Pandit Pramit, Sagar Atish, Ghose Bikramjeet, Paul Moumita, Kisi Ozgur, Vishwakarma Dinesh Kumar, Mansour Lamjed, Yadav Krishna Kumar
Department of Agricultural Statistics & Computer Application, Rabindra Nath Tagore Agriculture College, Birsa Agricultural University, Ranchi, 834006, India.
Department of Agricultural Engineering, Rabindra Nath Tagore Agriculture College, Birsa Agricultural University, Ranchi, 834006, India.
Sci Rep. 2024 Nov 4;14(1):26639. doi: 10.1038/s41598-024-74503-4.
Improving the forecasting accuracy of agricultural commodity prices is critical for many stakeholders namely, farmers, traders, exporters, governments, and all other partners in the price channel, to evade risks and enable appropriate policy interventions. However, the traditional mono-scale smoothing techniques often fail to capture the non-stationary and non-linear features due to their multifarious structure. This study has proposed a CEEMDAN (Complete Ensemble Empirical Mode Decomposition with Adaptive Noise)-TDNN (Time Delay Neural Network) model for forecasting non-linear, non-stationary agricultural price series. This study has evaluated its suitability in comparison with the other three major EMD (Empirical Mode Decomposition) variants (EMD, Ensemble EMD and Complementary Ensemble EMD) and the benchmark (Autoregressive Integrated Moving Average, Non-linear Support Vector Regression, Gradient Boosting Machine, Random Forest and TDNN) models using monthly wholesale prices of major oilseed crops in India. Outcomes from this investigation reflect that the CEEMDAN-TDNN hybrid models have outperformed all other forecasting models on the basis of evaluation metrics under consideration. For the proposed model, an average improvement of RMSE (Root Mean Square Error), Relative RMSE and MAPE (Mean Absolute Percentage Error) values has been observed to be 20.04%, 19.94% and 27.80%, respectively over the other EMD variant-based counterparts and 57.66%, 48.37% and 62.37%, respectively over the other benchmark stochastic and machine learning models. The CEEMD-TDNN and CEEMDAN-TDNN models have demonstrated superior performance in predicting the directional changes of monthly price series compared to other models. Additionally, the accuracy of forecasts generated by all models has been assessed using the Diebold-Mariano test, the Friedman test, and the Taylor diagram. The results confirm that the proposed hybrid model has outperformed the alternative models, providing a distinct advantage.
提高农产品价格预测的准确性对许多利益相关者至关重要,这些利益相关者包括农民、贸易商、出口商、政府以及价格渠道中的所有其他合作伙伴,以便规避风险并进行适当的政策干预。然而,传统的单尺度平滑技术由于其结构的多样性,往往无法捕捉到非平稳和非线性特征。本研究提出了一种用于预测非线性、非平稳农产品价格序列的CEEMDAN(带自适应噪声的完全集成经验模态分解)-TDNN(时延神经网络)模型。本研究使用印度主要油籽作物的月度批发价格,与其他三种主要的EMD(经验模态分解)变体(EMD、集成EMD和互补集成EMD)以及基准(自回归积分滑动平均、非线性支持向量回归、梯度提升机、随机森林和TDNN)模型进行比较,评估了其适用性。该调查结果表明,基于所考虑的评估指标,CEEMDAN-TDNN混合模型优于所有其他预测模型。对于所提出的模型,与其他基于EMD变体的对应模型相比,RMSE(均方根误差)、相对RMSE和MAPE(平均绝对百分比误差)值的平均改进分别为20.04%、19.94%和27.80%,与其他基准随机和机器学习模型相比,分别为57.66%、48.37%和62.37%。与其他模型相比,CEEMD-TDNN和CEEMDAN-TDNN模型在预测月度价格序列的方向变化方面表现出卓越的性能。此外,使用迪博尔德-马里亚诺检验、弗里德曼检验和泰勒图评估了所有模型生成的预测准确性。结果证实,所提出的混合模型优于替代模型,具有明显优势。