Abstract

Efficient vessel operation may reduce operational costs and increase profitability. This is in line with the direction pursued by many marine industry stakeholders such as vessel operators, regulatory authorities, and policymakers. It is also financially justifiable, as fuel oil consumption (FOC) maintenance costs are reduced by forecasting the energy consumption of electric propulsion vessels. Although recent technological advances demand technology for electric propulsion vessel electric power load forecasting, related studies are scarce. Moreover, previous studies that forecasted the loads excluded various factors related to electric propulsion vessels and failed to reflect the high variability of loads. Therefore, this study aims to examine the efficiency of various multialgorithms regarding methods of forecasting electric propulsion vessel energy consumption from various data sampling frequencies. For this purpose, there are numerous machine learning algorithm sets based on convolutional neural network (CNN) and long short-term memory (LSTM) combination methods. The methodology developed in this study is expected to be utilized in training the optimal energy consumption forecasting model, which will support tracking of degraded performance in vessels, optimize transportation, reflect emissions accurately, and be applied ultimately as a basis for route optimization purposes.

Highlights

  • IntroductionEnvironmentally friendly vessels (typically electric propulsion vessels) have been actively studied for replacing conventional vessels [4,5,6]

  • The root-mean-square error (RMSE) scores were calculated for the learning results and Combination ble 4

  • In the convolutional neural network (CNN)–long short-term memory (LSTM) model, the CNN model extracts the data features, and the time-series forecasting is performed in the time-series data model such as the LSTM using the extracted data

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Summary

Introduction

Environmentally friendly vessels (typically electric propulsion vessels) have been actively studied for replacing conventional vessels [4,5,6]

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Results
Conclusion
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