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Artificial neural networks: a promising tool to design and optimize high-pressure food processes

机译:人工神经网络:设计和优化高压食品工艺的有前途的工具

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In this work, an artificial neural network (ANN) is used to predict two parameters of interest for high-pressure food processing: the maximum or minimum temperature reached in the sample after pressurization and the time needed for thermal re-equilibration in the high-pressure system. Both variables together represent in a reliable form the temperature evolution during the high-pressure process. The ANN was trained with a data file composed of: applied pressure, pressure increase rate, set point temperature, high-pressure vessel temperature and ambient temperature altogether with the parameters to predict. After a proper training, the ANN was able to make predictions accurately and therefore, it becomes a useful tool to design and optimize high-pressure processes in the food industry where the pressure/temperature evolution is an essential factor to control the microbiological and/or enzymatic activity of the products.
机译:在这项工作中,人工神经网络(ANN)用于预测高压食品加工的两个重要参数:加压后样品中达到的最高或最低温度,以及在高温条件下进行热重新平衡所需的时间。压力系统。这两个变量一起以可靠的形式表示高压过程中的温度变化。用数据文件对人工神经网络进行训练,该数据文件包括:施加压力,压力增加率,设定点温度,高压容器温度和环境温度以及预测参数。经过适当的培训后,人工神经网络能够准确地做出预测,因此,它成为设计和优化食品行业中高压过程的有用工具,其中压力/温度的变化是控制微生物和/或微生物的重要因素产品的酶活性。

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