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Optimal Design and Feature Selection by Genetic Algorithm for Emotional Artificial Neural Network (EANN) in Rainfall-Runoff Modeling

机译:循环径流建模中情绪人工神经网络遗传算法的最佳设计与特征选择

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摘要

Rainfall-runoff (r-r) modeling at different time scales is considered as a significant issue in hydro-environmental planning. As a first hydrological implementation, for one-time-ahead r-r modeling of two watersheds with totally distinct climatic conditions, Genetic Algorithm (GA, as a global search technique) and Emotional Artificial Neural Network (EANN, as a new production of Artificial Intelligence (AI) based methods that simulated based on the brain neurophysiological structure) was combined. Determining the optimal architecture of AI-based networks is vital for increasing the accuracy of prediction by the network and also to reduce run-time. In the current study, GA has been implemented to choose the important features candidate as EANN input and automatically diagnose the optimal number of hidden nodes and hormones simultaneously. The acquired results indicated a better representation of the proposed hybrid GA-EANN model compared to the sole ANN and EANN. Numerical identification of obtained results revealed that the proposed hybrid GA-EANN model might enhance the better results than the EANN model up to 19% and 35% in terms of testing suitability criteria for Aji Chai and Murrumbidgee catchments, respectively.
机译:在不同时间尺度的降雨 - 径流(R-R)建模被认为是水利环境规划中的一个重要问题。作为第一种水文实现,对于两种流域的一次性RR建模,具有完全不同的气候条件,遗传算法(GA,作为全球搜索技术)和情绪化人工神经网络(EANN,作为人工智能的新生产(基于基于脑神经生理学结构的方法是基于的方法。确定基于AI的最佳架构对于增加网络预测的准确性以及减少运行时至关重要。在目前的研究中,GA已经实施以选择重要的功能候选者作为EANN输入,并同时自动诊断隐藏节点和激素的最佳数量。所获得的结果表明,与唯一的ANN和EANN相比,所提出的混合GA-EANN模型更好地表示。获得结果的数值鉴定表明,在Aji Chai和Murrumbidgee集水区的测试适用性标准方面,所提出的杂交GA-EANN模型可能提高比EANN模型高达19%和35%的效果。

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