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Inpatient Critical Stage Monitoring in Smart Hospitals by Contextual Fuzzy based QoS Routing for WBMS Network Nurse Call System

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Abstract

In Smart Hospitals by deploying a Wireless Bio Multimedia sensor (WBMS) Network, which is a collection of wireless scalar biosensor such as Thermistor (to measure body temperature), Sphygmomanometer bio sensor (to measure Blood pressure), Respiratory sensor system (to measure breath), Holter sensor, Continuous Glucose Monitor biosensor, Immuno biosensor and forth with Wireless Multimedia Sensor node to contrivance the automatic patient Monitoring for the wireless Nurse Call System. WBMS network transmitted the scalar, video data of an inpatient via patient Cluster Head (PCH) in smart Hospitals are named as Patient case report data. It is classified as Critical, Intermittent, and Normal Data. An inpatient’s scalar data from different biosensors and multimedia data are fused in the Patient Cluster Head (PCH). The fused data packets are routed from the Patient Cluster Head (PCH) to the destination by using contextual fuzzy routing. We present an Intensive Care Automatic Contextual Routing for inpatients in the hospital to automize the monitoring and for the Wireless transmission. The data are routed based on the fuzzy rule to avoid delay by checking a priority between the two PCH. It supports diverse QoS by assigning different weight for each scalar data with different priorities to avoid end-to-end delay in the transmission of critical data. To provide a support to the Nurse Call system to monitor the inpatients in post operational care.

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Vithya, G., Vinayaga Sundaram, B. Inpatient Critical Stage Monitoring in Smart Hospitals by Contextual Fuzzy based QoS Routing for WBMS Network Nurse Call System. Wireless Pers Commun 94, 2065–2080 (2017). https://doi.org/10.1007/s11277-016-3361-2

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