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首页> 外文期刊>Journal of Dynamic Systems, Measurement, and Control >Stochastic Model Predictive Control for Guided Projectiles Under Impact Area Constraints
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Stochastic Model Predictive Control for Guided Projectiles Under Impact Area Constraints

机译:冲击区约束下制导弹丸的随机模型预测控制

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摘要

The dynamics of guided projectile systems are inherently stochastic in nature. While deterministic control algorithms such as impact point prediction (IPP) may prove effective in many scenarios, the probability of impacting obstacles and constrained areas within an impact zone cannot be accounted for without accurate uncertainty modeling. A stochastic model predictive guidance algorithm is developed, which incorporates nonlinear uncertainty propagation to predict the impact probability density in real-time. Once the impact distribution is characterized, the guidance system aim point is computed as the solution to an optimization problem. The result is a guidance law that can achieve minimum miss distance while avoiding impact area constraints. Furthermore, the acceptable risk of obstacle impact can be quantified and tuned online. Example trajectories and Monte Carlo simulations demonstrate the effectiveness of the proposed stochastic control formulation in comparison to deterministic guidance schemes.
机译:制导弹丸系统的动力学本质上是随机的。尽管确定性控制算法(例如,冲击点预测(IPP))在许多情况下可能是有效的,但如果没有精确的不确定性建模,就不能考虑冲击区域内障碍物和约束区域的发生概率。提出了一种随机模型预测制导算法,该算法结合了非线性不确定性传播,可以实时预测碰撞概率。一旦确定了影响分布,就可以将制导系统的目标点作为优化问题的解决方案。结果是一种制导律,可以达到最小错位距离,同时避免影响区域的限制。此外,可以在线量化和调整可接受的障碍物撞击风险。实例轨迹和蒙特卡洛模拟证明了与确定性制导方案相比,所提出的随机控制公式的有效性。

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