M.Tech, Syllabus

JNTUH M.Tech 2017-2018 (R17) Detailed Syllabus Structural Health Monitoring

Structural Health Monitoring Detailed Syllabus for Machine Design M.Tech first year second sem is covered here. This gives the details about credits, number of hours and other details along with reference books for the course.

The detailed syllabus for Structural Health Monitoring M.Tech 2017-2018 (R17) first year second sem is as follows.

M.Tech. I Year II Sem.

UNIT – I: Introduction: Definition, Principles, significance of SHM, potential applications in civil, naval, aerospace & manufacturing Engineering

UNIT – II: Operational Evaluation: Sensor technology, piezoelectric wafer active sensors, data acquisition and cleaning procedures, elastic waves in solid structures, guided waves

UNIT – III: Feature Extraction methods: Identifying damage sensitive properties , signal processing, Fourier and short term Fourier transform, wavelet analysis

UNIT- IV: Pattern Recognition: State-of-Art damage identification and pattern reorganization methods, neural networks, Feature extraction algorithms

UNIT – V: Case studies: SHM based flaw detection in mechanical structures- Integrity and damage recognition in plates and pipes, defect identification in weld joints, Wear monitoring in cutting tools

REFERENCE BOOKS:

  • Daniel Balageas, Claus-Peter Fritzen and Alfredo Guemes, Structural Health Monitoring, John Wiley & Sons, 2006.
  • Victor Giurgiutiu, Structural Health Monitoring with Piezoelectric wafer Active Sensors, Academic Press, 2008.

For all other M.Tech 1st Year 2nd Sem syllabus go to JNTUH M.Tech Machine Design 1st Year 2nd Sem Course Structure for (R17) Batch.

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