Skip to main navigation menu Skip to main content Skip to site footer

Articles

Vol. 1 No. 3 (2023):

A survey on artificial neural network based energy-efficient and robust routing scheme for pollution monitoring in WSNs

  • Vidhya S
  • Poovizhi S
Submitted
December 1, 2023
Published
2023-12-02

Abstract

Despite the significant limits put on the resources of the sensor nodes, such as storage, processing power, communication range, and energy, the spectrum of applications for wireless sensor networks (WSNs) is expanding. This is the case even though WSNs have severe limitations. The primary goals of a WSN are to reduce the amount of energy used and the amount of time it takes to transmit data to the sink node. When a significant number of nodes are being installed, as is the situation with monitoring industrial pollutants, this becomes an extremely important point of discussion. We present an energy-efficient and resilient routing method for wireless sensor networks (WSNs) dubbed ELDC that is based on artificial neural networks. In this method, the network is trained on a massive data set that encompasses the vast majority of possible situations. This helps the network become more dependable and responsive to its surroundings. In addition to this, it makes use of a technique that is based on groups, with the understanding that the sizes of the groups might vary. This helps to extend the life of the network as a whole. An artificial neural network enables intelligent, efficient, and robust group organization by providing efficient threshold values for the selection of a group’s chief node and a cluster head based on the back propagation technique. These threshold values are provided by an artificial neural network. As a result, the method that we have suggested is very good at saving energy and is able to extend the life of sensor nodes. 

References

  1. Ali Al-Shaikhi L and Ahmad Masoud,2017.Efficient, Single Hop Time Synchronization Protocol for randomly Connected WSNs; 6(2):170-173.
  2. Lianshan Yan, Wei Pan, Bin Luo, Xiaoyin Li, and Jiangtao Liu, 2015. Improvement of the wireless sensor network lifetime using LEACH, the network performances are stimulated, the WSN can communicate or cannot communicate with each other. IEEE access;11(9):1815-1819.
  3. Nayif Saleh, Abdallah Kassem and Ali Haidar M, 2018. Energy Efficient architecture for Wireless Sensor Network in health care Applications. IEEE access;6:6478-6486.
  4. Tidjane Kone, Abdelhakim Hfid, and Mustapha Boushaba, 2015. Performance Management of IEEE 802.15.4 Wireless Sensor Network for Precision Agriculture Check. IEEE Sensor J.;15(10),5734-5747.
  5. Trong Nhan Le, Alain Pegatoquet, Olivier Berder and Olivier Sentieys,2015. To overcome the limited energy network, harvested energy is used as a potential solution achieve autonomous system. IEEE Sensors J.;15(12):7208-7220.
  6. Xinming Zhang, Lei Tao, and Fang Zhou, 2016. Energy Efficient Switch-Based Packet Forwarding for Low Duty-Cycle Wireless Sensor Networks. IEEE Comm. Letters, 20(5):990-993.
  7. Xuan Liu, Jun Li, Zy Dong and Fei Xiong, 2017. Joint Design of Energy Efficient Clustering and Data Recovery for Wireless Sensor Network.; 5:3646-3656.
  8. Yi-Hua Zhu, Erato Li, and Kaikai Chi, 2018. Encoding Scheme to reduce energy consumption for delivering data and powered battery free in Wireless Sensor Network. IEEE Transaction On vehicular Technology, 67(4):3085-309.
  9. Lu J, Feng L, Yang J, Hassan MM, Alelaiwi A, and Humar I,2019. Artificial agent: The fusion of artificial intelligence and a mobile agent for energy-efficient traffic control in wireless sensor networks. Future generation computer systems;95:45-51.
  10. Rajagopal S, Vani R, Kavitha JC and R. Saravanan, 2020. Lifetime Improvement of Wireless Sensor Networks Using Tree-Based Routing Protocol. In EAI Int. Conf. on Big Data Innovation for Sustainable Cognitive Computing, Springer, Cham:51-61.
  11. Sreedevi P and Venkateswarlu S, 2022. Comparative analysis of energy efficient routing protocols with optimization in WSN. Int. J. on Interactive Design and Manufacturing (IJIDeM):1-16.
  12. Patil H and Chirayil D, 2021. A Whale Optimization Algorithm for Pollution Monitoring in WSN. In Advances in Automation, Signal Processing, Instrumentation, and Control: 2249-2261, Springer, Singapore.
  13. Kaur AJ, and Saxena Kaur R,2020. An Energy Efficient Multicasting Routing Protocol for Wireless Sensor Networks.
  14. Olatinwo SO and Joubert TH, 2018. Energy efficient solutions in wireless sensor systems for water quality monitoring: A review. IEEE Sensors J.; 19(5):1596-1625.
  15. Prakash G, 2018. Secure and efficient block chain based protocol for food beverages. Int. J. of MC Square Scientific Research, 10(3):16-27.

Downloads

Download data is not yet available.

Most read articles by the same author(s)

1 2 3 4 5 6 7 8 9 10 > >>