Text Analytics for Resilience-Enabled Extreme EventsReconnaissance.

作者: Khalid M. Mosalam , Selim Gunay , Laurent El Ghaoui , Minjune Hwang , Chenglong Li

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摘要: Post-hazard reconnaissance for natural disasters (eg, earthquakes) is important for understanding the performance of the built environment, speeding up the recovery …

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