Optimization and Machine Learning in Modeling Approaches to Hybrid Energy Balance to Improve Ports' Efficiency

Loading...
Publication Logo

Date

2025

Journal Title

Journal ISSN

Volume Title

Publisher

MDPI

Open Access Color

GOLD

Green Open Access

Yes

OpenAIRE Downloads

OpenAIRE Views

Publicly Funded

No
Impulse
Average
Influence
Average
Popularity
Top 10%

Research Projects

Journal Issue

Abstract

This research provides a comprehensive review of hybrid energy solutions and optimization models for ports and marine environments. It details new methodologies, including strategic energy management and a machine learning (ML) tool for predicting energy surplus and deficits. The hybrid energy module solution for the Port of Avil & eacute;s was further developed to evaluate the performance of new tools such as the Energy Management Tool (EMTv1), HYbrid for Renewable Energy Solutions (HY4RES), and a commercial model (Hybrid Optimization of Multiple Energy Resources-HOMER) in optimizing renewable energy and storage management. Seven scenarios were analyzed, integrating different energy sources and storage solutions. Using EMTv1, Scenario 1 showed high surplus energy, while Scenario 2 demonstrated grid independence with Pump-as-Turbine (PAT) storage. The HY4RES model was used to analyze Scenario 3, which achieved a positive grid balance, exporting more than imported, and Scenario 4 revealed limitations of the PAT system due to the low power installed. Scenario 5 introduced a 15 kWh battery, efficiently storing and discharging energy, reducing grid reliance, and fully covering energy needs. Using HOMER modeling, Scenario 6 required 546 kWh of grid energy but sold 2385 kWh back. Scenario 7 produced 3450 kWh/year, covering demand, resulting in 1834 kWh of surplus energy and a small capacity shortage (1.41 kWh/year). AI-based ML analysis was applied to five scenarios (the ones with access to numerical results), accurately predicting energy balances and optimizing grid interactions. A neural network time series (NNTS) model trained on average year data achieved high accuracy (R2: 0.9253-0.9695). The ANN model proved effective in making rapid energy balance predictions, reducing the need for complex simulations. A second case analyzed an increase of 80% in demand, confirming the model's reliability, with Scenario 3 having the highest MSE (0.0166 kWh), Scenario 2 the lowest R2 (0.9289), and Scenario 5 the highest R2 (0.9693) during the validation process. This study highlights AI-driven forecasting as a valuable tool for ports to optimize energy management, minimize grid dependency, and enhance their efficiency.

Description

Mcnabola, Aonghus/0000-0002-8715-1180; Coronado-Hernandez, Oscar E./0000-0002-6574-0857;

Keywords

Ports, Hy4Res, Hybrid Energy Systems, Port Efficiency, Carbon Neutrality, Microgrid Optimization, Technology, hybrid energy systems, QH301-705.5, ports, T, Physics, QC1-999, carbon neutrality, Engineering (General). Civil engineering (General), port efficiency, microgrid optimization, Chemistry, HY4RES, TA1-2040, Biology (General), QD1-999, Ports, Hybrid energy systems, 06.- Garantizar la disponibilidad y la gestión sostenible del agua y el saneamiento para todos, 17.- Fortalecer los medios de ejecución y reavivar la alianza mundial para el desarrollo sostenible, Microgrid optimization, Carbon neutrality, 07.- Asegurar el acceso a energías asequibles, fiables, sostenibles y modernas para todos, Port efficiency

Fields of Science

Citation

WoS Q

Q2

Scopus Q

Q2
OpenCitations Logo
OpenCitations Citation Count
N/A

Source

Applied Sciences-Basel

Volume

15

Issue

9

Start Page

5211

End Page

PlumX Metrics
Citations

Scopus : 3

Captures

Mendeley Readers : 20

Google Scholar Logo
Google Scholar™
OpenAlex Logo
OpenAlex FWCI
2.4361

Sustainable Development Goals