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首页> 外文期刊>Hydrology and Earth System Sciences >Evaluation of 1-D tracer concentration profile in a small river by means of Multi-Layer Perceptron Neural Networks
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Evaluation of 1-D tracer concentration profile in a small river by means of Multi-Layer Perceptron Neural Networks

机译:多层感知器神经网络在一条小河中评估一维示踪剂浓度曲线

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摘要

The prediction of temporal concentration profiles of a transported pollutant in a river is still a subject of ongoing research efforts worldwide. The present paper is aimed at studying the possibility of using Multi-Layer Perceptron Neural Networks to evaluate the whole concentration versus time profile at several cross-sections of a river under various flow conditions, using as little information about the river system as possible. In contrast with the earlier neural networks based work on longitudinal dispersion coefficients, this new approach relies more heavily on measurements of concentration collected during tracer tests over a range of flow conditions, but fewer hydraulic and morphological data are needed. The study is based upon 26 tracer experiments performed in a small river in Edinburgh, UK (Murray Burn) at various flow rates in a 540 m long reach. The only data used in this study were concentration measurements collected at 4 cross-sections, distances between the cross-sections and the injection site, time, as well as flow rate and water velocity, obtained according to the data measured at the 1st and 2nd cross-sections. The four main features of concentration versus time profiles at a particular cross-section, namely the peak concentration, the arrival time of the peak at the cross-section, and the shapes of the rising and falling limbs of the profile are modeled, and for each of them a separately designed neural network was used. There was also a variant investigated in which the conservation of the injected mass was assured by adjusting the predicted peak concentration. The neural network methods were compared with the unit peak attenuation curve concept. In general the neural networks predicted the main features of the concentration profiles satisfactorily. The predicted peak concentrations were generally better than those obtained using the unit peak attenuation method, and the method with mass-conservation assured generally performed better than the method that did not account for mass-conservation. Predictions of peak travel time were also better using the neural networks than the unit peak attenuation method. Including more data into the neural network training set clearly improved the prediction of the shapes of the concentration profiles. Similar improvements in peak concentration were less significant and the travel time prediction appeared to be largely unaffected.
机译:对河流中污染物的瞬时浓度分布的预测仍然是世界范围内正在进行的研究工作的主题。本文旨在研究使用多层感知器神经网络来评估河流在不同流量条件下几个横截面的总浓度与时间变化曲线的可能性,并尽可能少地使用有关河流系统的信息。与早期的基于纵向弥散系数的神经网络相反,这种新方法在很大程度上依赖于在一系列流动条件下的示踪剂测试期间收集的浓度测量值,但是所需的水力和形态数据却更少。该研究基于在英国爱丁堡的一条小河(默里·伯恩(Murray Burn))中进行的26个示踪剂实验,该实验以不同的流量在540 m长的范围内进行。这项研究中使用的唯一数据是在4个横截面上收集的浓度测量值,横截面与注射部位之间的距离,时间以及流速和水速,这些数据是根据第1次和第2次测量的数据获得的交叉区域。针对特定横截面的浓度与时间曲线的四个主要特征,即峰浓度,峰在横截面的到达时间以及该曲线的上升和下降分支的形状进行了建模,并且对于他们每个人都使用单独设计的神经网络。还研究了一种变体,其中通过调整预测的峰浓度确保了注入质量的守恒。将神经网络方法与单位峰值衰减曲线概念进行了比较。通常,神经网络可以令人满意地预测浓度分布的主要特征。预测的峰浓度通常好于使用单位峰衰减方法获得的峰浓度,并且保证质量守恒的方法通常比不考虑质量守恒的方法表现更好。使用神经网络比单位峰值衰减方法对峰值旅行时间的预测也更好。将更多数据包含到神经网络训练集中可明显改善浓度分布形状的预测。峰浓度的类似改善不太显着,并且行进时间预测似乎基本不受影响。

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