Loading [MathJax]/extensions/MathZoom.js
A Machine Learning based Mission Critical Data Transmission Protocol in Wireless Sensor Networks | IEEE Conference Publication | IEEE Xplore

A Machine Learning based Mission Critical Data Transmission Protocol in Wireless Sensor Networks


Abstract:

Wireless sensor networks (WSN) has been extensively used in many real time wireless sensor networks applications. Due to limitations of hardware resources and restricted ...Show More

Abstract:

Wireless sensor networks (WSN) has been extensively used in many real time wireless sensor networks applications. Due to limitations of hardware resources and restricted communication capabilities of sensor nodes, it is very challenging to use wireless sensor networks in real time data transmission. Data collection and routing is the main issue in such applications. To enhance the performance under such real time transmission scenario, it is essential to make the protocol intelligent to choose the appropriate path with change in network scenario. Now a days, many machine learning and deep learning algorithms are used for improving the real time data transmissions in WSNs. From the survey on existing methods, it is clear that using machine learning makes the computational methods more reliable, powerful and economical. This paper proposes a machine learning based Medium Access Control (MAC) protocol to handle real time traffic in wireless sensor networks. To deal with the limitations of WSN in real time application, the proposed scheme can help to increase the performance of time-critical wireless sensor network applications. Simulation results authorize our work and confirm the accuracy of the proposed ML-MAC protocol strategy is higher than the existing work.
Date of Conference: 08-10 July 2021
Date Added to IEEE Xplore: 02 August 2021
ISBN Information:
Conference Location: Coimbatre, India
References is not available for this document.

I. Introduction

A wireless sensor network (WSN) is a type of wireless network which consists of huge amount of small, self-programmed, short powered devices called sensor nodes or motes. Wireless sensor networks usually occupy a vast amount of specifically dispersed, tiny, battery activated devices which are all together used to supportively assemble the data, process it, and then handover the data to the base station. Sensor network has to organize the competencies of computing & processing all together with the help of sensor nodes which are minute processers that perform the task cooperatively to establish the network as shown in figure 1.

