AI Article Synopsis

  • The study aimed to enhance the performance of identifying the freshness of fish meal samples, focusing on total volatile basic nitrogen (TVB-N) and acid value (AV), by using a range of feature extraction methods and classification algorithms.
  • The research leveraged 402 original features and employed a long short-term memory (LSTM) network, resulting in a streamlined set of 30 features that significantly improved classification and regression accuracy.
  • The best classification accuracy of 95.4% was achieved with the support vector machine method, while the least squares support vector regression method provided the most accurate predictions for TVB-N and AV, demonstrating the effectiveness of LSTM for feature extraction in electronic nose applications.

Article Abstract

To improve the classification and regression performance of the total volatile basic nitrogen (TVB-N) and acid value (AV) of different freshness fish meal samples detected by a metal-oxide semiconductor electronic nose (MOS e-nose), 402 original features, 62 manually extracted features, manually extracted and selected features by the RFRFE method, and the features extracted by the long short-term memory (LSTM) network were used as inputs to identify the freshness. The classification performance of the freshness grades and the estimation performance of the TVB-N and AV values of fish meal with different freshness were compared. According to the sensor response curve, preprocessing and feature extraction steps were first applied to the original data. Then, five classification algorithms and four regression algorithms were used for modeling. The results showed that a total of 30 features were extracted using the LSTM network, and the number of extracted features was significantly reduced. In the classification, the highest accuracy rate of 95.4% was obtained using the support vector machine method. In the regression, the least squares support vector regression method obtained the best root mean square error (RMSE). The coefficient of determination (R), RMSE, and relative standard deviation (RSD) between the predicted value of TVBN and the actual value were 0.963, 11.01, and 7.9%, respectively. The R, RMSE, and RSD between the predicted value of AV and the actual value were 0.972, 0.170, and 6.05%, respectively. The LSTM feature extraction method provided a new method and reference for feature extraction using an E-nose to identify other animal-derived material samples.

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Source
http://dx.doi.org/10.1111/1750-3841.17231DOI Listing

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