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Direct Wind Turbine Drivetrain Prognosis Approach Using Elman Neural Network

机译:采用ELMAN神经网络直接风力涡轮机动脉动脉预后方法

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Common mechanical failures in wind turbine generators (WTGs) result in unplanned downtime, loose of production and increase the maintenance cost. Statistical studies have shown that failures due to high-speed shaft bearing (HSSB) account for 64% of all drivetrain failures. Consequently, prognostic and health management (PHM) of WTGs aims to estimate the future state of health and predict the reaming useful life (RUL) of HSSB. This paper considers a new data-driven approach based on vibration signals. This approach extracts statistical time-domain features that reflect the behavior of the system and its degradation. Then, the extracted features are evaluated to select the most trendable condition indicators that will be considered as inputs for an Elman neural network (ENN). Moreover, this paper proposes a new ENN architecture for direct RUL estimation of HSSB validated by use of real measured data from a WTG drivetrain. The proposed method reveals accurate estimation capability even with noisy measurements and harsh conditions.
机译:风力涡轮发电机(WTG)中的常见机械故障导致计划生计划的停机,生产宽松,提高维护成本。统计研究表明,由于高速轴承(HSSB)引起的故障占所有动力传动系统故障的64%。因此,WTGS的预后和健康管理(PHM)旨在估计未来的健康状况,并预测HSSB的铰型使用寿命(RUL)。本文考虑了一种基于振动信号的新数据驱动方法。该方法提取反映系统行为及其劣化的统计时域特征。然后,评估提取的特征以选择将被视为ELMAN神经网络(ENN)的最趋势的条件指示符。此外,本文提出了一种新的enn架构,用于通过使用来自WTG驱动器的实际测量数据验证的HSSB的直接RUL估计。该方法即使具有嘈杂的测量和恶劣条件,也可以揭示精确的估计能力。

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