工业传感器网络中的云边缘协同数据异常检测。

IF 2.6 3区 综合性期刊 Q1 MULTIDISCIPLINARY SCIENCES
PLoS ONE Pub Date : 2025-06-11 eCollection Date: 2025-01-01 DOI:10.1371/journal.pone.0324543
Tao Yang, Xuefeng Jiang, Wei Li, Peiyu Liu, Jinming Wang, Weijie Hao, Qiang Yang
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引用次数: 0

摘要

由于物联网(IoT)设备和不同类型的传感器数量的增加,工业传感器网络呈现出异构、联合、大规模和智能的特征。高效、准确的传感器数据异常检测是保证系统运行可靠性和安全性的关键。然而,现有的针对工业传感器网络的传感器数据异常检测研究仍然存在一些固有的局限性。首先,大多数检测模型通常考虑集中检测。因此,所有传感器数据都必须上传到控制中心进行分析,这导致了很大的流量负载。然而,工业传感器网络对通信的可靠性和实时性要求很高。业务量过大可能导致通信延迟或报文损坏丢失。其次,工业传感器数据具有复杂的时空特征。充分提取这些特征对提高检测性能起着关键作用。然而,现有的大多数方法在同时综合分析这两个特征方面面临挑战。为了解决上述局限性,本文针对工业传感器网络开发了一种云边缘协同数据异常检测方法,该方法主要由部署在单个边缘的传感器数据检测模型和部署在云中的传感器数据分析模型组成。前者采用高斯和贝叶斯算法实现,有效过滤工业传感器网络正常运行过程中产生的大量传感器数据,从而减少流量负荷。只有当网络处于异常状态时,才会将所有传感器数据上传到传感器数据分析模型中进行进一步分析。后者是在GCRL的基础上,将长短期记忆网络(LSTM)插入到图卷积网络(GCN)中,能够有效提取传感器数据的时空特征进行异常检测。通过使用两个公共工业传感器网络数据集与基线异常检测模型进行实验,对所提出的方法进行了广泛的评估。数值结果表明,该方法优于现有的最先进的模型。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Cloud-edge collaborative data anomaly detection in industrial sensor networks.

Cloud-edge collaborative data anomaly detection in industrial sensor networks.

Cloud-edge collaborative data anomaly detection in industrial sensor networks.

Cloud-edge collaborative data anomaly detection in industrial sensor networks.

Industrial sensor networks exhibit heterogeneous, federated, large-scale, and intelligent characteristics due to the increasing number of Internet of Things (IoT) devices and different types of sensors. Efficient and accurate anomaly detection of sensor data is essential for guaranteeing the system's operational reliability and security. However, existing research on sensor data anomaly detection for industrial sensor networks still has several inherent limitations. First, most detection models usually consider centralized detection. Thus, all sensor data have to be uploaded to the control center for analysis, leading to a heavy traffic load. However, industrial sensor networks have high requirements for reliable and real-time communication. The heavy traffic load may cause communication delays or packets lost by corruption. Second, there are complex spatial and temporal features in industrial sensor data. The full extraction of such features plays a key role in improving detection performance. Nevertheless, the majority of existing methodologies face challenges in simultaneously and comprehensively analyzing both features. To solve the limitations above, this paper develops a cloud-edge collaborative data anomaly detection approach for industrial sensor networks that mainly consists of a sensor data detection model deployed at individual edges and a sensor data analysis model deployed in the cloud. The former is implemented using Gaussian and Bayesian algorithms, which effectively filter the substantial volume of sensor data generated during the normal operation of the industrial sensor network, thereby reducing traffic load. It only uploads all the sensor data to the sensor data analysis model for further analysis when the network is in an anomalous state. The latter based on GCRL is developed by inserting Long Short-Term Memory network (LSTM) into Graph Convolutional Network (GCN), which can effectively extract the spatial and temporal features of the sensor data for anomaly detection. The proposed approach is extensively assessed through experiments using two public industrial sensor network datasets compared with the baseline anomaly detection models. The numerical results demonstrate that the proposed approach outperforms the existing state-of-the-art models.

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来源期刊
PLoS ONE
PLoS ONE 生物-生物学
CiteScore
6.20
自引率
5.40%
发文量
14242
审稿时长
3.7 months
期刊介绍: PLOS ONE is an international, peer-reviewed, open-access, online publication. PLOS ONE welcomes reports on primary research from any scientific discipline. It provides: * Open-access—freely accessible online, authors retain copyright * Fast publication times * Peer review by expert, practicing researchers * Post-publication tools to indicate quality and impact * Community-based dialogue on articles * Worldwide media coverage
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