利用人工神经网络和自适应神经模糊推理系统预测微波干燥番茄片的颜色特征

Jelili Babatunde Hussein, M. Oke, F.F. Agboola, M. Sanusi
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摘要

摘要 蕃茄干颜色的变化经常是消费者和加工者面临的问题。本研究利用人工神经网络(ANN)和自适应神经模糊推理系统(ANFIS)对数字成像和软计算建模进行了研究,以评估微波干燥番茄片的表面颜色。番茄经水焯、抗坏血酸和焦亚硫酸钠预处理,然后切成 4、6 和 8 毫米厚的薄片。然后在功率分别为 90、180 和 360 瓦的微波炉中烘干。测定烘干番茄片的颜色特征(L*、a*、b*、颜色变化、褐变指数、色调和色度)。使用 ANN 和 ANFIS 对响应变量进行建模和优化。使用判定系数 (R2)、均方根误差 (RMSE) 和平均绝对误差 (MAE) 评估了模型的效率和性能。结果显示,L*、a*、b*、颜色变化、褐变指数、色调和色度的颜色特征范围分别为 36.70 - 48.83、36.81 - 44.56、31.03 - 40.34、8.43 - 21.24、11.78 - 39.82、48.15 - 60.11 和 0.82 - 0.87。结果表明,ANN 和 ANFIS 模型可以做出更准确的预测。预测模型经过实验验证,与实验得出的数值一致。不过,ANFIS 模型的性能更好,R2 值(1.000)更高,RMSE 值(0.02952)和 MAE 值(0.02209)更低。这些发现对加工者很有帮助,可根据微波烘干番茄的体积颜色特征进行放大和调整。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Prediction of Colour Characteristics of Microwave-Dried Tomato Slices Using Artificial Neural Network and Adaptive Neuro-Fuzzy Inference Systems
Summary Variation in the colour of dried tomatoes is frequently a problem for both consumers and processors. This study investigated digital imaging and applied soft-computational modelling using the Artificial Neural Network (ANN) and Adaptive Neuro-fuzzy Inference System (ANFIS) to evaluate the surface colour of microwave-dried tomato slices. The tomatoes were pretreated with water blanching, ascorbic acid, and sodium metabisulphite, then cut into slices of 4, 6, and 8 mm thickness. The slices were then dried in a microwave oven at power levels of 90, 180, and 360 W. The colour characteristics of the dried tomato slices (L*, a*, b*, colour change, browning index, hue, and chroma) were determined. The response variables were modelled and optimised using ANN and ANFIS. The efficiency and performance of the model were assessed using the coefficient of determination (R2), the root means square error (RMSE), and the mean absolute error (MAE). The results revealed the ranges of 36.70 – 48.83, 36.81 – 44.56, 31.03 – 40.34, 8.43 – 21.24, 11.78 – 39.82, 48.15 – 60.11, and 0.82 – 0.87 for the colour characteristics of L*, a*, b*, colour change, browning index, hue, and chroma, respectively. The outcomes showed that ANN and ANFIS models could make more accurate predictions. The predictive models were experimentally validated and agreed with the experimentally obtained values. However, the ANFIS model gave better performance, with higher values for R2 (1.000) and lower values for RMSE (0.02952) and MAE (0.02209). These findings will be helpful to processors and can be scaled up and adjusted for the bulk colour characteristics of microwave-dried tomatoes.
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