The prediction of VIV amplitude is essential for the design and fatigue life estimation of steel tubes in tubular transmission towers. Limited to costly and time - consuming traditional experimental and computational fluid dynamics (CFD) methods, a machine learning (ML) - based method is proposed to efficiently predict the VIV amplitude of steel tubes in transmission towers. Firstly, by introducing the first - order mode shape to the two - dimensional CFD method, a simplified response analysis method (SRAM) is presented to calculate the VIV amplitude of steel tubes in transmission towers, which enables to build a dataset for training ML models. Then, by taking mass ratio M * , damping ratio xi , and reduced velocity U * as the input variables, a Kriging-based prediction method (KPM) is further proposed to estimate the VIV amplitude of steel tubes in transmission towers by combining the SRAM with the Kriging - based ML model. Finally, the feasibility and effectiveness of the proposed methods are demonstrated by using three full - scale steel tubes with C - shaped, Cross - shaped, and Flange - plate joints, respectively. The results show that the SRAM can reasonably calculate the VIV amplitude, in which the relative errors of VIV maximum amplitude in three examples are less than 6% . Meanwhile, the KPM can well predict the VIV amplitude of steel tubes in transmission towers within the studied range of M * , xi and U * . Particularly, the KPM presents an excellent capability in estimating the VIV maximum amplitude by using the reduced damping parameter S G .