A Novel Adaptive Parallel Model with Knowledge-Aided Conversion Efficiency Assessment for Wind Turbine Condition Monitoring

Hua Jing, Chunhui Zhao
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Abstract

Monitoring wind turbines is essential for their safe operation on wind farms. However, the majority of data-driven monitoring strategies do not consider expert knowledge. Consequently, they cannot simultaneously monitor statistical and physical characteristics and have poor monitoring results. This study proposes a knowledge-aided adaptive parallel monitoring strategy to monitor the process by evaluating the physical and statistical characteristics using two submodels. First, we propose a novel knowledge-aided monitoring statistic to characterize energy conversion efficiency, thus monitoring both the conversion efficiency using one of the submodels and the physical performance of the wind turbine. Subsequently, the process characteristics covering both steady and varying states can be monitored with another submodel using two monitoring statistics, which can accurately detect unusual behaviors from a statistical perspective. Generally, we can use three statistics to monitor the process from two perspectives. With the physical and statistical characteristics captured, we propose a novel adaptive monitoring strategy to adjust the model performance and accurately detect fault conditions. Real-world experiments demonstrate the effectiveness of the proposed method. Among the four monitoring methods, the monitoring strategy aided by knowledge showed the highest detection accuracy.
风电机组状态监测的一种新的知识辅助转换效率评估自适应并联模型
监测风力涡轮机对于风力发电场的安全运行至关重要。然而,大多数数据驱动的监测策略不考虑专家知识。因此,它们不能同时监测统计和物理特性,监测结果很差。本研究提出了一种知识辅助的自适应并行监测策略,通过使用两个子模型评估物理和统计特征来监测过程。首先,我们提出了一种新的知识辅助监测统计量来表征能量转换效率,从而监测使用一个子模型的转换效率和风力机的物理性能。随后,可以使用使用两个监视统计数据的另一个子模型监视涵盖稳定和变化状态的过程特征,这可以从统计角度准确地检测异常行为。通常,我们可以使用三个统计数据从两个角度监视流程。在捕获物理和统计特征的基础上,提出了一种新的自适应监测策略来调整模型性能并准确检测故障状态。实际实验证明了该方法的有效性。四种监测方法中,知识辅助监测策略的检测准确率最高。
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