
Artificial Neural Network for Predicting Storage Time of Frozen Meat / Lakehal and Lakehal _______________________________________
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INTRODUCTION
Across the world, meat occupies a central place in diet. It is used 
in the preparation of a variety of dishes, from the most traditional 
to the most modern. It is associated with moments of pleasure and 
celebration, with family or friends. In this regard, freezing meat is 
a common and widespread practice in most families and is part of 
their preservation habits. However, even when frozen, meat is not 
an inert material; it is subject to changes in organoleptic properties 
(texture, taste, appearance), nutritional properties (oxidation of lipids 
and proteins), or structural changes during the freezing process itself 
[1].Sensory analysis provides a fast and reliable non–destructive 
alternative to analyze meat quality and shelf life. The main sensory 
attributes analyzed in such analysis are texture, avor, and color. 
When determining shelf life during sensory analysis, color proling 
is of particular importance [2].
Color analysis is a vital component in assessing food quality, and it 
can be performed through sensory evaluation by trained inspectors 
or using instrumental methods such as colorimeters. However, the 
subjectivity of human inspectors in evaluating color can lead to 
discrepancies between observers. To overcome this limitation, the 
International Commission on Illumination (CIE) proposed a standard 
color space known as CIELAB in 1976 [3]. This color space denes 
colors in terms of three coordinates: L* for brightness, a* for the 
red–green component, and b* for the yellow–blue component. L* 
ranges from 0 to 100, while a* and b* range from positive to negative. 
The adoption of the CIELAB color space allows for a more reliable and 
objective evaluation of food matrix colors. It is particularly useful for 
detecting color changes during storage and processing, making it a 
crucial tool for quality control in the food industry.
To predict meat storage time, mathematical models such as Logistic, 
Baranyi, modied Gompertz, square–root, Arrhenius model, interaction 
models, and generic models are used to analyze changes in bacterial 
growth with temperature uctuations, according to Hansen et al. [4]. 
These mathematical models are precise and effective in forecasting 
meat storage time. However, in recent years, articial neural networks 
(ANNs) have become increasingly popular in predicting changes that 
occur in meat quality and evaluation. For example, Zhu et al. [5] used 
a neural network to predict various qualities of dry–cured ham based 
on protein degradation. Similarly, Kaczmarek and Muzolf–Panek [6] 
used the ANN modeling technique to simulate variations in TBARS 
levels in the intramuscular lipid fraction of raw beef enriched with 
plant extracts. Additionally, Xu et al. [7] presented a neural network–
based approach to anticipate changes in the quality of frozen shrimp 
(Solenocera melantho). In their recent work, Kaczmarek and Muzolf–
Panek [8] used predictive models to monitor changes in the levels of 
the thiol group (SH) in raw and thermally processed ground chicken 
meat that had been enriched with selected plant extracts during 
storage at different temperatures. Other researchers, including 
Taheri–Garavand et al. [9] and Lalabadi et al. [10], have also used 
various ANN models to analyze the quality, production optimization, 
and sensory freshness of various food products. However, the use 
of computer vision systems as a non–invasive method for quality 
control of meat during its conservation is relatively new. For this 
reason, the aim of this research is to ascertain the potential of color 
values as a reliable method in the evaluation of frozen meat quality 
and to develop an ANN–based model for predicting meat storage 
time based on color values.
MATERIALS AND METHODS
Samples preparation
One hundred twenty samples weighing approximately 600 g were 
selected from the beef biceps femoris muscle slaughtered at the 
Municipal Slaughterhouse of Batna, in North Eastern Algeria, and the 
beef used was less than two years old. These 120 samples were taken 
24 h after the slaughter. The fresh meat samples were analyzed on the 
same day, while the remaining samples were divided into six portions 
corresponding to the six freezing periods (2, 4, 6, 8, 10, and 12 months), 
with each period containing 20 samples. Noting that these samples 
have been vacuum packed in bags made of polyamide and polyethylene 
using vacuum packaging machine (Sealer Machine, China) and frozen at 
–23 ± 1.5°C (CRF–NT64GF40, Condor, Algeria). Temperature monitoring 
throughout the frozen storage period was conducted three times a day 
using a thermometer (TIA 101, China). Prior to photography, each frozen 
sample was thawed in a refrigerator (CRF–NT64GF40, Condor, Algeria) 
at a cool and constant temperature of 4 ± 0.6°C for 24 h.
The computer vision system for image capture consisted of a box 
and two lamps located 50 cm above the samples at an angle of 45°, 
whose purpose was to obtain a uniform light intensity on the sample. 
A digital camera (Canon DS126621,China) was also placed on top at a 
distance of 30 cm from the sample. To reduce the background light, 
the inner walls of the box are covered with an opaque black cloth [11]. 
Using Adobe Photoshop CS3, the color's clarity (L*), redness (a*), and 
yellowness (b*) were numerically assessed (FIG.1).
Application of Articial Neural Networks for modeling
In order to create and utilize ANNs, certain characteristics were 
chosen. While there are numerous types of ANNs to choose from, 
a multilayer perceptron (MLP) was selected. FIG. 2 illustrates the 
schematic representation of MLP networks consisting of three layers: 
the input layer, hidden layer(s), and output layer [12]. Neurons in the 
input layer display three color variables for frozen/thawed meat. The 
output layer, which contains time storage, is complemented by one or 
more neurons in the hidden layer. The number of nodes in these layers 
is determined by trial and error, so there is no xed rule for how many 
hidden layers or neurons are necessary (FIG. 2). The MATLAB interface 
was used during the design phase and optimization. During this study, 
well–known variable statistical indicators, namely R, MSE, MAD MAE, 
and RMSE, were utilized to evaluate the network's eciency. To ensure 
a good t between model approaches and target data points, the R 
value was employed. Meanwhile, MSE is a dependable measure to 
assess the accuracy of a developed procedure, especially when it 
comes to predicting errors for an external set of samples. Additionally, 
the MAD can be applied as a scale measure to account for individual 
differences and elucidate any correlations. Finally, both MAE and 
RMSE are used as evaluation metrics in prediction tasks to assess 
the accuracy of the predictions. Lower values of both MAE and RMSE 
indicate better prediction accuracy.
Statistical analysis
Statistical analysis was performed on the observed values using 
variance analysis (ANOVA) with SPSS software version 22 (IBM SPSS 
Statistics v22). The means were compared using the Tukey method. 
The difference was considered signicant if the probability (P<0.05). 
Otherwise, the difference was considered insignicant (P≥0.05).