Azimuthal solar synchronization and aerodynamic neuro-optimization: an empirical study on slime-mold-inspired neural networks for solar UAV range optimization

This study introduces a novel methodology for enhancing the efficiency of solar-powered unmanned aerial vehicles (UAVs) through azimuthal solar synchronization and aerodynamic neurooptimization, leveraging the principles of slime mold neural networks. The objective is to broaden the operational capa...

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Bibliographic Details
Main Authors: Graheeth, Hazare, Mohamed Thariq, Hameed Sultan, Dariusz, Mika, Farah Syazwani, Shahar, Grzegorz, Skorulski, Marek, Nowakowski, Andriy, Holovatyy, Ile, Mircheski, Wojciech, Giernacki
Format: Article
Language:English
Published: Multidisciplinary Digital Publishing Institute 2024
Online Access:http://psasir.upm.edu.my/id/eprint/114480/
http://psasir.upm.edu.my/id/eprint/114480/1/114480.pdf
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Summary:This study introduces a novel methodology for enhancing the efficiency of solar-powered unmanned aerial vehicles (UAVs) through azimuthal solar synchronization and aerodynamic neurooptimization, leveraging the principles of slime mold neural networks. The objective is to broaden the operational capabilities of solar UAVs, enabling them to perform over extended ranges and in varied weather conditions. Our approach integrates a computational model of slime mold networks with a simulation environment to optimize both the solar energy collection and the aerodynamic performance of UAVs. Specifically, we focus on improving the UAVs’ aerodynamic efficiency in flight, aligning it with energy optimization strategies to ensure sustained operation. The findings demonstrated significant improvements in the UAVs’ range and weather resilience, thereby enhancing their utility for a variety of missions, including environmental monitoring and search and rescue operations. These advancements underscore the potential of integrating biomimicry and neuralnetwork-based optimization in expanding the functional scope of solar UAVs.