基于多维混合离群点检测的风电齿轮箱状态监测

Siyu Zhu, Zheng Qian, Bo Jing, Miaoquan Han, Zhengkai Huang, Fanghong Zhang
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引用次数: 0

摘要

齿轮箱是风力发电机组传动系统中一个非常关键但又非常脆弱的部件。为了对该组件进行状态监测,我们提出了一种基于特征提取和改进的堆叠去噪自编码器(SDAE)的多维混合离群点检测模型。首先,通过时间序列分析和时频域特征提取构建多维特征提取模型;其次,通过正常行为建模,设计了一种改进的基于SDAE的状态监测框架。在实例研究中,用中国两个不同省份的两个风电场的37台风机的实测数据验证了所提出的方法。实例分析、统计结果和对比实验表明,该方法能够对齿轮箱故障进行早期预警。在工业应用中,预警可以避免延长停机时间,增加发电时间。
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Condition Monitoring of Wind Turbine Gearbox Using Multidimensional Hybrid Outlier Detection
Gearbox is a crucial but vulnerable component in the drive train of wind turbine. With purpose with condition monitoring of this component, we propose a multidimensional hybrid outlier detection model based on feature extraction and improved Stacked Denoising Auto-encoder (SDAE). First, a multi-dimensional feature extraction model is constructed via time series analysis and time-frequency-domain features extraction. Second, an improved SDAE based framework for condition monitoring is designed through normal behavior modeling. In case study, the originally proposed method is verified by the measured data from 37 wind turbines in two wind farms from two different provinces in China. Furthermore, case analysis, statistical results and comparative experiment are illustrated in detail, which demonstrates that the proposed method can provide early warning of gearbox faults. In industrial applications, early warning can avoid prolonged downtime and increase the power generation time.
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