Title
Artificial neural network model for prediction of cold spot temperature in retort sterilization of starch-based foods
Date Issued
01 April 2012
Access level
metadata only access
Resource Type
journal article
Author(s)
Tokyo University of Marine Science and Technology
Abstract
An artificial neural network (ANN) model was developed for prediction of the cold spot temperature profile during retort processing using starch dispersion (STD) as a model food. STDs of different concentrations were prepared by mixing corn starch powder with distilled water at 90°C for 30 min. Each of the partially gelatinized STDs thus prepared was filled in retort pouches and processed in a retort under various combinations of holding temperature, holding time, and rotational speed. Thermocouples were inserted into selected pouches one by one to monitor the cold spot temperature at regular intervals. The profiles of cold spot temperature together with retort temperature thus obtained were served to ANN modeling as training or validation data. Back-propagation network was chosen as the network model. Input variables for the model were current and past temperatures of the cold spot (T n, T n-1, and T n-2) and current retort temperature θ n and current time t n. Output was the temperature of the cold spot at the next time step T n+1. A model with 2 hidden layers, which contained 11 and 15 nodes, respectively, was the best among the models tested. Using the model developed, prediction of a whole profile of the cold spot temperature was tested, starting from temperature data of the first three time steps with a whole profile of retort temperature monitored. The results showed very good performance of the model, relative errors for F 0 value prediction being less than 2%. © 2011 Elsevier Ltd. All rights reserved.
Start page
553
End page
560
Volume
109
Issue
3
Language
English
OCDE Knowledge area
Alimentos y bebidas
Subjects
Scopus EID
2-s2.0-83955165320
PubMed ID
Source
Journal of Food Engineering
ISSN of the container
02608774
Sponsor(s)
This work was supported in part by a research grant from the Iijima Memorial Foundation for the Promotion of Food Science and Technology .
Sources of information:
Directorio de ProducciĂłn CientĂfica
Scopus