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Wake-Based Locomotion Gait Design for Aerobat

2022-12-10 20:13:51
Eric Sihite, Alireza Ramezani

Abstract

Flying animals, such as bats, fly through their fluidic environment as they create air jets and form wake structures downstream of their flight path. Bats, in particular, dynamically morph their highly flexible and dexterous armwing to manipulate their fluidic environment which is key to their agility and flight efficiency. This paper presents the theoretical and numerical analysis of the wake-structure-based gait design inspired by bat flight for flapping robots using the notion of reduced-order models and unsteady aerodynamic model incorporating Wagner function. The objective of this paper is to introduce the notion of gait design for flapping robots by systematically searching the design space in the context of optimization. The solution found using our gait design framework was used to design and test a flapping robot.

Abstract (translated)

URL

https://arxiv.org/abs/2212.05359

PDF

https://arxiv.org/pdf/2212.05359.pdf


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