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Telescopic Data Compression in Dense Sensor Networks that Support Fire-Fighters

机译:支持消防员的密集传感器网络中的伸缩数据压缩

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In a dense sensor network, sensors are randomly placed at a density high enough that over-sampling of a physical field occurs. Depending upon the application, very often some regions contain more information than the rest. For optimal energy efficiency, the amount of compression and hence the sensing accuracy should vary with the relative significance of different sub-regions. To achieve this goal, we propose a progressive data collection scheme. First, the more significant low-frequency components, which give a crude profile of the signal, are extracted and forwarded to the destination. Then, based on the rough profile, an application may identify some strategic areas and request additional details, i.e. components of higher frequencies, from them until the desired resolution is reached. This process of sensing a phenomenon is like making observations through a telescope: starting with a panoramic view of low resolution, then gradually zooming into a target region to reveal finer details. Noise in data can also be effectively removed during the process by applying digital low-pass filtering locally within sensor clusters. Simulation results based on the temperature distribution of a fire in one of the engineering buildings on the Columbia campus generated by the NIST Fire Dynamics Simulator show that with a sensor density of 1.2/m{sup}2 and a SNR of 6dB, using a simple Gaussian low-pass filter for local compression, an average overall improvement of 4.4dB can be obtained while collecting only 4.8% of the raw data traffic at the processing center, resulting in a reconstructed field deemed accurate enough for extracting crucial information about a fire.
机译:在密集的传感器网络中,传感器随机放置在足够高的密度高,以便发生物理场的过度采样。根据应用,通常一些区域通常包含比其余更多的更多信息。为了最佳能量效率,压缩量和因此感测精度应随不同子区域的相对意义而变化。为实现这一目标,我们提出了一种渐进式数据收集方案。首先,提取和转发给出信号粗曲线的更显明显的低频分量,并将其转发到目的地。然后,基于粗略的简档,应用程序可以识别一些战略区域并请求其他细节,即较高频率的组件,直到达到所需的分辨率。这种感测现象的过程就像通过望远镜进行观察:从低分辨率的全景开始,然后逐渐放大到目标区域以显示更细的细节。通过在传感器集群内局部施加数字低通滤波,还可以有效地消除数据中的噪声。基于由NIST Dire Dynamics模拟器产生的哥伦比亚校园中的一个工程建筑物中火灾温度分布的仿真结果表明,使用简单的,传感器密度为1.2 / m {sup} 2和SNR的SNR,使用简单高斯低通滤波器用于局部压缩,可以获得4.4dB的平均整体改进,同时仅收集加工中心的原始数据流量的4.8%,导致重建的字段被认为足够准确,以便提取有关火灾的重要信息。

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