Gaining Insight in Wind Turbine Drivetrain Dynamics by Means of Automatic Operational Modal Analysis Combined With Machine Learning Algorithms

N. Gioia, P. Daems, C. Peeters, P. Guillaume, J. Helsen, Roberto Medico, D. Deschrijver, T. Dhaene
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引用次数: 1

Abstract

Detailed knowledge about the modal model is essential to enhance the NVH behavior of (rotating) machines. To have more realistic insight in the modal behavior of the machines, observation of modal parameters must be extended to a significant amount of time, in which all the significant operating conditions of the turbine can be investigated, together with the transition events from one operating condition to another. To allow the processing of a large amount of data, automated OMA techniques are used: once frequency and damping values can be characterized for the important resonances, it becomes possible to gain insights in their changes. This paper will focus on processing experimental data of an offshore wind turbine gearbox and investigate the changes in resonance frequency and damping over time.
结合机器学习算法的自动运行模态分析在风力发电机传动系统动力学中的应用
关于模态模型的详细知识对于提高(旋转)机器的NVH行为至关重要。为了更真实地了解机器的模态行为,必须将模态参数的观察扩展到相当长的时间,在这段时间内,可以研究涡轮机的所有重要运行状态,以及从一种运行状态到另一种运行状态的过渡事件。为了处理大量数据,使用了自动化OMA技术:一旦可以表征重要共振的频率和阻尼值,就可以深入了解它们的变化。本文将重点处理海上风力发电机齿轮箱的实验数据,研究共振频率和阻尼随时间的变化。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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