Title of article :
Behavioral Modeling and Experimental Verification of a Smart Servomotor Used in a Thermal Control Louver of a Satellite Using Dynamic Neural Network
Author/Authors :
Shakiba ، Saeid School of Mechanical Engineering, College of Engineering - University of Tehran , abedi ، mohsen Satellite Research Institute - Iranian Space Research Center , Vedadi ، Amirhosein School of Mechanical Engineering, College of Engineering - University of Tehran
From page :
3
To page :
12
Abstract :
Louvers are powerful devices for the thermal management of satellites. Nevertheless, the high mass and power consumption and the low reliability of servomotors serving as the actuators of louvers, make the space applications of these technologies very restricted. To tackle this problem, this paper utilizes a shape memory alloy to build a smart servomotor for use in a laboratory louver. The major bottleneck of the use of thermal shape memory alloys is the existence of complex nonlinear hysteretic characteristics in the behavior of these materials. In this paper, a nonlinear autoregressive exogenous model is proposed to predict the nonlinear hysteric behavior of a shape memory alloy. This model is based on a dynamic neural network that its fine function is achieved by a suitable selection of the architecture and the transfer functions of the output and hidden layers. The proposed model is first trained with a batch of test data at the frequency of 0.01 Hz and then validated with another batch of data at the frequency of 0.008 Hz. The training and validation data are obtained from a laboratory louver equipped with a spring of shape memory alloy as the opening actuator of blades. The mean square error of the proposed model for the training and validation data is 1.0325 and 1.0835 degrees, respectively.
Keywords :
Hysteresis , NARX model , Dynamic Neural Network , Shape Memory Alloy , Thermal Control Louver
Journal title :
AUT Journal of Mechanical Engineering
Journal title :
AUT Journal of Mechanical Engineering
Record number :
2737842
Link To Document :
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