Technological aspects of deep-learning algorithm development for processing information in fibre-optic trunk pipeline security systems

A. Makarenko
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Abstract

THIS PAPER EXAMINES the key issues in constructing algorithms for processing target information in fibre-optic trunk pipeline security systems. Deep learning methods are applied in order to implement the basic functions of the environmental recognition system in the pipeline area, in particular: detecting and classifying input signals, extracting signal-event tracks, and identifying events and their sources. This study also presents a plan for walkthrough development of algorithms for processing information based on deep-learning methods, from task assignment to reference implementation and prototype testing. The basic stages of the plan are illustrated by studies which were carried out during the development of algorithms for primary signal classification in the leak detection and activity monitoring system on behalf of AO Omega, Moscow.
光纤干线安全系统信息处理中深度学习算法开发的技术方面
本文研究了光纤干线安全系统中目标信息处理算法的关键问题。为了实现管道区域环境识别系统的基本功能,特别是输入信号的检测和分类、信号-事件轨迹的提取、事件及其来源的识别,采用了深度学习方法。本研究还提出了基于深度学习方法的信息处理算法的演练开发计划,从任务分配到参考实现和原型测试。该计划的基本阶段是在为莫斯科AO Omega公司开发泄漏检测和活动监测系统中的主要信号分类算法期间进行的研究。
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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