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Identification, control and visually-guided behavior for a model helicopter.

机译:模型直升机的识别,控制和视觉引导行为。

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Research on unmanned aerial vehicles is motivated by applications where human intervention is impossible, risky or expensive e.g. hazardous material recovery, traffic monitoring, disaster relief support, military operations etc. Due to its vertical take-off, landing and hover capabilities, a helicopter is an attractive platform for such applications. There are significant challenges to building an autonomous robotic helicopter - these span the areas of system identification, low-level control, state estimation, and planning.;Towards the goal of fully-autonomous helicopters this thesis makes the following contributions. A continuous-discrete extended Kalman filter has been developed that combines inertial data with GPS and compass data to provide estimates of the 6DOF state of the helicopter. Using this filter a model for the helicopter has been identified based on frequency response techniques. The model has been validated in flight tests on a small helicopter testbed (1.6 m rotor diameter) at speeds upto 5 m/s. Based on evidence from this model a decoupled low-level controller has been developed which is embedded in a control architecture suitable for visually-guided navigation. As a novel application, we show how such a controller can be used to perform trajectory following on the helicopter where the desired trajectories are typical spacecraft landing trajectories, and the only controls available are thrusters. This in effect, produces a low-cost testbed for testing spacecraft landing and hazard avoidance on a planetary surface.;Finally, we develop and extensively experimentally characterize algorithms for vision-based autonomous landing, object tracking, and sensor deployment.
机译:对无人驾驶飞行器的研究是由无法进行人为干预,危险或昂贵的应用(例如:直升机具有垂直起飞,着陆和悬停的能力,因此,直升机是此类应用的理想平台。建造自动机器人直升机面临着巨大的挑战,这些挑战涉及系统识别,低级控制,状态估计和计划等领域。为实现全自动直升机的目标,本论文做出了以下贡献。已经开发出一种连续离散的扩展卡尔曼滤波器,它将惯性数据与GPS和罗盘数据结合在一起,以提供对直升机6DOF状态的估计。使用该滤波器,已经基于频率响应技术确定了直升机的模型。该模型已经在小型直升机试验台(转子直径1.6 m)上以高达5 m / s的速度在飞行试验中得到验证。基于该模型的证据,已开发出一种解耦的低级控制器,该控制器嵌入了适用于视觉引导导航的控制体系结构中。作为一种新颖的应用,我们展示了如何使用这种控制器在直升飞机上执行轨迹跟踪,而所需的轨迹是典型的航天器着陆轨迹,而唯一可用的控件是推进器。实际上,这产生了一个低成本的测试平台,用于测试航天器在行星表面的着陆和避免危险。最后,我们开发并广泛地表征了基于视觉的自主着陆,物体跟踪和传感器部署的算法。

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