生物电测量在甘蔗糖回收的人工神经网络预测中的应用

S. Sucipto, M. Arwani, Y. Hendrawan, S. Widaningtyas, D. F. al Riza, S. Yuliatun, S. Supriyanto, A. Somantri
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引用次数: 3

摘要

糖业存在的问题之一是缺乏低成本、简单、准确的田间或实验室甘蔗糖回收测量技术。本研究探讨了利用生物电特性作为一种非破坏性技术来实现这一目的的可能性。研制了一种平行平板电容器,用于测量甘蔗样品横向和纵向位置的生物电特性。采用LCR仪在0.1 ~ 10 kHz频率范围内测定了3个甘蔗品种的18份节间样品,并在实验室进行了糖回收率分析。结果表明,横向位置的电容性和电阻性均大于纵向位置。人工神经网络(ANN)用于预测糖恢复作为生物电特性的函数。最佳人工神经网络模型在侧位生物电测量位置具有较高的准确度,相关系数(R) > 0.90,均方误差(MSE) < 0.05。这表明,基于生物电特性的人工神经网络模型具有发展潜力,可以作为一种简单的技术来预测甘蔗的糖回收。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Bioelectrical measurement for sugar recovery of sugarcane prediction using artificial neural network
One of the problems in the sugar industry is lack of low cost, simple and accurate measurement techniques for sugar recovery of sugarcane in the field or laboratory. This study investigated the potential using of bioelectrical properties as a non-destructive technique for this purpose. A parallel plate capacitor was developed to measure the bioelectric properties of sugarcane in a lateral and longitudinal position of the samples. Eighteen internode samples from 3 sugarcane varieties were measured within 0.1-10 kHz frequency range of LCR meter and then was analyzed sugar recovery in the laboratory. The result showed that in the lateral position are more capacitive and resistive than the longitudinal position. Artificial neural network (ANN) was developed for prediction of sugar recovery as a function of bioelectrical properties. The best ANN model produces a high accuracy in the lateral bioelectrical measurement position with a correlation coefficient (R) > 0.90 and mean square error (MSE) < 0.05. It showed that the ANN model based on bioelectrical properties had the potential to be developed as a simple technique to predict the sugar recovery of sugarcane.
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