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Artificial Neural Network Modeling of Relative Humidity and Air Temperature Spatial and Temporal Distributions Over Complex Terrains

机译:复杂地形相对湿度和空气温度空间和时间分布的人工神经网络建模

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In this work we present a methodological approach of applying Artificial Neural Networks (ANN) for modeling of both the air temperature (AT) and relative humidity (RH) spatial and temporal distributions over complex terrains. A number of implementation issues are discussed, along with their relative advantages and limitations. Moreover, after the introduction of a set of metrics, the accuracy of the evaluation of ANN based spatial and time series AT and RH modeling in the case of a specific region is examined, by applying a number of alternative feed forward ANN topologies. The Levenberg-Marquardt back propagation algorithm was used for the ANNs training in the temporal forecasting of AT and RH, with the optimum architecture being the one that minimizes the Mean Absolute Error on the validation set. The Radial Basis Function and the Multilayer Perceptrons non-linear Feed Forward ANNs schemes are compared for the spatial estimation of AT and RH. We found that the spatial and temporal AT and RH variability over complex terrains can be modeled efficiently by ANNs.
机译:在这项工作中,我们提出了一种应用人工神经网络(ANN)的方法方法方法,用于在复杂地形上的空气温度(AT)和相对湿度(RH)空间和时间分布的建模。讨论了许多实施问题以及它们的相对优势和局限性。此外,在引入一组指标之后,通过应用许多替代馈送前沿ANN拓扑来检查基于基于空间和时间序列的评估的准确性和RH模型的RH模型。 Levenberg-Marquardt回到传播算法用于AT和RH的时间预测中的ANNS培训,具有最佳架构,最小化验证集上的平均绝对误差。比较径向基函数和多层感知非线性馈送前向ANN方案与AT和RH的空间估计进行比较。我们发现,在复杂地形上的空间和时间AT和RH可变性可以通过ANN有效地建模。

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