Wireless sensor networks

Select All
1.
T. Arampatzis, J. Lygeros and S. Manesis, "A survey of applications of wireless sensors and wireless sensor networks", Proceedings of the 20th IEEE International Symposium on Intelligent Control (ISIC ‘05), pp. 719-724, June 2005.
2.
D. Chen and P. K. Varshney, "QoS Support in Wireless Sensor Network: A Survey", Proceedings of International Conference on Wireless Networks (ICWN), June 2004.
3.
Yanjun Li, Chung Shue Chen, Ye-Qiong Song and Zhi Wang, "Real-time QoS support in wireless sensor networks: a survey", 7th IFAC International Conference on Fieldbuses Networks in Industrial Embedded Systems FeT’, Nov 2007.
4.
U.S. Khan, N.A. Saqib, M.A. Khan, XS Yang, A. Nagar and A. Joshi, "Target Tracking in Wireless Sensor Networks Using NS2" in Lecture Notes in Networks and Systems, Singapore:Springer, vol. 18, 2018.
5.
Chaitanya Vijaykumar Mahamuni, "A military surveillance system based on wireless sensor networks with extended coverage life", 2016 International Conference on Global Trends in Signal Processing Information Computing and Communication (ICGTSPICC).
6.
Fauzi Mohd, O. Khairunnisa and Shazalib, "Wireless Sensor Network Applications: A Study in Environment Monitoring System", Procedia Engineering, vol. 41, pp. 1204-1210, 2012.
7.
Archana R. Raut and Dr. L. G. Malik, "ZigBee Based Industrial Automation Profile for Power Monitoring Systems", International Journal on Computer Science and Engineering (IJCSE), vol. 3, no. 5, May 2011, ISSN 0975-3397.
8.
Afsaneh Minaie, Ali Sanati and Reza Sanati, "Application of Wireless Sensor Networks in Health Care System", American Society for Engineering Education, 2013.
9.
Archana R. Raut and S. Khandait, Time-Critical Transmission Protocols in Wireless Sensor Networks: A Survey, January 2019.
10.
A. Raut and S. Khandait, "E-Mac: Efficient Mac Protocol For Time-Critical Transmission In Wireless Sensor Networks", Helix, August 2018.
11.
Petcharat Suriyachai, Utz Roedig and Andrew Scott, "A Survey of MAC Protocols for Mission-Critical Applications in Wireless Sensor Networks", IEEE Communications Surveys Tutorials, vol. 14, no. 2, Second Quarter 2012.
12.
W. Ye, J. Heidemann and D. Estrin, "An energy-efficient MAC protocol for wireless sensor networks", Proc. 21st Annu. Joint Conf. IEEE Computer and Communications Societies, vol. 3, pp. 1567-1576, 2002.
13.
T. V. Dam and K. Langendoen, "An Adaptive Energy-Efficient MAC Protocol for Wireless Sensor Networks", Proc. 1st ACM Conf. Embedded Networked Sensor Systems, pp. 171-180, 2003.
14.
J. Polastre, J. Hill and D. Culler, "Versatile low power media access for wireless sensor networks", Proc. ACM Sensys, pp. 95-107, 2004.
15.
G. Lu, B. Krishnamachari and C. S. Raghavendra, "An adaptive energy efficient and low-latency MAC for data gathering in wireless sensor networks", Proc. 18th Int. Parallel and Distributed Processing Symp., pp. 224-231, 2004.
16.
G.D. Bacco, T. Melodia and F. Cuomo, "A MAC protocol for delay-bounded applications in wireless sensor networks", Proc. Med Hoc-Net., pp. 208-220, 2004.
17.
S. C. Ergen and P. Varaiya, "PEDAMACS: Power Efficient and Delay Aware Medium Access Protocol for Sensor Networks", IEEE Trans. Mobile Comput., vol. 5, pp. 920-930, Jul. 2006.
18.
Seong-eun Yoo, Poh Kit Chong, Yoonmee Doh, Minh-Long Pham, Daeyoung Kim, Eunchang Choi, et al., "Guaranteeing Real-Time Services for Industrial Wireless Sensor Networks With IEEE 802.15.4", IEEE Transactions On Industrial Electronics, vol. 57, no. 11, pp. 3868-3876, November 2010.
19.
Tian Hea, John A Stankovica, C. Lub and T. Abdelzahera, "SPEED: a stateless protocol for real-time communication in sensor networks", Proc. ICDCS, pp. 46-55.
20.
E. Felemban, C. Lee and E Ekici, "MMSPEED: Multipath Multi SPEED Protocol for QoS Guarantee of Reliability and Timeliness in Wireless Sensor Networks", IEEE Trans. Mobile Comput., vol. 5, pp. 738-754, Jun. 2006.
21.
P. Suriyachai, U. Roedig and A. Scott, "Implementation of a MAC Protocol for QoS Support in Wireless Sensor Networks", Proc.1st Int. Workshop Information Quality and Quality of Service for Pervasive Computing in conjunction with 7th Annu. IEEE Int. Conf. Pervasive Computing and Communications, pp. 1-6, 2009.
22.
S. Vijayakumar, P. Rizwan, Mohammad S. Khan and Suresh Kallam, "Reliable and energy-efficient emergency transmission in wireless sensor networks" in Internet Technology Letters, Wiley Online Library, January 2019, [online] Available: https://doi.org/10.1002/it12.91.
23.
Zaki Ahmad Khan and Abdus Samad, "A Study of Machine Learning in Wireless Sensor Network", International Journal of Computer Networks and Applications (IJCNA), vol. 4, no. 4, July-August 2017.
24.
Chaoyun Zhang, Paul Patras and Hamed Haddadi, "Deep Learning in Mobile and Wireless Networking: A Survey", IEEE COMMUNICATIONS SURVEYS TUTORIALS, pp. 1-53, Sep 2018.
25.
Wang Haoxiang, "Sustainable development and management in consumer electronics using soft computation", Journal of Soft Computing Paradigm (JSCP), vol. 1, no. 01, 2019.
26.
Jennifer S. Raj, "Efficient information maintenance using computational intelligence in the multi-cloud architecture", Journal of Soft Computing Paradigm (JSCP), vol. 1, no. 02, pp. 113-124, 2019.
27.
Subarna Shakya and Lalitpur Nepal Pulchowk, "Intelligent and adaptive multi-objective optimization in WANET using bio inspired algorithms", J Soft Comput Paradigm (JSCP), vol. 2, no. 01, pp. 13-23, 2020.
28.
Samuel Manoharan, "Population Based Meta Heuristics Algorithm for Performance Improvement of Feed Forward Neural Network", Journal of Soft Computing Paradigm (JSCP), vol. 2, no. 01, pp. 36-46, 2020.
29.
Navoneel Chakrabarty, "A Regression Approach to Distribution and Trend Analysis of Quarterly Foreign Tourist Arrivals in India", Journal of Soft Computing Paradigm (JSCP), vol. 2, no. 01, pp. 57-82, 2020.
30.
Archana R. Raut, S. P. Khandait and Nekita Chavhan, "QoS Aware Machine Learning Algorithms for Real-Time Applications in Wireless Sensor Networks" in Advances in Automation Signal Processing Instrumentation and Control, Singapore:Springer, 2021.

Contact IEEE to Subscribe

References

References is not available for this document.