Title of article :
Health assessment of concrete dams
by overall inverse analyses and neural networks
Author/Authors :
R. FEDELE، نويسنده ,
Issue Information :
روزنامه با شماره پیاپی سال 2006
Abstract :
In several existing dams alcali-silica reaction (ASR) during several decades of service life,
or diffused micro-cracking (due to concrete ageing and/or past extreme loads, such as earthquakes)
give rise to deterioration of concrete stiffness and to correlated reduction of its strength. An inverse
methodology is presented herein apt to identify damage in concrete dams on the basis of hydrostatic
loading, measurements by traditional monitoring instruments, such as pendulums and collimators, and
artificial neural networks trained by means of finite-element simulations. The arch-gravity dam referred
to in this study is sub-divided into homogeneous zones, to which a constant Young modulus is attributed
as unknown parameter which quantifies possible damage. These elastic moduli are estimated on
the basis of pseudo-experimental data and identification procedures. After a suitable ‘training’ process,
artificial neural networks (ANNs) are employed for numerical solutions of the inverse problem,
and their potentialities and limitations are examined to the present purposes. In particular, they turn
out to be robust and practically useful in the presence of information which a
Keywords :
Inverse analysis , Concrete dams , parameteridentification , statical tests. , Damage diagnosis , Artificial neural networks
Journal title :
International Journal of Fracture
Journal title :
International Journal of Fracture