Litcius/Paper detail

Automated Operational Modal Analysis of a Helicopter Blade with a Density-Based Cluster Algorithm

Luigi Sibille, Marco Civera, Luca Zanotti Fragonara, Rosario Ceravolo

2022AIAA Journal16 citationsDOI

Abstract

Automated operational modal analysis (AOMA) is a common standard for unsupervised, data-driven, and output-only system identification, utilizing ambient vibrations as an environmental input source. However, conventional AOMA approaches apply the [Formula: see text]-means clustering algorithm (with [Formula: see text]) to discern possibly physical and certainly mathematical modes. That is not totally appropriate due to the intrinsic tendency of [Formula: see text]-means to produce similarly sized clusters, as well as its limitation to approximately normally distributed variables. Hence, a novel approach, based on the density-based clustering algorithm Density-Based Spatial Clustering of Applications with Noise (DBSCAN), is introduced here. Among other technical advantages, this enables to automatically detect and remove outliers. A data-driven strategy for the DBSCAN parameter selection is proposed as well, to make the whole procedure fully automated. This methodology is then validated on a case of aeronautical interest, an Airbus Helicopter H135 bearingless main rotor blade, and compared to more classic strategies for the same case study.

Topics & Concepts

DBSCANCluster analysisOutlierComputer scienceNoise (video)AlgorithmModalRotor (electric)Blade (archaeology)Cluster (spacecraft)Identification (biology)Data miningOperational Modal AnalysisModal analysisAnomaly detectionVibrationArtificial intelligenceCURE data clustering algorithmCorrelation clusteringEngineeringPhysicsAcousticsChemistryBiologyMechanical engineeringPolymer chemistryProgramming languageBotanyStructural engineeringImage (mathematics)Structural Health Monitoring TechniquesProbabilistic and Robust Engineering DesignVehicle Noise and Vibration Control