Research Paper | Computer Science & Engineering | India | Volume 5 Issue 10, October 2016
FPGA Based Diabetic Patient Health Monitoring Using Fuzzy Neural Network
Abstract: This is a FPGA based system and this system employs a fuzzy interface cascaded with a feed-forward neural network in order to obtain an optimum decision regarding the future pathology physiological state of a patient. The neurons that are considered in the proposed network are devoid of self-connections instead of commonly used self-connected neurons. Applying the methodology, the chance of forecasting of critical diabetic condition of a patient can be predicted accurately, 30 days ahead of actually attaining the critical condition. The fuzzy interface discussed here performs fuzzification of patient data. The data from the patient such as height or weight data cannot always be trusted as they are subjected to the quality and accuracy of measuring units and the skill of the technician. Moreover, based on a single data, it would be highly uncertain to make an accurate decision about the future physiological state of the patient. So the patient data have been fuzzified with the objective of transformation of periodic measures into likelihoods that the body mass index, blood glucose, urea, creatinine, systolic and diastolic blood pressure of the patient is high, low or moderate.
Keywords: FPGA, fuzzification, diabetic
Edition: Volume 5 Issue 10, October 2016,
Pages: 394 - 396
How to Cite this Article?
Akanksha Nilosey, "FPGA Based Diabetic Patient Health Monitoring Using Fuzzy Neural Network", International Journal of Science and Research (IJSR), Volume 5 Issue 10, October 2016, pp. 394-396, https://www.ijsr.net/get_abstract.php?paper_id=16091602
How to Share this Article?
Similar Articles with Keyword 'FPGA'
Preparation of Test Data from the Simulated and Test Beam Data for Testing the ATLAS New Small Wheel FPGA-Based Trigger Processor
Jayasree S  | Reshmy V R | Dr. Lorne Levinson
Using Magnetic Tunnel Junction to Model of SRAM as a Non Volatile SRAM