改善三维打印工艺。主要发现包括藻类生物聚合物机械性能的增强以及通过 ML 算法对打印参数的优化。文章还讨论了使用螺旋藻制造一系列材料以及卡拉胶在骨组织工程中的应用等实例。结论强调了在三维打印中将 ML 与藻类生物聚合物相结合的变革性影响,为增材制造中的创新、可持续解决方案铺平了道路。尽管存在挑战,但这种整合为未来先进的生态友好型制造技术带来了希望。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

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Advancing 3D Printing through Integration of Machine Learning with Algae-Based Biopolymers

The integration of machine learning (ML) with algae-derived biopolymers in 3D printing is a burgeoning area with the potential to revolutionize various industries. This review article delves into the challenges and advancements in this field, starting with the critical problem it addresses the need for sustainable and efficient additive manufacturing processes. Algae-based biopolymers, such as alginate and carrageenan, are explored for their viability in 3D printing, highlighting their environmental benefits and technical challenges. The role of ML in enhancing material selection, predictive modeling, and quality control is examined, showcasing how this synergy leads to significant improvements in 3D printing processes. Key findings include the enhanced mechanical properties of algae-based biopolymers and the optimization of printing parameters through ML algorithms. Examples like the use of Spirulina in creating a range of materials and the application of carrageenan in bone tissue engineering are discussed. The conclusion underscores the transformative impact of combining ML with algae-based biopolymers in 3D printing, paving the way for innovative, sustainable solutions in additive manufacturing. Despite existing challenges, this integration holds promise for a future of advanced, eco-friendly manufacturing techniques.

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来源期刊
ChemBioEng Reviews
ChemBioEng Reviews Biochemistry, Genetics and Molecular Biology-Biochemistry
CiteScore
7.90
自引率
2.10%
发文量
45
期刊介绍: Launched in 2014, ChemBioEng Reviews is aimed to become a top-ranking journal publishing review articles offering information on significant developments and provide fundamental knowledge of important topics in the fields of chemical engineering and biotechnology. The journal supports academics and researchers in need for concise, easy to access information on specific topics. The articles cover all fields of (bio-) chemical engineering and technology, e.g.,
期刊最新文献
Cover Picture: ChemBioEng Reviews 5/2024 Masthead: ChemBioEng Reviews 5/2024 Table of Contents: ChemBioEng Reviews 5/2024 Anaerobic Digestion for Textile Waste Treatment and Valorization Glycerol as a Feedstock for Chemical Synthesis
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