An Enhanced Spatial Correlation Framework for Heterogenous Wireless Sensor Networks

Sunayana Jadhav, R. Daruwala
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Abstract

Event detection and monitoring applications involve highly populated sensor nodes in Wireless Sensor Networks (WSNs). Dense deployment of nodes leads to correlated sensor observations in the spatial and temporal domain. Most of the previous works focused on constant sensing radii for spatially correlated sensor observations. However, in real time scenario, the sensor nodes may have variable sensing coverage areas, which comprise a Heterogeneous WSN. Spatial correlation model discussed in prior literature focused on Homogeneous sensing of sensor nodes. But, real time scenario the condition changes due to interferences obstructing sensing areas. Also, different manufacturers may provide different specifications for sensing areas, thus resulting into Heterogeneous sensing. To address this issue, we present an Enhanced Weighted Spatial Correlation Model for Heterogeneous sensor nodes in WSNs. The mathematical framework considers the spatial coordinates of sensor nodes, the distances between the sensor nodes, and their sensing coverage. Furthermore, the correlation coefficient is calculated in terms of overlapping areas for randomly deployed nodes. Performance of the correlation model is evaluated and analyzed in terms of event distortion function. In addition to this, a macro and micro-zone concept is introduced, wherein sensor information is weighted for better event estimation at the sink node. Moreover, dynamic weighing of nodes like Inverse, Shepard’s and Gaussian distance weighing algorithms are simulated and analyzed for minimal event distortion. Over and above, the system performance is evaluated for different approaches considering reporting nodes with and without clustering of sensor nodes for macro and micro-zone concept. Simulation results for the Enhanced Weighted Spatial Correlation Model developed are obtained using MATLAB software. In order to evaluate the performance of the enhanced correlation model considering Macro and Micro-zone concept, simulations are carried out inMATLAB. Simulations are performed for ‚ trials and averaging of the values are finally used for analysis of results. The comparative study shows an improved system performance in terms of minimal distortion obtained for non-clustered nodes; thereby reducing the computational complexity of cluster formation. Furthermore, the dynamic weighing algorithms outperform the existing fixed weighing algorithms for the correlation model with the lowest distortion function. Moreover, in the above algorithms, the event distortion gradually decreases and later becomes constant with the increase in the number of representative nodes. Hence, it illustrates that minimal distortion can be achieved by activating lesser number of representative nodes, thereby preserving the energy of other sensor nodes and increasing the lifetime of WSNs.
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异构无线传感器网络的增强空间相关框架
事件检测和监控应用涉及无线传感器网络(WSNs)中高度密集的传感器节点。节点的密集部署导致传感器在空间和时间域的观测结果相关。以往的工作大多集中在空间相关传感器观测的恒定传感半径上。然而,在实时场景中,传感器节点可能具有可变的感知覆盖区域,这构成了一个异构WSN。先前文献中讨论的空间相关模型主要关注传感器节点的同质感知。但是,在实时场景中,由于干扰阻塞了传感区域,条件发生了变化。此外,不同的制造商可能提供不同的规格的传感区域,从而导致异构传感。为了解决这一问题,我们提出了一种增强的基于异构传感器节点的加权空间相关模型。该数学框架考虑了传感器节点的空间坐标、传感器节点之间的距离以及它们的感知覆盖率。然后,根据随机部署节点的重叠面积计算相关系数。从事件失真函数的角度对相关模型的性能进行了评价和分析。此外,还引入了宏观和微区概念,其中对传感器信息进行加权,以便更好地估计汇聚节点上的事件。仿真分析了逆加权、Shepard加权和高斯距离加权等节点动态加权算法,以实现最小的事件失真。此外,系统性能评估了不同的方法,考虑报告节点有和没有集群的传感器节点的宏观和微区概念。利用MATLAB软件对所建立的增强加权空间相关模型进行了仿真。为了评估考虑宏区和微区概念的增强相关模型的性能,在matlab中进行了仿真。对三次试验进行模拟,最后取平均值用于分析结果。对比研究表明,在非聚类节点获得最小失真方面,该方法提高了系统性能;从而降低了簇形成的计算复杂度。此外,动态加权算法在失真函数最小的相关模型上优于现有的固定加权算法。此外,在上述算法中,随着代表节点数量的增加,事件失真逐渐减小,随后趋于恒定。因此,它表明通过激活较少数量的代表性节点可以实现最小的失真,从而保留其他传感器节点的能量并增加wsn的寿命。
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来源期刊
International Journal of Sensors, Wireless Communications and Control
International Journal of Sensors, Wireless Communications and Control Engineering-Electrical and Electronic Engineering
CiteScore
2.20
自引率
0.00%
发文量
53
期刊介绍: International Journal of Sensors, Wireless Communications and Control publishes timely research articles, full-length/ mini reviews and communications on these three strongly related areas, with emphasis on networked control systems whose sensors are interconnected via wireless communication networks. The emergence of high speed wireless network technologies allows a cluster of devices to be linked together economically to form a distributed system. Wireless communication is playing an increasingly important role in such distributed systems. Transmitting sensor measurements and control commands over wireless links allows rapid deployment, flexible installation, fully mobile operation and prevents the cable wear and tear problem in industrial automation, healthcare and environmental assessment. Wireless networked systems has raised and continues to raise fundamental challenges in the fields of science, engineering and industrial applications, hence, more new modelling techniques, problem formulations and solutions are required.
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