基于迁移学习的轴承负荷与变位关系建模实验研究

Research on Modeling the Relationship between Bearing Load and Displacement Based on Transfer Learning

  • 摘要: 为深入研究迁移学习驱动下轴承负荷与变位关系建模动态过程,以某多支撑轴系为研究对象,分析建模关键要素,并针对迁移知识准确性、迁移策略适配性及目标数据样本准确性3个因素设计正交试验方案,开展基于迁移学习的建模研究。结果表明,因素重要性排序为:迁移知识准确性>迁移策略适配性>目标数据样本准确性,建模时应优先考虑迁移知识准确性和迁移策略适配性以快速适配目标域,而目标数据样本误差范围控制在4%以内可维持建模的相对稳定性。本研究为工程实践中构建轴承负荷与变位关系模型提供了理论支撑,对降低试验成本和提高建模效率具有一定的工程应用价值。

     

    Abstract: To thoroughly investigate the dynamic process of modeling the relationship between bearing load and displacement driven by transfer learning, a specific multi-supported shafting was selected as the research object. The key elements of modeling were systematically analyzed, and an orthogonal experimental scheme was designed for three critical factors: the accuracy of transferred knowledge, the adaptability of transfer strategies, and the precision of target data samples. Modeling research based on transfer learning was conducted accordingly. The results indicate that the ranking of factor importance is as follows: accuracy of transferred knowledge > adaptability of transfer strategy > precision of target data samples. During modeling, priority should be given to the accuracy of transferred knowledge and the adaptability of transfer strategies to rapidly align with the target domain. Additionally, maintaining the error range of target data samples within 4% ensures the relative stability of the modeling process. This study provides theoretical support for constructing the relationship model between bearing load and displacement in engineering applications, offering significant value in reducing testing costs and enhancing modeling efficiency.

     

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