College of Computer, National University of Defense Technology, Changsha, 410005, People's Republic of China.
College of Resources and Environment, Hunan Agricultural University, Changsha, 410128, People's Republic of China.
Environ Sci Pollut Res Int. 2022 Jul;29(35):53642-53655. doi: 10.1007/s11356-022-19640-x. Epub 2022 Mar 15.
The enrichment of heavy metals in the soil-rice system is affected by various factors, which hampers the prediction of heavy metal concentrations. In this research, a prediction model (CNN-HM) of heavy metal concentrations in rice was constructed based on convolutional neural network (CNN) technology and 17 environmental factors. For comparison, other machine learning models, such as multiple linear regression, Bayesian ridge regression, support vector machine, and backpropagation neural networks, were applied. Furthermore, the LH-OAT method was used to evaluate the sensitivity of CNN-HM to each environmental factor. The results showed that the R values of CNN-HM for Cd, Pb, Cr, As, and Hg were 0.818, 0.709, 0.688, 0.462, and 0.816, respectively, and both the MAE and RMAE values were acceptable. The sensitivity analysis showed that the concentrations of Cd and Pb, mechanical composition, soil pH, and altitude were the main sensitive features for CNN-HM. Compared with CNN-HM based on all input features, the performance of the quick prediction model that was based on the sensitive features did not degrade significantly, thereby indicating that CNN-HM has stronger stability and robustness. The quick prediction model has extensive application value for timely prediction of the enrichment of heavy metals in emergencies. This study demonstrated the effectiveness and practicability of CNNs in predicting heavy metal enrichment in the soil-rice system and provided a new perspective and solution for heavy metal prediction.
土壤-水稻系统中重金属的富集受多种因素影响,这阻碍了对重金属浓度的预测。本研究基于卷积神经网络(CNN)技术和 17 个环境因素,构建了一种水稻重金属浓度预测模型(CNN-HM)。为了进行比较,还应用了其他机器学习模型,如多元线性回归、贝叶斯岭回归、支持向量机和反向传播神经网络。此外,还使用 LH-OAT 方法评估了 CNN-HM 对每个环境因素的敏感性。结果表明,CNN-HM 对 Cd、Pb、Cr、As 和 Hg 的 R 值分别为 0.818、0.709、0.688、0.462 和 0.816,MAE 和 RMAE 值均在可接受范围内。敏感性分析表明,Cd 和 Pb 浓度、机械组成、土壤 pH 值和海拔高度是 CNN-HM 的主要敏感特征。与基于所有输入特征的 CNN-HM 相比,基于敏感特征的快速预测模型的性能没有明显下降,这表明 CNN-HM 具有更强的稳定性和鲁棒性。快速预测模型对于及时预测紧急情况下重金属在土壤-水稻系统中的富集具有广泛的应用价值。本研究证明了 CNN 在预测土壤-水稻系统中重金属富集方面的有效性和实用性,为重金属预测提供了新的视角和解决方案。