Real-Time Underwater Computing System

Hussain Albarakati, R. Ammar, Raafat S. Elfouly
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引用次数: 9

Abstract

Underwater acoustic sensor networks have emerged as a new technology for underwater real-time applications such as oil inspection, seismic monitoring, and disaster prevention. However, this new technology is bound to data sensing, transmission, and forwarding, which makes the transmission of large volumes of data costly in terms of both time and power. This has inspired our research activities to develop underwater computing systems. In this advanced technology, information is extracted under the water using embedded processors via data mining and/or data compression. In our previous study, we developed a new set of real-time underwater embedded system architectures that can handle various network configurations. The aim was to minimize end-to-end delay and power consumption based on network parameters (i.e., data rate, central processing node capabilities, gathering node capabilities, and water depth) for both homogenous and heterogeneous applications. In this study, we developed a data-gathering algorithm that divides sensor nodes into clusters to find the best location for master nodes and their sensor members and the best location for the central computer. The system performance is calculated in terms of minimum end-to-end delay, power consumption, and load balancing among master nodes. Simulation is used to verify the results and to evaluate the performance of various sensor topologies.
实时水下计算系统
水声传感器网络作为一种新的水下实时应用技术,如石油检测、地震监测和灾害预防等。然而,这种新技术与数据感知、传输和转发绑定在一起,使得大量数据的传输在时间和功耗上都非常昂贵。这激发了我们开发水下计算系统的研究活动。在这项先进的技术中,信息是通过数据挖掘和/或数据压缩使用嵌入式处理器在水下提取的。在我们之前的研究中,我们开发了一套新的实时水下嵌入式系统架构,可以处理各种网络配置。其目的是根据同质和异构应用程序的网络参数(即数据速率、中央处理节点能力、收集节点能力和水深)最小化端到端延迟和功耗。在本研究中,我们开发了一种数据收集算法,该算法将传感器节点划分为集群,以找到主节点及其传感器成员的最佳位置以及中央计算机的最佳位置。系统性能从最小的端到端延迟、最小的功耗和主节点间的负载均衡三个方面进行计算。仿真用于验证结果并评估各种传感器拓扑的性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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