模拟和优化自动菜叶包装机的完整性

IF 2.7 3区 农林科学 Q3 ENGINEERING, CHEMICAL
Oluwole Timothy Ojo, Sesan Peter Ayodeji, Nurudeen Akanji Azeez
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引用次数: 0

摘要

本研究强调尼日利亚蔬菜生产需要采后技术,以减少 5%至 50%的采后损失,重点是通过使用人工神经网络(ANN)改进蔬菜加工厂自动包装装置的流程。实验是在一家蔬菜叶加工厂进行的,目的是提高自动包装装置的可靠性和性能。实验改变了水分含量、叶片粒度、所需时间、吞吐能力和特定机械能耗等操作参数,以确定各参数的最佳条件。统计分析使用 R 软件进行。选择合适模型的依据是:选择预测系数最高的模型,且附加项显著,模型无别离,拟合不显著,以及 "调整 R2 值 "和 "预测 R2 值 "最大化。在含水量为 15%、粒径为 104.4 的条件下,获得了最佳包装条件,最佳包装时间为 0.02 h,最佳包装能力为 57.31 kg/h,最佳 SMEC 值为 0.008 kw/h/kg,最佳重复性值为 0.128 kg,最佳线性值为 4.713 cm,最佳精度值为 5.2 cm (±0.45)。使用各种指标对 ANN 模型的性能进行了评估,如包装机的均方误差 (MSE)、判定系数 (R2)、平均绝对误差 (MAE) 和调整后 R 平方 (Adj. R2)。研究结果表明,ANN 可用于有效优化菜叶加工厂的包装单元。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Modelling and Optimizing the Integrity of an Automated Vegetable Leaf Packaging Machine

Modelling and Optimizing the Integrity of an Automated Vegetable Leaf Packaging Machine

This study emphasized the need for postharvest technology in Nigeria's vegetable production to reduce postharvest losses ranging from 5% to 50%, focusing on enhancing processes of automated packaging unit of vegetable processing plant through the use of artificial neural networks (ANN). The experiment was conducted on a vegetable leaf processing plant with the objective of improving the reliability and performance of the automated packaging unit. Operating parameters such as moisture contents, leave particle size, time taken, throughput capacity, and specific mechanical energy consumption were varied to determine the optimum condition for each parameter. Statistical analysis was performed using R software. The appropriate model was chosen based on selection of the highest coefficient of prediction where the additional terms are significant and the model was not aliased, insignificant lack of fit and the maximization of the “Adjusted R2 value” and the “Predicted R2 value.” An optimum packaging condition was obtained at 15% moisture content, and 104.4 particle sizes which gave an optimum packaging time of 0.02 h, optimum packaging capacity of 57.31 kg/h, optimum SMEC value of 0.008 kw/h/kg, optimum repeatability value of 0.128 kg, optimum linearity value of 4.713 cm, optimum accuracy value of 5.2 cm (±0.45). The performance of the ANN model was evaluated using various measures such as mean squared error (MSE), the coefficient of determination (R2), mean absolute error (MAE), and the adjusted R-squared (Adj. R2) for packaging machine. The results of this study suggest that ANN can be used to effectively optimize packaging units of the vegetable leaf processing plant.

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来源期刊
Journal of Food Process Engineering
Journal of Food Process Engineering 工程技术-工程:化工
CiteScore
5.70
自引率
10.00%
发文量
259
审稿时长
2 months
期刊介绍: This international research journal focuses on the engineering aspects of post-production handling, storage, processing, packaging, and distribution of food. Read by researchers, food and chemical engineers, and industry experts, this is the only international journal specifically devoted to the engineering aspects of food processing. Co-Editors M. Elena Castell-Perez and Rosana Moreira, both of Texas A&M University, welcome papers covering the best original research on applications of engineering principles and concepts to food and food processes.
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