Weighted Record Sample for Underwater Seismic Monitoring Application

Hussain Albarakati, R. Ammar, Raafat S. Elfouly
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引用次数: 3

Abstract

Underwater acoustic sensor networks have been developed as a new technology for real-time underwater applications, including seismic monitoring, disaster prevention, and oil well inspection. Unfortunately, this new technology is constrained to data sensing, large-volume transmission, and forwarding. As a result, the transmission of large volumes of data is costly in terms of both time and power. We thus focused our research activities on the development of embedded underwater computing systems. In this advanced technology, information extraction is performed underwater using data mining techniques or compression algorithms. We previously presented a new set of real-time underwater embedded system architectures that can manage multiple network configurations. In this study, we extend our research to develop information extraction for seismic monitoring underwater application to meet real-time constraints. The system performance is measured in terms of the minimum end-to-end delay and power consumption. The simulation results are presented to measure the performance of our architecture based on the information extraction algorithm.
水下地震监测加权记录样本
水声传感器网络是一种新型的水下实时应用技术,可用于地震监测、灾害预防和油井检测等领域。不幸的是,这项新技术仅限于数据感知、大容量传输和转发。因此,传输大量数据在时间和功率方面都是昂贵的。因此,我们将研究活动集中在嵌入式水下计算系统的开发上。在这项先进的技术中,信息提取是使用数据挖掘技术或压缩算法在水下进行的。我们之前提出了一套新的实时水下嵌入式系统架构,可以管理多种网络配置。在本研究中,我们将研究扩展到开发用于水下地震监测的信息提取,以满足实时约束。系统性能以最小的端到端延迟和功耗来衡量。最后给出了基于信息提取算法的体系结构的仿真结果。
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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