SMS2DC: Synchronous mobile sinks scheduling for data collection in internet of things‐enabled wireless sensor networks

Author:

Swapna Nagalapuram Selvarajan1,Krishna Raguru Jaya2,Reddy Avija Vishnuvardhan3,Rao Patike Kiran4,Prakash Perumalla Suman5

Affiliation:

1. Department of Computer Science and Engineering–Artificial Intelligence (CAI) G. Pullaiah College of Engineering and Technology Kurnool India

2. Department of Computer Science and Engineering, Manipal Institute of Technology Bengaluru Manipal Academy of Higher Education Manipal India

3. Department of Computer Science and Engineering G Pulla Reddy Engineering College Kurnool India

4. Department of Computer Science and Engineering Ravindra College of Engineering for Women Kurnool India

5. Department of CAI G. Pullaiah College of Engineering and Technology Kurnool India

Abstract

SummaryEnergy‐efficient data collection in wireless sensor networks (WSNs) is crucial due to the limited battery capacity of sensor nodes (SNs). Using a mobile sink (MS) for data collection can lower the energy consumption of SNs to avoid relaying in WSNs. However, a single MS is not a feasible solution for large‐scale WSNs, so it was necessary to use multiple MSs to collect data. A synchronous MS scheduling strategy for data collection (SMS2DC) is proposed in this paper, which uses two types of MS, a local MS to collect data from SN and a global MS to collect data from local MS. In this process, we begin by partitioning the network based on chemical reaction optimization. For each partition, a MS is assigned and scheduled using a path construction strategy according to a geometric path construction approach. In addition, a global MS is scheduled based on a local MS trajectory by identifying the most appropriate collision point to collect data. As a result, the algorithm increases data collection accuracy while minimizing network data loss. The asymptotic time complexity of the proposed SMS2DC algorithm needed . The comparison results show the superiority of the proposed SMS2DC strategy under multiple scenarios under various deployment conditions.

Publisher

Wiley

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