Recognition and prediction of ground vibration signal based on machine learning algorithm
暂无分享,去创建一个
[1] H. Ghaffarzadeh,et al. A classification method for pulse-like ground motions based on S-transform , 2016, Natural Hazards.
[2] Antonietta M. Esposito,et al. Fast Discrimination of Local Earthquakes Using a Neural Approach , 2017 .
[3] Ching Hung,et al. Evaluation of an enhanced FS method for finding the initiation time of earthquake-induced landslides , 2017, Bulletin of Engineering Geology and the Environment.
[4] A. Mazzotti,et al. Two-grid genetic algorithm full-waveform inversion , 2016 .
[5] S. Mostafa Mousavi,et al. Automatic noise-removal/signal-removal based on general cross-validation thresholding in synchrosqueezed domain and its application on earthquake data , 2017 .
[6] Zhixin Zhu,et al. Research of pre-stack AVO elastic parameter inversion problem based on hybrid genetic algorithm , 2017, Cluster Computing.
[7] Clément Hibert,et al. Implementation of a Multistation Approach for Automated Event Classification at Piton de la Fournaise Volcano , 2017 .
[8] Jun Chen,et al. Damage-based strength reduction factor for nonlinear structures subjected to sequence-type ground motions , 2017 .
[9] Feng Zhou,et al. Application of wavelet analysis in underground embedded distributed optical fiber vibration monitoring system , 2018, IOP Conference Series: Earth and Environment.
[10] Musa Peker,et al. Signal detection based on empirical mode decomposition and Teager–Kaiser energy operator and its application to P and S wave arrival time detection in seismic signal analysis , 2016, Neural Computing and Applications.
[11] Md Saiful Islam,et al. Improvement in Moving Target Detection Based on Hough Transform and Wavelet , 2015 .
[12] R. E. Hudson,et al. Moving source localization using seismic signal processing , 2015 .
[13] Yisong Yue,et al. Reliable Real‐Time Seismic Signal/Noise Discrimination With Machine Learning , 2019, Journal of Geophysical Research: Solid Earth.
[14] Paul A. Johnson,et al. Pairwise Association of Seismic Arrivals with Convolutional Neural Networks , 2019, Seismological Research Letters.
[15] Kirat Pal,et al. Prediction of ground motion parameters using randomized ANFIS (RANFIS) , 2016, Appl. Soft Comput..
[16] I. Thanasopoulos,et al. Wavelet analysis of short range seismic signals for accurate time of arrival estimation in dispersive environments , 2011 .
[17] Fuyuan Xiao,et al. Multi-sensor data fusion based on the belief divergence measure of evidences and the belief entropy , 2019, Inf. Fusion.
[18] Koji Inoue,et al. Automatic Arrival Time Detection for Earthquakes Based on Stacked Denoising Autoencoder , 2018, IEEE Geoscience and Remote Sensing Letters.
[19] Hadi Meidani,et al. Deep Learning for Accelerated Seismic Reliability Analysis of Transportation Networks , 2017, Comput. Aided Civ. Infrastructure Eng..
[20] Wenbo Lu,et al. Damage demand assessment of mainshock-damaged concrete gravity dams subjected to aftershocks , 2017 .
[21] Jianwei Zhang,et al. Signal de-noising method for vibration signal of flood discharge structure based on combined wavelet and EMD , 2017 .
[22] S. Mostafa Mousavi,et al. Hybrid Seismic Denoising Using Higher-Order Statistics and Improved Wavelet Block Thresholding , 2016 .
[23] James H. McClellan,et al. Joint Seismic Data Denoising and Interpolation with Double-Sparsity Dictionary Learning , 2017, 1703.02461.
[24] John Douglas,et al. Recent and future developments in earthquake ground motion estimation , 2016 .
[25] Manoj Khandelwal,et al. Evaluation and prediction of blast induced ground vibration using support vector machine , 2010 .
[26] Jianwei Ma,et al. What can machine learning do for seismic data processing? An interpolation application , 2017 .
[27] Yibo Li,et al. Multi-View Hierarchical Bidirectional Recurrent Neural Network for Depth Video Sequence Based Action Recognition , 2018, Int. J. Pattern Recognit. Artif. Intell..