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Reliability assessment of the hydraulic system of wind turbines based on load-sharing using survival signature

机译:基于负载共享的风力涡轮机液压系统的可靠性评估使用存活签名

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The hydraulic system is one of the most critical subsystems of wind turbines. It is used to reset the aerodynamic brakes. Because of this, the reliability of the hydraulic system is important to the functioning of the entire wind turbine. To realistically assess the reliability of the hydraulic system, we propose in this article the load-sharing based reliability model using survival signature to conduct system reliability assessment. In addition, due to the uncertainty of the failure rates, it is difficult to conduct accurate reliability analysis. The Markov-based fuzzy dynamic fault tree analysis method is developed to solve this issue for reliability modeling considering dynamic failure characteristics. Following this, we explore the reliability importance and the reliability sensitivity of redundant components. The relative importance of the components with respect to the system reliability is evaluated and ranked. Then the reliability sensitivity with respect to the distribution parameters of redundant components is studied. The results of the reliability sensitivity analysis investigate the effects of the distribution parameters on the entire system's reliability. The effectiveness and feasibility of the proposed methodology are demonstrated by the successful application on the hydraulic system of wind turbines. (C) 2020 Elsevier Ltd. All rights reserved.
机译:液压系统是风力涡轮机最关键的子系统之一。它用于重置空气动力学制动器。因此,液压系统的可靠性对于整个风力涡轮机的运行是重要的。为了实际评估液压系统的可靠性,我们提出了本文使用生存签名来进行系统可靠性评估的基于负载共享的可靠性模型。此外,由于故障率的不确定性,难以进行准确的可靠性分析。基于Markov的模糊动态故障树分析方法是开发的,以解决考虑动态故障特性的可靠性建模问题。在此之后,我们探讨了冗余组件的可靠性重要性和可靠性敏感性。评估和排序组件相对于系统可靠性的相对重要性。然后,研究了关于冗余组件的分布参数的可靠性灵敏度。可靠性敏感性分析的结果研究了分布参数对整个系统可靠性的影响。所提出的方法的有效性和可行性是通过在风力涡轮机的液压系统上的成功应用来证明的。 (c)2020 elestvier有限公司保留所有权利。

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