Kontogiannis Sotirios
Laboratory Team of Distributed MicroComputer Systems, Department of Mathematics, University of Ioannina, University Campus, 45110 Ioannina, Greece.
Sensors (Basel). 2024 Aug 22;24(16):5444. doi: 10.3390/s24165444.
This paper presents a new edge detection process implemented in an embedded IoT device called Bee Smart Detection node to detect catastrophic apiary events. Such events include swarming, queen loss, and the detection of Colony Collapse Disorder (CCD) conditions. Two deep learning sub-processes are used for this purpose. The first uses a fuzzy multi-layered neural network of variable depths called fuzzy-stranded-NN to detect CCD conditions based on temperature and humidity measurements inside the beehive. The second utilizes a deep learning CNN model to detect swarming and queen loss cases based on sound recordings. The proposed processes have been implemented into autonomous Bee Smart Detection IoT devices that transmit their measurements and the detection results to the cloud over Wi-Fi. The BeeSD devices have been tested for easy-to-use functionality, autonomous operation, deep learning model inference accuracy, and inference execution speeds. The author presents the experimental results of the fuzzy-stranded-NN model for detecting critical conditions and deep learning CNN models for detecting swarming and queen loss. From the presented experimental results, the stranded-NN achieved accuracy results up to 95%, while the ResNet-50 model presented accuracy results up to 99% for detecting swarming or queen loss events. The ResNet-18 model is also the fastest inference speed replacement of the ResNet-50 model, achieving up to 93% accuracy results. Finally, cross-comparison of the deep learning models with machine learning ones shows that deep learning models can provide at least 3-5% better accuracy results.
本文介绍了一种在名为Bee Smart Detection节点的嵌入式物联网设备中实现的新边缘检测过程,用于检测灾难性养蜂事件。此类事件包括蜂群分蜂、蜂王损失以及蜂群崩溃失调(CCD)状况的检测。为此使用了两个深度学习子过程。第一个子过程使用一种可变深度的模糊多层神经网络,即模糊链状神经网络(fuzzy-stranded-NN),根据蜂箱内的温度和湿度测量值来检测CCD状况。第二个子过程利用深度学习卷积神经网络(CNN)模型,根据录音来检测蜂群分蜂和蜂王损失情况。所提出的过程已在自主的Bee Smart Detection物联网设备中实现,这些设备通过Wi-Fi将其测量值和检测结果传输到云端。对BeeSD设备进行了易用性功能、自主操作、深度学习模型推理准确性和推理执行速度的测试。作者展示了用于检测关键状况的模糊链状神经网络模型以及用于检测蜂群分蜂和蜂王损失的深度学习CNN模型的实验结果。从所展示的实验结果来看,链状神经网络在检测关键状况时的准确率高达95%,而ResNet-50模型在检测蜂群分蜂或蜂王损失事件时的准确率高达99%。ResNet-18模型也是ResNet-50模型中推理速度最快的替代模型,准确率高达93%。最后,将深度学习模型与机器学习模型进行交叉比较表明,深度学习模型能提供至少3%至5%更高的准确率结果。