A low-power embedded system for fire monitoring and detection using a multilayer perceptron

Alexios Papaioannou, Panagiotis Verikios, C. Kouzinopoulos, D. Ioannidis, D. Tzovaras
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引用次数: 1

Abstract

Fire monitoring and detection systems can evaluate data from environmental or image sensors in order to predict occurrences of fire. It is a complex procedure that requires a significant amount of energy as input data is usually acquired from multiple sensors and the algorithms generally have an increased complexity. This paper introduces a low-power fire monitoring and detection system that utilizes data from two environmental sensors. As a predictive algorithm for fire occurrences, it uses a multilayer perceptron (MLP) with a combination of different optimizations, developing a model with low memory requirements and high -accuracy predictions. The accuracy of the proposed system was verified using a dataset created by the environmental sensors for fire incidents and its performance was compared to existing approaches. An evaluation of the proposed system's power consumption and memory requirements is also presented.
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一种使用多层感知器的低功耗嵌入式火灾监测和探测系统
火灾监测和探测系统可以评估来自环境或图像传感器的数据,以便预测火灾的发生。这是一个复杂的过程,需要大量的能量,因为输入数据通常是从多个传感器获取的,而且算法通常具有增加的复杂性。本文介绍了一种利用两个环境传感器数据的低功耗火灾监测探测系统。作为火灾发生的预测算法,它使用多层感知器(MLP)结合不同的优化,开发具有低内存要求和高精度预测的模型。使用由火灾事故环境传感器创建的数据集验证了所提出系统的准确性,并将其性能与现有方法进行了比较。对系统的功耗和内存需求进行了评估。
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