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Neural networks for the prediction and forecasting of water resources variablest a review of modelling issues and applications

机译:神经网络用于水资源变量的预测和预测模型问题和应用的回顾

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摘要

Artificial NeuraI Networks (ANNs) are being used increasingly to predict and forecast water resources variables. In this paper, the steps that should be followed in the development of such models are outlined. These include the choice of performance criteria, the division and pre-processing of the available data, the determination of appropriate model inputs and network architecture. optimisation of the connection weights (training) and model validation. The options avai1able to modellers at each of these steps are discussed and the issues that should be considered are highlighted. A review of 43 papers dealing with the use of neural network models for the prediction and forecasting of water resources variables is undertaken in terms of the modelling process adopted. In all but two of the papers reviewed. feedforward networks are used. The vast majority of these networks are trained using the backpropagation algorithm. Issues in relation to the optimal division of the available data, data pre-processing and the choice of appropriate model inputs are seldom considered. In addition, the process of choosing appropriate stopping criteria and optimising network geometry and internal network parameters is generally described poorly or carried out inadequately. All of the above factors can result in non-optimal model performance and an inability to draw meaningful comparisons between different models. Future research efforts should be directed towards the development of guidelines which assist with the development of ANN models and the choice of when ANNs should be used in preference to alternative approaches, the assessment of methods for extracting the knowledge that is contained in the connection weights of trained ANNs and the incorporation of uncertainty into ANN models.
机译:人工神经网络(ANN)越来越多地用于预测和预测水资源变量。在本文中,概述了开发此类模型应遵循的步骤。这些包括性能标准的选择,可用数据的划分和预处理,适当模型输入的确定和网络体系结构。优化连接权重(训练)和模型验证。讨论了建模人员在每个步骤中可用的选项,并突出显示了应考虑的问题。根据所采用的建模过程,对43篇有关使用神经网络模型预测和预测水资源变量的论文进行了综述。除两篇论文外,其余所有论文均已复习。使用前馈网络。这些网络中的绝大多数都使用反向传播算法进行训练。很少考虑与可用数据的最佳划分,数据预处理和适当模型输入的选择有关的问题。此外,选择适当的停止标准以及优化网络几何形状和内部网络参数的过程通常描述不充分或执行不充分。上述所有因素都可能导致模型性能不理想,并且无法在不同模型之间进行有意义的比较。未来的研究工作应针对指导方针的发展,这些指导方针有助于神经网络模型的开发,以及何时选择神经网络优先于替代方法,评估提取连接权重中所包含知识的方法的选择。经过训练的人工神经网络,并将不确定性纳入人工神经网络模型。

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