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An Energy-Efficient and Routing Approach for Position Estimation using Kalman Filter Techniques in Mobile WSNs

机译:移动WSN中使用卡尔曼滤波技术的位置估计的节能路由方法

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Mobile Wireless Sensor Networks is being an attractive field due to its applicability to an increasingly amount of mobile scenarios such as wild monitoring, disaster prevention, object guidance and health monitoring. In addition, since the sensors have limited batteries, data routing has to be planned strategically in order to extend the battery lifetime as much as possible. In this paper, we assume GPS free sensor devices, where considering a predictive technique to estimate the sensor position in a circular trajectory scenario can be useful to know when the sensor will be as close as possible to a sink, and then, help us to reduce the energy consumption by the fact of transmitting data at a short distance respect to the sink. In this paper, we propose an predictive algorithm based on Kalman filter techniques to estimate the proper time at which the sensor is close as much as possible to a sink, in order to reduce the energy consumption in the sensor. Specifically, we propose the usage of two Kalman Filters. One Kalman Filter is used for estimating the Received Signal Strength Indicator (RSSI) level based on several control packets received at the sensor device. This RSSI estimation indicates the distance from the mobile sensor device to the sink at a given time. The second Kalman Filter, based on the outputs from the first Kalman Filter, estimates the angular velocity and the angle of the mobile sensor device at a given time. Once this information is processed, it is possible to estimate the mobile sensor position in a circular trajectory in order to determine how much close is the mobile sensor device respect to the sink. In addition, the communication channel noise may affect the packet content, generating non-accurate information measurements at the receptor. For this reason, our proposal is evaluated under different noise channel levels and compared against a traditional technique. Our predictive routing algorithm shows better results in terms of distance accuracy to the sink and energy consumption in noisy communication channels.
机译:由于移动无线传感器网络适用于越来越多的移动场景,例如野外监控,灾难预防,目标指导和健康监控,因此它是一个有吸引力的领域。此外,由于传感器的电池电量有限,因此必须策略性地规划数据路由,以尽可能延长电池寿命。在本文中,我们假设没有GPS的传感器设备,在此情况下,考虑一种预测技术来估计圆形轨迹情况下的传感器位置可能有助于了解何时传感器将尽可能靠近水槽,然后帮助我们通过相对于接收器以短距离传输数据的事实来降低能耗。在本文中,我们提出了一种基于卡尔曼滤波技术的预测算法,以估计传感器尽可能接近水槽的适当时间,以减少传感器的能耗。具体来说,我们建议使用两个卡尔曼滤波器。一个卡尔曼滤波器用于基于在传感器设备处接收到的几个控制数据包来估计接收信号强度指示器(RSSI)级别。 RSSI估计值指示给定时间从移动传感器设备到接收器的距离。第二卡尔曼滤波器基于第一卡尔曼滤波器的输出,估计给定时间的移动传感器设备的角速度和角度。一旦处理了该信息,就可以估计圆形轨迹中的移动传感器位置,以便确定移动传感器设备相对于水槽的距离。此外,通信信道噪声可能会影响数据包内容,从而在接收器处产生不准确的信息测量结果。因此,我们的建议在不同的噪声通道级别下进行评估,并与传统技术进行比较。我们的预测路由算法在到接收器的距离精度和嘈杂的通信信道中的能耗方面显示出更好的结果。

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