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首页> 外文期刊>Soft computing: A fusion of foundations, methodologies and applications >Singular spectral analysis of ill-known signals and its application to predictive maintenance of windmills with SCADA records
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Singular spectral analysis of ill-known signals and its application to predictive maintenance of windmills with SCADA records

机译:未知信号的奇异谱分析及其在具有SCADA记录的风车预测维护中的应用

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摘要

A generalization of the singular spectral analysis (SSA) technique to ill-defined data is introduced in this paper. The proposed algorithm achieves tight estimates of the energy of irregular or aperiodic oscillations from records of interval or fuzzy-valued signals. Fuzzy signals are given a possibilistic interpretation as families of nested confidence intervals. In this context, some types of Supervisory Control And Data Analysis (SCADA) records, where the minimum, mean and maximum values of the signal between two scans are logged, are regarded as fuzzy constrains of the values of the sampled signal. The generalized SSA of these records produces a set of interval-valued or fuzzy coefficients, that bound the spectral transform of the SCADA data. Furthermore, these bounds are compared to the expected energy of AR(1) red noise, and the irrelevant components are discarded. This comparison is accomplished using statistical tests for low quality data, that are in turn consistent with the possibilistic interpretation of a fuzzy signal mentioned before. Generalized SSA has been applied to solve a real world problem, with SCADA data taken from 40 turbines in a Spanish wind farm. It was found that certain oscillations in the pressure at the hydraulic circuit of the tip brakes are correlated to long term damages in the windmill gear, showing that this new technique is useful as a failure indicator in the predictive maintenance of windmills.
机译:本文介绍了奇异谱分析(SSA)技术对不明确数据的概括。所提出的算法从间隔或模糊值信号的记录中获得对不规则或非周期性振荡能量的严格估计。模糊信号可能被解释为嵌套置信区间的族。在这种情况下,某些类型的监督控制和数据分析(SCADA)记录(记录了两次扫描之间的信号的最小值,平均值和最大值)被视为采样信号值的模糊约束。这些记录的广义SSA产生了一组区间值或模糊系数,它们限制了SCADA数据的频谱变换。此外,将这些界限与AR(1)红色噪声的预期能量进行比较,并丢弃不相关的分量。这种比较是通过对低质量数据的统计测试来完成的,这些测试又与前面提到的模糊信号的可能解释一致。通用SSA已被用于解决现实问题,其SCADA数据取自西班牙风电场的40台涡轮机。发现尖端制动器的液压回路中的压力的​​某些波动与风车齿轮的长期损坏相关,这表明该新技术可用作风车的预测性维护的故障指示器。

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