Title :
A modeling and compensation method for IPMC sensors
Author :
Xu Suming ; Tan Yonghong ; Dong Ruili
Author_Institution :
Res. Center of Precision Mechatron. Syst. & Control Eng., Shanghai Normal Univ., Shanghai, China
Abstract :
Ionic Polymer-Metal Composite (IPMC) is a new smart material which has sensing capability. In this paper, an experimental setup to characterize IPMC sensor is developed and corresponding sensor model is constructed based on neural networks. Similar to the other smart materials, intrinsic hysteresis nonlinearity is inherent in IPMC sensors. In this case, a hysteresis operator is introduced to transform the multi-valued mapping of hysteresis to a one-to-one mapping. Then, the corresponding neural model can be constructed by the neural network on the expanded input space. In order to compensate the nonlinearity of IPMC sensor, an inverse model is also constructed to form a feedforward compensator for the sensor. Finally, experimental results are presented to validate the proposed method of hysteresis compensation.
Keywords :
compensation; composite materials; control nonlinearities; feedforward; neurocontrollers; sensors; IPMC sensors; feedforward compensator; hysteresis compensation; hysteresis operator; intrinsic hysteresis nonlinearity; ionic polymer-metal composite; multivalued hysteresis mapping; neural networks; nonlinearity compensation; one-to-one mapping; smart material; Hysteresis; Intelligent sensors; Neural networks; Polymers; Sensor phenomena and characterization; Voltage measurement; IPMC; compensation; hysteresis; model; neural network; sensor;
Conference_Titel :
Control Conference (CCC), 2013 32nd Chinese
Conference_Location :
Xi´an