Fonollosa Jordi, Solórzano Ana, Marco Santiago
Department of Electronic and Biomedical Engineering, Universitat de Barcelona, 08028 Barcelona, Spain.
Signal and Information Processing for Sensing Systems, Institute for Bioengineering of Catalonia (IBEC), The Barcelona Institute of Science and Technology, 08028 Barcelona, Spain.
Sensors (Basel). 2018 Feb 11;18(2):553. doi: 10.3390/s18020553.
Indoor fire detection using gas chemical sensing has been a subject of investigation since the early nineties. This approach leverages the fact that, for certain types of fire, chemical volatiles appear before smoke particles do. Hence, systems based on chemical sensing can provide faster fire alarm responses than conventional smoke-based fire detectors. Moreover, since it is known that most casualties in fires are produced from toxic emissions rather than actual burns, gas-based fire detection could provide an additional level of safety to building occupants. In this line, since the 2000s, electrochemical cells for carbon monoxide sensing have been incorporated into fire detectors. Even systems relying exclusively on gas sensors have been explored as fire detectors. However, gas sensors respond to a large variety of volatiles beyond combustion products. As a result, chemical-based fire detectors require multivariate data processing techniques to ensure high sensitivity to fires and false alarm immunity. In this paper, we the survey toxic emissions produced in fires and defined standards for fire detection systems. We also review the state of the art of chemical sensor systems for fire detection and the associated signal and data processing algorithms. We also examine the experimental protocols used for the validation of the different approaches, as the complexity of the test measurements also impacts on reported sensitivity and specificity measures. All in all, further research and extensive test under different fire and nuisance scenarios are still required before gas-based fire detectors penetrate largely into the market. Nevertheless, the use of dynamic features and multivariate models that exploit sensor correlations seems imperative.
自九十年代初以来,利用气体化学传感进行室内火灾探测一直是研究的课题。这种方法利用了这样一个事实,即对于某些类型的火灾,化学挥发物在烟雾颗粒出现之前就会出现。因此,基于化学传感的系统比传统的基于烟雾的火灾探测器能提供更快的火灾报警响应。此外,由于已知火灾中的大多数伤亡是由有毒排放物而非实际烧伤造成的,基于气体的火灾探测可以为建筑物内的人员提供额外的安全保障。在这方面,自21世纪以来,用于一氧化碳传感的电化学电池已被纳入火灾探测器。甚至专门依赖气体传感器的系统也已被探索用作火灾探测器。然而,气体传感器对燃烧产物以外的多种挥发物都有响应。因此,基于化学的火灾探测器需要多变量数据处理技术来确保对火灾的高灵敏度和抗误报能力。在本文中,我们调查了火灾中产生的有毒排放物,并定义了火灾探测系统的标准。我们还回顾了用于火灾探测的化学传感器系统的现状以及相关的信号和数据处理算法。我们还研究了用于验证不同方法的实验方案,因为测试测量的复杂性也会影响报告的灵敏度和特异性测量。总而言之,在基于气体的火灾探测器广泛进入市场之前,仍需要在不同的火灾和干扰场景下进行进一步的研究和广泛的测试。然而,利用传感器相关性的动态特征和多变量模型的使用似乎势在必行。