4.6 Article

Spectrum Evaluation in CR-Based Smart Healthcare Systems Using Optimizable Tree Machine Learning Approach

Journal

SENSORS
Volume 23, Issue 17, Pages -

Publisher

MDPI
DOI: 10.3390/s23177456

Keywords

smart healthcare; spectrum sensing; optimizable tree; machine learning; cognitive radio

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This paper investigates the use of tree-based algorithms in machine learning to evaluate spectrum sensing in cognitive radio-based smart healthcare systems. The study creates data sets based on probability of detection and probability of false alarm, and trains and tests the system using different tree algorithms. The results show that the optimizable tree provides the best accuracy and minimum classification error for spectrum sensing.
The rapid technological advancements in the current modern world bring the attention of researchers to fast and real-time healthcare and monitoring systems. Smart healthcare is one of the best choices for this purpose, in which different on-body and off-body sensors and devices monitor and share patient data with healthcare personnel and hospitals for quick and real-time decisions about patients' health. Cognitive radio (CR) can be very useful for effective and smart healthcare systems to send and receive patient's health data by exploiting the primary user's (PU) spectrum. In this paper, tree-based algorithms (TBAs) of machine learning (ML) are investigated to evaluate spectrum sensing in CR-based smart healthcare systems. The required data sets for TBAs are created based on the probability of detection (Pd) and probability of false alarm (Pf). These data sets are used to train and test the system by using fine tree, coarse tree, ensemble boosted tree, medium tree, ensemble bagged tree, ensemble RUSBoosted tree, and optimizable tree. Training and testing accuracies of all TBAs are calculated for both simulated and theoretical data sets. The comparison of training and testing accuracies of all classifiers is presented for the different numbers of received signal samples. Results depict that optimizable tree gives the best accuracy results to evaluate the spectrum sensing with minimum classification error (MCE).

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