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Efficient agricultural yield prediction using metaheuristic optimized artificial neural network using Hadoop framework

机译:利用Hadoop框架使用Metaheuristic优化人工神经网络的高效农业产量预测

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摘要

The low-resolution imagery of satellite is used extensively for monitoring crops and forecasting of yield which has a major role to play in the operational systems. A combination of high levels of temporal frequency along with an extended coverage was connected with lower costs per each area unit making the images a choice that is convenient at the national level and the regional level scales. There are various quantitative and qualitative approaches for low-resolution satellite imagery to be used for the primary predictor of the final yield of crops. But, very little work is done on the yield prediction that is based on environmental and satellite data. To handle such satellite images may be very challenging owing to large data amounts. Big data analysis is efficient in handling a large amount of data generated for predicting agricultural yield. In this work, a neural network is used for prediction and to enhance its performance; a population-based incremental learning technique is proposed for optimizing the weights. The results of the experiment proved that the method proposed has better results compared to that of the other methods.
机译:卫星的低分辨率图像广泛用于监测作物和对在运营系统中发挥着重要作用的产量的预测。高水平的时间频率以及扩展覆盖的组合与每个区域单元的成本较低,使得图像在国家一级方便的选择和区域水平尺度。低分辨率卫星图像有各种定量和定性方法,用于用于作物最终产量的主要预测因子。但是,基于环境和卫星数据的产量预测,完成了很少的工作。为了处理这种卫星图像可能是非常具有挑战性的,由于数据量大。大数据分析在处理为预测农业产量而产生的大量数据方面是有效的。在这项工作中,神经网络用于预测并提高其性能;提出了一种基于人群的增量学习技术来优化权重。实验结果证明,与其他方法相比,所提出的方法具有更好的结果。

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