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Application of Neural Networks for Estimating Nodal Outflows as a Function of Pressures in Water Distribution Systems

机译:神经网络在水分配系统压力下估算节点流出的应用

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Water distribution systems are susceptible to failures. It is common for a failure in the distribution system to cause a reduction in pressures resulting in reduced nodal flows to consumers. In order to predict the reduction in the levels of service as a result of the reduced flows, it is important to relate pressure changes with nodal outflows during failure events. Conventional network analysis models are generally demand driven and do not allow the nodal outflow to be adjusted due to reduction in pressure. Modified network analysis is required where pressure dependent outflow functions are used. However many shortcomings associated with the pressure dependent functions have been reported in the literature. In this paper a modified network analysis program is presented where nodal outflows are developed as functions of pressure and secondary network characteristics. Outflow is estimated by means of an Artificial Neural Network (ANN) that has been trained with extensive data on pressure, flows and secondary network characteristics for a selection of secondary networks. A multi layer perceptron network has been used in predicting the pressure dependent nodal flows. The neural network is incorporated into a network analysis model and the network is solved using numerical differentiation. The developed model has been tested on several networks and found to be performing well. The changes in flows in secondary network as a result of the changes in the network conditions are predicted and compared with micro level models.
机译:配水系统易于失败。由于分配系统的故障是常见的,导致压力降低导致对消费者的降低的节点流动。为了预测由于减小的流量而导致服务水平的减少,重要的是在失败事件期间与Nodal外流相关的压力变化很重要。传统的网络分析模型通常需要驱动,并且不允许由于压力降低而调节节点流出。需要修改的网络分析,其中使用压力依赖流函数。然而,在文献中报道了许多与压力依赖性功能相关的缺点。在本文中,提出了一种修改的网络分析程序,其中Nodal外流被开发为压力和次级网络特性的功能。通过人工神经网络(ANN)估计流出,该网络(ANN)已经接受了关于用于选择次要网络的压力,流和次级网络特性的广泛数据。多层的Perceptron网络已经用于预测压力依赖性节点流动。神经网络被纳入网络分析模型,并且使用数值差异来解决网络。开发的模型已经在多个网络上进行了测试,发现表现良好。预测了辅助网络中流动的变化,并与网络条件的变化进行了预测,并与微级模型进行比较。

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