Implementing data-driven approach for modelling ultrasonic wave propagation using spatio-temporal deep learning (SDL)

Gantala, Thulsiram ; Balasubramanian, Krishnan (2022) Implementing data-driven approach for modelling ultrasonic wave propagation using spatio-temporal deep learning (SDL) Applied Sciences, 12 (12). p. 5881. ISSN 2076-3417

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Official URL: https://doi.org/10.3390/app12125881

Related URL: http://dx.doi.org/10.3390/app12125881

Abstract

In this paper, we proposed a data-driven spatio-temporal deep learning (SDL) model, to simulate forward and reflected ultrasonic wave propagation in the 2D geometrical domain, by implementing the convolutional long short-term memory (ConvLSTM) algorithm. The SDL model learns underlying wave physics from the spatio-temporal datasets. Two different SDL models are trained, with the following time-domain finite element (FE) simulation datasets, by applying: (1) multi-point excitation sources inside the domain and (2) single-point excitation sources on the edge of the different geometrical domains. The proposed SDL models simulate ultrasonic wave dynamics, for the forward ultrasonic wave propagation in the different geometrical domains and reflected wave propagation phenomenon, from the geometrical boundaries such as curved, T-shaped, triangular, and rectangular domains, with varying frequencies and cycles. The SDL is a reliable model, which generates simulations faster than the conventional finite element solvers.

Item Type:Article
Source:Copyright of this article belongs to Applied Sciences.
Keywords:Data-driven Modeling; Spatio-temporal Datasets; Ultrasonic Wave Propagation; Deep Learning; RNN; ConvL STM; Finite Element
ID Code:140819
Deposited On:22 Jan 2026 18:14
Last Modified:22 Jan 2026 18:14

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