Suawa Priscile Fogou, Herglotz Christian
Department of Computer Engineering, Brandenburg University of Technology Cottbus-Senftenberg, 03046 Cottbus, Germany.
Sensors (Basel). 2025 Apr 10;25(8):2397. doi: 10.3390/s25082397.
In dynamic industrial environments, strategic sensor placement is key to accurately monitoring equipment and detecting critical events. Despite progress in Industry 4.0 and the Internet of Things, research on optimal sensor placement remains limited. This study addresses this gap by analyzing how sensor placement impacts event detection, using chemical detection as a case study with an open dataset. Detecting gases is challenging due to their dispersion. Effective algorithms and well-planned sensor locations are required for reliable results. Using deep convolutional neural networks (DCNNs) and decision tree (DT) methods, we implemented and tested detection models on a public dataset of chemical substances collected at five locations. In addition, we also implemented a multi-objective optimization approach based on the non-dominated sorting genetic algorithm II (NSGA-II) to identify optimal sensor configurations that balance high detection accuracy with cost efficiency in sensor deployment. Using the refined sensor placement, the DCNN model achieved 100% accuracy using only 30% of the available sensors.
在动态工业环境中,战略性传感器布局是准确监测设备和检测关键事件的关键。尽管工业4.0和物联网取得了进展,但关于最优传感器布局的研究仍然有限。本研究通过分析传感器布局如何影响事件检测来填补这一空白,以化学检测为例,使用一个开放数据集。由于气体的扩散,检测气体具有挑战性。需要有效的算法和精心规划的传感器位置才能获得可靠的结果。我们使用深度卷积神经网络(DCNN)和决策树(DT)方法,在五个地点收集的化学物质公共数据集上实现并测试了检测模型。此外,我们还基于非支配排序遗传算法II(NSGA-II)实施了一种多目标优化方法,以确定在传感器部署中平衡高检测精度和成本效益的最优传感器配置。使用优化后的传感器布局,DCNN模型仅使用30%的可用传感器就实现了100%的准确率。