基于多步时间序列分析的电子鼻信号动态预测牛肉新鲜度

IF 10.5 1区 生物学 Q1 BIOPHYSICS
Xinxing Li , Runqing Chen , Hao Zhang , Jing Chen , Buwen Liang
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引用次数: 0

摘要

由于这些商品的高度易腐性质,肉类产品中微生物质量的保存代表了当代食品供应链管理的根本挑战。尽管现代测试技术,特别是电子鼻(E-nose),在实时评估新鲜度状态方面显示出相当大的前景,但大多数应用仍然局限于静态评估,而不是对未来质量轨迹的动态预测,这限制了前瞻性决策过程。为了克服这种诊断预测差距,我们提出了一个将电子鼻传感与多步时间序列预测相结合的框架,从而将肉类质量监测从实时诊断转变为预测建模。特别地,我们设计了一个增强的双阶段基于注意力的递归神经网络,以适应微生物生长动力学和电子鼻信号的特定特征,如有限的样本量、非平稳的时间模式和渐进的信号演变。此外,提出的模型在12个牛肉区域进一步验证,以确保跨异质组织特异性腐败模式的鲁棒泛化。实验结果表明,该模型能够对1 ~ 9 h的全活菌数(Total Viable Count, TVC)进行多步预测,在1 h的短期预测中,平均R2为0.950,RMSE为0.097,而在9 h的长期预测中,该模型在12个组织中的R2仍保持在0.859以上,显示出较好的预测精度和持续的时间稳定性。总之,这项工作建立了一个时间序列预测框架,利用传感器衍生的信号轨迹来捕捉牛肉中微生物生长动力学和TVC的演变。通过将新鲜度评估从静态检测推进到具有小时级分辨率的预测建模,该方法可以可靠地估计剩余货架期,并为肉类质量管理提供定量范例。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Dynamic forecasting of beef freshness using multi-step time series analysis of electronic nose signals
The preservation of microbial quality in meat products represents a fundamental challenge in contemporary food supply chain management due to the highly perishable nature of these commodities. Although modern testing techniques, particularly electronic nose (E-nose), have shown considerable promise in real-time assessment of freshness status, most applications remain limited to static evaluation rather than dynamic forecasting of future quality trajectories, constraining proactive decision-making processes. To overcome this diagnostic-predictive gap, we propose a framework that integrates E-nose sensing with multi-step time-series forecasting, thereby transforming meat quality monitoring from real-time diagnosis to predictive modeling. In particular, we design an enhanced dual stage attention-based recurrent neural network tailored to microbial growth dynamics and the specific characteristics of E-nose signals, such as limited sample sizes, non-stationary temporal patterns, and gradual signal evolution. Furthermore, the proposed model is further validated on twelve beef regions to ensure robust generalization across heterogeneous tissue-specific spoilage patterns. The experimental results demonstrate that the model is capable of multi-step Total Viable Count (TVC) forecasting across horizons from 1 to 9 h. For 1-h short-term prediction, the model can achieve a mean R2 of 0.950 with an RMSE of 0.097, while for long-term forecasting (9 h), it still maintained an R2 above 0.859 across 12 tissues, demonstrating both superior predictive accuracy and sustained temporal stability. In summary, this work establishes a time-series forecasting framework that leverages sensor-derived signal trajectories to capture microbial growth dynamics and the evolution of TVC within beef. By advancing freshness evaluation from static detection to predictive modeling with hour-level resolution, the approach enables reliable estimation of remaining shelf life and provides a quantitative paradigm for meat quality management.
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来源期刊
Biosensors and Bioelectronics
Biosensors and Bioelectronics 工程技术-电化学
CiteScore
20.80
自引率
7.10%
发文量
1006
审稿时长
29 days
期刊介绍: Biosensors & Bioelectronics, along with its open access companion journal Biosensors & Bioelectronics: X, is the leading international publication in the field of biosensors and bioelectronics. It covers research, design, development, and application of biosensors, which are analytical devices incorporating biological materials with physicochemical transducers. These devices, including sensors, DNA chips, electronic noses, and lab-on-a-chip, produce digital signals proportional to specific analytes. Examples include immunosensors and enzyme-based biosensors, applied in various fields such as medicine, environmental monitoring, and food industry. The journal also focuses on molecular and supramolecular structures for enhancing device performance.
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