A machine learning framework based on a multi-layer perceptron (MLP) algorithm was established and applied to wave forecasting in Lake Michigan. The MLP model showed desirable performance in forecasting wave characteristics, including significant wave heights and peak wave periods, considering both wind and ice cover on wave generation. The structure of the MLP regressor was optimized by a cross-validated parameter search technique and consisted of two hidden layers with 300 neurons in each hidden layer. The MLP model was trained and validated using the wave simulations from a physics-based SWAN wave model for the period 2005–2014 and tested for wave prediction by using NOAA buoy data from 2015. Sensitivity tests on hyperparameters and regu...
In this paper, a 2-stage cascaded deep learning framework, Port Wave Prediction Network (PWPNet), is...
The wave observations at three locations off the west coast of India have been analyzed using artifi...
The peak period of an energy-generating wave is one of the most important parameters that describe t...
A machine learning framework based on a multi-layer perceptron (MLP) algorithm was established and a...
Short-term wave forecasts are essential for the execution of marine operations. In this paper, an ef...
This study investigates near-shore circulation and wave characteristics applied to a case-study site...
Abstract: This paper presents an overview of the development of the numerical wave prediction models...
The physical process of generation of waves by wind is extremely complex, uncertain and not yet full...
This paper describes the application of methodology based on the artificial neural network technique...
Accurate surface wave predictions have the potential to greatly enhance the safety and efficiency of...
The objective of this paper is to use an artificial neural network (ANN) model to train the output o...
Data-intelligent algorithms designed for forecasting significant height of coastal waves over the re...
Prediction of wave characteristics plays a crucial role in design and performance assessment of vari...
Wave forecasts, though integral to ocean engineering activities, are often conducted using computati...
In this paper, several deep learning models are trained using Long Short-Term Memory (LSTM), which i...
In this paper, a 2-stage cascaded deep learning framework, Port Wave Prediction Network (PWPNet), is...
The wave observations at three locations off the west coast of India have been analyzed using artifi...
The peak period of an energy-generating wave is one of the most important parameters that describe t...
A machine learning framework based on a multi-layer perceptron (MLP) algorithm was established and a...
Short-term wave forecasts are essential for the execution of marine operations. In this paper, an ef...
This study investigates near-shore circulation and wave characteristics applied to a case-study site...
Abstract: This paper presents an overview of the development of the numerical wave prediction models...
The physical process of generation of waves by wind is extremely complex, uncertain and not yet full...
This paper describes the application of methodology based on the artificial neural network technique...
Accurate surface wave predictions have the potential to greatly enhance the safety and efficiency of...
The objective of this paper is to use an artificial neural network (ANN) model to train the output o...
Data-intelligent algorithms designed for forecasting significant height of coastal waves over the re...
Prediction of wave characteristics plays a crucial role in design and performance assessment of vari...
Wave forecasts, though integral to ocean engineering activities, are often conducted using computati...
In this paper, several deep learning models are trained using Long Short-Term Memory (LSTM), which i...
In this paper, a 2-stage cascaded deep learning framework, Port Wave Prediction Network (PWPNet), is...
The wave observations at three locations off the west coast of India have been analyzed using artifi...
The peak period of an energy-generating wave is one of the most important parameters that describe t...