Achieving sustainability in heat drying processing: Leveraging artificial intelligence to maintain food quality and minimize carbon footprint

IF 12 1区 农林科学 Q1 FOOD SCIENCE & TECHNOLOGY Comprehensive Reviews in Food Science and Food Safety Pub Date : 2024-08-13 DOI:10.1111/1541-4337.13413
Bara Yudhistira, Prakoso Adi, Rizka Mulyani, Chao-Kai Chang, Mohsen Gavahian, Chang-Wei Hsieh
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Abstract

The food industry is a significant contributor to carbon emissions, impacting carbon footprint (CF), specifically during the heat drying process. Conventional heat drying processes need high energy and diminish the nutritional value and sensory quality of food. Therefore, this study aimed to investigate the integration of artificial intelligence (AI) in food processing to enhance quality and reduce CF, with a focus on heat drying, a high energy-consuming method, and offer a promising avenue for the industry to be consistent with sustainable development goals. Our finding shows that AI can maintain food quality, including nutritional and sensory properties of dried products. It determines the optimal drying temperature for improving energy efficiency, yield, and life cycle cost. In addition, dataset training is one of the key challenges in AI applications for food drying. AI needs a vast and high-quality dataset that directly impacts the performance and capabilities of AI models to optimize and automate food drying.

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实现热干燥加工的可持续性:利用人工智能保持食品质量并尽量减少碳足迹。
食品工业是碳排放的重要贡献者,影响碳足迹(CF),特别是在热干燥过程中。传统的热干燥过程需要高能量,会降低食品的营养价值和感官质量。因此,本研究旨在调查人工智能(AI)在食品加工中的整合情况,以提高质量和减少碳足迹,重点是热干燥这种高耗能方法,并为该行业提供一条符合可持续发展目标的可行途径。我们的研究结果表明,人工智能可以保持食品质量,包括干燥产品的营养和感官特性。它能确定最佳干燥温度,从而提高能效、产量和生命周期成本。此外,数据集培训也是人工智能应用于食品干燥的关键挑战之一。人工智能需要大量高质量的数据集,这直接影响到人工智能模型在优化和自动化食品干燥方面的性能和能力。
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来源期刊
CiteScore
26.20
自引率
2.70%
发文量
182
期刊介绍: Comprehensive Reviews in Food Science and Food Safety (CRFSFS) is an online peer-reviewed journal established in 2002. It aims to provide scientists with unique and comprehensive reviews covering various aspects of food science and technology. CRFSFS publishes in-depth reviews addressing the chemical, microbiological, physical, sensory, and nutritional properties of foods, as well as food processing, engineering, analytical methods, and packaging. Manuscripts should contribute new insights and recommendations to the scientific knowledge on the topic. The journal prioritizes recent developments and encourages critical assessment of experimental design and interpretation of results. Topics related to food safety, such as preventive controls, ingredient contaminants, storage, food authenticity, and adulteration, are considered. Reviews on food hazards must demonstrate validity and reliability in real food systems, not just in model systems. Additionally, reviews on nutritional properties should provide a realistic perspective on how foods influence health, considering processing and storage effects on bioactivity. The journal also accepts reviews on consumer behavior, risk assessment, food regulations, and post-harvest physiology. Authors are encouraged to consult the Editor in Chief before submission to ensure topic suitability. Systematic reviews and meta-analyses on analytical and sensory methods, quality control, and food safety approaches are welcomed, with authors advised to follow IFIS Good review practice guidelines.
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