基于人工智能的建筑早期火源分类

Allan Melvin Andrew, A. Y. Shakaff, Ammar Zakaria, R. Gunasagaran, E. Kanagaraj, S. M. Saad
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引用次数: 4

摘要

识别燃烧气味是至关重要的,因为它可以使火灾早期识别和避免。在此基础上,提出了基于概率神经网络(PNN)的火灾早期探测算法。对7种易接近的易燃材料和3种建筑建筑材料进行了实验。所有的材料都在不同温度点的真空烤箱中被烤焦,用真空泵推出来由电子鼻嗅闻。实验是在一个密闭的房间里进行的,并监测温度和湿度水平。在进行检测分类之前,对气味指纹数据进行标准化特征提取。这些方面表示时间框架内的气味指针。实验结果表明,在不考虑湿度变化和环境温度、不同气体浓度水平、暴露于不同加热温度范围和基线传感器漂移的情况下,PNN分类器扩展因子的调整提高了分类精度,并提供了出色的可靠性。该分类模型的平均分类准确率为94.18%。
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Early Stage Fire Source Classification in Building using Artificial Intelligence
Identification of burning smell is crucial because enables early fire recognition and avoidance. Based on this study, an early stage fire detection algorithm is offered via Probabilistic Neural Network (PNN). Experiments were conducted on seven generally accessible flammable materials and three building construction materials. All the materials were scorched in a vacuum oven at various temperature points, pushed out using vacuum pumps to be sniffed by the electronic nose. The experiments were done in a confined room with monitored temperature and humidity level. Standardised feature extractions of the smell print data were carried out prior to subjection of detection categorization. These aspects signify the odour pointers within the time frame. Experimental categorization outcomes indicate that the tuning of spread factor in PNN classifier has enhanced the precision of classification and delivered excellent reliability, irrespective of humidity variation and ambient temperature, the various gas concentration levels, exposure towards different heating temperature range and baseline sensor drift. The mean classification accuracy for this classification model has been identified at 94.18%.
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