Releases: abhilash12iec002/intrusion_detection
MATLAB code for "A deep learning approach to predict the number of k-barriers for intrusion detection over a circular region using wireless sensor networks"
This file contains the MATLAB code for "A deep learning approach to predict the number of k-barriers for intrusion detection over a circular region using wireless, 2022, Expert Systems with Applications."
For more information, please refer to the following link;
https://doi.org/10.1016/j.eswa.2022.118588
If you need a full text of this manuscript, then please email to me ([email protected]), or you can request it through ResearchGate.
If you are using this code then please cite the following paper;
Singh, A., Amutha, J., Nagar, J., & Sharma, S. (2022). A deep learning approach to predict the number of k-barriers for intrusion detection over a circular region using wireless sensor networks. Expert Systems with Applications, 118588.
Additional references for further reading;
Singh, A., Nagar, J., Sharma, S., & Kotiyal, V. (2021). A Gaussian process regression approach to predict the k-barrier coverage probability for intrusion detection in wireless sensor networks. Expert Systems with Applications, 172, 114603. https://doi.org/10.1016/j.eswa.2021.114603
Singh, A., Amutha, J., Nagar, J., Sharma, S., & Lee, C. C. (2022). Lt-fs-id: Log-transformed feature learning and feature-scaling-based machine learning algorithms to predict the k-barriers for intrusion detection using wireless sensor network. Sensors, 22(3), 1070. https://doi.org/10.3390/s22031070
Singh, A., Amutha, J., Nagar, J., Sharma, S., & Lee, C. C. (2022). AutoML-ID: automated machine learning model for intrusion detection using wireless sensor network. Scientific Reports, 12(1), 1-14. https://www.nature.com/articles/s41598-022-13061-z