4.5 Article

Food quality evaluation in drying: Structuring of measurable food attributes into multi-dimensional fuzzy sets

Journal

DRYING TECHNOLOGY
Volume 40, Issue 11, Pages 2293-2307

Publisher

TAYLOR & FRANCIS INC
DOI: 10.1080/07373937.2021.1933514

Keywords

Food quality control; principal component analysis; fuzzy clustering; artificial neural network

Funding

  1. Canadian Network for Research and Innovation in Machining Technology, Natural Sciences and Engineering Research Council of Canada

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The study evaluates food quality by mapping food quality attributes into multi-dimensional fuzzy sets using PCA and subtractive clustering. The methodology shows promising results in real-time quality evaluation for shrimp batch drying, with computational time below 1 second. The data-driven algorithm has unlimited potential for real-time fuzzy control and optimization.
Food quality is a fuzzy category, which could be evaluated using fuzzy logic. Our approach to food quality evaluation is based on mapping food quality attributes into a fuzzy domain as a multi-dimensional fuzzy sets. First, the data representing quality attributes are mapped into orthogonal coordinates using PCA to reduce dimensionality. Second, subtractive clustering (SC) is applied to determine a representative number of clusters. Each point in the dataset is associated with each cluster by credibilistic fuzzy C-means clustering (CFCM). After data organized in fuzzy clusters, an artificial neural network (ANN) is trained to associate each point in the dataset with its membership degree in each cluster. Trained ANN serves as a predictive model to convert real-time data stream into the multi-dimensional fuzzy domain. The application of this methodology is illustrated for real-time quality evaluation in shrimp batch drying. In this study 27 quality attributes have been merged into 9 orthonormal vectors, which have been clustered into 10 fuzzy sets. This structuring of the experimental fuzzy domain allowed the development of a multi-dimensional kinetic model, which improved the quality of shrimp drying. The computational time for quality identification in the fuzzy domain is below 1 sec, which is satisfactory for most real-time applications. This data-driven algorithm is completely automated and has unlimited potential for real-time fuzzy control and optimization.

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