Abstract

Energy consumption because of unnecessary data transmission is a significant problem over wireless sensor networks (WSNs). Dealing with this problem leads to increasing the lifetime of any network and improved network feasibility for real time applications. Building on this, energy-efficient data collection is becoming a necessary requirement for WSN applications comprising of low powered sensing devices. In these applications, data clustering and prediction methods that utilize symmetry correlations in the sensor data can be used for reducing the energy consumption of sensor nodes for persistent data collection. In this work, a hybrid model based on decision tree (DT), autoregressive integrated moving average (ARIMA), and Kalman filtering (KF) methods is proposed to predict the data sampling requirement of sensor nodes to reduce unnecessary data transmission. To perform data sampling predictions in the WSNs efficiently, clustering and data aggregation to each cluster head are utilized, mainly to reduce the processing overheads generating the prediction model. Simulation experiments, comparisons, and performance evaluations conducted in various cases show that the forecasting accuracy of our approach can outperform existing Gaussian and probabilistic based models to provide better energy efficiency due to reducing the number of packet transmissions.

Highlights

  • wireless sensor networks (WSNs) are spatially distributed autonomous sensory devices that control physical or environmental conditions

  • The primary contributions of this paper are as follows: We designed a model based on decision tree (DT), autoregressive integrated moving average (ARIMA), and Kalman filtering (KF) methods for data prediction in order to reduce unnecessary data transmissions and as a result decrease energy consumption

  • We propose a model for energy-efficient data collection based on decision tree (DT), autoregressive integrated moving average (ARIMA), and Kalman filtering (KF) methods

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Summary

A Hybrid Prediction Model for Energy-Efficient Data

Seyed Ahmad Soleymani 1 , Shidrokh Goudarzi 2, *, Nazri Kama 3 , Saiful Adli Ismail 3 , Mazlan Ali 3 , Zaini MD Zainal 3 and Mahdi Zareei 4. Faculty of Information Science and Technology, Center for Artificial Intelligence Technology (CAIT), Universiti Kebangsaan Malaysia (UKM), Selangor 43600, Malaysia. Received: 6 November 2020; Accepted: 3 December 2020; Published: 7 December 2020

Introduction
Related Works
The Proposed Model
The Algorithms Employed
The Hybrid Method
Result
Adaptive Update of Clustering by DT
ARIMA Prediction Model
Experiment Evaluation and Analysis
Findings
Conclusions

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