Flexible Vis/NIR wireless sensing system for banana monitoring

IF 3 3区 农林科学 Q2 FOOD SCIENCE & TECHNOLOGY
Meng-jiao Wang, Bingbing Wang, Rui Zhang, Zihao Wu, Xinqing Xiao
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引用次数: 0

Abstract

The quality of the fruit seriously affects the economic value of the fruit. Fruit quality is related to many ripening parameters, such as soluble solid content (SSC), PH, firmness (FM), etc., and is a complex process. Traditional methods are inefficient, do not guarantee quality, and do not adapt to the current rhythm of the fruit market. In this paper, a digital 12-channel flexible Vis/NIR optical sensing system was designed and implemented for quality prediction and maturity level classification of Philippine Cavendish bananas. Our device can be compared with traditional forms of quality measurement. The experimental results show that the established predictive model with specific preprocessing and modeling algorithms can effectively determine various banana quality parameters (SSC, PH, FM, L*, a*, and b*). The RPD values of SSC and a* were greater than 3, the RPD values of L* and b* were between 2 and 2.5, and the PH and FM were between 2 and 2.5. In addition, a new banana maturity level classification method (FSC) was proposed, and the results showed that the method could effectively classify the maturity level classes (i.e., four maturity levels) with an accuracy rate of up to 97.5%. Finally, import the MLR and FSC models into the MCU to realize the near-range and long-range real-time display of data. These methods can also be applied more broadly to fruit quality detection, providing a basic framework for future research.
用于香蕉监测的柔性Vis/NIR无线传感系统
果实的品质严重影响着果实的经济价值。果实品质与许多成熟参数有关,如可溶性固形物含量(SSC)、PH、硬度(FM)等,是一个复杂的过程。传统的方法效率低下,不能保证质量,也不适应当前水果市场的节奏。本文设计并实现了一个用于菲律宾卡文迪许香蕉品质预测和成熟度分级的12通道柔性Vis/NIR光学传感系统。我们的设备可以与传统的质量测量形式进行比较。实验结果表明,所建立的预测模型具有特定的预处理和建模算法,可以有效地确定香蕉的各种品质参数(SSC、PH、FM、L*、a*和b*)。SSC和a*的RPD值大于3,L*和b*的RPD.值在2到2.5之间,PH和FM在2到2.5%之间。此外,提出了一种新的香蕉成熟度等级分类方法(FSC),结果表明,该方法可以有效地对成熟度等级(即四个成熟度等级)进行分类,准确率高达97.5%。这些方法也可以更广泛地应用于水果质量检测,为未来的研究提供基本框架。
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来源期刊
Food Quality and Safety
Food Quality and Safety FOOD SCIENCE & TECHNOLOGY-
CiteScore
7.20
自引率
1.80%
发文量
31
审稿时长
5 weeks
期刊介绍: Food quality and safety are the main targets of investigation in food production. Therefore, reliable paths to detect, identify, quantify, characterize and monitor quality and safety issues occurring in food are of great interest. Food Quality and Safety is an open access, international, peer-reviewed journal providing a platform to highlight emerging and innovative science and technology in the agro-food field, publishing up-to-date research in the areas of food quality and safety, food nutrition and human health. It promotes food and health equity which will consequently promote public health and combat diseases. The journal is an effective channel of communication between food scientists, nutritionists, public health professionals, food producers, food marketers, policy makers, governmental and non-governmental agencies, and others concerned with the food safety, nutrition and public health dimensions. The journal accepts original research articles, review papers, technical reports, case studies, conference reports, and book reviews articles.
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