Structural health monitoring using neural network based vibrational system identification

@article{Sofge1994StructuralHM,
  title={Structural health monitoring using neural network based vibrational system identification},
  author={Donald A. Sofge},
  journal={Proceedings of ANZIIS '94 - Australian New Zealnd Intelligent Information Systems Conference},
  year={1994},
  pages={91-94}
}
  • D. Sofge
  • Published 29 November 1994
  • Computer Science
  • Proceedings of ANZIIS '94 - Australian New Zealnd Intelligent Information Systems Conference
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