과제정보
This work was supported by the Department of Electronics & Information Technology (DeitY), which is a division of Ministry of Communications and IT of the Government of India, under the Visvesvaraya PhD scheme for Electronics & IT.
참고문헌
- B. Chandrasekaran, R. Balakrishnan, and Y. Nogami, Secure data communication using file hierarchy attribute based encryption in wireless body area networks, J. Commun. Softw. Syst. 14 (2018), no. 1, 75-81.
- SHIMMER, available at http://www.shimmer-research.com/tag/sensor
- Lotus, available at https://www.memsic.com/userfiles/files/Datasheets/WSN/6020-0705-01_A_LOTUS.pdf
- Q. Sun, F. Hu, and Q. Hao, Mobile target scenario recognition via low-cost pyroelectric sensing system: Toward a context-enhanced accurate identification, IEEE Trans. Syst., Man. Cybern. Syst. 44 (2014), no. 3, 375-384. https://doi.org/10.1109/TSMC.2013.2263130
- MICAZ/ZigBee Series (MPR2400), available at http://www.memsic.com/userfiles/files/Datasheets/WSN/micaz_datasheet-t.pdf
- H. Dubois et al., TinyNode: A comprehensive platform for wireless sensor network applications, in Proc. Inf. Process. Sensor Netw. (Nashville, TN, USA), Apr. 19-21, 2006, pp. 358-365.
- Sun SPOT, available at http://www.sunspotworld.com/
- Cricket Mote, available at http://www.willow.co.uk/html/cricket_mote_platform.php
- Telosb, available at http://www.memsic.com/userfiles/files/Datasheets/WSN/telosb_datasheet.pdf
- D. J. Hill and B. S. Minsker, Anomaly detection in streaming environmental sensor data: A data-driven modeling approach, Environ. Model. Softw. 25 (2010), no. 9, 1014-1022. https://doi.org/10.1016/j.envsoft.2009.08.010
- F. Liu, X. Cheng, and D. Chen, Insider attacker detection in wireless sensor networks, in Proc. IEEE Int. Conf. Comput. Commun. (Barcelona, Spain), May 2007, pp. 1937-1945.
- O. Salem et al., Anomaly detection in medical wireless sensor networks using SVM and linear regression models, Int. J. E-Health Med. Commun. 5 (2014), no. 1, 20-45. https://doi.org/10.4018/ijehmc.2014010102
- S. A. Haque, M. Rahman, and S. M. Aziz, Sensor anomaly detection in wireless sensor networks for healthcare, Sensors 15 (2015), no. 4, 8764-8786. https://doi.org/10.3390/s150408764
- B. Saneja and R. Rani, An efficient approach for outlier detection in big sensor data of health care, Int. J. Commun. Syst. 30 (2017), no. 17, article no. e3352.
- M. U. H. Al Rasyid, Anomalous data detection in WBAN measurements, in Proc. Int. Electron. Symp. Knowl. Creation Intell. Comput. (Bali, Indonesia), Oct. 2018, pp. 303-309.
- S. K. Nagdeo and J. Mahapatro, Wireless body area network sensor faults and anomalous data detection and classification using machine learning, in Proc. IEEE Bombay Section Signature Conf. (Mumbai, India), July 2019, pp. 1-6.
- M. M. Nezhad and M. Eshghi, Sensor single and multiple anomaly detection in wireless sensor networks for healthcare, in Proc. Iranian Conf. Electr. Eng. (Yazd, Iran), May 2019, pp. 1751-1755.
- N. Boudargham et al., Toward fast and accurate emergency cases detection in BSNs, IET Wireless Sensor Syst. 10 (2020), no. 1, 47-60. https://doi.org/10.1049/iet-wss.2019.0134
- A. L. Goldberger et al., PhysioBank, PhysioToolkit, and PhysioNet: Components of a new research resource for complex physiologic signals, Circulation 101 (2000), no. 23, e215-e220.