基于plc优化的微波真空干燥机米糠干燥动力学:神经模糊方法

Jayson P. Rogelio, E. Dadios, R. R. Vicerra, A. Bandala, R. Baldovino
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引用次数: 0

摘要

已经有几次尝试使用传统的物理、数学和统计方法来精确建模来稳定米糠,但它在计算上很费力。在本研究中,采用神经模糊方法对米糠干燥动力学进行建模,以预测米糠的水分损失。考虑的输入参数有微波功率、转速、干燥时间、负载能力和真空压力。设计了一个模糊推理系统来生成模糊逻辑规则,这些规则的输入来自于训练后的神经网络的输出。结果表明,所开发的系统能够准确预测水分损失,误差率为0.00014627。
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Rice Bran Drying Kinetics of a Controlled Microwave Vacuum Dryer Optimized PLC-based: A Neuro-fuzzy Approach
There have been several attempts to stabilize the rice bran using traditional physical, mathematical, and statistical methods for precise modeling but it is computationally laborious. In this study, the drying kinetics of the rice bran in prediction of the moisture loss was modelled through the neuro-fuzzy approach. The input parameters that were considered were microwave power, rotation speed, drying time, load capacity and vacuum pressure. A fuzzy inference system is designed to generate the rules of fuzzy logic where inputs of these are from the output of the trained neural network. Based on the result, it was found out that developed system was able to predict the moisture loss with error rate of 0.00014627.
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