【24h】

Geometry of a Sensor Networks

机译:传感器网络的几何

获取原文

摘要

Given a set of sensors or cluster of sensors S located at different points or nodes in the ordinary space. Any sensor measures one or more values, such as Temperature. We assume that the information from all sensors at different positions in the space is transmitted to a Gateway node as a probabilistic phenomena, not in a deterministic way. The measured value X at the Gateway sensor node is a random value. Noise in the network randomly changes the original measurements. Information at the gateway is given by a distribution of the probability at the gateway sensor. We can show that given the values at the sensor node the distribution of the probability at the gateway changes. So the sensor measurements are parameters that define the distribution of the values at the gateway. The probability at the gateway is conditioned by the original measures at the sensor node. The probability approach cannot take care of the topology of the network but only of the conditional probability at the gateway conditioned by the sensors. Now we compute the derivative of the conditional Boltzmann entropy for any variation of the sensor value and for any value at the gateway X. This matrix gives us the sensor situation so we can compute the Fisher information of the sensor. It is the Hessian of the entropy average function in the space of the sensors S. The Fisher information gives us the geometry or form of the sensor space S. Sensor information is very important to obtain the form of the phenomena that we want to measure with the different sensors. Networks of sensors with their geometry go beyond the individual sensor that measures only one value and cannot discover the field or form of the physical phenomena.
机译:给定一组传感器或位于普通空间中不同点或节点的传感器或传感器。任何传感器测量一个或多个值,例如温度。我们假设来自空间中不同位置处的所有传感器的信息被发送到网关节点作为概率现象,而不是以确定性的方式。网关传感器节点处的测量值X是随机值。网络中的噪声随机改变原始测量。网关处的信息由网关传感器的概率分布给出。我们可以显示给定传感器节点处的值在网关中的概率分布变化。因此,传感器测量是定义网关中值分布的参数。网关处的概率通过传感器节点处的原始测量来调节。概率方法不能处理网络的拓扑,而是仅在传感器调节的网关处的条件概率。现在我们计算条件Boltzmann熵的导数,以了解传感器值的任何变化以及网关X的任何值。该矩阵给我们传感器情况,以便我们计算传感器的Fisher信息。它是传感器S的空间中熵平均功能的象牙。Fisher信息给我们传感器空间S的几何形状或形式。传感器信息非常重要,无法获得我们想要测量的现象的形式不同的传感器。具有其几何的传感器网络超出了仅测量一个值的单个传感器,无法发现物理现象的字段或形式。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号