基于混合判别神经网络的太阳辐射预测

Rakhee, Archana Singh, Mamta Mittal
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引用次数: 0

摘要

及时、准确地预测太阳辐射有助于植物的正常生长、种子发芽和开花结果阶段。神经网络在设计预测模型方面越来越受欢迎。然而,变量的重要性和较长的训练过程等问题限制了其准确性。本研究的目的是将神经网络与传统的逐步判别分析相结合,形成一个混合模型,探讨预测模型的性能。将从判别分析中选择的特征纳入神经网络将提高设计的预测模型的准确性。通过选择不同的神经网络结构,验证了混合方法优于神经网络。
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Prediction of Solar Radiation using Hybrid Discriminant-Neural Network
A timely and accurate prediction of solar radiation results in proper plant growth, seed germination and stages of flowering and fruiting. Neural Network is becoming popular in designing predictive models. However, issues like importance of variables and long training process has limited its accuracy. The objective of this study is to explore the performance of predictive model by integrating neural network with traditional step-wise discriminant analysis forming a hybrid model. The inclusion of selected features from discriminant analysis to the neural network will improve the accuracy of the designed predicted model. The paper also examines that the hybrid approach outperforms the neural network by selecting different architecture of neural network.
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