2022
DOI: 10.5194/egusphere-egu22-10864
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Flood prediction in ungauged basins with machine learning and satellite precipitation data

Abstract: <p>Global hydrologic climate assessments posit increasing flood risk. Hydrologic forecasting is critical in both gauged and ungauged basins having implications not only for hazard assessments and the development of mitigation strategies but also for informing the design and operation of critical infrastructure. The hydrology community grapples with the need to predict floods particularly in ungauged basins where the absence of continuous and spatially representative precipitation and streamflow d… Show more

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“…By using our experiments using microbenchmarks, AppShield evaluates the performance impact on CPU calculation, disk Input/output operations, and network [31][32][33][34]. Our experiment shows that the AppShield is light weighted and more efficient than the previous or existing protection schemes [35][36][37]. Commodity monolithic systems are massive and have much unprotected, which leads to attacks.…”
Section: Discussionmentioning
confidence: 99%
“…By using our experiments using microbenchmarks, AppShield evaluates the performance impact on CPU calculation, disk Input/output operations, and network [31][32][33][34]. Our experiment shows that the AppShield is light weighted and more efficient than the previous or existing protection schemes [35][36][37]. Commodity monolithic systems are massive and have much unprotected, which leads to attacks.…”
Section: Discussionmentioning
confidence: 99%