1 to 10 of 351 Results
Jun 23, 2026
Verolino, Andrea, 2026, "Replication Data for: A Semi-automated Framework for Global Detection of Previously Undocumented Submarine Calderas", https://doi.org/10.21979/N9/FLUTSL, DR-NTU (Data), V1, UNF:6:EAzbh2xcpwfeBnqGcBldVA== [fileUNF]
Here I provide the output original and filtered datasets from the Crater Detection Algorithm (CDA) we used to find submarine calderas globally. The original CDA used by Lee and Hogan (2021) only detects depressions, regardless of whether they are at the top of a mound or on a fla... |
Jun 23, 2026 -
Replication Data for: A Semi-automated Framework for Global Detection of Previously Undocumented Submarine Calderas
Tabular Data - 104.2 KB - 22 Variables, 514 Observations - UNF:6:b+JtDqGhWenSRPyv3RNxtQ==
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Jun 23, 2026 -
Replication Data for: A Semi-automated Framework for Global Detection of Previously Undocumented Submarine Calderas
Tabular Data - 8.2 MB - 15 Variables, 55818 Observations - UNF:6:ktNeLO53/Yf4eSfsKJ3BTg==
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Jun 23, 2026 -
Replication Data for: A Semi-automated Framework for Global Detection of Previously Undocumented Submarine Calderas
Tabular Data - 4.7 MB - 15 Variables, 31617 Observations - UNF:6:nbbUZNOyxOaTL1esMc3hnQ==
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Aug 21, 2025
Verolino, Andrea; Watanabe, Masashi; Felix, Raquel; Conway, Christopher; Weiss, Robert; Switzer, Adam, 2025, "Replication Data for: An initial assessment of volcanic meteo-tsunami hazard in the South China Sea:what we learned and how to move forward", https://doi.org/10.21979/N9/1VNZEQ, DR-NTU (Data), V1
In this work, we simulated volcanic meteo-tsunamis from four different locations in the South China Sea, Celebes Sea and northern Philippines Sea, using different eruption intensity scenarios. The goal was to have a first assessment of volcanic meteo-tsunami hazard for countries... |
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