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Multisensor information Fusion Predictive Control for time-varying systems

机译:多传感器信息融合时断系统的预测控制

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Aiming at the multisensor discrete-time linear time-varying stochastic controllable system in the linear minimum variance optimal information fusion criterion, based on state space model, a multisensor information fusion weighted by scalars predictive control algorithm for time-varying systems is presented. This algorithm combines the fusion Kalman filter with predictive control, and it solves the control problem of time-varying systems, furthermore it avoids the complex Diophantine equation and it can obviously reduce the computational burden. Comparing to the single sensor case, the accuracy of the predictive control for time-varying systems is evidently improved. A simulation example of the target tracking controllable system with three sensors shows its effectiveness and correctness.
机译:介绍基于状态空间模型的线性最小方差最佳信息融合标准的多传感器离散时间线性时变系统,提出了由标量预测控制算法的多传感器信息融合的多传感器信息融合。该算法将融合Kalman滤波器与预测控制相结合,解决了时变系统的控制问题,此外,它避免了复杂的蒸氨定方程,并且可以明显降低计算负担。比较与单个传感器外壳,显然改善了时变系统的预测控制的准确性。具有三个传感器的目标跟踪可控系统的仿真示例显示了其有效性和正确性。

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