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首页> 外文期刊>International journal of sustainable development and planning >APPLICATION OF ADAPTIVE NEURO-FUZZY INFERENCE SYSTEM FOR THE ESTIMATION OF ROUGHNESS COEFFICIENT OF A MEANDERING OPEN-CHANNEL FLOW
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APPLICATION OF ADAPTIVE NEURO-FUZZY INFERENCE SYSTEM FOR THE ESTIMATION OF ROUGHNESS COEFFICIENT OF A MEANDERING OPEN-CHANNEL FLOW

机译:自适应神经模糊推理系统在估计开孔流的粗糙度系数中的应用。

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摘要

An experimental investigation concerning the variation in roughness for meandering channels with flow depths, aspect ratio and sinuosity is presented. Test results revealed that the value of roughness coefficient in terms of Chezy's C increases with increase in aspect ratio and sinuosity. Adaptive neuro-fuzzy-based inference system (ANFIS), an integrated system, a combination of fuzzy logic and neural network is employed to find out the roughness coefficient of a meandering channel. Estimation of roughness coefficient is important for forecasting of discharge because its flexibility to resolve issues supported nonlinearity, randomness and uncertainty of knowledge. In the present work, an ANFIS-based model is developed for the prediction of the roughness coefficient of a meandering channel in terms of Chezy's C. Different standard methods to predict this variable are conjointly tested and verified with the laboratory findings as well as global data moreover. By comparing the results with the established standard methods available in the literature, it was observed that traditional methods could not provide satisfactory output at different surface and hydraulic conditions. Statistical error analysis is also carried out in which it was found that ANFIS model performed more accurately giving results with less error than different existing strategies. The analysis shows a high level of accuracy with regard to the ANFIS-based model developed for predicting the Chezy's C especially coefficients of determination are found to be more encouraging.
机译:提出了关于弯曲通道的粗糙度随流动深度,长宽比和弯曲度变化的实验研究。测试结果表明,粗糙度系数的值(以Chezy C表示)随纵横比和弯曲度的增加而增加。基于自适应神经模糊的推理系统(ANFIS)是一个集成系统,结合了模糊逻辑和神经网络来找出曲折通道的粗糙度系数。粗糙度系数的估计对于放电的预测很重要,因为它解决问题的灵活性支持知识的非线性,随机性和不确定性。在目前的工作中,开发了一种基于ANFIS的模型,用于根据Chezy's C预测曲折通道的粗糙度系数。结合实验室的研究结果和全局数据,对测试该变量的不同标准方法进行了联合测试和验证。此外。通过将结果与文献中建立的标准方法进行比较,可以发现传统方法在不同的地面和水力条件下无法提供令人满意的输出。还进行了统计误差分析,发现与其他现有策略相比,ANFIS模型的执行更准确,给出的结果具有更少的误差。分析显示,针对基于ANFIS的模型开发的高水平准确性用于预测Chezy's C,尤其是确定系数更加令人鼓舞。

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