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首页> 外文期刊>Hydrology and Earth System Sciences >Groundwater level forecasting with artificial neural networks: a comparison of long short-term memory (LSTM), convolutional neural networks (CNNs), and non-linear autoregressive networks with exogenous input (NARX)
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Groundwater level forecasting with artificial neural networks: a comparison of long short-term memory (LSTM), convolutional neural networks (CNNs), and non-linear autoregressive networks with exogenous input (NARX)

机译:与人工神经网络的地下水位预测:具有外源输入(NARX)的长短期记忆(LSTM),卷积神经网络(CNNS)和非线性自回归网络的比较

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It is now well established to use shallow artificial neural networks?(ANNs) to obtain accurate and reliable groundwater level forecasts, which are an important tool for sustainable groundwater management. However, we observe an increasing shift from conventional shallow ANNs to state-of-the-art deep-learning?(DL) techniques, but a direct comparison of the performance is often lacking. Although they have already clearly proven their suitability, shallow recurrent networks frequently seem to be excluded from the study design due to the euphoria about new DL techniques and its successes in various disciplines. Therefore, we aim to provide an overview on the predictive ability in terms of groundwater levels of shallow conventional recurrent ANNs, namely non-linear autoregressive networks with exogenous input?(NARX) and popular state-of-the-art DL techniques such as long short-term memory?(LSTM) and convolutional neural networks?(CNNs). We compare the performance on both sequence-to-value (seq2val) and sequence-to-sequence (seq2seq) forecasting on a 4-year period while using only few, widely available and easy to measure meteorological input parameters, which makes our approach widely applicable. Further, we also investigate the data dependency in terms of time series length of the different ANN architectures. For seq2val forecasts, NARX models on average perform best; however, CNNs are much faster and only slightly worse in terms of accuracy. For seq2seq forecasts, mostly NARX outperform both DL models and even almost reach the speed of CNNs. However, NARX are the least robust against initialization effects, which nevertheless can be handled easily using ensemble forecasting. We showed that shallow neural networks, such as NARX, should not be neglected in comparison to DL techniques especially when only small amounts of training data are available, where they can clearly outperform LSTMs and CNNs; however, LSTMs and CNNs might perform substantially better with a larger dataset, where DL really can demonstrate its strengths, which is rarely available in the groundwater domain though.
机译:现在已经建立了利用浅层人工神经网络?(ANNS)获得准确且可靠的地下水位预测,这是可持续地下水管理的重要工具。然而,我们观察到从传统的浅广域到最先进的深学习?(DL)技术的越来越多的转变,但通常缺乏对性能的直接比较。虽然他们已经清楚地证明了他们的适用性,但由于新的DL技术的兴奋及其在各种学科中的成功,浅反常网络似乎经常被排除在研究设计之外。因此,我们的目标是在浅常规复发性ANN的地下水位,即具有外源输入的非线性自回归网络方面的预测能力概述?(NARX)和流行的最先进的DL技术,如长短期记忆?(LSTM)和卷积神经网络?(CNNS)。我们在4年期间比较序列到值(SEQ2VAL)和序列到序列(SEQ2SEQ)预测的性能,同时仅使用少数,广泛可用且易于测量气象输入参数,这使我们的方法广泛适用的。此外,我们还在不同ANN架构的时间序列长度方面调查数据依赖性。对于SEQ2VAL预测,NARX模型平均表现最好;然而,CNNS在准确性方面的速度更快,只有略差。对于SEQ2SEQ预测,大多数是NARX均优于DL模型,甚至几乎达到了CNN的速度。然而,NARX是对初始化效果的最不稳健的影响,但是可以使用集合预测轻松处理。我们表明,与DL技术相比,浅层神经网络,例如NARX,尤其是当只有少量训练数据时,它们可以明确地表达LSTMS和CNNS;然而,LSTM和CNNS可以通过较大的数据集基本上更好地执行,其中DL真的可以展示其强度,其在地下水域中很少可用。

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