E. Tanır Kayıkçı’s scientific contributions

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Publications (1)


Advancing sea level anomaly modeling in the black sea with LSTM Auto-Encoders: A novel approach
  • Article

November 2024

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28 Reads

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1 Citation

Ocean Modelling

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E. Tanır Kayıkçı

Rising sea levels pose significant risks to coastal communities and ecosystems. Accurate modeling of sea level changes is crucial for effective environmental management and disaster mitigation. Machine learning methods are emerging as an important asset in improving sea level predictions and understanding the impacts of climate change. Especially, Long Short-Term Memory (LSTM) models have emerged as a powerful tool for sea level anomaly modelling, but there is an increasing need for more advanced models in this area. This study enhances existing methodologies by introducing a novel approach using an LSTM Auto-Encoder model, designed to compress input data into a lower-dimensional latent space before reconstructing it, thereby capturing complex temporal dependencies and anomalies effectively. We compared LSTM Auto-Encoder model performance with that of a Stacked LSTM network, which learns complex temporal patterns through multiple layers, and a traditional damped-persistence statistical model. Our results demonstrate that the LSTM Auto-Encoder model not only outperformed these models in predicting sea level anomalies across various lead times but also exhibited superior generalization capabilities across both satellite altimeter and in-situ data. These findings highlight the potential of the LSTM Auto-Encoder model as a powerful tool in coastal management and climate change studies, underscoring the critical role of advanced machine learning techniques in enhancing our predictive abilities and informing disaster preparedness strategies.

Citations (1)


... In recent years, the rapid development of deep learning theories and algorithms has led to the emergence of models such as autoencoders, convolutional neural networks (CNNs), recurrent neural networks (RNNs), and generative adversarial networks (GANs), which demonstrate tremendous potential in feature extraction and representation learning, thereby offering new approaches for compressing high-dimensional data [10,11]. The advantage of deep learning methods in data compression lies in their ability to learn low-dimensional representations that effectively capture data distributions via end-to-end training on large-scale datasets. ...

Reference:

Compression of Marine Environmental Data Using Convolutional Attention Autoencoder
Advancing sea level anomaly modeling in the black sea with LSTM Auto-Encoders: A novel approach
  • Citing Article
  • November 2024

Ocean Modelling