家庭火灾早期发现与预防的合理参数分析

Maudlyn I. Victor-Ikoh, B. R. Japheth
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摘要

由于可预防的家庭火灾所造成的巨大损失,技术进步对消防安全措施的要求势在必行。烹饪火灾是最常见的房屋火灾类型之一,占所有住宅火灾的更多;无人看管的烹饪是目前为止最常见的家庭火灾原因。本文提出了一种利用声参数分析对家庭火灾进行早期检测的方法。烹饪过程中产生的声音——沸腾、煎炸、煨煮——是烹饪过程中各组成部分动态运动的结果。通过声音自动检测烹饪液体的状态,这种发生的变化可以用来在可能发生火灾之前诊断烹饪物品的状况。这项工作利用水,一种常见的烹饪液体,进行实证研究。使用google colab进行Python编程,软件工具用于显示和分析从沸水声音信号中获得的关键参数;水已经沸腾,但仍在加热,直到水完全干涸的声音信号(加热水干涸)。时域分析表明,沸水和加热后干涸的水在声音信号上有显著差异。相对而言,沸水的信号电平(振幅)高于加热水干涸时的信号电平(振幅)。因此,我们得出结论,如果由嵌入式系统收集并实时分析烹饪发出的声音,是避免家庭火灾发生的一项安全措施。
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Sound Parameter Analysis for Early Detection and Prevention of Home Fire Outbreak
Due to tragic losses caused by preventable home fires, it is imperative to have technological advancement toward more fire safety measures. Cooking fires are one of the most prevalent types of house fires, accounting for more of all residential fires; and cooking left unattended, is by far the most common cause of home fires. This paper proposes an early detection of home fire outbreaks by sound parameter analysis. The sounds produced by cooking - boiling, frying, simmering is a result of the dynamics of the cooking components. By automatically detecting the state of cooking liquids by their sounds, such changes as occurring can be used to diagnose the condition of the cooking item before a possible onset of fire. This work made use of water, a common cooking liquid, for an empirical study. Python programming with google colab was the software tool used to display and analyze key parameters obtained from sound signals of boiling water; and sound signals of water that have boiled but still heated until the water dried out completely (heated water-dried-out). The analysis made in the time-domain view showed a marked difference in sound signal between boiling water and a heated water-dried-out. Relatively, the signal levels (amplitude) of boiling water are higher than that of a heated water-dried-out. Hence, we conclude that sounds made from cooking, if collected by embedded systems and analysed in real-time, is one safety measure to averting the incidences of home fire outbreak.
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