Model predictive control based algorithm for multi-target tracking using a swarm of fixed wing UAVs

Animesh Sahu, Harikumar Kandath, K. Krishna
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引用次数: 2

Abstract

This paper presents a model predictive control (MPC) based algorithm for tracking multiple targets using a swarm of unmanned aerial vehicles (UAVs). All the UAVs belong to fixed-wing category with constraints on flight velocity, climb rate and turn rate. Each UAV carries a camera to detect and track the target. Two cases are considered where for the first case, the number of the UAVs is equal to the number of targets. For the second case, the number of UAVs is lesser than the number of targets leading to a conservative solution where the objective is to maximize the average time duration for which the targets are in the field-of-view (FOV) of any one of the UAV's camera. A data driven Gaussian process (GP) based model is developed to relate the hyperparameters used in MPC to the mission efficiency. Bayesian optimization is performed to obtain the hyperparameters of the MPC that maximize the mission efficiency. Numerical simulations are performed for both cases using algorithm based on distributed MPC formulation. A performance comparison is provided with the centralized MPC formulation.
基于模型预测控制的固定翼无人机多目标跟踪算法
提出了一种基于模型预测控制(MPC)的无人机群多目标跟踪算法。所有无人机都属于固定翼类,对飞行速度、爬升率和转弯率都有约束。每架无人机携带一个照相机来探测和跟踪目标。考虑两种情况,其中对于第一种情况,无人机的数量等于目标的数量。对于第二种情况,无人机的数量小于目标的数量,导致一个保守的解决方案,其目标是最大化目标在任何一个无人机相机的视场(FOV)中的平均时间持续时间。建立了一种基于数据驱动高斯过程(GP)的模型,将MPC中使用的超参数与任务效率联系起来。通过贝叶斯优化得到了任务效率最大化的MPC超参数。采用基于分布式MPC公式的算法对两种情况进行了数值模拟。提供了集中式MPC配方的性能比较。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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