Deteksi Adulterasi Daging Babi pada Kornet Sapi Menggunakan Electronic Nose Berbasis Sensor MQ2 dan MQ9
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Fakultas Teknologi Pertanian
Abstract
Cases of pork adulteration in processed meat products are increasing,
particularly in beef corned, which is difficult to identify visually and may violate
halal requirements. This study aimed to analyze the digital signal pattern of an
electronic nose (E-nose) based on MQ2 and MQ9 sensors and to evaluate the
accuracy of detecting pork adulteration in beef corned using supervised learning
methods. The methodology includes preparing beef corned samples with varying
compositions of beef and pork (0–50%), acquiring aroma data using the E-nose
through flushing, sensing, and cleaning stages, and analyzing the data using
statistical parameters (mean, standard deviation, maximum, minimum, skewness,
and kurtosis). The data were then classified using SVM, CNN, and BiLSTM-CNN
models and evaluated using a confusion matrix and training–validation loss curves.
The results show that the sensing stage produces the most significant sensor
response in distinguishing sample characteristics. The combination of mean–
standard deviation–maximum–minimum parameters provides the best
classification performance. The BiLSTM-CNN model achieved the highest
accuracy (95–100%), followed by CNN, while SVM showed lower performance at
low adulteration concentrations. Evaluation metrics indicate accuracy, precision,
recall, and F1-score of 1.0, with no indication of overfitting. In conclusion, the E-
nose system, based on MQ2 and MQ9 sensors combined with supervised learning,
is effective and accurate in detecting pork adulteration in beef corned, particularly
at higher levels of adulteration.
Keywords: corned, electronic nose, pork adulteration, supervised learning
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