Research and Academic Computer Network (NASK), Kolska 12, 01-045 Warsaw, Poland.
Institute of Control and Computation Engineering, Warsaw University of Technology, Nowowiejska 15/19, 00-665 Warsaw, Poland.
Sensors (Basel). 2021 May 23;21(11):3625. doi: 10.3390/s21113625.
Intelligent wireless networks that comprise self-organizing autonomous vehicles equipped with punctual sensors and radio modules support many hostile and harsh environment monitoring systems. This work's contribution shows the benefits of applying such networks to estimate clouds' boundaries created by hazardous toxic substances heavier than air when accidentally released into the atmosphere. The paper addresses issues concerning sensing networks' design, focussing on a computing scheme for online motion trajectory calculation and data exchange. A three-stage approach that incorporates three algorithms for sensing devices' displacement calculation in a collaborative network according to the current task, namely exploration and gas cloud detection, boundary detection and estimation, and tracking the evolving cloud, is presented. A network connectivity-maintaining virtual force mobility model is used to calculate subsequent sensor positions, and multi-hop communication is used for data exchange. The main focus is on the efficient tracking of the cloud boundary. The proposed sensing scheme is sensitive to crucial mobility model parameters. The paper presents five procedures for calculating the optimal values of these parameters. In contrast to widely used techniques, the presented approach to gas cloud monitoring does not calculate sensors' displacements based on exact values of gas concentration and concentration gradients. The sensor readings are reduced to two values: the gas concentration below or greater than the safe value. The utility and efficiency of the presented method were justified through extensive simulations, giving encouraging results. The test cases were carried out on several scenarios with regular and irregular shapes of clouds generated using a widely used box model that describes the heavy gas dispersion in the atmospheric air. The simulation results demonstrate that using only a rough measurement indicating that the threshold concentration value was exceeded can detect and efficiently track a gas cloud boundary. This makes the sensing system less sensitive to the quality of the gas concentration measurement. Thus, it can be easily used to detect real phenomena. Significant results are recommendations on selecting procedures for computing mobility model parameters while tracking clouds with different shapes and determining optimal values of these parameters in convex and nonconvex cloud boundaries.
智能无线网络由配备定时传感器和无线电模块的自组织自主车辆组成,支持许多恶劣和恶劣环境监测系统。这项工作的贡献表明,将此类网络应用于估计危险有毒物质意外释放到大气中时形成的云层边界是有益的。本文涉及传感网络设计问题,重点介绍了一种用于在线运动轨迹计算和数据交换的计算方案。提出了一种三阶段方法,该方法根据当前任务(即探索和气体云检测、边界检测和估计以及跟踪不断发展的云),将协作网络中的三个算法用于传感设备的位移计算。使用网络连接维护虚拟力移动模型来计算后续传感器位置,并使用多跳通信进行数据交换。主要重点是有效地跟踪云边界。所提出的传感方案对关键移动模型参数敏感。本文提出了计算这些参数最佳值的五个程序。与广泛使用的技术相比,所提出的气体云监测方法不是根据气体浓度和浓度梯度的精确值来计算传感器的位移。传感器读数简化为两个值:低于或高于安全值的气体浓度。通过广泛的模拟证明了所提出方法的实用性和效率,结果令人鼓舞。测试案例在使用广泛使用的箱模型生成的具有规则和不规则形状的云的几个场景中进行,该模型描述了大气中重气体的扩散。模拟结果表明,仅使用指示超过阈值浓度值的粗略测量值即可检测到并有效地跟踪气体云边界。这使得传感系统对气体浓度测量的质量不那么敏感。因此,它可以轻松用于检测真实现象。重要结果是关于跟踪具有不同形状的云时计算移动模型参数的过程的建议,以及确定这些参数在凸和非凸云边界中的最佳值。