TS-PADM: Anomaly Detection Model of Wireless Sensors Based on Spatial-Temporal Feature Points

Author:

Wang Fengjiao12ORCID,Li Ruixing12ORCID,Wang Hua12ORCID,Zhu Hengliang1ORCID,Xiong Naixue3ORCID

Affiliation:

1. Department of Computer, Min Jiang Teachers College, Fuzhou Fujian, China

2. Fujian University Applied Engineering Centre for Internet of Things, Fuzhou, Fujian, China

3. Northeastern State University, Oklahoma, USA

Abstract

In the practical application, sensor data collection is an essential means for the system to perceive the intrinsic features of data. The anomaly detection of data points can improve data quality and explore the potential information of data. The anomaly detection can be classified as two basic types, that is, classification and clustering. Those methods usually depend on the spatial correlation of data and have high computation complexity, so they are not suitable for the smart home and another mini-Internet of Things (IoT) environment. To overcome these problems, we propose a novel method for anomaly detection. In this paper, we first define the temporal and spatial feature of data flows; then, a time series denoising autoencoder (TSDA) is proposed to extract the discriminative high-dimensional characteristics to represent the data points. Moreover, a probability statistics-based anomaly detection model (PADM) was proposed for identifying the abnormal data. Extensive experimental results demonstrated that our method has fewer parameters and is easy to adjust and optimize. More importantly, our approach has higher precision and recall rate than the gradient boosted decision tree and XGBoot.

Funder

Department of Education, Fujian Province

Publisher

Hindawi Limited

Subject

Electrical and Electronic Engineering,Computer Networks and Communications,Information Systems

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