Litcius/Paper detail

Multivariate Sliding-Mode Singular Spectrum Analysis for the Decomposition of Multisensor Time Series

Sahil Jain, Rohan Panda, Rajesh Kumar Tripathy

2020IEEE Sensors Letters29 citationsDOI

Abstract

In this letter, the multivariate automatic singular spectrum analysis (MA-SSA) and multivariate sliding-mode singular spectrum analysis (MSM-SSA) algorithms are proposed as multivariate extensions to automatic singular spectrum analysis and sliding-mode singular spectrum analysis (SM-SSA), respectively, for the decomposition of multisensor time series or multichannel signals. The MA-SSA is evaluated using hierarchical clustering after the diagonal averaging step of multichannel singular spectrum analysis of a multichannel signal. The MSM-SSA uses a sliding window-based analysis and MA-SSA for obtaining the reconstruction components from the multichannel signal. The MSM-SSA is analyzed and tested using both multichannel synthetic and real-world (electroencephalogram) signals, wherein the quality reconstruction factor is used to quantify the reconstruction of the synthetic signal. The accuracy, sensitivity, and specificity are measured in a focal versus nonfocal seizure classification task, thereby, showing the reliability and robustness of the MSM-SSA.

Topics & Concepts

Singular spectrum analysisMultivariate statisticsSliding window protocolSingular value decompositionRobustness (evolution)Principal component analysisSingular valuePattern recognition (psychology)Artificial intelligenceComputer scienceMultivariate analysisMathematicsAlgorithmStatisticsPhysicsBiochemistryGeneEigenvalues and eigenvectorsQuantum mechanicsWindow (computing)Operating systemChemistryStatistical and numerical algorithmsBlind Source Separation TechniquesCardiovascular Health and Disease Prevention