NauSimUn simulador de código abierto para el control, desarrollo y despliegue de drones submarinos
- Ortiz Toro, César Antonio 1
- Cerrada Collado, Cristina 2
- David Moreno Salinas 2
- Chaos García , Dictino 2
- García Suárez , Karen Lyn 3
- Otero Roth, Pablo 4
- Vidal Pérez , Juan Manuel 5
- Luque Nieto, Miguel Ángel 4
- Vázquez , Ana Isabel 5
- Fraile Ardanuy, José Jesús 1
- Negro Valdecantos, Vicente 1
- Jiménez Yguacel , Eugenio 3
- Aranda Almansa, Joaquín 2
- Zazo Bello, Santiago 1
- Zufiria Zatarain , Pedro José 1
- Magdalena Layos, Luis 1
- Parras Moral, Juan 1
- Gutiérrez Martín, Alvaro 1
- 1 Universidad Polit´ecnica de Madrid
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2
Universidad Nacional de Educación a Distancia
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3
Universidad de Las Palmas de Gran Canaria
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Universidad de Las Palmas de Gran Canaria
Las Palmas de Gran Canaria, España
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4
Universidad de Málaga
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5
Universidad de Cádiz
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- Cruz Martín, Ana María (coord.)
- Arévalo Espejo, V. (coord.)
- Fernández Lozano, Juan Jesús (coord.)
ISSN: 3045-4093
Argitalpen urtea: 2024
Zenbakia: 45
Mota: Artikulua
Laburpena
This paper introduces NauSim, an open-source simulator for underwater drones, focusing on control software developmentand easy deployment to the target hardware. NauSim provides researchers, developers, and students with a realistic and versatile virtual testing ground, allowing them to evaluate the performance of underwater drones in a variety of scenarios. Key features include customizable scenarios, a modular design for controllers, sensors, and actuators, and support for multi-drone simulations,enabling collaborative robotics and swarm-based research.
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