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An empirical analysis of neural network memory structures for basin water quality forecasting

机译:神经网络记忆结构在流域水质预测中的经验分析

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This research investigates the cumulative multi-period forecast accuracy of a diverse set of potential forecasting models for basin water quality management. The models are characterized by their short-term (memory by delay or memory by feedback) and long-term (linear or nonlinear) memory structures. The experiments are conducted as a series of forecast cycles, with a rolling origin of a constant fit size. The models are recalibrated with each cycle, and out-of-sample forecasts are generated for a five-period forecast horizon. The results confirm that the JENN and GMNN neural network models are generally more accurate than competitors for cumulative multi-period basin water quality prediction. For example, the JENN and GMNN models reduce the cumulative five-period forecast errors by as much as 50%, relative to exponential smoothing and ARIMA models. These findings are significant in view of the increasing social and economic consequences of basin water quality management, and have the potential for extention to other scientific, medical, and business applications where multi-period predictions of nonlinear time series are critical.
机译:本研究调查了流域水质管理的各种潜在预测模型的累积多周期预测准确性。这些模型的特征在于它们的短期(通过延迟进行存储,或者通过反馈进行存储)和长期(线性或非线性)存储结构。实验是按照一系列预测周期进行的,其滚动原点的大小恒定。每个周期都会对模型进行重新校准,并且会针对五个周期的预测范围生成样本外预测。结果证实,JNNN和GMNN神经网络模型在累积多期流域水质预测中通常比竞争对手更准确。例如,相对于指数平滑和ARIMA模型,JENN和GMNN模型可将累计的五周期预测误差减少多达50%。鉴于流域水质管理的社会和经济后果日益严重,这些发现意义重大,并有可能推广到对非线性时间序列的多周期预测至关重要的其他科学,医学和商业应用中。

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