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Intelligent Spectrum Decision ML Algorithms for WSN


Affiliations
1 Department of ECE, M. Kumarasamy College of Engineering, Karur, Thalavapalayam – 639113, Tamil Nadu, India
 

Objective: To direct channel selection in WSNs. The tests indicate execution enhancements on the conveyance rate and conveyance defer when the proposed cognitive arrangements are utilized. Methods/Statistical Analysis: The utilization of administered Machine Learning (ML) for direct determination in WSNs. The proposed models were broke down utilizing ML apparatuses and strategies, and the best calculations were assessed on genuine sensor hubs. Findings: Wireless Sensor Networks (WSNs) utilize Industrial, Logical and Medical (ISM) range groups for correspondence, which are over-burden because of different innovations for example, WLANs and different WSNs. In this way, such systems must utilize astute strategies, for example, Cognitive Radio (CR) to exist together with different systems. The tests indicate execution enhancements on the delivery rate and delivery delay when the proposed psychological arrangements are utilized. Application/Improvements: Intelligent spectrum decision machine learning idea we can utilize all sort of use, for example, restorative field, Miltary applications, and so forth.

Keywords

Cognitive Radio, Delivery Delay, Delivery Rate, Machine Learning Algorithm, Wireless Sensor Networks
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  • Intelligent Spectrum Decision ML Algorithms for WSN

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Authors

S. Sivaranjani
Department of ECE, M. Kumarasamy College of Engineering, Karur, Thalavapalayam – 639113, Tamil Nadu, India
S. Mohanraj
Department of ECE, M. Kumarasamy College of Engineering, Karur, Thalavapalayam – 639113, Tamil Nadu, India
V. Kavitha
Department of ECE, M. Kumarasamy College of Engineering, Karur, Thalavapalayam – 639113, Tamil Nadu, India

Abstract


Objective: To direct channel selection in WSNs. The tests indicate execution enhancements on the conveyance rate and conveyance defer when the proposed cognitive arrangements are utilized. Methods/Statistical Analysis: The utilization of administered Machine Learning (ML) for direct determination in WSNs. The proposed models were broke down utilizing ML apparatuses and strategies, and the best calculations were assessed on genuine sensor hubs. Findings: Wireless Sensor Networks (WSNs) utilize Industrial, Logical and Medical (ISM) range groups for correspondence, which are over-burden because of different innovations for example, WLANs and different WSNs. In this way, such systems must utilize astute strategies, for example, Cognitive Radio (CR) to exist together with different systems. The tests indicate execution enhancements on the delivery rate and delivery delay when the proposed psychological arrangements are utilized. Application/Improvements: Intelligent spectrum decision machine learning idea we can utilize all sort of use, for example, restorative field, Miltary applications, and so forth.

Keywords


Cognitive Radio, Delivery Delay, Delivery Rate, Machine Learning Algorithm, Wireless Sensor Networks



DOI: https://doi.org/10.17485/ijst%2F2018%2Fv11i19%2F174530