Drones | 卷:3 |
Computationally Efficient Force and Moment Models for Propellers in UAV Forward Flight Applications | |
Raffaello D’Andrea1  Rajan Gill1  | |
[1] Institute for Dynamic Systems and Controls, ETH Zurich, 8092 Zurich, Switzerland; | |
关键词: propeller; parametric model; grey-box identification; oblique flow dataset; | |
DOI : 10.3390/drones3040077 | |
来源: DOAJ |
【 摘 要 】
Two low-order, parametric models are developed for the forces and moments that a rotating propeller undergoes in forward flight. The models are derived using a first-principles-based approach, and are computationally efficient in the sense of being represented by explicit expressions. The parameters for the models can be identified either using supervised learning/grey-box fitting from labelled data, or can be predicted using only the static load coefficients (i.e., the hover thrust and torque coefficients). The second model is a multinomial model that is derived by means of a Taylor series expansion of the first model, and can be viewed as a lower-order lumped parameter model. The models and parameter generation methods are experimentally tested against 19 propellers tested in a wind tunnel under oblique flow conditions, for which the data is made available. The models are tested against 181 additional propellers from existing datasets.
【 授权许可】
Unknown