Advanced Signal Processing for Structural Health Monitoring

This chapter starts with an introduction on structural health monitoring (SHM) and emphasizes its importance for engineering systems. Then four different stages, i.e., operational evaluation, data acquisition, feature extraction and diagnosis and prognosis, involved in SHM are briefly discussed, followed by review of each signal processing technique used in SHM, which will be described in the book.

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