Missing Data Reconstruction Based on Spectral k-Support Norm Minimization for NB-IoT Data

Author:

Xuegang Luo1ORCID,Junrui Lv1ORCID,Juan Wang2ORCID

Affiliation:

1. School of Mathematics and Computer Science, Panzhihua University, Panzhihua 617000, China

2. College of Computer Science, China West Normal University, Nanchong 637000, China

Abstract

An effective fraction of data with missing values from various physiochemical sensors in the Internet of Things is still emerging owing to unreliable links and accidental damage. This phenomenon will limit the predicative ability and performance for supporting data analyses by IoT-based platforms. Therefore, it is necessary to exploit a way to reconstruct these lost data with high accuracy. A new data reconstruction method based on spectral k-support norm minimization (DR-SKSNM) is proposed for NB-IoT data, and a relative density-based clustering algorithm is embedded into model processing for improving the accuracy of reconstruction. First, sensors are grouped by similar patterns of measurement. A relative density-based clustering, which can effectively identify clusters in data sets with different densities, is applied to separate sensors into different groups. Second, based on the correlations of sensor data and its joint low rank, an algorithm based on the matrix spectral k-support norm minimization with automatic weight is developed. Moreover, the alternating direction method of multipliers (ADMM) is used to obtain its optimal solution. Finally, the proposed method is evaluated by using two simulated and real sensor data sources from Panzhihua environmental monitoring station with random missing patterns and consecutive missing patterns. From the simulation results, it is proved that our algorithm performs well, and it can propagate through low-rank characteristics to estimate a large missing region’s value.

Funder

Innovation Foundation of Sichuan Province of China

Publisher

Hindawi Limited

Subject

General Engineering,General Mathematics

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