4.7 Article

Classification and regression of ELM, LVQ and SVM for E-nose data of strawberry juice

Journal

JOURNAL OF FOOD ENGINEERING
Volume 144, Issue -, Pages 77-85

Publisher

ELSEVIER SCI LTD
DOI: 10.1016/j.jfoodeng.2014.07.015

Keywords

Electronic nose; Strawberry juice; Pretreatments; Classification; Regression; Extreme Learning Machine

Funding

  1. National Key Technology RD Program [2012BAD29802-4]
  2. Chinese National Foundation of Nature and Science [31071548, 31370555]
  3. Doctoral Program of the Ministry of Education [2010010110133]

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An electronic nose (E-nose) has been used to characterize five types of strawberry juices based on different processing approaches (i.e., Microwave Pasteurization, Steam Blanching, High Temperature Short Time Pasteurization, Frozen-Thawed, and Freshly Squeezed). Juice quality parameters (vitamin C and total acid) were detected by traditional measuring methods. Multivariate statistical methods (Principle Component Analysis, Linear Discriminant Analysis, Multiple Linear Regression, and Partial Least Squares Regression) and neural networks (Extreme Learning Machine (ELM), Learning Vector Quantization and Library Support Vector Machines) were employed for qualitative classification and quantitative regression. ELM showed best performances on classification and regression, indicating that ELM would be a good choice for E-nose data treatment. Results provide promising principles for the elaboration of E-nose which could be used to discriminate processed juices and to predict juice quality parameters based on appropriate algorithms for the beverage industry. (C) 2014 Elsevier Ltd. All rights reserved.

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