Improved data compression techniques to analyze big data in structural health monitoring
Abstract
With growing number of complex and slender structures worldwide, long-term structural
health monitoring (SHM) has been intensively pursued to retrofit and control
these structures under extreme climatic events. Modern sensing technology including
wireless sensors and high quality data acquisitions have improved the capability of
SHM where a relatively enormous amount of data could be measured remotely and
sent wirelessly for a longer period of time. Unlike wired vibration sensors, wireless
sensors are inexpensive and easier to install with less labour-intensive process, thereby
leading to a significant cost-saving to the infrastructure owner. However, the modern
sensing technology and remote data acquisition has some several limitations due to
their limited bandwidth, time synchronization and inadequate sampling issues. The
large amount of data collected from the structural systems often causes missing data,
network jam or packet loss while transmitting the big data.
In this research, the theory of compressive sampling (CS) is implemented as a
promising data compression technique that can recover undersampled vibration signals
of dynamical systems, thereby reducing overall burden of analyzing big data in
SHM. The l1-norm minimization (LNM) and discrete cosine transform (DCT) are
exploited to perform data compression and enhance data recovery of the compressed
big data. A novel time-frequency blind source separation is integrated with the data
compression technique to evaluate the accuracy of the proposed method in modal
identification. The results of the proposed data compression techniques are verified
using a suite of numerical, experimental and full-scale studies. The results reveal that DCT could be considered as a powerful data compression tool even for the vibration
data containing damage signatures, low energy modes and low signal-to-noise ratio.