A comparative analysis between deep neural network-based 1D-CNN and LSTM models to harness the self-sensing property of the shape memory alloy wire actuator for position estimation
Samarth Singh,
Hari N Bhargaw,
Mahendra Jadhav
et al.
Abstract:The article presents a performance based comparative analysis of popular deep neu-
ral network(DNN) models such as 1D-CNN and LSTM for Shape Memory alloy(SMA)-
based wire actuator position estimation. These DNN models utilize the self-sensing
property(SSP) for position prediction of the SMA actuator. The phase dependent elec-
trical resistivity of SMA wire act as SSP, where the electrical resistivity is in the form
of resistance acts as inputs to the proposed models for … Show more
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