Analysis of abnormal data in sensor networks based on improved LSTM in the Internet of Things environment

Author:

Wang Jie1ORCID,Zhou Liang1,Li Jing2,Wang Jin1,Qin Sihang3

Affiliation:

1. State Grid Hubei Electric Power Research Institute Wuhan China

2. State Grid Hubei Electric Power Co., Ltd Wuhan China

3. State Grid Wuhan Electric Power Supply Company Wuhan China

Abstract

SummaryThe proposed method addresses the challenge of online detection of high‐dimensional data in the IoT environment by introducing an anomaly data analysis technique based on improved LSTM. The method involves normalizing both normal and abnormal data using the correlation between multidimensional data and transforming them into gray image representations for input. Additionally, an enhanced abnormal data detection approach is presented through the construction of two parallel network models: a “two‐layer model” and a “single‐layer model.” This approach aims to improve stability in modeling normal data and enhance the detection capability for abnormal data. The proposed method was evaluated on the Human Activity Recognition (HAR) dataset, which consists of 561 dimensions. The experimental results showcased the effectiveness of this method, achieving a detection rate of 94.12% and a recall rate of 95.21%. These rates surpassed the performance of existing techniques in the field of abnormal data detection. Consequently, this method has demonstrated significant advancements and offers improved system performance when compared to current methods.

Publisher

Wiley

Subject

Electrical and Electronic Engineering,Computer Networks and Communications

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