2022
DOI: 10.5194/nhess-2022-249
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Review article: Current State of Deep Learning Application to Water-related Disaster Management in Developing Countries

Abstract: Abstract. Availability of abundant water resources data is a great concern hindering adoption of deep learning techniques (DL) for disaster mitigation in developing countries. However, over the last three decades, a sizeable amount of DL publication in disaster management emanated mostly from developed countries with efficient data management systems. To understand the current state of DL adoption for solving water-related disaster problems in developing countries, an extensive bibliometric review coupled with… Show more

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“…Subsequent to this, a systematic recalibration of weights ensues, based on the www.ijacsa.thesai.org discerned loss. The inception of backpropagation is at the neural network's output stratum, and as weight updating transpires, it cascades towards the initial layer, potentially giving rise to issues like the attenuating or inflating gradients [31].…”
Section: B Long Short-term Memory Networkmentioning
confidence: 99%
“…Subsequent to this, a systematic recalibration of weights ensues, based on the www.ijacsa.thesai.org discerned loss. The inception of backpropagation is at the neural network's output stratum, and as weight updating transpires, it cascades towards the initial layer, potentially giving rise to issues like the attenuating or inflating gradients [31].…”
Section: B Long Short-term Memory Networkmentioning
confidence: 99%