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Application of Multilayer Feedforward Neural Networks in predicting tree height and forest stock volume of Chinese fir

机译:多层前馈神经网络在杉木树高和林木蓄积量预测中的应用

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Wood increment is critical information in forestry management. Previous studies used mathematics models to describe complex growing pattern of forest stand, in order to determine the dynamic status of growing forest stand in multiple conditions. In our research, we aimed at studying non-linear relationships to establish precise and robust Artificial Neural Networks (ANN) models to predict the precise values of tree height and forest stock volume based on data of Chinese fir. Results show that Multilayer Feedforward Neural Networks with 4 nodes (MLFN-4) can predict the tree height with the lowest RMS error (1.77); Multilayer Feedforward Neural Networks with 7 nodes (MLFN-7) can predict the forest stock volume with the lowest RMS error (4.95). The training and testing process have proved that our models are precise and robust.
机译:木材增加是林业管理中的关键信息。先前的研究使用数学模型来描述林分的复杂生长模式,以便确定多种条件下林分生长的动态状态。在我们的研究中,我们旨在研究非线性关系,以建立精确且鲁棒的人工神经网络(ANN)模型,以基于杉木的数据预测树木高度和森林蓄积量的精确值。结果表明,具有4个节点的多层前馈神经网络(MLFN-4)可以以最低的RMS误差(1.77)预测树的高度。具有7个节点的多层前馈神经网络(MLFN-7)可以预测最低RMS误差(4.95)的森林资源量。培训和测试过程证明了我们的模型是精确且稳健的。

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