基于群智能的SCADA数据融合风电机组状态监测

Xiang Ye, Li-hui Zhou
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引用次数: 4

摘要

风力涡轮机的高运行和维护成本降低了它们的整体成本效益。维护成本的最大驱动因素之一是由于意外故障而导致的计划外维护。使用自动故障检测算法对风力涡轮机的健康状况进行持续监测,可以在故障达到灾难性阶段之前进行检测,从而提高涡轮机的可靠性,降低维护成本,并消除不必要的定期维护。基于scada的状态监测系统使用风力涡轮机控制器已经收集的数据。这是监测风力涡轮机故障和性能问题早期预警的一种经济有效的方法。本文开发了单涡轮功率曲线、转速曲线和俯仰角曲线三种试验方法。为了更好地监测汽轮机的日常性能,将所有试验结果融合在一起,识别汽轮机健康状态的不同模式是至关重要的。采用粒子群优化算法更客观、更优地确定融合规则。这种新颖的方法可以定性地了解涡轮机的健康状况,从而在早期发现故障,并为详细诊断提供原因解释。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Using SCADA Data Fusion by Swarm Intelligence for Wind Turbine Condition Monitoring
High operations and maintenance costs for wind turbines reduce their overall cost effectiveness. One of the biggest drivers of maintenance cost is unscheduled maintenance due to unexpected failures. Continuous monitoring of wind turbine health using automated failure detection algorithms can improve turbine reliability and reduce maintenance costs by detecting failures before they reach a catastrophic stage and by eliminating unnecessary scheduled maintenance. A SCADA-based condition monitoring system uses data already collected at the wind turbine controller. It is a cost-effective way to monitor wind turbines for early warning of failures and performance issues. In this paper, we develop three tests on power curve, rotor speed curve and pitch angle curve of individual turbine. To monitor the turbine performance better in daily base, it is critical to recognize different patterns of turbine health condition by fusing all the test results. We apply particle swarm optimization algorithm to determine the fusion rules more objectively and optimally. This novel approach gains a qualitative understanding of turbine health condition to detect faults at an early stage, and also provides explanations on what has happened for detailed diagnostics.
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