Abstract

The search for fast and environmentally safe methods of fighting fires has been a particularly important topic in recent years. Many academic centres are conducting research on the use of Deep Neural Networks to detect flames. One of the most promising is the acoustic method of extinguishing flames. In theory, an acoustic extinguisher can be applied to extinguish fires of different classes because acoustic waves pass through solids, liquids, and gases. In principle, the technology described in the article can be used to extinguish B- and C-class fires when gases or liquids are burning. Until now, the known studies have been conducted only for low-power acoustic extinguishers. Therefore, there is a need to fill a theoretical and practical gap in this respect (scientific novelty). The result of the activities is the development of new techniques for extinguishing flames with the use of Deep Neural Networks, and then extinguishing flames using a high and very high power loudspeaker applied to the acoustic extinguisher. The main aim of this paper is to present the possibilities of using Deep Neural Networks to detect fires, as well as the results of research on the extinguishing of flames with the use of square waveforms with Amplitude Modulation (AM) for several frequencies, which is also a scientific novelty, including the minimum acoustic power and sound pressure level as a function of a distance from the output of the acoustic system. On this basis, it became possible to determine the minimum power delivered to the extinguisher and the minimum sound pressure level that causes the extinguishing effect at given input parameters.

Highlights

  • The fire extinguishers filled with an appropriately selected extinguishing agent are used most often to extinguish flames

  • Depending on the fire class, fire extinguishers are divided into many groups, some of which are suitable for extinguishing several types of fires

  • The aim of this paper is to show for cognitive purposes that it is possible to use Deep Neural Networks for flame recognition and use this knowledge to activate an acoustic firefighting system

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Summary

INTRODUCTION

The fire extinguishers filled with an appropriately selected extinguishing agent are used most often to extinguish flames. It has been noted that extinguishing flames with acoustic waves is one of the most promising methods It has been proven in the past that it is possible to extinguish a fire with an amplified and modulated human voice (using computer techniques). The focus is on the determination of the minimum power delivered to the extinguisher and the minimum sound pressure level causing the extinguishing effect at given input parameters. They are a scientific novelty, as well as the authors’ contributions to the disciplines of Automation, Electronics, Electrical Engineering, and Computer Science.

IDEA OF USING NEURAL NETWORKS FOR FIRE DETECTION
ARCHITECTURE OF MASK R-CNN NEURAL NETWORK AND USED SOFTWARE TECHNOLOGIES
TRAINING THE NEURAL NETWORK
DETECTION OF FLAMES
MEASUREMENT STATION FOR EXTINGUISHING FLAMES WITH ACOUSTIC WAVES
VIII. CONCLUSIONS
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