XplAInable: Explainable AI Smoke Detection at the Edge

Alexander Lehnert, Falko Gawantka, Jonas During, Franz Just, Marc Reichenbach
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Abstract

Wild and forest fires pose a threat to forests and thereby, in extension, to wild life and humanity. Recent history shows an increase in devastating damages caused by fires. Traditional fire detection systems, such as video surveillance, fail in the early stages of a rural forest fire. Such systems would see the fire only when the damage is immense. Novel low-power smoke detection units based on gas sensors can detect smoke fumes in the early development stages of fires. The required proximity is only achieved using a distributed network of sensors interconnected via 5G. In the context of battery-powered sensor nodes, energy efficiency becomes a key metric. Using AI classification combined with XAI enables improved confidence regarding measurements. In this work, we present both a low-power gas sensor for smoke detection and a system elaboration regarding energy-efficient communication schemes and XAI-based evaluation. We show that leveraging edge processing in a smart way combined with buffered data samples in a 5G communication network yields optimal energy efficiency and rating results.
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XplAInable:可解释的人工智能边缘烟雾探测
野火和森林火灾对森林构成威胁,进而对野生生物和人类构成威胁。近代历史表明,火灾造成的破坏性损失在不断增加。传统的火灾探测系统,如视频监控,在农村森林火灾的早期阶段就会失灵。这些系统只有在损失巨大时才会发现火灾。基于气体传感器的新型低功耗烟雾探测装置可以在火灾初期探测到烟雾。只有使用通过 5G 互联的分布式传感器网络,才能实现所需的接近性。在使用电池供电的传感器节点方面,能效成为一个关键指标。将人工智能分类与 XAI 结合使用可提高测量结果的可信度。在这项工作中,我们介绍了一种用于烟雾检测的低功耗气体传感器,并就高能效通信方案和基于 XAI 的评估进行了系统阐述。我们表明,在 5G 通信网络中以智能方式利用边缘处理与缓冲数据样本相结合,可获得最佳能效和评级结果。
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