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Dynamic neuro-fuzzy local modeling system with a nonlinear feature extraction for the online adaptive warning system of river temperature affected by waste cooling water discharge

机译:具有非线性特征提取的动态神经模糊局部建模系统,用于废水冷却水排放影响的河流温度在线自适应预警系统

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摘要

This paper proposes a dynamic modeling methodology based on a dynamic neuro-fuzzy local modeling system (DNFLMS) with a nonlinear feature extraction technique for an online dynamic modeling task. Prior to model building, a nonlinear feature extraction technique called the Gamma test (GT) is proposed to compute the lowest mean squared error (MSE) that can be achieved and the quantity of data required to obtain a reliable model. Two different DNFLMS modes are developed: (1) an online one-pass clustering and the extended Kalman filtering algorithm (mode 1); and (2) hybrid learning algorithm (mode 2) of extended Kalman filtering algorithm with a back-propagation algorithm trained to the estimated MSE and number of data points determined by a nonlinear feature extraction technique. The proposed modeling methodology is applied to develop an online dynamic prediction system of river temperature to waste cooling water discharge at 1 km downstream from a thermal power station from real-time to time ahead (2 h) sequentially at the new arrival of each item of river, hydro-logical, meteorological, power station operational data. It is demonstrated that the DNFLMS modes 1 and 2 shows a better prediction performance and less computation time required, compared to a well-known adaptive neural-fuzzy inference system (ANFIS) and a multi-layer perceptron (MLP) trained with the back propagation (BP) learning algorithm, due to local generalization approach and one-pass learning algorithm implemented in the DNFLMS. It is shown that the DNFLMS mode 1 is that it can be used for an online modeling task without a large amount of training set required by the off-line learning algorithm of MLP-BP and ANFIS. The integration of the DNFLMS mode 2 with a nonlinear feature extraction technique shows that it can improve model generalization capability and reduce model development time by eliminating iterative procedures of model construction using a stopping criterion in training and the quantity of required available data in training given by the GT.
机译:本文提出了一种基于动态神经模糊局部建模系统(DNFLMS)和非线性特征提取技术的动态建模方法,用于在线动态建模任务。在建立模型之前,提出了一种称为Gamma测试(GT)的非线性特征提取技术,以计算可实现的最低均方误差(MSE)以及获得可靠模型所需的数据量。开发了两种不同的DNFLMS模式:(1)在线单程聚类和扩展的卡尔曼滤波算法(模式1); (2)扩展卡尔曼滤波算法与反向传播算法的混合学习算法(模式2),该算法经过训练,以估计出的MSE和通过非线性特征提取技术确定的数据点数。拟议的建模方法被用于开发在线的河水温度动态预测系统,以在火力发电厂下游的1 km处,从实时到时间提前(2 h),在每个项目的新到达时依次排放冷却水。河流,水文,气象,电站运行数据。事实证明,与众所周知的自适应神经模糊推理系统(ANFIS)和采用反向传播训练的多层感知器(MLP)相比,DNFLMS模式1和2显示出更好的预测性能和所需的计算时间(BP)学习算法,这是由于局部泛化方法和DNFLMS中实现的一遍学习算法所致。结果表明,DNFLMS模式1可以用于在线建模任务,而无需MLP-BP和ANFIS的离线学习算法所需的大量训练集。 DNFLMS模式2与非线性特征提取技术的集成表明,通过消除训练中使用停止准则的模型构造的迭代过程以及训练所需的可用数据量,可以提高模型泛化能力并减少模型开发时间。 GT。

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