Identification of the Flip Folder Folding Machine Using Artificial Neural Network with Nonlinear Autoregressive Exogenous Structure

Yuliyanto Agung Prabowo, Wahyu Setyo Pambudi, Ilmi Rizki Imaduddin

Abstract


Folding machine is a tool that is needed in the small and medium scale laundry industry that has a goal for the efficiency of production time. The flip folder is the main component of this tool, which functions to fold the clothes by moving to form a certain deflection angle where the movement process is controlled by the controller. The system modeling process is the first step to study the characteristics of the system. In a dynamic system, the form of linear modeling is approved difficult to obtain a model that represents the actual physical model. Selecting the structure of the NARX (Nonlinear Autoregressive eXogenous) model was chosen to obtain the dynamic nature of the system. An estimation method to obtain parameter values from the system used Artificial Neural Networks (ANN), which is a trading scheme to be able to predict the output of a system that uses input data and output. Based on the offline assessment process using measurement data obtained by the NARX ANN model on the variation of the number of layers in 30 with a value of MSE 0,38641.

Keywords


folding machine; flip folder; dynamic system; ANN; NARX

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DOI: http://dx.doi.org/10.25139/inform.v0i1.2743

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