Logo IOMI
Home News Research People Join Us Privacy Policy 中
中
IOMI
Home News Research People Join Us Privacy Policy Search Login
IOMI
云南省教育厅基础设施智能运维科技创新团队

Clarifying and quantifying the geometric correlation forprobability distributions of inter-sensor monitoring data: Afunctional data analytic methodology

Published on 2023-12-01
Functional Data AnalysisCorrelation AnalysisData DependenceProbability DistributionsMonitoring DataDistributional CorrelationsTime-Series DataInter-Sensor Monitoring DataRandom ExcitationsStatistical MethodsSensor NetworksStructural ResponsesSHMGeometric CorrelationStructural Health Monitoring

Abstract: In structural health monitoring (SHM), revealing the underlying correlations of monitoring data is of considerable significance, both theoretically and practically. In contrast to the traditional correlation analysis for numerical data, this study seeks to analyse the correlation of probability distributions of inter-sensor monitoring data. Due to induced by some commonly shared random excitations, many structural responses measured at different locations are usually correlated in dist

Paper Info

JournalMechanical Systems and Signal Processing

Details

Attachments

cover.webp
WEBP13.7 KB
img_0.webp
WEBP27.0 KB

External Links

Paper link

IOMI

云南省教育厅基础设施智能运维科技创新团队

Intelligent Infrastructure Operation and Maintenance Technology Innovation Team of the Yunnan Provincial Department of Education

滇ICP备2023005791

Quick Links

Research People Join Us

More

Privacy Policy RSS and Sitemaps Login

Connect

Kunming University of Science and Technology School of Architecture and Engineering, Kunming University of Science and Technology