A review on artificial intelligence-aided design of surface textures

IF 6.3 1区 工程技术 Q1 ENGINEERING, MECHANICAL
Jiaxin Zheng, Sen Jiang, Guangneng Dong
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引用次数: 0

Abstract

Artificial Intelligence (AI) has received significant attention in the field of the design of surface textures due to the excellent ability to analyze a large amount of data and thus reveal patterns between some complex phenomena. This paper reviews the main classifications of AI-aided surface texture design, including data-driven, model-driven, and data and model hybrid approaches. Data-driven approaches leverage large-scale datasets to extract effective design features via machine learning algorithms. These features are then utilized to optimize surface textures, ensuring they meet specific functional requirements. The model-driven approach is based on physical models and combines AI technology to perform parameter optimization and simulation to ensure the physical rationality of the design. By combining the advantages of data-driven and model-driven approaches, the data and model hybrid approach achieves a more efficient and accurate design process. In addition, the design of AI-aided surface textures for tribology, fluid dynamics and drag reduction, and biomedical applications is presented. Finally, a perspective on the current challenges as well as future research directions is presented.

Abstract Image

表面纹理的人工智能辅助设计研究进展
人工智能(Artificial Intelligence, AI)具有分析大量数据、揭示复杂现象之间规律的卓越能力,因此在表面纹理设计领域受到了广泛关注。本文综述了人工智能辅助表面纹理设计的主要分类,包括数据驱动、模型驱动和数据与模型混合方法。数据驱动方法利用大规模数据集,通过机器学习算法提取有效的设计特征。然后利用这些特征来优化表面纹理,确保它们满足特定的功能要求。模型驱动方法以物理模型为基础,结合人工智能技术进行参数优化和仿真,保证设计的物理合理性。数据和模型混合方法结合了数据驱动和模型驱动方法的优点,实现了更高效、更精确的设计过程。此外,还介绍了用于摩擦学、流体动力学和减阻以及生物医学应用的人工智能辅助表面纹理的设计。最后,对当前面临的挑战和未来的研究方向进行了展望。
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来源期刊
Friction
Friction Engineering-Mechanical Engineering
CiteScore
12.90
自引率
13.20%
发文量
324
审稿时长
13 weeks
期刊介绍: Friction is a peer-reviewed international journal for the publication of theoretical and experimental research works related to the friction, lubrication and wear. Original, high quality research papers and review articles on all aspects of tribology are welcome, including, but are not limited to, a variety of topics, such as: Friction: Origin of friction, Friction theories, New phenomena of friction, Nano-friction, Ultra-low friction, Molecular friction, Ultra-high friction, Friction at high speed, Friction at high temperature or low temperature, Friction at solid/liquid interfaces, Bio-friction, Adhesion, etc. Lubrication: Superlubricity, Green lubricants, Nano-lubrication, Boundary lubrication, Thin film lubrication, Elastohydrodynamic lubrication, Mixed lubrication, New lubricants, New additives, Gas lubrication, Solid lubrication, etc. Wear: Wear materials, Wear mechanism, Wear models, Wear in severe conditions, Wear measurement, Wear monitoring, etc. Surface Engineering: Surface texturing, Molecular films, Surface coatings, Surface modification, Bionic surfaces, etc. Basic Sciences: Tribology system, Principles of tribology, Thermodynamics of tribo-systems, Micro-fluidics, Thermal stability of tribo-systems, etc. Friction is an open access journal. It is published quarterly by Tsinghua University Press and Springer, and sponsored by the State Key Laboratory of Tribology (TsinghuaUniversity) and the Tribology Institute of Chinese Mechanical Engineering Society.
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