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DEEP LEARNING APPROACH CONSIDERING IMBALANCED DATA FOR HEALTH CONDITION MONITORING IN WIND TURBINE

机译:深度学习方法考虑风力涡轮机健康状况监测的不平衡数据

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Vibration-based condition monitoring and fault diagnosis techniques are the keys to enhancing the reliability, safety and automation level of wind turbine systems. It has been recognized that the deep learning approaches are continuously achieving the state-of-the-art performance in this field. However, the actual restrictions, such as imbalanced fault dataset and low density in the sense of data value, prevent these approaches from being widely deployed in real wind turbine systems, since large sets of high-quality data are often required for effective training in deep learning approaches. To settle these problems, focal loss is introduced into deep learning for effectively discounting the effect of easy negatives. The vibration fault data of a wind turbine test rig are collected for case studies. The results prove that the proposed methodology is feasible and efficient, achieving high robustness and performance obtained from different data qualities.
机译:基于振动的状态监测和故障诊断技术是提高风力涡轮机系统的可靠性,安全性和自动化水平的键。已经认识到,深度学习方法是不断实现这一领域的最先进的性能。但是,实际限制,如具有数据值感的不平衡故障数据集和低密度,防止这些方法广泛部署在真正的风力涡轮机系统中,因为通常需要大量的高质量数据来深入训练学习方法。为了解决这些问题,将焦点损失引入深度学习,以有效折扣易消化的效果。收集风力涡轮机试验台的振动故障数据以进行案例研究。结果证明,所提出的方法是可行和高效的,实现了从不同数据质量获得的高稳健性和性能。

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