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A chemical marker (M-2) based computer vision method to locate the cold spot in microwave sterilization process.

机译:基于化学标记(M-2)的计算机视觉方法在微波灭菌过程中定位冷点。

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摘要

The single-mode 915 MHz microwave sterilization system developed at Washington State University, Pullman has the capability to produce high quality shelf stable foods. In order for this technology to receive FDA approval there is a need for a rapid and reliable method to determine the location of cold spots in food products of different chemical composition, and size. My dissertation overcomes the limitations of the single point temperature sensor with a special focus on the development of a novel approach for determining heating patterns using chemical marker M-2 based computer vision method.; Kinetic of chemical marker M-2 formation in mashed potato has been studied to develop a method to locate the cold spots in microwave sterilization processes. Formation of chemical marker M-2 with 1.5% D-ribose was found to be suitable over the time-temperature range of the microwave sterilization process. Factors for chemical marker formation and kinetic parameters, including the order of reaction, reaction rate constant and energy of activation, were determined in this study. The results demonstrated that formation of chemical marker M-2 in mashed potato is a first order reaction.; A computer vision method based on the yield of chemical marker M-2 was developed to determine the heating patterns in a model food, mashed potato. Through interactive programming an IMAQ Vision Builder script was designed to locate the cold spot in foods during thermal processing. Sensitivities to the heating patterns were tested at different levels of salt and for different tray sizes. Results indicated that salt significantly influenced the dielectric loss but microwave heating patterns were repeatable for model foods. The location of the cold spot predicted by the model was validated using fiber optic temperature probes and microbial inoculation studies.; The developed method here was further improved to facilitate the comparison of the heating patterns for multiple trays. To do this, a new visual scale which adjusted the brightness of the scale for samples was developed. A new image system independent of the lighting position was designed as part of this study. Relationships among computer vision parameters, color value, thermal lethality (Fo), and M-2 yield for mashed potatoes were established for two different paths of heating. Validation tests confirmed that the method based on chemical marker M-2 yield can accurately determine the cold spot location in pre-package model food processed by microwave.; To evaluate this method in a food product, salmon in Alfredo sauce was used to determine the efficacy of this computer vision method. For these studies, a different model food based upon whey protein gels were used to simulate the heating patterns in salmon with Alfredo sauce. The dielectric properties of the whey protein gel were matched as closely as possible to the target food with addition of 0.3% salt. To predict the heating patterns in salmon with Alfredo sauce, relationship among color value in terms of grayscale value, thermal lethality to C. botulinum (Fo), and M-2 yield were studied with whey protein gels. Matching the time-temperature profile between whey protein gel and salmon during microwave sterilization process confirmed that whey protein gel can be used to emulate the heating patterns in real foods. The microbiological study was conducted in 10 oz polymeric trays to validate the cold spot location in auto processed salmon with Alfredo sauce. Results showed that whey protein gels in combination with a computer vision method can predict the cold spot in real food system.; The developed computer vision method in this study is effective in locating the cold spots in model and real food systems. Because microwave sterilization process is a promising alternative to conventional retorting methods for producing high quality shelf stable foods, methods are needed to ensure that these foods can be made safely and that processes can be reliably vali
机译:普尔曼(Pullman)由华盛顿州立大学开发的单模915 MHz微波灭菌系统具有生产高质量货架稳定食品的能力。为了使该技术获得FDA的批准,需要一种快速可靠的方法来确定化学成分和大小不同的食品中冷点的位置。我的论文克服了单点温度传感器的局限性,特别着重于开发一种新颖的方法,该方法使用基于化学标记M-2的计算机视觉方法确定加热模式。研究了马铃薯泥中化学标记M-2形成的动力学,以开发一种在微波灭菌过程中定位冷点的方法。已发现在微波灭菌过程的时间-温度范围内,形成具有1.5%D-核糖的化学标记M-2是合适的。在这项研究中确定了化学标记形成和动力学参数的因素,包括反应顺序,反应速率常数和活化能。结果表明,马铃薯泥中化学标记物M-2的形成是一级反应。开发了一种基于化学标记M-2产量的计算机视觉方法,以确定模型食品(土豆泥)中的加热方式。通过交互式编程,设计了IMAQ Vision Builder脚本来定位热处理过程中食品中的冷点。在不同盐含量和不同托盘尺寸下测试了对加热模式的敏感性。结果表明,盐显着影响介电损耗,但模型食物的微波加热方式可重复。使用光纤温度探针和微生物接种研究验证了模型预测的冷点位置。这里开发的方法得到了进一步改进,以便于比较多个托盘的加热方式。为此,开发了一种新的可视标尺,该标尺调整了样品标尺的亮度。本研究设计了一个与照明位置无关的新图像系统。针对两种不同的加热路径,建立了计算机视觉参数,色值,热致死率(Fo)和土豆泥M-2产量之间的关系。验证测试证实,基于化学标记M-2产量的方法可以准确确定微波加工的预包装模型食品中的冷点位置。为了评估食品中的此方法,使用阿尔弗雷多酱中的鲑鱼来确定此计算机视觉方法的功效。对于这些研究,使用基于乳清蛋白凝胶的不同模型食物来模拟阿尔弗雷多酱中鲑鱼的加热方式。加入0.3%的盐后,乳清蛋白凝胶的介电性能应与目标食品尽可能接近。为了预测用Alfredo酱在鲑鱼中的加热方式,使用乳清蛋白凝胶研究了色度值,灰度值,对肉毒梭菌(Fo)的热致死率和M-2产量之间的关系。在微波灭菌过程中匹配乳清蛋白凝胶和鲑鱼之间的时间-温度曲线,证实了乳清蛋白凝胶可用于模拟真实食品中的加热方式。微生物学研究在10盎司的聚合物托盘中进行,以验证自动加工三文鱼和Alfredo酱中的冷点位置。结果表明,乳清蛋白凝胶结合计算机视觉方法可以预测实际食品系统中的冷点。在这项研究中开发的计算机视觉方法可以有效地定位模型和实际食品系统中的冷点。由于微波灭菌工艺是生产高品质货架稳定食品的传统蒸煮方法的有前途的替代方法,因此需要采取一些方法来确保可以安全地生产这些食品并且可以可靠地进行加工

著录项

  • 作者

    Pandit, Ram Bhuwan.;

  • 作者单位

    Washington State University.;

  • 授予单位 Washington State University.;
  • 学科 Agriculture Food Science and Technology.; Engineering Agricultural.
  • 学位 Ph.D.
  • 年度 2006
  • 页码 203 p.
  • 总页数 203
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类 农产品收获、加工及贮藏;农业工程;
  • 关键词

  • 入库时间 2022-08-17 11:39:47

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