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Spiking modular neural networks: A neural network modeling approach for hydrological processes

机译:尖峰模块化神经网络:水文过程的神经网络建模方法

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Artificial Neural Networks (ANNs) have been widely used for modeling hydrological processes that are embedded with high nonlinearity in both spatial and temporal scales. The input-output functional relationship does not remain the same over the entire modeling domain, varying at different spatial and temporal scales. In this study, a novel neural network model called the spiking modular neural networks (SMNNs) is proposed. An SMNN consists of an input layer, a spiking layer, and an associator neural network layer. The modular nature of the SMNN helps in finding domain-dependent relationships. The performance of the model is evaluated using two distinct case studies. The first case study is that of streamflow modeling, and the second case study involves modeling of eddy covariance-measured evapotranspiration. Two variants of SMNNs were analyzed in this study. The first variant employs a competitive layer as the spiking layer, and the second variant employs a self-organizing map as the spiking layer. The performance of SMNNs is compared to that of a regular feed forward neural network (FFNN) model. Results from the study demonstrate that SMNNs performed better than FFNNs for both the case studies. Results from partitioning analysis reveal that, compared to FFNNs, SMNNs are effective in capturing the dynamics of high flows. In modeling evapotranspiration, it is found that net radiation and ground temperature alone can be used to model the evaporation flux effectively. The SMNNs are shown to be effective in discretizing the complex mapping space into simpler domains that can be learned with relative ease.
机译:人工神经网络(ANN)已被广泛用于对水文过程进行建模,这些过程在时空尺度上都具有高度非线性。输入-输出功能关系在整个建模域中并不保持相同,而是在不同的空间和时间尺度上变化。在这项研究中,提出了一种新型的神经网络模型,称为尖峰模块化神经网络(SMNN)。 SMNN由输入层,加标层和关联神经网络层组成。 SMNN的模块化性质有助于找到与域相关的关系。使用两个不同的案例研究评估模型的性能。第一个案例研究是流量模型,第二个案例研究是涡流协方差测量的蒸散量的建模。在这项研究中分析了SMNNs的两种变体。第一个变体采用竞争层作为加标层,第二个变体采用自组织图作为加标层。将SMNN的性能与常规前馈神经网络(FFNN)模型的性能进行了比较。研究结果表明,在两个案例研究中,SMNN的性能均优于FFNN。分区分析的结果表明,与FFNN相比,SMNN在捕获高流量动态方面有效。在对蒸散量进行建模时,发现仅净辐射和地面温度可以有效地对蒸发通量进行建模。 SMNN可以有效地将复杂的映射空间离散为可以相对轻松学习的更简单的域。

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