Variational Autoencoders for P-wave Detection on Strong Motion Earthquake Spectrograms
By: Turkan Simge Ispak, Salih Tileylioglu, Erdem Akagunduz
Potential Business Impact:
Finds earthquakes faster by listening for faint signals.
Accurate P-wave detection is critical for earthquake early warning, yet strong-motion records pose challenges due to high noise levels, limited labeled data, and complex waveform characteristics. This study reframes P-wave arrival detection as a self-supervised anomaly detection task to evaluate how architectural variations regulate the trade-off between reconstruction fidelity and anomaly discrimination. Through a comprehensive grid search of 492 Variational Autoencoder configurations, we show that while skip connections minimize reconstruction error (Mean Absolute Error approximately 0.0012), they induce "overgeneralization", allowing the model to reconstruct noise and masking the detection signal. In contrast, attention mechanisms prioritize global context over local detail and yield the highest detection performance with an area-under-the-curve of 0.875. The attention-based Variational Autoencoder achieves an area-under-the-curve of 0.91 in the 0 to 40-kilometer near-source range, demonstrating high suitability for immediate early warning applications. These findings establish that architectural constraints favoring global context over pixel-perfect reconstruction are essential for robust, self-supervised P-wave detection.
Similar Papers
An Attention-Augmented VAE-BiLSTM Framework for Anomaly Detection in 12-Lead ECG Signals
Machine Learning (CS)
Finds heart problems by spotting weird heart signals.
Strengthening Anomaly Awareness
High Energy Physics - Phenomenology
Finds weird things computers missed before.
Modeling Quantum Autoencoder Trainable Kernel for IoT Anomaly Detection
Machine Learning (CS)
Quantum computers catch hackers faster than normal ones.