An attempt to predict pork drip loss from pH and colour measurements or near infrared spectra using artificial neural networks |
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Authors: | Maja Prevolnik,Marjeta Čandek-Potokar,Marjana Novič,Dejan &Scaron korjanc |
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Affiliation: | 1. University of Maribor, Faculty of Agriculture and Life Sciences, Pivola 10, 2311 Ho?e, Slovenia;2. Agricultural Institute of Slovenia, Hacquetova ulica 17, 1000 Ljubljana, Slovenia;3. National Institute for Chemistry, Hajdrihova ulica 19, 1000 Ljubljana, Slovenia |
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Abstract: | The ability to predict meat drip loss by using either near infrared spectra (SPECTRA) or different meat quality (MQ) measurements, such as pH24, Minolta L∗, a∗, b∗, along with different chemometric approach, was investigated. Back propagation (BP) and counter propagation (CP) artificial neural networks (ANN) were used and compared to PLS (partial least squares) regression. Prediction models were created either by using MQ measurements or by using NIR spectral data as independent predictive variables. The analysis consisted of 312 samples of longissimus dorsi muscle. Data were split into training and test set using 2D Kohonen map. The error of drip loss prediction was similar for ANN (2.2–2.6%) and PLS models (2.2–2.5%) and it was higher for SPECTRA (2.5–2.6%) than for MQ (2.2–2.3%) based models. Nevertheless, the SPECTRA based models gave reasonable prediction errors and due to their simplicity of data acquisition represent an acceptable alternative to classical meat quality based models. |
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Keywords: | Artificial neural networks Kohonen maps (SOM) NIR spectroscopy Drip loss Pork Prediction |
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