ISSN   1004-0595

CN  62-1224/O4

高级检索

摩擦信息学:系统表达与应用策略

Tribo-Informatics: System Expression and Application Strategies

  • 摘要: 摩擦学研究涉及多学科信息的交叉融合,研究人员倾向于从各自学科的视角理解和解决摩擦学问题,使得摩擦学领域的信息熵不断增加,形成数据孤岛. 为实现多学科知识的有效整合,从设计学的视角为摩擦学研究规划实施路径,借助信息学的方法有效处理摩擦学系统的复杂信息. 研究深入探讨了摩擦信息学的内涵与数模联动的摩擦学系统设计理念,梳理了摩擦学数据、信息和知识动态演化及跨学科整合的设计过程. 并基于摩擦学的3个公理—摩擦学行为的系统依赖性、元素特性的时间依赖性及多学科行为的强耦合性,构建了摩擦学系统的通用信息表达模型TriboInfo=I, S, Ts, Ds, O ,针对状态监测、行为预测、系统优化和机理分析4类主要研究需求,利用降维、聚类、分类和回归等机器学习方法,建立不同信息间的关联,提出了摩擦信息学的实施方法与框架. 研究结果可为摩擦学研究提供数智化的思维视角和实践参考,助力摩擦学研究的创新发展.

     

    Abstract: Tribological behaviors are characterized by dependence on the system, temporal evolution and multidisciplinary coupling, leading to a large number of multi-modal and multi-source research data. Researchers in different disciplines tend to understand and address tribological issues from their unique perspectives, making the tribological information entropy increasing continuously. As a result, the data in tribology are scattered and difficult to apply across disciplines. To achieve effective integration of multidisciplinary knowledge, tribo-informatics has been proposed and developed in recent years. From the perspective of tribo-informatics, the implementation path is designed for tribology and the informatics methods are utilized to address the complex information of the tribo-system. In this paper, the connotation of tribo-informatics and the data-model-fused design concept of tribo-system were elaborated. The concept outlined the dynamic evolution of tribological data, information and knowledge, as well as the design process involved in interdisciplinary integration. Based on the three tribological axioms, a universal informational expression model for the tribo-system was constructed: TriboInfo= I, S, Ts, Ds, O . In this model, five categories of information were identified—input information (I), system intrinsic information (S), tribological state information (Ts), derived state information (Ds), and output information (O). These categories were described in detail and exemplified. The essence of tribo-informatics lied in employing artificial intelligence (AI) techniques to establish relationships between different categories of tribo-system information. The main methods employed in this process include dimensionality reduction, clustering, classification and regression, which were particularly relevant in addressing four critical practical application needs within tribological field: state monitoring, behavior prediction, system optimization and mechanism analysis. In light of those application requirements, the processes and steps involved in the collection, integration, processing, application, storage, and sharing of tribo-system information were systematically outlined. This outline was based on the integration of typical models and methods of AI. A complete research framework for tribo-informatics was developed, serving as an information-based perspective and practical reference for tribological research. Through the illustration of concepts and the construction of the research framework, this study was expected to provide insights into how to incorporate informatics technology into tribological studies. It provided a more structured and systematic approach to addressing the complexities of tribological research compared to traditional methods, ultimately resulting in improved outcomes across various applications.

     

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