Research on Earthquake Data Prediction Method Based on DIN–MLP Algorithm

Author:

An Zhaoliang1,Si Guannan1,Tian Pengxin1,Li Jianxin1,Liang Xinyu1,Zhou Fengyu2,Wang Xiaoliang3

Affiliation:

1. School of Information Science & Electrical Engineering, Shandong Jiaotong University, Jinan 250357, China

2. School of Control Science & Engineering, Shandong University, Jinan 250000, China

3. Shandong Longxihanzhang Technology Development Co., Ltd., Jinan 250013, China

Abstract

This paper proposes a recommendation algorithm that combines MLP with the DIN model and conducts simulation experiments in the field of earthquake missing data prediction. The original DIN model may face challenges and weaknesses in earthquake monitoring data prediction, such as a limited capability in handling data loss or anomalies in seismic monitoring stations. To overcome these issues, we innovatively treat seismic monitoring stations as special users and historical data patterns as recommended items. Based on the DIN model, we implement data processing and prediction for seismic monitoring stations and introduce an attention mechanism based on MLP neural networks in the model, while leveraging the prior knowledge base to enhance predictive capabilities. Compared to the original DIN model, our proposed approach not only recommends sequence combinations that meet the demands of seismic monitoring stations but also enhances the matching between station behavior attributes and historical data characteristics, thereby significantly improving prediction accuracy. To validate the effectiveness of our method, we conducted comparative experiments. The results show that the GAUC achieved by the DIN–MLP model reaches 0.69, which is an 11 percent point improvement over the original DIN model. This highlights the remarkable advantages of our algorithm in earthquake missing data prediction. Furthermore, our research reveals the potential of the DIN–MLP algorithm in practical applications, providing more accurate data processing and time series combination recommendations for the field of earthquake monitoring stations, thus contributing to the improvement of monitoring efficiency and accuracy.

Funder

National Natural Science Foundation of China

Shandong Natural Science Foundation, China

Technological Small and Medium sized Enterprise Innovation Ability Enhancement Project

Publisher

MDPI AG

Subject

Electrical and Electronic Engineering,Computer Networks and Communications,Hardware and Architecture,Signal Processing,Control and Systems Engineering

Reference24 articles.

1. Du, J. (2019). Research on Airport Noise Monitoring Data Completion Based on Deep Learning. [Master’s Thesis, Nanjing University of Aeronautics and Astronautics].

2. Mandelli, S., Lipari, V., Bestagini, P., and Tubaro, S. (2019). Interpolation and denoising of seismic data using convolutional neural networks. arXiv.

3. Park, J., Yoon, D., Seol, S.J., and Byun, J. (2019, January 15–20). Reconstruction of seismic field data with convolutional U-Net considering the optimal training input data. Proceedings of the SEG International Exposition and Annual Meeting, San Antonio, TX, USA.

4. Deep-learning-based seismic data interpolation: A preliminary result;Wang;Geophysics,2019

5. Consecutively Missing Seismic Data Interpolation Based on Coordinate Attention Unet;Li;IEEE Geosci. Remote Sens. Lett.,2022

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