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无线通信网络传输数据多变量时间序列异常检测方法OA

Anomaly Detection Method for Multivariate Time Serie of Data Transmitted by Wireless Communication Network

中文摘要英文摘要

针对无线通信网络传输数据的多变量时间序列异常检测效果不佳的问题,提出一种基于时空记忆增强的并行编码器-解码器(spatio-temporal memory-augmented parallel encoder-decoder,STMA-PED)模型.该模型采用并行双流编码结构,分别通过局部多尺度特征编码器与全局时序上下文编码器,实现细粒度局部模式与长期依赖关系的高效提取;引入可微分神经记忆库,存储正常模式原型,并通过注意力机制实现编码表示与记忆原型之间的重构差异度量.融合差异度指标与注意力分散度构建异常评分机制,显著提升了异常判别的准确性与鲁棒性.实验结果表明:该方法在多变量时间序列异常分数计算中的最小误差仅为 0.16%,在 10 与 60 dB噪声环境下检测结果与真实标注完全一致,验证了其在复杂无线通信环境下的优异性能.

In order to improve the performance of anomaly detection for multivariate time series data transmitted in wireless communication networks,a spatio-temporal memory-augmented parallel encoder decoder(STMA-PED)model is proposed.The model adopts a parallel dual-stream coding structure,and achieves the efficient extraction of fine-grained local patterns and long-term dependencies through the local multi-scale feature encoder and the global temporal context encoder.The differentiable neural memory bank is introduced to store the normal pattern prototype,and the reconstruction difference measurement between the encoded representation and the memory prototype is achieved through the attention mechanism.The anomaly scoring mechanism is constructed by integrating the difference index and the distraction index,which significantly improves the accuracy and robustness of anomaly discrimination.The experimental results show that the minimum error of the proposed method is only 0.16%in the calculation of the anomaly score of multivariate time series,and the detection results are consistent with the real annotation in the noise environment of 10 and 60 dB,which verifies its excellent performance in the complex wireless communication environment.

黄金雪;谢新就

广州商学院现代信息产业学院,广州 511363广州商学院现代信息产业学院,广州 511363

信息技术与安全科学

传输数据并行双流编码器多变量时间序列记忆增强模块无线通信网络异常检测

transmitted dataparallel two-stream encodermultivariate time seriesmemory enhancement modulewireless communication networkanomaly detection

《兵工自动化》 2026 (6)

58-63,6

2023 年度广东省教育科学规划(2023GXJK581)

10.7690/bgzdh.2026.06.012

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