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UAS see-and-avoid strategy using a fuzzy logic controller optimized by Cross-Entropy in Scaling Factors and Membership Functions

机译:UAS视避免策略,使用通过比例因子和隶属函数的交叉熵优化的模糊逻辑控制器

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This work aims to develop a novel Cross-Entropy (CE) optimization-based fuzzy controller for Unmanned Aerial Monocular Vision-IMU System (UAMVIS) to solve the see-and-avoid problem using its accurate autonomous localization information. The function of this fuzzy controller is regulating the heading of this system to avoid the obstacle, e.g. wall. In the Matlab Simulink-based training stages, the Scaling Factor (SF) is adjusted according to the specified task firstly, and then the Membership Function (MF) is tuned based on the optimized Scaling Factor to further improve the collison avoidance performance. After obtained the optimal SF and MF, 64% of rules has been reduced (from 125 rules to 45 rules), and a large number of real flight tests with a quadcopter have been done. The experimental results show that this approach precisely navigates the system to avoid the obstacle. To our best knowledge, this is the first work to present the optimized fuzzy controller for UAMVIS using Cross-Entropy method in Scaling Factors and Membership Functions optimization.
机译:这项工作旨在开发一种新型的基于交叉熵(CE)优化的模糊控制器,用于无人航空单眼视觉IMU系统(UAMVIS),以使用其准确的自主定位信息来解决视而不见的问题。该模糊控制器的功能是调节该系统的前进方向,以避开障碍物,例如障碍物。墙。在基于Matlab Simulink的训练阶段,首先根据指定任务调整缩放因子(SF),然后根据优化的缩放因子对成员函数(MF)进行调整,以进一步提高避免Collison的性能。在获得最佳的SF和MF之后,将64%的规则减少了(从125个规则减少到45个规则),并使用四轴飞行器进行了大量实际飞行测试。实验结果表明,该方法可以精确地导航系统以避免障碍。据我们所知,这是首次在比例因子和隶属函数优化中使用交叉熵方法介绍针对UAMVIS的优化模糊控制器。

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