Design and Development of Efficient Energy Systems. Группа авторов

Чтение книги онлайн.

Читать онлайн книгу Design and Development of Efficient Energy Systems - Группа авторов страница 28

Design and Development of Efficient Energy Systems - Группа авторов

Скачать книгу

technology to obtain real-time solutions with high efficiency. The machine learning is used to predict and make correct decisions in an emergency situation based on the patient’s health condition and to provide early intimation of risk so that preventive measures can be taken. The usage of IoT devices and smartphones improves patient interaction and is highly useful for remote monitoring systems, caring for aged persons, managing people with chronic diseases, etc. Various self-caring applications can be developed, so that patients can monitor their own health, and the application would notify the healthcare provider or even an ambulance in the case of an emergency. The smart healthcare system adopts IoT and machine learning technologies to provide better decision making, real-time monitoring, personalized healthcare, long term care, low hospital expenses, improved hospital service, and better treatment.

      In future, any emergency situation in the field of healthcare can be easily handled by smart healthcare systems. These systems are highly used to cure diabetics, many heart diseases can be predicted and prevented, home care for aged persons can be provided, the healthcare provider can be contacted anytime and anywhere for the consultation via virtual care, etc. Basically, patient-centric healthcare systems will be developed and used efficiently, which has benefits both for the healthcare providers in the hospitals and patients.

      1. M. Abadi, P. Barham, J. Chen, Z. Chen, A. Davis, J. Dean, M. Devin, S. Ghemawat, G. Irving, M. Isard, M. Kudlur, J. Levenberg, R. Monga, S. Moore, D.G. Murray, B. Steiner, P.A. Tucker, V. Vasudevan, P. Warden, M. Wicke, Y. Yu, and X. Zhang, Tensor Flow: A system for large-scale machine learning, OSDI, 2016.

      3. Y. Ai, M. Peng and K, Zhang, Edge computing technologies for Internet of Things: a primer, Digital Communications and Networks, Vol. 4(2), P. 77-86, 2018.

      4. I. Azimi, J. Takalo-Mattila, A. Anzanpour, A.M. Rahmani, J.P. Soininen and P. Liljeberg, Empowering healthcare IoT systems with hierarchical edge-based deep learning, In IEEE/ ACM International Conference on Connected Health: Applications, Systems and Engineering Technologies (CHASE), IEEE, P. 63–68, 2018.

      5. Z. Becvar and P. Mach Mobile Edge Computing: A Survey on Architecture and Computation Offloading, IEEE Communications Surveys and Tutorials, Vol. 19(3) p. 1628 - 1656, 2017.

      6. L. Bote-Curiel, S. Muñoz-Romero, A. Gerrero-Curieses and J.L. Rojo-Álvarez, Deep Learning and Big Data in Healthcare: A Double Review for Critical Beginners, Applied Science, Vol. 9(2331), 2019.

      7. L. Chen, S. Zhou and J. Xu, Energy Efficient Mobile Edge Computing in Dense Cellular Networks, IEEE ICC Green Communications Systems and Networks Symposium, 2017.

      8. S.K. Dhar, S.S. Bhunia and N. Mukherjee, Interference Aware Scheduling of Sensors in IoT Enabled Health-Care Monitoring Systems, Fourth International Conference of Emerging Applications of Information Technology, P. 152 – 157, 2014.

      9. P. Dineshkumar, R. SenthilKumar, K. Sujatha, R.S. Ponmagal, V.N. Rajavarman, Big data Analytics of IoT based Health Care Monitoring System, IEEE Uttar Pradesh Section International Conference on Electrical, Computer and Electronics Engineering (UPCON), Indian Institute of Technology (Banaras Hindu University) Varanasi, India, P. 55 – 60, 2016.

      10. K. Dolui and S.K. Datta, Comparison of edge computing implementations: Fog computing, cloudlet and mobile edge computing, Conference on Global Internet of Things Summit (GIoTS) P. 1-6 2017.

      11. E.O. Dowd, How Edge Computing Enhances Health IT Infrastructure, HIT Infrastructure, https://hitinfrastructure.com/news/how-edge-computing-enhances-health-it-infrastructure, 2018.

      12. B. Felter, 5 Use Cases You Need to Know for Edge Computing and Healthcare, Vxchnge, https://www.vxchnge.com/blog/edge-computing-use-cases-healthcare, 2019.

      13. A. Garcia-Saavedra, G. Iosifidis, X. Costa-Pérez, and D.J. Leith, Joint Optimization of Edge Computing Architectures and Radio Access Networks, IEEE Journal on Selected Areas in Communications, P. 99, 2018.

      14. T. N. Gia, I.B. Dhaou, M. Ali, A.M. Rahmani, T. Westerlund, P. Liljeberg, and H. Tenhunen, Energy efficient fog-assisted IoT system for monitoring diabetic patients with cardiovascular disease, Future Generation Computer Systems, Vol. 93, P. 198-211, 2019.

      15. Y. Hao, Y. Jiang, M.S. Hossain, M.F. Alhamid and S.U. Amin, Learning for smart edge: cognitive learning-based computation offloading, In Mobile Networks and Applications, Springer, P. 1–7, 2018.

      16. M. Hasan, Top 10 Potential Applications of Machine Learning in Healthcare, UbuntuPIT, https://www.ubuntupit.com/top-10-potential-applications-of-machine-learning-in-healthcare/, 2019.

      17. IoT & Edge Technology: Transforming the Global Supply Chain, ACSIS, https://acsisinc.com/blog/iot-edge-technology-transforming-the-global-supply-chain/, 2020.

      18. F. Jalali, S. Khodadustan, C. Gray, K. Hinton and F. Suits, Greening IoT with fog: a survey. In 2017 IEEE International Conference on Edge Computing (EDGE), P. 25–31, 2017.

      19. M.R. Kinthada, S, Bodda, and S.B.K. Mande, eMedicare: mHealth solution for Patient Medication Guidance and Assistance, International conference on Signal Processing, Communication, Power and Embedded System (SCOPES), P. 657-661, 2016.

      20. R.N. Kirtana and Y.V. Lokeswari, An IoT Based Remote HRV Monitoring System for Hypertensive Patients, IEEE International Conference on Computer, Communication, and Signal Processing, 2017.

      22. T. Leppänen and J. Riekki, Energy Efficient Opportunistic Edge Computing for the Internet of Things. Web Intelligence and Agent Systems. Vol. 17(3). 2018.

      23. S. Madakam, R. Ramaswamy and Tripathi, Internet of Things (IoT): A Literature Review, Journal of Computer and Communications, Vol. 3, P. 164-173, 2015.

      24. Y. Mao. C. You, J. Zhang, K. Huang and K.B. Letaief, A Survey on Mobile Edge Computing: The Communication Perspective. IEEE Communications Surveys & Tutorials, P. 9, 2017.

      25. K. Matthews, 6 Exciting IoT Use Cases in Healthcare, IoTforall, https://www.iotforall.com/exciting-iot-use-cases-in-healthcare/, 2020.

      26. P. Miller, What is edge computing?, The Verge, https://www.theverge.com/circuit-breaker/2018/5/7/17327584/edge-computing-cloud-google-microsoft-apple-amazon, 2018.

      27. J. Mocnej, M. Miškuf,

Скачать книгу