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Are Evolutionary Algorithms Effective in Calibrating Different Artificial Neural Network Types for Streamwater Temperature Prediction?

机译:进化算法在校准不同的人工神经网络类型以进行溪水温度预测方面有效吗?

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摘要

Streamwater temperature may be severely affected by the global warming. Different types of models could be used to evaluate the regime of water temperatures in future climatic conditions, including artificial neural networks. As neural networks have no physical background, they require calibration of large number of parameters. This is typically done by gradient-based algorithms, however there is an ongoing debate on usefulness of metaheuristics for this task. In this paper more than ten Swarm Intelligence and Evolutionary Algorithms, including one developed especially for this study, are tested to train four kinds of artificial neural networks (multi-layer perceptron, product-units, adaptive-network-based fuzzy inference systems and wavelet neural networks) for daily water temperature prediction in a natural river located in temperate climate zone. The results are compared with the ones obtained when the classical Levenberg-Marquardt algorithm is used. Finally, the ensemble aggregating approach is tested. Although the research confirms that most metaheuristics do not suite well for training any kind of neural networks, there are exceptions that include the newly proposed heuristic. However, the gain achieved when using even the best metaheuristics is low, comparing to the effort (computational time and complexity of such algorithms). Using ensemble aggregation approach seems to have higher impact on the model performance than seeking for new training methods.
机译:全球变暖可能会严重影响溪水温度。可以使用不同类型的模型来评估未来气候条件下的水温状况,包括人工神经网络。由于神经网络没有物理背景,因此它们需要对大量参数进行校准。通常,这是通过基于梯度的算法完成的,但是,关于元启发式方法在此任务中的实用性的争论不断。本文测试了十多种Swarm智能和进化算法,包括专门针对本研究开发的一种算法,以训练四种人工神经网络(多层感知器,乘积单元,基于自适应网络的模糊推理系统和小波)神经网络)来预测位于温带气候区的天然河流中的每日水温。将结果与使用经典Levenberg-Marquardt算法获得的结果进行比较。最后,测试了集成集合方法。尽管研究证实大多数元启发式方法不适用于训练任何种类的神经网络,但也有例外,其中包括新提出的启发式方法。但是,与工作量(此类算法的计算时间和复杂性)相比,即使使用最佳的元启发式方法,所获得的收益也很低。与寻求新的训练方法相比,使用集成聚合方法似乎对模型性能具有更大的影响。

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