CONTROLLING THE MEAN ARTERIAL PRESSURE BY MODIFIED MODEL REFERENCE ADAPTIVE CONTROLLER BASED ON TWO OPTIMIZATION ALGORITHMS
Rawaa HAAMED
engrawaa1990@gmail.comMustansiriyah University, Computer Engineering Department, Palestine Street, 14022, Baghdad (Iraq)
Ekhlas HAMEED
Mustansiriyah University, Computer Engineering Department, Palestine Street, 14022, Baghdad (Iraq)
Abstract
This paper Presents Modified Model Reference Adaptive Controller (MRAC) to regulate the hight blood pressure. It is based on slate model that represent the mathematical equation that clarifies relationship between blood pressure and vasoactive drug injection. In this work Squirrel Search Algorithm (SSA) and Grey Wolf Optimizer (GWO)algorithms are considered to optimize the controller parameters. the results showed that the suggested controller has good performance and stabilize the mean arterial pressure with small settling time (below than 400s) and small overshoot (below than 1 mmHg) with low amount of error.
Keywords:
Mean Arterial Pressure, Squirrel Search Algorithm, Model Reference Adaptive ControllerReferences
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Authors
Rawaa HAAMEDengrawaa1990@gmail.com
Mustansiriyah University, Computer Engineering Department, Palestine Street, 14022, Baghdad Iraq
Authors
Ekhlas HAMEEDMustansiriyah University, Computer Engineering Department, Palestine Street, 14022, Baghdad Iraq
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