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基于深度学习的大豆作为豆浆原料加工潜力的定量预测模型。

A deep learning-based quantitative prediction model for the processing potentials of soybeans as soymilk raw materials.

机构信息

Beijing Key Laboratory of Plant Protein and Cereal Processing, College of Food Science and Nutritional Engineering, China Agricultural University, Beijing 100083, China.

Beijing Key Laboratory of Plant Protein and Cereal Processing, College of Food Science and Nutritional Engineering, China Agricultural University, Beijing 100083, China.

出版信息

Food Chem. 2024 Sep 30;453:139671. doi: 10.1016/j.foodchem.2024.139671. Epub 2024 May 14.

Abstract

Current technologies as correlation analysis, regression analysis and classification model, exhibited various limitations in the evaluation of soybean possessing potentials, including single, vague evaluation and failure of quantitative prediction, and thereby hindering more efficient and profitable soymilk industry. To solve this problem, 54 soybean cultivars and their corresponding soymilks were subjected to chemical, textural, and sensory analyses to obtain the soybean physicochemical nature (PN) and the soymilk profit and quality attribute (PQA) datasets. A deep-learning based model was established to quantitatively predict PQA data using PN data. Through 45 rounds of training with the stochastic gradient descent optimization, 9 remaining pairs of PN and PQA data were used for model validation. Results suggested that the overall prediction performance of the model showed significant improvements through iterative training, and the trained model eventually reached satisfying predictions (|relative error| ≤ 20%, standard deviation of relative error ≤ 40%) on 78% key soymilk PQAs. Future model training using big data may facilitate better prediction on soymilk odor qualities.

摘要

当前的技术,如相关分析、回归分析和分类模型,在评估具有潜力的大豆方面表现出各种局限性,包括单一、模糊的评价和定量预测的失败,从而阻碍了更高效和盈利的豆浆产业。为了解决这个问题,对 54 个大豆品种及其相应的豆浆进行了化学、质构和感官分析,以获得大豆理化性质(PN)和豆浆利润和质量属性(PQA)数据集。建立了一个基于深度学习的模型,使用 PN 数据对 PQA 数据进行定量预测。通过 45 轮随机梯度下降优化训练,使用 9 对剩余的 PN 和 PQA 数据进行模型验证。结果表明,通过迭代训练,模型的整体预测性能有了显著提高,经过训练的模型最终对 78%的关键豆浆 PQA 达到了令人满意的预测(相对误差绝对值≤20%,相对误差标准差≤40%)。未来使用大数据进行模型训练可能会更有利于预测豆浆的气味质量。

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