Lissajous curves as aerial search patterns.

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Authors

Steckenrider, J. Josiah
Miller, Mitchell
Blankenship, Rory
Trujillo, Victor
Bluman, James E.

Issue Date

2024-05-15

Type

Journal articles

Language

en

Keywords

Lissajous curves , Numerical simulation , Path optimization , Predictive modeling , Search , Unmanned aerial systems

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Abstract

Manned and unmanned systems are prevalent in a wide range of aerial searching applications. For aircraft whose trajectory is not or cannot be planned on-the-fly, optimal deterministic search pattern generation is a critical area of research. Lissajous curves have recently caught attention as excellent candidates for all kinds of aerial search applications, but little fundamental research has been done to understand how best to design Lissajous pattern (LP)s for this use. This paper examines the optimization of these search patterns from analytical, numerical, and data-driven perspectives to establish the state of the field in Lissajous curves for aerial search. From an analytical perspective, it was found that the average expected distance between a Lissajous searcher and a random target on a unit square approaches 0.586 as search time increases. Furthermore, an analytical approximation for the average searcher speed was found to guarantee error of no more than 22.1%. Important outcomes from the numerical optimization of Lissajous search patterns include the development of an intuitive evaluation criterion and the conclusion that irrational frequency ratios near 0.8 typically yield highest performance. Finally, while a robust predictive model for fast pattern optimization is yet out of reach, initial results indicate that such an approach shows promise.

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Citation

Steckenrider, J.J., Miller, M., Blankenship, R. et al. Lissajous curves as aerial search patterns. Sci Rep 14, 11144 (2024). https://doi.org/10.1038/s41598-024-60803-2

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Springer Nature

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