Machine learning-driven innovations in food processing: A systematic review of applications, challenges, and future developments

IF 15.4 1区 农林科学 Q1 FOOD SCIENCE & TECHNOLOGY
Jilong Gao , Shaojin Wang , Ferruh Erdogdu , Francesco Marra , Fabrizio Sarghini , Long Chen
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引用次数: 0

Abstract

Background

Food processing is influenced by multiple factors (e.g., material properties and processing parameters), leading to analytical complexity. Conventional methods (experiments or mathematical/mechanistic models) have limitations, such as high costs, high extrapolation errors, and modeling constraints. Machine learning (ML), a data-driven approach, offers strong nonlinear fitting capabilities to integrate multi-factor interactions for process optimization, thereby reducing energy consumption and enhancing product quality and economic viability. Thus, ML demonstrates potential in the food processing field.

Scope and approach

Firstly, the advantages and disadvantages of commonly used ML algorithms in food processing were introduced to aid researchers in selecting the most suitable algorithm. Secondly, applications of ML in food detection, drying, and fermentation were summarized and analyzed, as well as existing challenges and corresponding solutions. In addition, forward-looking strategies for ML in the food processing field were proposed.

Key findings and conclusions

ML has made notable progress in food processing, covering applications in detection, drying, and fermentation, with algorithms ranging from unsupervised/supervised learning to deep learning. Current studies have shown different limitations, like the overfitting risks from small samples, interpretability limitations of models, and data acquisition difficulties due to the particularity of food processing. To construct high-quality ML models, dataset and algorithm optimization must be tailored to specific processing. The following directions were proposed to promote the future application of ML in the food processing field: developing small-sample algorithms, integrating mechanistic models with ML for physical interpretability, and establishing global big data platforms to drive efficient, intelligent, and sustainable food processing.
机器学习驱动的食品加工创新:对应用、挑战和未来发展的系统回顾
食品加工受到多种因素的影响(例如,材料特性和加工参数),导致分析的复杂性。传统的方法(实验或数学/机械模型)有局限性,如高成本、高外推误差和建模约束。机器学习(ML)是一种数据驱动的方法,它提供了强大的非线性拟合能力,可以整合多因素交互以实现流程优化,从而降低能耗,提高产品质量和经济可行性。因此,机器学习在食品加工领域显示出潜力。首先,介绍了食品加工中常用的机器学习算法的优缺点,以帮助研究人员选择最合适的算法。其次,总结分析了ML在食品检测、干燥、发酵等方面的应用,以及存在的挑战和解决方案。此外,提出了机器学习在食品加工领域的前瞻性策略。sml在食品加工方面取得了显著进展,涵盖了检测、干燥和发酵的应用,其算法从无监督/有监督学习到深度学习。目前的研究显示出不同的局限性,如小样本的过拟合风险,模型的可解释性限制,以及由于食品加工的特殊性而导致的数据获取困难。为了构建高质量的机器学习模型,数据集和算法优化必须针对特定的处理进行定制。为促进机器学习在食品加工领域的未来应用,提出了以下方向:开发小样本算法,将机械模型与机器学习相结合以实现物理可解释性,建立全球大数据平台以推动高效、智能和可持续的食品加工。
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来源期刊
Trends in Food Science & Technology
Trends in Food Science & Technology 工程技术-食品科技
CiteScore
32.50
自引率
2.60%
发文量
322
审稿时长
37 days
期刊介绍: Trends in Food Science & Technology is a prestigious international journal that specializes in peer-reviewed articles covering the latest advancements in technology, food science, and human nutrition. It serves as a bridge between specialized primary journals and general trade magazines, providing readable and scientifically rigorous reviews and commentaries on current research developments and their potential applications in the food industry. Unlike traditional journals, Trends in Food Science & Technology does not publish original research papers. Instead, it focuses on critical and comprehensive reviews to offer valuable insights for professionals in the field. By bringing together cutting-edge research and industry applications, this journal plays a vital role in disseminating knowledge and facilitating advancements in the food science and technology sector.
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