Computer Science Department, Faculty of Sciences, University of Porto, 4169-007 Porto, Portugal.
INESC TEC-Institute for Systems and Computer Engineering, Technology and Science, 4200-465 Porto, Portugal.
Sensors (Basel). 2023 May 19;23(10):4902. doi: 10.3390/s23104902.
The early detection of fire is of utmost importance since it is related to devastating threats regarding human lives and economic losses. Unfortunately, fire alarm sensory systems are known to be prone to failures and frequent false alarms, putting people and buildings at risk. In this sense, it is essential to guarantee smoke detectors' correct functioning. Traditionally, these systems have been subject to periodic maintenance plans, which do not consider the state of the fire alarm sensors and are, therefore, sometimes carried out not when necessary but according to a predefined conservative schedule. Intending to contribute to designing a predictive maintenance plan, we propose an online data-driven anomaly detection of smoke sensors that model the behaviour of these systems over time and detect abnormal patterns that can indicate a potential failure. Our approach was applied to data collected from independent fire alarm sensory systems installed with four customers, from which about three years of data are available. For one of the customers, the obtained results were promising, with a precision score of 1 with no false positives for 3 out of 4 possible faults. Analysis of the remaining customers' results highlighted possible reasons and potential improvements to address this problem better. These findings can provide valuable insights for future research in this area.
火灾的早期检测至关重要,因为它涉及到人类生命和经济损失的毁灭性威胁。不幸的是,火灾报警感应系统容易出现故障和频繁误报,从而使人员和建筑物面临风险。从这个意义上说,必须保证烟雾探测器的正常运行。传统上,这些系统都需要进行定期的维护计划,但这些计划并没有考虑火灾报警传感器的状态,因此有时不是在必要时进行维护,而是按照预先设定的保守时间表进行。为了有助于设计预测性维护计划,我们提出了一种在线数据驱动的烟雾传感器异常检测方法,该方法可以随着时间的推移对这些系统的行为进行建模,并检测可能表明潜在故障的异常模式。我们的方法应用于从四个客户安装的独立火灾报警感应系统中收集的数据,这些数据可提供大约三年的信息。对于其中一个客户,获得的结果非常有前景,对于 4 个可能的故障中的 3 个,准确率为 1,没有误报。对其余客户结果的分析突出了可能的原因和改进方法,以更好地解决这个问题。这些发现可以为该领域的未来研究提供有价值的见解。