Categorize Level of Crystal Sugar Making with Recurrent Neural Network

Pimolrat Ounsrimuang, S. Nootyaskool
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Abstract

This research presents the study of recurrent neural networks to predict industrial crystal sugar making. The recurrent neural network trains on six parameters consisting of liquid in the pan, Brix levels, vacuum in the pan, liquor temperatures, water steam supplier, and current for mix-motor agitator. The input variables were the trained model to predict by categorizing data in three levels high, middle, and low which the data came from human control the sugar boiler machine. The trained model for the future can be extended to make an experience meter to indicate the ability of workers to control the machine.
用递归神经网络对结晶糖生产水平进行分类
本研究提出了递归神经网络预测工业结晶糖生产的研究。递归神经网络对六个参数进行训练,包括锅内液体、沸点水平、锅内真空、液体温度、水蒸汽供应和混合电机搅拌器电流。输入变量是经过训练的模型,通过对人工控制制糖机的数据进行高、中、低三个层次的分类进行预测。经过训练的未来模型可以扩展为经验表,以指示工人控制机器的能力。
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