Abstract
Machine Learning is capable of providing real-time solutions that maximize the utilization of resources in the network thereby increasing the lifetime of the network. It is able to process automatically without being externally programmed thus making the process more easy, efficient, cost-effective, and reliable. ML algorithms can handle complex data more quickly and accurately. Machine Learning is used to enhance the ability of the Wireless Sensor Network environment. Wireless Sensor Networks (WSN) is a combination of several networks and it is decentralized and distributed in nature. WSN consists of sensor nodes and sinks nodes which have a property of self-organizing and self-healing. WSN is used in other applications, such as biodiversity and ecosystem protection, surveillance, climate change tracking, and other military applications.Now-a-days, a huge development is seen in WSNs due to the advancement of electronics and wireless communication technologies, several drawbacks like low computational capacity, small memory, and limited energy resources infrastructure needs physical vulnerability to require source measures where privacy plays a key role.WSN is used to monitor the dynamic environments and to adapt to such situation sensor networks need Machine Learning techniques to avoid unnecessary redesign. Machine learning techniques survey for WSNs provide a wide range of applications in which security is given top priority. To secure data from attackers the WSNs system should be able to delete the instruction if any hackers/attackers are trying to steal data.
Publisher
Inventive Research Organization
Reference30 articles.
1. 1. Alsheikh, M. A., Lin, S., Niyato, D., & Tan, H. P. (2014). Machine learning in wireless sensor networks: Algorithms, strategies, and applications. IEEE Communications Surveys & Tutorials, 16(4), 1996-2018.
2. 2. Kumar, D. P., Amgoth, T., & Annavarapu, C. S. R. (2019). Machine learning algorithms for wireless sensor networks: A survey. Information Fusion, 49, 1-25.
3. 3. Maleh, Y., Ezzati, A., Qasmaoui, Y., & Mbida, M. (2015). A global hybrid intrusion detection system for wireless sensor networks. Procedia Computer Science, 52, 1047-1052.
4. 4. Ioannis, K., Dimitriou, T., & Freiling, F. C. (2007, April). Towards intrusion detection in wireless sensor networks. In Proc. of the 13th European Wireless Conference (pp. 1-10). Citeseer.
5. 5. Zhang, W., Han, D., Li, K. C., & Massetto, F. I. (2020). Wireless sensor network intrusion detection system based on MK-ELM. Soft Computing, 1-14.
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