Affiliation:
1. Heritage Institute of Technology, Kolkata 700107, WB, India
Abstract
Uncontrolled breathing is the most critical and challenging situation for a healthcare person to patients. It may be due to simple cough/cold/critical disease to severe respiratory infection of the patients and resulting directly impacts the lungs and damages the alveoli which leads to shortness of breath and also impairs the oxygen exchange. The prolonged respiratory failure in such patients may cause death. In this condition, supportive care of the patients by medicine and a controlled oxygen supply is only the emergency treatment. In this paper, as a part of emergency support, the intelligent set-point modulated fuzzy PI-based model reference adaptive controller (SFPIMRAC) is delineated to control the oxygen supply to uncomforted breathing or respiratory infected patients. The effectiveness of the model reference adaptive controller (MRAC) is enhanced by assimilating the worthiness of fuzzy-based tuning and set-point modulation strategies. Since then, different conventional and intelligent controllers have attempted to regulate the supply of oxygen to respiratory distress patients. To overcome the limitations of previous techniques, researchers created the set-point modulated fuzzy PI-based model reference adaptive controller, which can react instantly to changes in oxygen demand in patients. Nonlinear mathematical formulations of the respiratory system and the exchange of oxygen with time delay are modeled and simulated for study. The efficacy of the proposed SFPIMRAC is tested, with transport delay and set-point variations in the devised respiratory model.
Reference33 articles.
1. Papadopoulos, N.G., and Skevaki, C.L. (2006). Viruses of the Lung. Encycl. Respir. Med., 483–488.
2. ARDS Definition Task Force. Acute respiratory distress syndrome: The Berlin Definition;Ranieri;JAMA,2020
3. WHO Guideline (2015). Technical Specifications for Oxygen Concentrator, WHO.
4. Assessing airflow sensitivity to healthy and diseased lung conditions in a computational fluid dynamics model validated in vitro;Sul;J. Biomech. Eng.,2018
5. Devdatta, K., and Pratibha, V. (2009). Mathematical Modeling of Respiratory System: A Review. Indian J. Biomech., 56–60.
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