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Maneuvering target interception using retrospective-cost-based adaptive input and state estimation

机译:使用基于回顾成本的自适应输入和状态估计来进行机动目标拦截

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In this paper, missile guided by modified proportional navigation guidance (MPNG) law intercepts the maneuvering target using estimated target acceleration. Target acceleration is taken as an input and is estimated with retrospective cost-based-adaptive input and state estimation (RCAISE). Prior optimized input estimates are used in the adaptive input estimator, which is based on the recursive least squares, to estimate the unknown input acceleration of the maneuvering target. Kalman filter uses the estimated input acceleration of the target to estimates the states of the maneuvering target. MPNG law uses the estimated input acceleration of the target to intercept the maneuvering target. Numerical simulation results present herein, demonstrate better performance of the RCAISE as compare to other classical estimation methods.
机译:本文通过改进的比例导航指导(MPNG)法指导的导弹使用估计的目标加速度拦截机动目标。目标加速度被视为输入,并估计基于回顾性的成本 - 自适应输入和状态估计(RCaive)。先前优化的输入估计用于自适应输入估计器,其基于递归最小二乘来估计机动目标的未知输入加速度。卡尔曼滤波器使用目标的估计输入加速来估计机动目标的状态。 MPNG法使用目标的估计输入加速来拦截机动目标。本文存在的数值模拟结果,证明与其他经典估计方法相比,RCAIVe的更好性能。

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