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Flood water level modelling using Multiple Input Single Output (MISO) ARX structure and cascaded Neural Network for performance improvement

机译:洪水水位建模使用多输入单输出(MISO)ARX结构和级联神经网络进行性能改进

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Flood water level prediction using system identification technique is still new area for most of the researchers. This is due to the dynamics of the flood water level itself that is often characterized as highly nonlinear. Thus, it is quite a challenging task to represent the flood water level behavioural in mathematical expressions. This paper presents flood water level modelling using MISO (Multiple Input Single Output) ARX (Autoregressive Exogenous Input) structure and cascaded Neural Network model for performance improvement. In this paper, the transfer function relating the input parameters and output parameter was identified with the aid of MISO ARX model. The input and output parameters are based on real time data obtained from Department of Irrigation and Drainage Malaysia. However, the MISO ARX performance result is not quite impressive to look into. Hence, Neural Network model is cascaded to the MISO ARX model to improve the result. Simulation results show that the proposed cascaded model provides improved prediction performance.
机译:利用系统识别技术的洪水水平预测仍然是大多数研究人员的新领域。这是由于洪水水位本身的动态,通常是高度非线性的。因此,代表数学表达中的洪水水平行为是一个充满挑战的任务。本文介绍了使用MISO(多输入单输出)ARX(自回归外源输入)结构和级联神经网络模型的洪水水位建模。在本文中,借助MISO ARX模型识别了相关输入参数和输出参数的传递函数。输入和输出参数基于从灌溉和排水部获得马来西亚的实时数据。但是,味噌arx性能结果并不令人印象深刻。因此,神经网络模型级联到MISO ARX模型以提高结果。仿真结果表明,所提出的级联模型提供了改进的预测性能。

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