Modeling of Drying Kinetics of Banana (Musa spp., Musaceae) Slices with the Method of Image Processing and Artificial Neural Networks

S. Ozden, F. Kılıç
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Abstract

In this study, modeling of thin banana slices dried on 316 stainless steel shelves is carried out in an oven working with serial controlled and concentric blower-resistor couple. Changes occurred in banana slices (area and color) during drying process have been recorded by a camera. Additionally, weight has been measured with a load cell which is under the shelf and energy consumption has been measured with electricity consumption meter which is tied to energy input. The main aim of the study is to conduct the drying process of banana slices according to the data obtained from camera. Besides, obtained data have been tested with a powerful modeling technique like Artificial Neural Networks (ANN), and it has been seen that drying process could be modeled according to the data obtained from camera. Energy consumption data have been added in order to increase the performance of ANN and strengthen the modeling. Thus, an automatic drying system that can learn by itself using only a camera without any other sensors will be installed. This has been caused an increase in performance. However, it is obvious that it increases cost. According to the results of modeling process, 99% of “goodness of fit” has been obtained by using the change in banana slices and the number of pixels. It has been found that the developed model performed adequately in predicting the changes of the moisture content. Thus, it has been available to control the food drying process with a digital camera.
香蕉(Musa spp., Musaceae)切片干燥动力学的图像处理和人工神经网络建模
在本研究中,对在316不锈钢架子上干燥的薄香蕉片进行了建模,并在串联控制和同心鼓风机-电阻器耦合的烤箱中进行了建模。用摄像机记录了香蕉片在干燥过程中(面积和颜色)发生的变化。此外,重量已测量称重传感器下的货架和能源消耗已测量电耗计,这是绑在能量输入。本研究的主要目的是根据相机获得的数据进行香蕉片的干燥过程。此外,利用人工神经网络(Artificial Neural Networks, ANN)等强大的建模技术对所获得的数据进行了测试,发现可以根据相机获得的数据对干燥过程进行建模。为了提高人工神经网络的性能和加强建模,增加了能耗数据。因此,将安装一种无需任何其他传感器,仅使用摄像头即可自动学习的自动干燥系统。这导致了性能的提高。然而,很明显,它增加了成本。根据建模过程的结果,利用香蕉切片的变化量和像素的数量,获得了99%的“拟合优度”。结果表明,所建立的模型能较好地预测含水率的变化。因此,利用数码相机控制食品干燥过程已成为可能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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