Abstract

Many sensor nodes have been widely deployed in the physical world to gather various environmental information, such as water quality, earthquake, and huge dam safety. Due to the limitation in the batter power, memory, and computational capacity, missing data can occur at arbitrary sensor nodes and time slots. In extreme situations, some sensors may lose readings at consecutive time slots. The successive missing data takes the side effects on the accuracy of real-time monitoring as well as the performance on the data analysis in the wireless sensor networks. Unfortunately, existing solutions to the missing data filling cannot well uncover the complex non-linear spatial and temporal relations. To address these problems, a DNN (Deep Neural Network) multi-view learning method (DNN-MVL) is proposed to fill the successive missing readings. DNN-MVL mainly considers five views: global spatial view, global temporal view, local spatial view, local temporal view, and semantic view. These five views are modeled with inverse distance of weight interpolation, bidirectional simple exponential smoothing, user-based collaborative filtering, mass diffusion-based collaborative filtering with the bipartite graph, and structural embedding, respectively. The results of the five views are aggregated to a final value in a multi-view learning algorithm with DNN model to obtain the final filling readings. Experiments on large-scale real dam deformation data demonstrate that DNN-MVL has a mean absolute error about 6.5%, and mean relative error 21.4%, and mean square error 8.17% for dam deformation data, outperforming all of the baseline methods.

Highlights

  • Many wireless sensor networks (WSNs) have been widely deployed in the physical world to sense and collect various environmental information or events, such as water quality [1], air quality [2], forest fire [3], and dam safety [4]

  • Fromusing the local spatial view,window if a sensor node to is prediction model derived from amount historical the exponential function regarded as a user, user-based collaborative filtering predict on the local assign exponentially decreasing weights over time.can

  • The results of the five views are with mass diffusion (MD)-Collaborative filtering (CF), and semantic view with structural embedding

Read more

Summary

Introduction

Many wireless sensor networks (WSNs) have been widely deployed in the physical world to sense and collect various environmental information or events, such as water quality [1], air quality [2], forest fire [3], and dam safety [4] These sensors generate massive geo-tagged time series data, helping humans to make further analysis and decision [5]. It is necessary to complete the missing reading from a large-scale wireless sensor network with geo-sensory time series data. Sensors 2019, 19, 2895 to complete the missing reading from a large-scale wireless sensor network with geo-sensory time series data. The dam deformation observation sensors may lose readings at consecutive time slots. Than distant things.” sensor readingsexhibit sometimes exhibit a sudden change, asinillustrated

The readings of sensor
The main framework of the proposed proposed
2.2.Background
Problem Statement
Global spatial reading based on thedistance values of the sensors’
DNN-Based
Global Spatial View
Local Spatial View
Local Temporal View
Semantic View
Multi-View Learning with DNN
Datasets and Ground Truth
Data Preprocessing
Baselines
Comparison with the Baseline Methods
Methods
Results of Filling Readings
22 March–11
Results of DifferentParameters
Conclusions
Full Text
Published version (Free)

Talk to us

Join us for a 30 min session where you can share your feedback and ask us any queries you have

Schedule a call