International Journal of Data and Network Science (Jan 2024)

Deep learning approaches to predict sea surface height above geoid in Pekalongan

  • Resa Septiani Pontoh,
  • Muhammad Rivaldi Saiful Rafi,
  • Chrysentia Clarissa Clorinda,
  • Absalom Zakharia Ady Ena,
  • Mo-hamad Naufal Farras,
  • Restu Arisanti,
  • Toni Toharudin ,
  • Farhat Gumelar

DOI
https://doi.org/10.5267/j.ijdns.2024.1.004
Journal volume & issue
Vol. 8, no. 2
pp. 743 – 752

Abstract

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Rising sea surface height is one of the world's vital issues in marine ecosystems because it greatly affects the ecosystems as well as the socio-economic life of the surrounding environment. Pekalongan is one area in Indonesia facing the effects of this phenomenon. This problem deserves to be explored further with complex approaches. One of them is a neural network to perform forecasting more accurately. In neural networks, the time series approach can be used with Long Short-Term Memory (LSTM) and Gated Recurrent Unit (GRU). By adding the bidirectional method to each of these two approaches, we will find the best method to use to perform the analysis. The best results were obtained by forecasting for 960 days using Vanilla BiGRU. The results can be interpreted from multiple perspectives. The forecasting results showed a fluctuating pattern as in previous periods, so it can be said that the pattern is still quite normal, which indicates that the terminal can continue to operate normally. However, the forecasting results from this study are expected to be a reference for information for the government to prevent future dangers.