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基于GPR代理模型的海上风机能量回收VTMD主动减振参数优化

GPR surrogate-based parameter optimization of energy harvesting VTMD for offshore wind turbine vibration control

  • 摘要: 针对深远海超大型风机风致振动突出及主动控制能源供给受限的问题,本文提出一种兼顾减振与能量回收的虚拟调谐质量阻尼器参数优化方法,并引入高斯过程回归代理模型实现高效求解。首先建立IEA 15 MW风机虚拟调谐质量阻尼器机电耦合模型,构建控制力与电池功率映射关系;其次以虚拟质量比、调谐频率和阻尼比为设计变量,以塔顶的加速度均方根值、加速度峰值及平均电池功率为评价指标,基于500组样本构建高斯过程回归代理模型,并开展参数寻优;最后在轮毂高度平均风速为16 m·s−1的湍流风作用下进行闭环仿真验证。结果表明:所建高斯过程回归代理模型具有较高预测精度,可实现参数快速寻优;优化后虚拟调谐质量阻尼器减振性能优于被动调谐质量阻尼器,其中能量回收导向参数组合在保持减振能力的同时实现了能量回收。

     

    Abstract: To address the prominent wind induced vibration of ultra large deep sea wind turbines and the limited energy supply for active control, this study proposes a parameter optimization method for a virtual tuned mass damper (VTMD) that integrates vibration mitigation and energy harvesting. A Gaussian process regression (GPR) surrogate model is introduced to improve the computational efficiency of the optimization process. First, an electromechanically coupled VTMD model for the IEA 15 MW wind turbine is established, and the mapping relationship between the control force and battery power is formulated. Second, the virtual mass ratio, tuning frequency, and damping ratio are selected as design variables, while the root-mean-square value of tower-top acceleration, peak acceleration, and average battery power are adopted as evaluation indicators. Based on 500 samples, a GPR surrogate model is constructed to perform parameter optimization. Finally, closed-loop simulation verification is performed under turbulent wind conditions with a mean wind speed of 16 m·s1 at the hub height. The results show that the established GPR surrogate model achieves high prediction accuracy and enables rapid parameter optimization. The optimized VTMD exhibits better vibration mitigation performance than the passive tuned mass damper, and the energy-harvesting-oriented parameter combination achieves energy recovery while maintaining vibration control capability.

     

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