Predicting tidal level in tropical Eastern Bintan waters using residual long short-term memory
Agsanshina Raka Syakti,
Syahri Rhamadhan,
Ghora Laziola
et al.
Abstract:<span lang="EN-US">The sea brings many benefits for society, especially for a maritime country such as Indonesia. The potential in various sectors is limited only by the willingness of a party to invest in it. One such investment is in learning the knowledge and information that can be gathered from the sea, and even predicting its behavior with enough data. Using a residual LSTM algorithm, we will predict the tidal level in eastern Bintan island, a tropical island on the tip of Malay peninsula. The data… Show more
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