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首页> 外文期刊>Food and bioprocess technology >Determination of cleaning end of dairy protein fouling using an online system combining ultrasonic and classification methods.
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Determination of cleaning end of dairy protein fouling using an online system combining ultrasonic and classification methods.

机译:使用结合超声和分类方法的在线系统确定乳制品蛋白质结垢的清洁终点。

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摘要

Fouling and cleaning of heat exchangers in food industry are severe and costly issues and of high importance. In this study, a planar heat exchanger was constructed to produce and clean milk protein fouling similar to industry. Using a combination of an ultrasonic measuring method and classification machines cleaning should be monitored online to adapt cleaning time. After reproducible fouling deposit was built, cleaning started which was monitored using an ultrasonic measuring unit. The measured ultrasonic signal was analyzed for seven acoustic features and fed together with temperature and mass flow rate (both measured) into a classification method for decision of fouling presence or absence. For classification, artificial neural network (ANN) and support vector machine (SVM) was applied displaying detection accuracies of more than 80 % (ANN) and 94% (SVM), respectively. Besides, the slope change of the seven acoustic features was monitored with time resulting in a cleaning time of at least 21 +or- 4 min. The cleaning time determined by the new sensor system is comparable with previously determined cleaning times for this setup. This study demonstrated that ultrasound based sensor systems offer a new tool to determine presence or absence of fouling and to monitor cleaning processes in the food industry with high accuracy. copyright Springer Science+Business Media New York 2013.
机译:食品工业中热交换器的结垢和清洁是严重且昂贵的问题,并且具有很高的重要性。在这项研究中,构造了一个平面热交换器来生产和清洁类似于工业的牛奶蛋白结垢。应结合使用超声波测量方法和分类机,对清洁进行在线监测以适应清洁时间。积垢重现后,开始清洁,并使用超声波测量仪进行监控。分析测得的超声信号的七个声学特征,并将其与温度和质量流率(均测得)一起输入到分类方法中,以判断是否存在污垢。对于分类,应用了人工神经网络(ANN)和支持向量机(SVM),分别显示了80%(ANN)和94%(SVM)以上的检测精度。此外,随时间监测七个声学特征的斜率变化,从而导致至少21±4分钟的清洁时间。由新传感器系统确定的清洁时间与该设置中先前确定的清洁时间相当。这项研究表明,基于超声波的传感器系统提供了一种新的工具,可以确定是否存在污垢,并可以高精度监控食品行业的清洁过程。版权所有Springer Science + Business Media纽约,2013年。

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