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Nishtha Srivastava
Nishtha Srivastava
Frankfurt Institute for Advanced Studies
Email verificata su fias.uni-frankfurt.de - Home page
Titolo
Citata da
Citata da
Anno
Earthquake scenario in West Bengal with emphasis on seismic hazard microzonation of the city of Kolkata, India
SK Nath, MD Adhikari, SK Maiti, N Devaraj, N Srivastava, LD Mohapatra
Natural Hazards and Earth System Sciences 14 (9), 2549-2575, 2014
752014
Earthquake induced liquefaction hazard, probability and risk assessment in the city of Kolkata, India: its historical perspective and deterministic scenario
SK Nath, N Srivastava, C Ghatak, MD Adhikari, A Ghosh, SP Sinha Ray
Journal of Seismology 22, 35-68, 2018
312018
Probabilistic seismic hazard model of West Bengal, India
SK Maiti, SK Nath, MD Adhikari, N Srivastava, P Sengupta, AK Gupta
Journal of Earthquake Engineering 21 (7), 1113-1157, 2017
242017
CREIME: A Convolutional Recurrent model for Earthquake Identification and Magnitude Estimation
M Chakraborty, D Fenner, W Li, J Faber, K Zhou, G Ruempker, H Stoecker, ...
https://arxiv.org/abs/2204.02924, 2022
142022
EPick: Attention-based multi-scale UNet for earthquake detection and seismic phase picking
W Li, M Chakraborty, D Fenner, J Faber, K Zhou, G Rümpker, H Stöcker, ...
Frontiers in Earth Science 10, 953007, 2022
122022
A study on the effect of input data length on a deep-learning-based magnitude classifier
M Chakraborty, W Li, J Faber, G Rümpker, H Stoecker, N Srivastava
Solid Earth 13 (11), 1721-1729, 2022
92022
EPick: Multi-Class Attention-based U-shaped Neural Network for Earthquake Detection and Seismic Phase Picking
W Li, M Chakraborty, D Fenner, J Faber, K Zhou, G Ruempker, H Stoecker, ...
arXiv preprint arXiv:2109.02567, 2021
92021
A study on small magnitude seismic phase identification using 1D deep residual neural network
W Li, M Chakraborty, Y Sha, K Zhou, J Faber, G Rümpker, H Stöcker, ...
Artificial Intelligence in Geosciences 3, 115-122, 2022
72022
PolarCAP–A deep learning approach for first motion polarity classification of earthquake waveforms
M Chakraborty, CQ Cartaya, W Li, J Faber, G Rümpker, H Stoecker, ...
Artificial Intelligence in Geosciences 3, 46-52, 2022
72022
Automated seismo-volcanic event detection applied to stromboli (Italy)
D Fenner, G Rümpker, W Li, M Chakraborty, J Faber, J Köhler, H Stöcker, ...
Frontiers in Earth Science 10, 2022
62022
Deep Learning-based Small Magnitude Earthquake Detection and Seismic Phase Classification
W Li, Y Sha, K Zhou, J Faber, G Ruempker, H Stoecker, N Srivastava
https://arxiv.org/abs/2204.02870, 2022
52022
Real time magnitude classification of earthquake waveforms using deep learning
M Chakraborty, G Rümpker, H Stöcker, W Li, J Faber, D Fenner, K Zhou, ...
EGU general assembly conference abstracts, EGU21-15941, 2021
52021
Volcano-seismic event classification using wavelet scattering transforms
P Laumann, N Srivastava, W Li, G Ruempker
EGU General Assembly Conference Abstracts, EGU-17117, 2023
32023
Real-time Earthquake Monitoring using Deep Learning: a case study on Turkey Earthquake Aftershock Sequence
W Li, J Koehler, M Chakraborty, C Quinteros-Cartaya, G Ruempker, ...
arXiv preprint arXiv:2211.09539, 2022
3*2022
Sunda-arc seismicity: continuing increase of high-magnitude earthquakes since 2004
N Srivastava, J Köhler, FA Nava, O El Sayed, M Chakraborty, ...
https://arxiv.org/abs/2108.06557, 2021
22021
Mca-unet: Multi-class attention-aware u-net for seismic phase picking
W Li, G Rümpker, H Stöcker, M Chakraborty, D Fenner, J Faber, K Zhou, ...
EGU general assembly conference abstracts, EGU21-15841, 2021
22021
Amplitude and inter-event time statistics for the island volcanoes Stromboli, Mount Etna, Yasur, and Whakaari
D Fenner, G Rümpker, P Laumann, N Srivastava
Frontiers in Earth Science 11, 1228103, 2023
12023
Exploring a CNN Model for Earthquake Magnitude Estimation using HR-GNSS data
CQ Cartaya, J Koehler, W Li, J Faber, N Srivastava
arXiv preprint arXiv:2304.09912, 2023
12023
AWESAM: A Python Module for Automated Volcanic Event Detection Applied to Stromboli
D Fenner, G Ruempker, W Li, M Chakraborty, J Faber, J Koehler, ...
https://arxiv.org/abs/2111.01513, 2021
12021
Feasibility of Deep Learning in Shear Wave Splitting analysis using Synthetic-Data Training and Waveform Deconvolution
M Chakraborty, G Rümpker, W Li, J Faber, N Srivastava, F Link
Seismica 3 (1), 2024
2024
Il sistema al momento non può eseguire l'operazione. Riprova più tardi.
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