Towards real-time assessment of infrasound event detection capability using deep learning-based transmission loss estimation
- URL: http://arxiv.org/abs/2506.06358v1
- Date: Tue, 03 Jun 2025 09:49:12 GMT
- Title: Towards real-time assessment of infrasound event detection capability using deep learning-based transmission loss estimation
- Authors: Alice Janela Cameijo, Alexis Le Pichon, Youcef Sklab, Souhila Arib, Quentin Brissaud, Sven peter Naesholm, Constantino Listowski, Samir Aknine,
- Abstract summary: Accurate modeling of infrasound transmission loss is essential for evaluating the performance of the International Monitoring System.<n>State-of-the-art propagation modeling tools enable transmission loss to be finely simulated using atmospheric models.<n>Recent studies made use of a deep learning algorithm capable of making transmission loss predictions almost instantaneously.<n>In this study, we address these limitations by using both wind and temperature fields as inputs to a neural network, simulated up to 130 km altitude and 4,000 km distance.
- Score: 5.601176010173589
- License: http://creativecommons.org/licenses/by-nc-sa/4.0/
- Abstract: Accurate modeling of infrasound transmission loss is essential for evaluating the performance of the International Monitoring System, enabling the effective design and maintenance of infrasound stations to support compliance of the Comprehensive Nuclear-Test-Ban Treaty. State-of-the-art propagation modeling tools enable transmission loss to be finely simulated using atmospheric models. However, the computational cost prohibits the exploration of a large parameter space in operational monitoring applications. To address this, recent studies made use of a deep learning algorithm capable of making transmission loss predictions almost instantaneously. However, the use of nudged atmospheric models leads to an incomplete representation of the medium, and the absence of temperature as an input makes the algorithm incompatible with long range propagation. In this study, we address these limitations by using both wind and temperature fields as inputs to a neural network, simulated up to 130 km altitude and 4,000 km distance. We also optimize several aspects of the neural network architecture. We exploit convolutional and recurrent layers to capture spatially and range-dependent features embedded in realistic atmospheric models, improving the overall performance. The neural network reaches an average error of 4 dB compared to full parabolic equation simulations and provides epistemic and data-related uncertainty estimates. Its evaluation on the 2022 Hunga Tonga-Hunga Ha'apai volcanic eruption demonstrates its prediction capability using atmospheric conditions and frequencies not included in the training. This represents a significant step towards near real-time assessment of International Monitoring System detection thresholds of explosive sources.
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