Litcius/Paper detail

A neural network method for the inverse scattering problem of impenetrable cavities

Weishi Yin, Jiawei Ge, Pinchao Meng, Fuheng Qu

2020Electronic Research Archive24 citationsDOIOpen Access PDF

Abstract

This paper proposes a near-field shape neural network (NSNN) to determine the shape of a sound-soft cavity based on a single source and several measurements placed on a curve inside the cavity. The NSNN employs the near-field measurements as input, and the output is the shape parameters of the cavity. The self-attention mechanism is employed to obtain the feature information of the near-field data, as well as the correlations among them. The weights and biases of the NSNN are updated through the gradient descent algorithm, which minimizes the error of the reconstructed shape of the cavity. We prove that the loss function sequence related to the weights is a monotonically bounded non-negative sequence, which indicates the convergence of the NSNN. Numerical experiments show that the shape of the cavity can be effectively reconstructed with the NSNN.

Topics & Concepts

Artificial neural networkConvergence (economics)AlgorithmBounded functionFunction (biology)Sequence (biology)Gradient descentMonotonic functionField (mathematics)Error functionFeature (linguistics)InverseInverse problemComputer scienceMathematicsPhysicsMathematical analysisGeometryArtificial intelligenceChemistryPure mathematicsBiologyLinguisticsEconomic growthPhilosophyBiochemistryEconomicsEvolutionary biologyMicrowave Imaging and Scattering AnalysisAcoustic Wave Phenomena ResearchNumerical methods in inverse problems