连体神经网络在应急类型确定中的应用

G. Malykhina, A. Guseva
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引用次数: 0

摘要

为了使系统可靠运行,以便及早发现和预防突发事件,它们的算法应该使用机器学习方法。机器学习方法的使用与探测器的替换有关,通常在这种系统中使用,传感器将测量结果传输到系统的计算单元。测量主要因素及其阈值处理,允许使用机器学习方法快速检测点火事实,确定点火源的类型及其定位。该研究致力于开发一种神经网络算法,用于在紧急情况的早期阶段确定火灾类型。应急检测结果可立即刷新人机界面信息。我们建议使用由五个基于距离的暹罗网络和一个贝叶斯网络组成的复杂神经网络。所提出的神经网络结构简单,层数少。为了训练神经网络,开发了一个计算机模型。它模拟了点火过程和系统传感器的惯性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Application of Siamese Neural Networks for the Type of Emergency Determination
For reliable operation of systems for early detection and prevention of emergencies, their algorithms should use machine learning methods. The use of machine learning methods is associated with the replacement of detectors, usually used in such systems, with sensors that transmit the measurement results to the computing unit of the system. Measurement of the main factors, along with their threshold processing, allowed the use of machine learning methods to quickly detect the fact of ignition, determine the type of ignition source and its localization. The study is devoted to the development of a neural network algorithm for determining the type of fire in the early stages of an emergency. The results of emergency detection refresh the information of human-machine interface immediately. We proposed to use a complex neural network consisting of five Siamese networks based on distance and a Bayesian network. The proposed neural networks have a simple architecture and a small number of layers. To train the neural network, a computer model has been developed. It simulates the ignition process and inertia of the system's sensors.
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