工业中鱼类纹理评价的有效算法操作框架:实现成熟度

Q1 Agricultural and Biological Sciences Aquaculture and Fisheries Pub Date : 2023-07-01 DOI:10.1016/j.aaf.2020.10.001
D. Dimogianopoulos , K. Grigorakis
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引用次数: 0

摘要

适用于鱼类商业化过程中的可靠、无损的鱼类新鲜度评估一直受到科学家和业界的追求。考虑到即使在死后储存的早期阶段,鱼类的质地也会受到主要影响,过去开发了一个用于快速评估鱼类新鲜度的相关无损检测框架。在此,提出了一种在上述框架内操作并优化用于工业环境的算法。新鲜杀死并在冰上储存6天的鲈鱼(Dicentrarchus labrax)已被用于比较测试。该鱼是一个系统的一部分,该系统通过一种新的测试协议进行振动测试,该协议设计用于易于实现和对噪声的鲁棒性。同时,计算了系统对特定测试的响应的新的闭合形式分析表达式,并与实验数据一起使用,以获得鱼肉的特定机械(因此是肌肉结构)特性。这种计算被设计为只需要在大多数相关软件中找到的现成例程。算法操作框架已用于两种不同的测试设置(定制的测试台和原型设备),结果遵循显著相似的趋势,清楚地区分了不同的纹理(因此是新鲜度)特征,从而验证了所提出的方法。
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Effective algorithmic operational framework for fish texture evaluation in industry: Achieving maturity

Reliable, nondestructive fish freshness evaluation applicable during fish commercialization has been continuously pursued by scientists and industry. Taking into account that fish texture is primarily affected even at early stages of post-mortem storage, a relevant nondestructive testing framework for rapid textural assessment of fish freshness was developed in the past. Herein, an algorithm operating within the aforementioned framework and optimized for use in industrial environments is proposed. Sea bass (Dicentrarchus labrax) both freshly killed and stored on ice for 6 days have been used for comparative testing. The fish is part of a system, which is vibration-tested via a new testing protocol designed for easy implementation and robustness to noise. At the same time, a new closed-form analytical expression for the system response to the specific testing is computed and used along with experimental data, for obtaining specific mechanical (thus muscle-structural) characteristics of fish flesh. This computation is designed to only require readily available routines found in most relevant software. The algorithmic operational framework has been used in two different test setups (a custom-built test rig and a prototype device), with results following remarkably similar trends, clearly discriminating different textural (thus freshness) characteristics, and consequently validating the proposed approach.

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来源期刊
Aquaculture and Fisheries
Aquaculture and Fisheries Agricultural and Biological Sciences-Aquatic Science
CiteScore
7.50
自引率
0.00%
发文量
54
审稿时长
48 days
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