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Wind turbine drivetrain health assessment using discrete wavelet transforms and an artificial neural network

机译:使用离散小波变换和人工神经网络的风力涡轮机传动系统健康评估

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Cost-optimised maintenance of wind turbines is becoming increasingly important due to the remote location and access limitations of offshore wind farms. Maintenance and repair costs increase significantly due to the specialist vessels required and delays due to unfavourable weather conditions. Significant cost reductions can be achieved by making better use of condition monitoring (CM) information to make more efficient and effective maintenance decisions. The key innovation described in this paper is the transfer of CM technologies from the aerospace industry to the wind turbine industry. Algorithms have been developed to enable the detection of faults and transient events in vibration signals. The ability of the new algorithms to identify real-time features has been demonstrated using bearing seeded fault testing.
机译:由于海上风电场的偏远位置和访问限制,风力涡轮机的成本优化维护变得越来越重要。由于需要专门的船只,维护和修理成本显着增加,而由于天气条件不利,造成了延误。通过更好地利用状态监视(CM)信息来制定更有效的维护决策,可以显着降低成本。本文所述的关键创新是CM技术从航空航天工业向风力涡轮机工业的转移。已经开发出能够检测振动信号中的故障和瞬态事件的算法。新的算法识别实时特征的能力已经通过轴承种子故障测试得到了证明。

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