ADDAI:使用分布式AI进行异常检测

Maede Zolanvari, Ali Ghubaish, R. Jain
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引用次数: 5

摘要

在处理物联网(IoT),特别是工业物联网(IIoT)时,有两个明显的挑战跃入脑海。首先是物联网设备之间的大量数据流,其次是这些系统必须以快速的速度运行。边缘/云结构形式的分布式计算是克服这两个挑战的一种流行技术。在本文中,我们提出了ADDAI(使用分布式AI的异常检测),它可以很容易地跨越地理范围,覆盖大量的物联网源。由于其分布式特性,它保证了关键的工业物联网需求,如高速、抗单点故障的鲁棒性、低通信开销、隐私和可扩展性。通过实证证明,在保持本地层原始数据隐私的同时,通信成本最小,性能显著提高。ADDAI为新的随机样本提供预测,平均成功率为98.4%,与将所有原始传感器数据卸载到云端的传统技术相比,它将通信开销减少了一半。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
ADDAI: Anomaly Detection using Distributed AI
When dealing with the Internet of Things (IoT), especially industrial IoT (IIoT), two manifest challenges leap to mind. First is the massive amount of data streaming to and from IoT devices, and second is the fast pace at which these systems must operate. Distributed computing in the form of edge/cloud structure is a popular technique to overcome these two challenges. In this paper, we propose ADDAI (Anomaly Detection using Distributed AI) that can easily span out geographically to cover a large number of IoT sources. Due to its distributed nature, it guarantees critical IIoT requirements such as high speed, robustness against a single point of failure, low communication overhead, privacy, and scalability. Through empirical proof, we show the communication cost is minimized, and the performance improves significantly while maintaining the privacy of raw data at the local layer. ADDAI provides predictions for new random samples with an average success rate of 98.4% while reducing the communication overhead by half compared with the traditional technique of offloading all the raw sensor data to the cloud.
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