Applied Sciences (May 2020)

Prediction of Soluble Solids Content in Green Plum by Using a Sparse Autoencoder

  • Luxiang Shen,
  • Honghong Wang,
  • Ying Liu,
  • Yang Liu,
  • Xiao Zhang,
  • Yeqi Fei

DOI
https://doi.org/10.3390/app10113769
Journal volume & issue
Vol. 10, no. 11
p. 3769

Abstract

Read online

The soluble solids content (SSC) affects the flavor of green plums and is an important parameter during processing. In recent years, the hyperspectral technology has been widely used in the nondestructive testing of fruit ingredients. However, the prediction accuracy of most models can hardly be improved further. The rapid development of deep learning technology has established the foundation for the improvement of building models. A new hyperspectral imaging system aimed at measuring the green plum SSC is developed, and a sparse autoencoder (SAE)–partial least squares regression (PLSR) model is combined to further improve the accuracy of component prediction. The results of the experiment show that the SAE–PLSR model, which has a correlation coefficient of 0.938 and root mean square error of 0.654 for the prediction set, can achieve better performance for the SSC prediction of green plums than the three traditional methods. In this paper, integration approaches have combined three different pretreatment methods with PLSR to predict the SSC in green plums. The SAE–PLSR model has shown good prediction performance, indicating that the proposed SAE–PLSR model can effectively detect the SSC in green plums.

Keywords