Early detection of fire hazard using fuzzy logic approach

Nesi Syafitri, Ause Labellapansa, E. A. Kadir, R. Saian, Nur Nabila Afini Zahari, N. Anwar, Nurul Ezzatul Mawaddah Shaharuddin
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引用次数: 3

Abstract

A fire alarm system has numerous devices that work together to detect and give warning to the people through visual and audio appliances when there are smoke, fire and gas. The system is very sensitive to the fire, smoke and gas; hence the system sensitivity must be advanced enough so that it does not trigger any false alarm. The aim of this study is to reduce false alarm within the fire alarm system that diverts emergency responders away from legitimate emergencies that could result in loss of life and properties. The method used to conduct the research is a fuzzy logic approach (FLA). The method is tested using MATLAB and it has 125 rules since it has three variables which are fire, smoke and gas with five linguistic variables. The number of false alarms can be reduced if the fuzzy logic approach is put into practice in the alarm system since the probability of occurrence shows only 3% of error which is considered to be small. From these findings, we found that the number of false alarms can be minimized to the minimal by implementing fuzzy rules into the
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模糊逻辑方法在火灾隐患早期检测中的应用
火灾报警系统有许多设备,它们一起工作,当有烟雾、火灾和气体时,通过视觉和音频设备检测并向人们发出警告。该系统对火灾、烟雾和气体非常敏感;因此,系统的灵敏度必须足够高,这样才不会触发任何假警报。本研究的目的是减少火灾报警系统内的误报,这种误报会使应急人员远离可能导致生命和财产损失的合法紧急情况。采用模糊逻辑方法(FLA)进行研究。该方法是用MATLAB测试的,它有125条规则,因为它有三个变量,即火,烟和气体,五个语言变量。在报警系统中应用模糊逻辑方法可以减少误报警的数量,因为发生的概率只有3%的误差,这被认为是很小的。从这些发现中,我们发现通过将模糊规则应用到系统中,可以将虚警的数量降到最低
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