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A target tracking algorithm using Grey Model predicting Kalman Filter in wireless sensor networks

机译:一种目标跟踪算法使用灰色模型预测无线传感器网络中的卡尔曼滤波器

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Most of wireless sensor network target tracking algorithms depend on system state transition matrix, which is not offered in some cases. To solve the problem, a Grey Model predicting Kalman Filter (GMKF) target tracking algorithm is proposed. In GMKF, the problem is considered as a process of state location predicting and filtering. Firstly, target location is sensed and calculated by Received Signal Strength Indicator (RSSI), then the dynamic state-transition matrix is established by first order grey Model (GM (1, 1)). In addition, the observed and predicted target locations are filtered by Kalman Filter. Finally, the estimated target location is sent to sensing area to activate sensors. The simulation results show that GMKF algorithm improves tracking accuracy and reduces energy loss so that the network lifetime is prolonged.
机译:大多数无线传感器网络目标跟踪算法依赖于系统状态转换矩阵,在某些情况下未提供。为了解决问题,提出了一种预测卡尔曼滤波器(GMKF)目标跟踪算法的灰色模型。在GMKF中,问题被视为预测和过滤的状态位置的过程。首先,通过接收的信号强度指示符(RSSI)感测和计算目标位置,然后通过第一阶灰度模型(GM(1,1))建立动态状态转换矩阵。另外,观察和预测的目标位置由卡尔曼滤波器过滤。最后,将估计的目标位置发送到传感区域以激活传感器。仿真结果表明,GMKF算法提高了跟踪精度并降低了能量损失,从而延长了网络寿命。

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