Resistant Statistical Methodologies for Anomaly Detection in Gas Turbine Dynamic Time Series: Development and Field Validation

Author:

Fabio Ceschini Giuseppe1,Gatta Nicolò2,Venturini Mauro2,Hubauer Thomas1,Murarasu Alin1

Affiliation:

1. Siemens AG, Nürnberg 90461, Germany

2. Dipartimento di Ingegneria, Università degli Studi di Ferrara, Ferrara 44122, Italy

Abstract

The reliability of gas turbine (GT) health state monitoring and forecasting depends on the quality of sensor measurements directly taken from the unit. Outlier detection techniques have acquired a major importance, as they are capable of removing anomalous measurements and improve data quality. To this purpose, statistical parametric methodologies are widely employed thanks to the limited knowledge of the specific unit required to perform the analysis. The backward and forward moving window (BFMW) k–σ methodology proved its effectiveness in a previous study performed by the authors, to also manage dynamic time series, i.e., during a transient. However, the estimators used by the k–σ methodology are usually characterized by low statistical robustness and resistance. This paper aims at evaluating the benefits of implementing robust statistical estimators for the BFMW framework. Three different approaches are considered in this paper. The first methodology, k-MAD, replaces mean and standard deviation (SD) of the k–σ methodology with median and mean absolute deviation (MAD), respectively. The second methodology, σ-MAD, is a novel hybrid scheme combining the k–σ and the k-MAD methodologies for the backward and the forward windows, respectively. Finally, the biweight methodology implements biweight mean and biweight SD as location and dispersion estimators. First, the parameters of these methodologies are tuned and the respective performance is compared by means of simulated data. Different scenarios are considered to evaluate statistical efficiency, robustness, and resistance. Subsequently, the performance of these methodologies is further investigated by injecting outliers in field datasets taken on selected Siemens GTs. Results prove that all the investigated methodologies are suitable for outlier identification. Advantages and drawbacks of each methodology allow the identification of different scenarios in which their application can be most effective.

Publisher

ASME International

Subject

Mechanical Engineering,Energy Engineering and Power Technology,Aerospace Engineering,Fuel Technology,Nuclear Energy and Engineering

Cited by 5 articles. 订阅此论文施引文献 订阅此论文施引文献,注册后可以免费订阅5篇论文的施引文献,订阅后可以查看论文全部施引文献

1. Fault Diagnosis for Gas Turbine Rotor Using MOMEDA-VNCMD;Proceedings of IncoME-VI and TEPEN 2021;2022-09-18

2. High-vibration diagnosis of gas turbines: An experimental investigation;Journal of Vibration and Control;2020-04-30

3. Development and Validation of a General and Robust Methodology for the Detection and Classification of Gas Turbine Sensor Faults;Journal of Engineering for Gas Turbines and Power;2020-01-10

4. Anomaly Detection in Gas Turbine Time Series by Means of Bayesian Hierarchical Models;Journal of Engineering for Gas Turbines and Power;2019-10-18

5. Capability of the Bayesian Forecasting Method to Predict Field Time Series;Journal of Engineering for Gas Turbines and Power;2018-10-29

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