Towards Global Remote Discharge Estimation: Using the Few to Estimate The Many

3 Jan 2019Yotam GigiGal ElidanAvinatan HassidimYossi MatiasZach MosheSella NevoGuy ShalevAmi Wiesel

Learning hydrologic models for accurate riverine flood prediction at scale is a challenge of great importance. One of the key difficulties is the need to rely on in-situ river discharge measurements, which can be quite scarce and unreliable, particularly in regions where floods cause the most damage every year... (read more)

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