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A nonlinear robust model predictive differential game guidance algorithm based on the particle swarm optimization

机译:一种基于粒子群优化的非线性鲁棒模型预测差分算法

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摘要

Two-dimensional engagement of a pursuer and a maneuvering target, affected by matched uncertainties, is formulated as a nonlinear differential game. The uncertain guidance problem is converted into a nonlinear model predictive control problem by introducing an appropriate cost function. The objective is to calculate the best guidance commands of the pursuer and the worst possible target maneuvers simultaneously, over a receding horizon. The proposed cost function penalizes the line-of-sight rate, the pursuer acceleration, and the uncertainties. It also rewards the target maneuver. A particle swarm-based dynamic optimization algorithm is developed to solve the nonlinear model predictive differential game, affected by the uncertainties. Performance of the proposed guidance algorithm is evaluated against maneuvering and non-maneuvering targets. The algorithm is also evaluated for the cases when the pursuer has a high initial heading error, and the guidance command is constrained. The statistical performance of the proposed algorithm is evaluated using Monte Carlo simulation. Moreover, a processor in the loop experiment is performed to verify the implementation capability of the proposed algorithm. Finally, a comparison is made between the performance of the suggested algorithm with some other methods including linear- quadratic differential game, state-dependent Riccati equation-differential game, a guidance law on the basis of adaptive dynamic programming, a proportional navigation guidance improved by particle swarm optimization, a guidance algorithm based on the continuous ant colony controller, switched bias proportional navigation, and augmented proportional navigation. (C) 2020 The Franklin Institute. Published by Elsevier Ltd. All rights reserved.
机译:追捕者的二维啮合和受匹配的不确定性影响的机动目标被制定为非线性差异游戏。不确定的指导问题通过引入适当的成本函数转换为非线性模型预测控制问题。目标是在后退地平线上计算追捕者和最糟糕的目标机动的最佳指导命令。拟议的成本职能惩罚视线率,追求加速度和不确定性。它还奖励目标机动。基于粒子群的动态优化算法开发用于解决受不确定性影响的非线性模型预测差分游戏。建议的指导算法的性能进行了评估对机动和非机动目标。还评估算法,因为追求者具有高初始标题误差,并且指导命令被约束。使用Monte Carlo仿真评估所提出的算法的统计性能。此外,执行在循环实验中的处理器以验证所提出的算法的实现能力。最后,在建议算法的性能与其他一些方法之间进行了比较,包括线性二次差分游戏,状态依赖性的Riccati公式 - 差异游戏,在自适应动态规划的基础上,一种预测的导航指导粒子群优化,一种基于连续蚁群控制器的引导算法,交换偏置比例导航和增强比例导航。 (c)2020富兰克林学院。 elsevier有限公司出版。保留所有权利。

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  • 来源
    《Journal of the Franklin Institute》 |2020年第15期|11042-11071|共30页
  • 作者单位

    Sharif Univ Technol Dept Aerosp Engn Tehran 1458889694 Iran;

    Sharif Univ Technol Dept Aerosp Engn Tehran 1458889694 Iran;

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  • 正文语种 eng
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