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HADAD: Hexagonal A-Star with Differential Algorithm Designed for weather routing

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URI: http://hdl.handle.net/10498/36322

DOI: 10.1016/j.oceaneng.2024.120050

ISSN: 0029-8018

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OA_2025_0190.pdf (5.528Mb)
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Author/s
Jiménez de la Jara, JavierAuthority UCA; Precioso Garcelán, DanielAuthority UCA; Bu, Louis; Redondo Neble, María VictoriaAuthority UCA; Milson, Robert; Ballester-Ripoll, Rafael; Gómez-Ullate Oteiza, DavidAuthority UCA
Date
2025
Department
Ingeniería Informática; Matemáticas
Source
Ocean Engineering - 2025, Vol. 319, artículo n. 120050
Abstract
We present HADAD (Hexagonal A-Star with Differential Algorithm Designed for weather routing), a novel optimization algorithm for weather routing. HADAD conducts a global exploration using an A⋆ search on a hexagonal grid with higher-order neighbors, enhancing directional flexibility and overcoming limitations of traditional graph searches that constrain vessel movements. It then refines the solution using a discrete Newton–Jacobi variational method, ensuring convergence to a locally optimal, smooth route in continuous space. To evaluate the effectiveness of HADAD, we developed a benchmark comprising 1,560 instances over a full year, varying in origin–destination pairs, vessel speeds and oceanographic conditions. Our results show that HADAD outperforms pure A⋆ graph search methods by an extra 4% savings with respect to the shortest-distance route, thanks to more flexible smoother trajectories obtained by gradient descent. In our seasonal study we observe that the savings distribution shows large seasonal variations (double savings on average in winter with respect to summer) and contains a significant number of outliers. Savings reach 27% in these cases of extreme weather events. Validation of the algorithm performed with synthetic vector fields has been conducted. In this setting, the algorithm has been adapted to handle fuel consumption optimization for Just-in-Time arrival. By integrating global search and local optimization, HADAD effectively balances computational efficiency with route optimality, offering a practical and adaptable solution for real-world weather routing applications.
Subjects
Decarbonization; Hexagonal grid; Optimization; Seasonal study; Variational methods; Weather routing
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  • Articulos Científicos Ing. Inf. [299]
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This work is under a Creative Commons License Atribución 4.0 Internacional

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