TL;DR: The DelFly project, in which it follows a top-down approach to ever smaller and more autonomous ornithopters, is discussed, and the design, aerodynamics, and vision-based control of the DelFly are discussed.
Abstract: Light-weight, autonomous ornithopters form a promise to observe places that are too small or too dangerous for humans to enter In this article, we discuss the DelFly project, in which we follow a top-down approach to ever smaller and more autonomous ornithopters Top-down signifies that the project always focuses on complete flying systems equipped with camera We give arguments for the approach by explaining which findings on the DelFly I and DelFly II recently led to the development of the DelFly Micro: a 307-gram ornithopter carrying a camera and transmitter onboard These findings concern the design, aerodynamics, and vision-based control of the DelFly In addition, we identify main obstacles on the road to fly-sized ornithopters
TL;DR: The autonomy of the DelFly is expanded by achieving an improved turning logic to obtain better vision-based obstacle avoidance performance in environments with varying texture and successful onboard height control based on the pressure sensor.
Abstract: One of the major challenges in robotics is to develop a fly-like robot that can autonomously fly around in unknown environments. In this paper, we discuss the current state of the DelFly project, in which we follow a top-down approach to ever smaller and more autonomous ornithopters. The presented findings concerning the design, aerodynamics and autonomy of the DelFly illustrate some of the properties of the top-down approach, which allows the identification and resolution of issues that also play a role at smaller scales. A parametric variation of the wing stiffener layout produced a 5% more power-efficient wing. An experimental aerodynamic investigation revealed that this could be associated with an improved stiffness of the wing, while further providing evidence of the vortex development during the flap cycle. The presented experiments resulted in an improvement in the generated lift, allowing the inclusion of a yaw rate gyro, pressure sensor and microcontroller onboard the DelFly. The autonomy of the DelFly is expanded by achieving (1) an improved turning logic to obtain better vision-based obstacle avoidance performance in environments with varying texture and (2) successful onboard height control based on the pressure sensor.
TL;DR: In this article, an approach to the system identification of the Delfly II Flapping Wing Micro Air Vehicle (FWMAV) using flight test data is presented, which aims at providing simple FWMAV aerodynamic models that can be used in simulations as well as in nonlinear flight control systems.
Abstract: This paper presents an approach to the system identification of the Delfly II Flapping Wing Micro Air Vehicle (FWMAV) using flight test data. It aims at providing simple FWMAV aerodynamic models that can be used in simulations as well as in nonlinear flight control systems. The undertaken methodology builds on normal aircraft system identification methods and extends these with techniques that are specific to FWMAV model identification. The entire aircraft model identification cycle is discussed covering the set-up and automatic execution of the flight test experiments, the aircraft states, the aerodynamic forces and moments' reconstruction, the aerodynamic model structure selection, the parameter estimation and finally, the model validation. In particular, a motion capturing facility was used to record the flapper's position in time and from there compute the states and aerodynamic forces and moments that acted on it, assuming flap-averaged dynamics and linear aerodynamic model structures. It is shown th...
TL;DR: This article shows the first application of the Behavior Tree framework on a real robotic platform using the evolutionary robotics methodology to improve the intelligibility of the emergent robotic behavior over that of the traditional neural network formulation.
Abstract: Evolutionary Robotics allows robots with limited sensors and processing to tackle complex tasks by means of sensory-motor coordination. In this article we show the first application of the Behavior Tree framework on a real robotic platform using the evolutionary robotics methodology. This framework is used to improve the intelligibility of the emergent robotic behavior over that of the traditional neural network formulation. As a result, the behavior is easier to comprehend and manually adapt when crossing the reality gap from simulation to reality. This functionality is shown by performing real-world flight tests with the 20-g DelFly Explorer flapping wing micro air vehicle equipped with a 4-g onboard stereo vision system. The experiments show that the DelFly can fully autonomously search for and fly through a window with only its onboard sensors and processing. The success rate of the optimized behavior in simulation is 88%, and the corresponding real-world performance is 54% after user adaptation. Although this leaves room for improvement, it is higher than the 46% success rate from a tuned user-defined controller.