Ashfaq Muhammad, Khan Imran, Shah Dilawar, Ali Shujaat, Tahir Muhammad
Department of Software Engineering, International Islamic University, Islamabad, 44000, Pakistan.
Department of Computer Science, Bacha Khan University, Charsadda, Pakistan.
Sci Rep. 2025 Jul 21;15(1):26446. doi: 10.1038/s41598-025-11780-7.
Accurate forecasting of crop yields is essential for ensuring food security and promoting sustainable agricultural practices. Winter wheat, a key staple crop in Pakistan, faces challenges in yield prediction because of the complex interactions among climatic, soil, and environmental factors. This study introduces DeepAgroNet, a novel three-branch deep learning framework that integrates satellite imagery, meteorological data, and soil characteristics to estimate winter wheat yields at the district level in southern Pakistan. The framework employs three leading deep learning models-convolutional neural networks (CNN), recurrent neural networks (RNN), and artificial neural networks (ANN)-trained on detrended yield data from 2017 to 2022. The Google Earth Engine platform was used to process and integrate remote sensing, climate, and soil data. CNN emerged as the most effective model, achieving an R value of 0.77 and a forecast accuracy of 98% one month before harvest. The RNN and ANN models also demonstrated moderate predictive capabilities, with R values of 0.72 and 0.66, respectively. The results showed that all models achieved less than 10% yield error rates, highlighting their ability to effectively integrate spatial, temporal, and static data. This study emphasizes the importance of deep learning in addressing the limitations of traditional manual methods for yield prediction. By benchmarking the results against Crop Report Services data, this study confirms the reliability and scalability of the proposed framework. The findings demonstrate the potential of DeepAgroNet to improve precision agriculture practices, contributing to food security and sustainable agricultural development in Pakistan. Furthermore, this adaptable framework can serve as a model for similar applications in other agricultural regions around the world.
准确预测作物产量对于确保粮食安全和促进可持续农业实践至关重要。冬小麦是巴基斯坦的一种关键主食作物,由于气候、土壤和环境因素之间的复杂相互作用,其产量预测面临挑战。本研究引入了DeepAgroNet,这是一种新颖的三分支深度学习框架,它整合了卫星图像、气象数据和土壤特征,以估算巴基斯坦南部地区的冬小麦产量。该框架采用了三种领先的深度学习模型——卷积神经网络(CNN)、循环神经网络(RNN)和人工神经网络(ANN)——对2017年至2022年的去趋势产量数据进行训练。使用谷歌地球引擎平台来处理和整合遥感、气候和土壤数据。CNN成为最有效的模型,在收获前一个月的R值达到0.77,预测准确率达到98%。RNN和ANN模型也显示出中等的预测能力,R值分别为0.72和0.66。结果表明,所有模型的产量误差率均低于10%,突出了它们有效整合空间、时间和静态数据的能力。本研究强调了深度学习在解决传统手动方法进行产量预测的局限性方面的重要性。通过将结果与作物报告服务数据进行对比,本研究证实了所提出框架的可靠性和可扩展性。研究结果表明了DeepAgroNet在改善精准农业实践方面的潜力,为巴基斯坦的粮食安全和可持续农业发展做出了贡献。此外,这种适应性强的框架可以作为世界其他农业地区类似应用的模型。