深度学习用于多源数据驱动的中国东北地区作物产量预测

Jian Lu, Jian Li, Hongkun Fu, Xuhui Tang, Zhao Liu, Hui Chen, Yue Sun, Xiangyu Ning
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引用次数: 0

摘要

准确预测作物产量对于提高农业效率和确保粮食安全至关重要。本研究评估了 CNN-LSTM-Attention 模型在预测中国东北地区玉米、水稻和大豆产量方面的性能,并将其与 RF、XGBoost 和 CNN 等传统模型的效果进行了比较。利用从 2014 年到 2020 年的多源数据(包括植被指数、环境变量和光合作用参数),我们的研究考察了该模型捕捉基本时空变化的能力。CNN-LSTM-Attention 模型集成了卷积神经网络、长短期记忆和注意力机制,可有效处理复杂的数据集,并管理农业数据中的非线性关系。值得注意的是,该研究探索了利用 kNDVI 预测多种作物产量的潜力,突出了其有效性。我们的研究结果表明,与传统方法相比,先进的深度学习模型大大提高了产量预测的准确性。我们提倡在农业实践中采用先进的深度学习技术,这样可以大大提高产量预测的准确性,并改善粮食生产战略。
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Deep Learning for Multi-Source Data-Driven Crop Yield Prediction in Northeast China
The accurate prediction of crop yields is crucial for enhancing agricultural efficiency and ensuring food security. This study assesses the performance of the CNN-LSTM-Attention model in predicting the yields of maize, rice, and soybeans in Northeast China and compares its effectiveness with traditional models such as RF, XGBoost, and CNN. Utilizing multi-source data from 2014 to 2020, which include vegetation indices, environmental variables, and photosynthetically active parameters, our research examines the model’s capacity to capture essential spatial and temporal variations. The CNN-LSTM-Attention model integrates Convolutional Neural Networks, Long Short-Term Memory, and an attention mechanism to effectively process complex datasets and manage non-linear relationships within agricultural data. Notably, the study explores the potential of using kNDVI for predicting yields of multiple crops, highlighting its effectiveness. Our findings demonstrate that advanced deep-learning models significantly enhance yield prediction accuracy over traditional methods. We advocate for the incorporation of sophisticated deep-learning technologies in agricultural practices, which can substantially improve yield prediction accuracy and food production strategies.
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