载流摩擦磨损及预测模型研究进展综述

IF 8.2 1区 工程技术 Q1 ENGINEERING, MECHANICAL
Guoqiang Gao, Rong Fu, Qingsong Wang, Jinhui Chen, Pengyu Qian, Junjie Zeng, Xu Weng, Hongyan Li, Zefeng Yang, Hong Wang, Guangning Wu
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引用次数: 0

摘要

载流摩擦副以其卓越的能量传输效率和可靠性被广泛应用于电气化铁路、航空航天、能源等领域。随着载流摩擦副的工作条件和环境变得越来越极端,这些系统的机械/电气耦合效应加剧,导致系统故障频繁,使用寿命大大缩短,甚至威胁到运行安全。因此,研究载流摩擦副的磨损机理和特性并建立预测模型至关重要。综述了载流摩擦副的磨损理论和预测模型,总结了载流摩擦副的基本特征和摩擦学行为。系统地研究了电流、速度、负载和环境条件等变量对磨损特性的影响,强调了电弧侵蚀的重要性和多种因素的相互作用。现有的预测模型分为机制模型、数值模拟模型和人工智能模型,并详细介绍了每种模型的进展。这些模型将各种参数与摩擦学特性相关联,从而能够快速准确地评估和预测磨损特性。然而,这些应用需要特定的条件,如材料特性、摩擦副类型或操作环境。值得注意的是,包括机器学习和深度学习在内的人工智能方法的预测能力仍然高度依赖于数据质量。最后,本文总结了当前载流摩擦磨损研究中的挑战,提出了加强载流摩擦学领域理解的建议,并为未来的研究工作提供了有价值的见解。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Progress on current-carry friction and wear and prediction models: A review

Progress on current-carry friction and wear and prediction models: A review

Current-carrying friction pairs are extensively utilized in industries such as electrified railway, aerospace, energy, and other fields due to their exceptional energy transmission efficiency and reliability. With the operating conditions and environment of current-carrying friction pairs becoming increasingly extreme, these systems' mechanical/electrical coupling effects have intensified resulting in frequent system failures, significantly shortened service lifespans, and even threats to operational safety. Therefore, it is critical to investigate the wear mechanisms and characteristics of current-carrying friction pairs and to develop predictive models. This paper comprehensively reviews the wear theories and prediction models pertinent to current-carrying tribo-pair, summarizing their fundamental features and tribological behaviors. The influence of variables such as current, velocity, load, and environmental conditions on wear characteristics is systematically examined, highlighting the importance of arc erosion and the interplay of multiple factors. Existing prediction models are categorized into mechanistic models, numerical simulations models, and artificial intelligence models with a detailed overview of the progress in each model. These models correlate various parameters with tribological properties, enabling fast and accurate evaluation and prediction of wear characteristics. However, these application requires specific conditions such as material properties, tribo-pair types, or operational environments. Notably, the predictive capabilities of artificial intelligence methods, including machine learning and deep learning, remain highly contingent on data quality. Finally, this paper concludes by identifying current challenges in the research of current-carry friction and wear, offering recommendations for enhancements to advance understanding in the field of current-carrying tribology, and providing valuable insights for future research efforts.

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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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