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Method using electronic nose to identify vinegar varieties by extracting optimization fuzzy identification vector

An optimal identification vector, electronic nose technology, applied in character and pattern recognition, instruments, computer parts and other directions, can solve the problems of high cost and pattern recognition algorithm affecting the classification accuracy, so as to improve the classification accuracy and improve the classification accuracy. The effect of accuracy and easy classification

Active Publication Date: 2017-07-14
吉安集睿科技有限公司
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AI Technical Summary

Problems solved by technology

[0005] Aiming at the current problems that the cost of vinegar classification is too high, and the selection of different pattern recognition algorithms will affect the classification accuracy, the present invention proposes a method of optimizing the extraction of fuzzy identification vectors for electronic nose identification of vinegar varieties to improve the accuracy of vinegar category classification. Rate

Method used

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  • Method using electronic nose to identify vinegar varieties by extracting optimization fuzzy identification vector
  • Method using electronic nose to identify vinegar varieties by extracting optimization fuzzy identification vector
  • Method using electronic nose to identify vinegar varieties by extracting optimization fuzzy identification vector

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Experimental program
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Effect test

Embodiment

[0050] Step 1. Use the electronic nose to collect samples of different varieties of vinegar:

[0051] The electronic nose was energized, and the five types of vinegar were collected 51 times, a total of 255 times were collected, and 255 samples were obtained, and the experimental data collection results were saved. The total sample is a 255×10 data matrix, and the total sample is divided into training samples and test samples: the first 25 of the 51 samples of each type of vinegar are used as training samples, and the last 26 are used as test samples. The number of training samples is 125, each sample is a vector of 1×10, and a data matrix of 125×10 is obtained; the number of test samples is 130, and each sample is a vector of 1×10, and a data matrix of 130×10 is obtained.

[0052] Step 2. Optimizing the vinegar sample data:

[0053] 1. Randomly select b sensors from a sensor without sorting. situation. In this example, a takes 10, and b takes 8. There are 45 situations in...

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Abstract

The invention discloses a method using an electronic nose to identify vinegar varieties by extracting an optimization fuzzy identification vector. Several sensors are randomly selected from the sensors of the electronic nose. Collected data corresponding to the sensors are extracted from training samples and are used as new training samples. The class mean value of new training samples, the grand mean of new training samples, the inter-class dispersion matrix and the intra-class dispersion matrix of new training samples, the trace of the inter-class dispersion matrix and the trace and the optimal value of the intra-class dispersion matrix are calculated. The new training sample corresponding to the selected sensor is used as the optimal training sample when the optimal value is the maximum. The identification information of the optimal training sample is extracted. The optimal identification vector set is acquired. The optimal identification vector set is linearly transformed to acquire a projection sample set. The projection sample set is classified to identify vinegar varieties. According to the invention, the data dimension can be reduced without the loss of main information; the influence of noise is reduced; and the classification accuracy of vinegar varieties is improved.

Description

technical field [0001] The invention relates to a method for identifying vinegar varieties, in particular to a method for identifying vinegar varieties by using an electronic nose. Background technique [0002] Vinegar is an essential condiment in family life. There are many types of vinegar on the market, and their flavors are different due to different places of origin, ingredients, and fermentation methods. Flavor is one of the important indicators of vinegar classification and one of the main factors of consumer acceptance. However, there are many vinegar products on the market. During the production process, the fermentation temperature, the depth of fermented grains, and the fermentation time are mostly controlled by the experience of the master workers, so it is easy to cause uneven quality of vinegar. Not one. For a long time, gas chromatography has been used to objectively measure odor, but gas chromatography has harsh requirements on the experimental environment ...

Claims

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Application Information

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IPC IPC(8): G06K9/62
CPCG06F18/24137G06F18/214
Inventor 武小红嵇港傅海军孙俊武斌田潇瑜戴春霞
Owner 吉安集睿科技有限公司
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