2018
DOI: 10.1016/j.rinp.2017.12.041
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Topological sensitivity based far-field detection of elastic inclusions

Abstract: The aim of this article is to present and rigorously analyze topological sensitivity based algorithms for detection of diametrically small inclusions in an isotropic homogeneous elastic formation using single and multiple measurements of the far-field scattering amplitudes. A L 2 −cost functional is considered and a location indicator is constructed from its topological derivative. The performance of the indicator is analyzed in terms of the topological sensitivity for location detection and stability with res… Show more

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Cited by 7 publications
(5 citation statements)
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“…For the training of proposed Spatio-Temporal RBFNN (STRBF-NN), we employed the widely used least square method [26] called gradient descent algorithm. Consider an RBFNN as shown in Fig.1, the final mapping, at the kth learning iteration at a particular epoch, is given as:…”
Section: A Gradient Descent-based Spatio-temporal Rbfnnmentioning
confidence: 99%
“…For the training of proposed Spatio-Temporal RBFNN (STRBF-NN), we employed the widely used least square method [26] called gradient descent algorithm. Consider an RBFNN as shown in Fig.1, the final mapping, at the kth learning iteration at a particular epoch, is given as:…”
Section: A Gradient Descent-based Spatio-temporal Rbfnnmentioning
confidence: 99%
“…For the training of proposed statio-temporal RBFNN, we employed the widely used least square method [17] called gradient descent algorithm. Consider an RBFNN as shown in Fig.1, the final mapping, at the kth learning iteration at a particular epoch, is given as:…”
Section: A Gradient Descent-based Spatio-temporal Rbfnnmentioning
confidence: 99%
“…For the training of proposed statio-temporal RBFNN, we employed the widely used least square method [17] called gradient descent algorithm. Consider an RBFNN as shown in Fig.…”
Section: A Gradient Descent-based Spatio-temporal Rbfnnmentioning
confidence: 99%
“…Due to their simplicity and ease of implementation the Least square-based methods are considered to be widely used optimization techniques for adaptive systems. The technique has been applied in diversified applications such as function approximation [2], detection of elastic inclusions [3], noise cancellation [4], nonlinear system identification [5], ECG signal analysis [6], elasticity imaging [7], and time series prediction [8], etc. Adaptive filters are used to extract the desired components from a signal containing both desired and undesired components.…”
Section: Introductionmentioning
confidence: 99%