Plan 3D Paths for Drones | Motion Planning Hands-on Using RRT Algorithm, Part 4 - MATLAB
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    Plan 3D Paths for Drones | Motion Planning Hands-on Using RRT Algorithm, Part 4

    From the series: Motion Planning Hands-on Using RRT Algorithm

    Are you working with autonomous drone applications such as package delivery or advanced air mobility? Learn how to plan and execute unmanned aerial vehicle (UAV) flights using a guidance model for a fixed-wing aircraft. A fixed-wing UAV is nonholonomic in nature and must obey aerodynamic constraints like maximum roll angle, flight path angle, and airspeed when moving between waypoints.

    Watch a demonstration of motion planning of a fixed-wing UAV using the rapidly exploring random tree (RRT) algorithm that is given a start and goal pose on a 3D map. You will learn how to use UAV Toolbox with MATLAB® to generate 3D Dubins motion primitives. You will also learn how to use a customizable path-planning template with Navigation Toolbox™ to define a custom state space and state validator for sampling-based path planning.

    Steps include:

    1. Setting up a 3D map
    2. Providing the start pose and goal pose
    3. Planning a path with RRT using 3D Dubins motion primitives
    4. Smoothing the planned path
    5. Simulating the UAV flight following the planned path

    Published: 12 Jul 2022