4.7 Article

Lightweight Residual Convolutional Neural Network for Soybean Classification Combined With Electronic Nose

Journal

IEEE SENSORS JOURNAL
Volume 22, Issue 12, Pages 11463-11473

Publisher

IEEE-INST ELECTRICAL ELECTRONICS ENGINEERS INC
DOI: 10.1109/JSEN.2022.3174251

Keywords

Convolution; Feature extraction; Kernel; Convolutional neural networks; Sensors; Degradation; Electronic noses; Lightweight residual convolutional neural network (LRCNN); grouped heterogeneous kernel-based convolution (GHConv); lightweight residual convolutional block (LRCB); electronic nose (E-nose); gas identification; soybean

Funding

  1. National Natural Science Foundation of China [31772059, 31871882]
  2. Science and Technology Development Plan of Jilin Province [YDZJ202101ZYTS135]

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This paper proposes a method based on a lightweight residual convolutional neural network (LRCNN) and an electronic nose (e-nose) for tracing soybean quality. The method obtains soybean gas information using an e-nose, and achieves high-precision identification of soybean quality differences through grouped heterogeneous kernel-based convolution and LRCNN.
The quality of soybeans from different growing areas is different. It is common for low-quality soybeans to fake high-quality soybeans. This paper proposes a lightweight residual convolutional neural network (LRCNN) combined with an electronic nose (e-nose) to realize soybean quality traceability. Firstly, obtain soybean gas information from different growing areas through the e-nose. Then, according to the characteristics of e-nose detection data, the grouped heterogeneous kernel-based convolution (GHConv) is proposed, which effectively reduces the number of parameters through the combination of grouping and heterogeneous convolution. Finally, the LRCNN is proposed, which reduces the number of network parameters and avoids feature degradation, realizing the high-precision identification of soybean quality differences. In the multi-model comparison, the classification accuracy of the network is 98.37%, recall is 98.20%, and precision is 98.49%. The results show that the LRCNN combined with the e-nose can effectively identify the gas information of soybeans from different growing areas, providing a new method for soybean quality traceability.

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