Abstract

Internet of Things (IoT) is rapidly developed and widely deployed in recent years, which makes the sensory data generated by IoT systems explode. The huge amount of sensory data generated by some IoT systems has already exceeded the storage, transmission, and computation capacities of IoT systems. However, the valuable sensory data which is highly related to a query in an IoT system is relatively small. The sensory data which is highly related to a query Q forms the relative kernel dataset of Q. Therefore, retrieving sensory data in the relative kernel dataset of a query instead of the raw sensory data will reduce the heavy burdens of an IoT system in terms of transmission and computation and then reduce the energy consumption of the IoT system. In this paper, we investigate the problem of retrieving relative kernel dataset from big sensory data for continuous queries in IoT systems. Two algorithms, relative kernel dataset retrieving algorithm and piecewise linear fitting-based relative kernel dataset retrieving algorithm, are proposed to retrieve the relative kernel dataset for continuous queries. Beside, algorithms for estimating the answers of continuous queries based on their relative kernel datasets are also proposed. Extensive simulation results are provided to verify the effectiveness and energy efficiency of the proposed algorithms.

Highlights

  • The Internet of Things (IoT) system, which refers to the network with a variety of intelligent things or objects around us, provides an efficient way to observe the complicated physical world and brings convenience to our life

  • On account of the above reasons, we study the problem of retrieving the relative kernel dataset from big sensory data for continuous queries in IoT systems in this paper

  • We propose two algorithms to retrieve the relative kernel dataset for continuous queries in IoT systems, which are the relative kernel dataset retrieving (RKDR) algorithm and the piecewise linear fitting-based relative kernel dataset retrieving (PLF-RKDR) algorithm

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Summary

Introduction

The Internet of Things (IoT) system, which refers to the network with a variety of intelligent things or objects around us, provides an efficient way to observe the complicated physical world and brings convenience to our life. The Volume, Variety, and Velocity characters of big sensory data make the data processing in IoT systems. We concentrate on retrieving the relative kernel dataset for continuous queries from big sensory data in IoT systems in this paper. The amount of sensory data in the relative kernel dataset of a query is usually small according to the Value character of big sensory data. On account of the above reasons, we study the problem of retrieving the relative kernel dataset from big sensory data for continuous queries in IoT systems in this paper. Relative kernel dataset from big sensory data for continuous queries in IoT systems. 3 Two algorithms, the PLF-AE algorithm and the TC-AE algorithm, are proposed to estimate the answers of continuous queries in an IoT system based on their relative kernel datasets.

Methods
Problem definition
Algorithms for the relative kernel dataset retrieving problem
Piecewise linear fitting-based relative kernel dataset retrieving algorithm
The performance analysis
Comparison experiments of the RKDR algorithm and the PLF-RKDR algorithm
The performance of proposed algorithms on simulation dataset
The performance of the proposed algorithm on real dataset
Findings
Conclusion
Full Text
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