| Literature DB >> 32180627 |
Xiao-Hong Wu1,2, Jin Zhu1, Bin Wu3, Da-Peng Huang1, Jun Sun1,2, Chun-Xia Dai1,4.
Abstract
Due to the difference of raw materials and brewing technology, the quality and flavours of vinegar are different. Different kinds of vinegar have different functions and effects. Therefore, it is important to classify the vinegar varieties correctly. This work presented a new fuzzy feature extraction algorithm, called fuzzy Foley-Sammon transformation (FFST), and designed the electronic nose (E-nose) system for classifying vinegar varieties successfully. Principal component analysis (PCA) and standard normal variate (SNV) were used as the data preprocessing algorithms for the E-nose system. FFST, Foley-Sammon transformation (FST) and linear discriminant analysis (LDA) were used to extract discriminant information from E-nose data, respectively. Then, K nearest neighbor (KNN) served as a classifier for the classification of vinegar varieties. The highest identification accuracy rate was 96.92% by using the FFST and KNN. Therefore, the E-nose system combined with the FFST was an effective method to identify Chinese vinegar varieties and this method has wide application prospects. © Association of Food Scientists & Technologists (India) 2019.Keywords: Chinese vinegar; E-nose; Fuzzy Foley–Sammon transformation (FFST); KNN; LDA
Year: 2019 PMID: 32180627 PMCID: PMC7054498 DOI: 10.1007/s13197-019-04165-y
Source DB: PubMed Journal: J Food Sci Technol ISSN: 0022-1155 Impact factor: 2.701