多目标数据驱动方法:推动食品行业绩效优化的途径

IF 15.1 1区 农林科学 Q1 FOOD SCIENCE & TECHNOLOGY
Manon Perrignon , Thomas Croguennec , Romain Jeantet , Mathieu Emily
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引用次数: 0

摘要

尽管食品加工过程已经标准化,但由于原材料和/或配料的成分和结构变化、人的感知和对加工过程的干预、加工工具的能力及其磨损等原因,食品加工过程中仍存在许多变异源。总之,它们会影响最终产品特征的再现性(代表与标准的偏差)、影响食品生产过程经济效益的产量以及许多其他性能指标。总的来说,这些指标可分为经济指标、质量指标和环境指标,同时考虑这些指标可以确定生产过程的整体性能。优化食品加工的整体性能需要使用多目标优化方法。多目标优化方法包括五个步骤:定义目标、性能指标建模、制定问题和约束条件、解决多目标问题以及最终确定理想解决方案。将数据驱动方法,特别是机器学习,融入多目标优化方法,为优化和控制食品加工过程提供了新的视角。食品行业仍然低估了这种方法的潜力。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
The multi-objective data-driven approach: A route to drive performance optimization in the food industry

Although standardized, food processing is subject to many sources of variability resulting from compositional and structural variabilities of raw materials and/or ingredients, human perception and intervention in the process, capabilities of processing tools and their wear and tear, etc. Altogether, they affect the reproducibility of final product characteristics representing deviations to standard, the production yield impacting the economic performance of the food manufacturing process, and many other performance indicators. They are grossly classified as economic, quality and environmental indicators and their simultaneous consideration can be used to define the overall performance of a manufacturing process. Optimizing the overall performance of food processing requires the use of multi-objective optimization methods. Multi-objective optimization methods include five steps: defining the objectives, modelling performance indicators, formulating the problem and constraints, solving the multi-objective problem, and finally identifying an ideal solution. The integration of data-driven approach, particularly machine learning, into the multi-objective optimization offers new perspectives for optimizing and controlling food processes. The potential of this approach is still underestimated by the food industry sector.

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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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