Machine Learning Based Classification Algorithm for Seismic Blasting Recognition Model Research

Rong Chen, Mingyuan Liu, Yingchao Niu, Zhuolin Yu

Abstract


Seismic signal identification is an important part of seismology and earthquake observation, but urban engineering and unnatural seismic events interfere with seismic recording and management, requiring the use of data to build relevant and reliable models for identification and exclusion. Firstly, the seismic wave signals are mapped according to the data, the signal characteristics are observed, the seismic signals are decomposed using CEEMDAN (Complete Ensemble Empirical Mode Decomposition with Adaptive Noise), the sample entropy is solved for the first 7 IMFs, and the sample entropy is utilized to construct the feature vectors as the Using the sample entropy to construct feature vectors as training features, KNN (K-NearestNeighbor), and SVM (Support Vector Machine) models were constructed to solve and evaluate the model effects, Recall and F1score, with the highest score reaching 100%. It plays a crucial role in the development of earthquake early warning technology as well as earthquake prevention technology, and has great reference value for future related research.


Keywords


CEEMDAN; KNN; SVM; Seismic Blast Recognition

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References


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DOI: https://doi.org/10.18686/esta.v10i5.528

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Copyright (c) 2023 Rong Chen, Mingyuan Liu, Yingchao Niu, Zhuolin Yu

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