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Intelligence Optimization in Parameter Identification of the Border Irrigation Model

机译:边界灌溉模型参数辨识的智能优化

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With the aim of estimating infiltration properties of surface irrigation and further saving water efficiently, a zero-inertia model was adopted for simulating the surface flow of border irrigation. The parameters identification of the model has been derived from hybrid volume balance model coupling artificial neural networks and numerical inversion approaches including differential evolution. With some special treatments to the advance and/or recession fronts of surface flow as its kinematical boundary, the discretization and/or the further linearization of zero-inertia model have been solved through the Newton-Raphson method and the pursuit algorithm. The validations of the identification of parameters and/or the model were verified by comparing the simulated data with measured and/or recorded data for advance or recession phase of border irrigation. The result shows that the optimization algorithm and/or model are appropriate and accurate.
机译:为了估算地表灌溉的入渗特性并进一步有效节水,采用零惯性模型模拟边界灌溉的地表水流。该模型的参数辨识来自混合人工神经网络和包括微分演化在内的数值反演方法的混合体积平衡模型。通过对表面流的前进和/或后退前沿进行一些特殊处理,将其作为运动学边界,通过牛顿-拉夫森法和追赶算法解决了零惯性模型的离散化和/或进一步线性化问题。通过将模拟数据与边界灌溉的进水或退水阶段的测量数据和/或记录数据进行比较,可以验证参数和/或模型识别的有效性。结果表明,优化算法和/或模型是正确和正确的。

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