猪肉新鲜度特征波长筛选及无损智能检测装置优化

    Screening of pork freshness feature wavelengths and optimisation of nondestructive intelligent detection device

    • 摘要: 食品安全和质量控制在现代社会变得至关重要,猪肉的安全和质量直接关系到人们的健康和生活质量。传统的食品安全检测方式往往存在着效率低下、破坏样本等问题。为实现猪肉新鲜度的快速、无损检测,在前期研究的基础上,该研究基于猪肉上清液实验平台提取了猪肉新鲜度各指标的特征波长,筛选出了与猪肉新鲜度相关性最高的6个特征波长。分析了猪肉新鲜度指标TVB-N含量、pH值和颜色(L*、a*、b*)随着储藏时间的变化规律和上清液的光谱特征。通过CARS(competitive adaptive reweighted sampling)和SPA(successive projections algorithm)算法筛选出了猪肉上清液光谱中与猪肉相关的特征波长,基于特征波长的PLSR(partial least squares regression)模型性能得到明显的提升,使用SNV-CARS-SPA建立的模型具有最佳性能,TVB-N(total volatile basic nitrogen)含量、pH值、L*、a*b*的预测集相关系数Rp分别为0.996、0.961、0.731、0.922和0.839,校正集均方根误差RMSEP分别为0.388 mg/100g、0.067、2.377、0.832和0.567,其中540、580、680、730 、760 、860 nm这6个特征波长与猪肉新鲜度相关性最高。基于上述研究中的特征波长,优化设计了基于多光谱传感器的检测装置,包括光源模块、控制模块、散热单元、供电单元、采集探头和外壳等,基于Arduino系统对装置的软件进行了设计。建立了猪肉新鲜度指标TVB-N含量、pH值、L*、a*、b*的预测模型,在6个特征波长下TVB-N含量、pH值、L*、a*b*最优模型的Rp分别为0.970、0.937、0.805、0.908和0.915,RMSEP分别为0.874 mg/100g、0.097、1.972、1.514和0.729。与优化前的设备相比,优化后的设备体积更小,制造成本更低,TVB-N检测精度进一步提高。该研究通过硬件和算法的优化,提升了猪肉新鲜度检测模型的性能,对于推动新鲜度检测设备的应用、提升肉类供应链中的质量监控能力、保障消费者的食品安全具有重要意义。

       

      Abstract: In modern culture, food safety and quality control have become increasingly important. The safety and quality of pork is closely tied to the physical well-being and overall quality of life of individuals. When it comes to food safety supervision, the traditional method frequently suffers from issues such as low efficiency, lengthy cycles, and expensive operating costs. Based on the experimental platform of fresh pork supernatant, the characteristic wavelengths of each index of pork freshness were extracted for the purpose of this study. The six characteristic wavelengths that had the highest association with pork freshness were chosen for further investigation. We analysed the changes in freshness index TVB-N concentration, pH value, and colour (L*, a*, b*) of fresh pork as a function of storage duration, as well as the spectrum information of the supernatant. Using CARS and SPA methods, we were able to identify the characteristic wavelengths that are associated with fresh pork in the spectrum of fresh pork supernatant. There was a significant improvement in the performance of the PLS model that was based on unique wavelengths. When the SNV-CARS-SPA preprocessing is complete, The values of the parameters TVB-N content, pH value, Rp of L*, a*, and b* were 0.996, 0.961, 0.731, 0.922, and 0.839, respectively. The RMSEP values were 0.388 mg/100g, 0.067, 2.377, 0.832, and 0.567 with respect to the RMSEP. 540 nm, 580 nm, 680 nm, 730 nm, 760 nm, and 860 nm were the six feature wavelengths that had the best connection with the freshness of pork. Based on the characteristic wavelength that was discovered in the research described above, as well as the software and hardware that needed to be improved in the laboratory handheld device, the miniature spectrometer of the handheld device was replaced with a multi-spectral sensor. Additionally, the light source module and control module were redesigned, and the structure of the device, including the cooling unit, power supply unit, acquisition probe, and shell, was improved. We have changed the software of the gadget such that it is based on the Arduino system. The stability of the gadget is superior to that of the enhanced device, which brings us to our final point. There were established the prediction models of the fresh pork freshness indices, which included the TVB-N content, pH value, L*, a*, and b*. The optimal models were obtained following SNV preprocessing, and the prediction models were higher for TVB-N content, pH value, a* and b* indexes. Following this, the optimal models were obtained. The best model of TVB-N content, pH value, L*, a*, and b* had Rp values of 0.970, 0.937, 0.805, 0.908, and 0.915, respectively, when measured under the six distinctive wavelengths. In that order, the RMSEP values were as follows: 0.874 mg/100g, 0.097, 1.972, 1.514, and 0.729. Before the enhancement, the portable fresh pork freshness detection device was superior to other indexes, except for the index brightness L*, which has an impact on the ability to differentiate between freshness and other factors. According to the findings, the upgraded device had the capability of determining whether fresh pork was fresh or not, and it predicted the freshness index TVB-N with a higher degree of precision than the device that had not been advanced.

       

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