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Neural network architecture selection for efficient prediction model of gas metering system

机译:天然气计量系统有效预测模型的神经网络架构选择

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This paper presents a comparative study and analysis of different neural network architectures of which one will be recommended towards adoption for developing a prediction model for gas metering system. Thus, the focus of this paper is to select the most suitable neural network architecture for gas metering system prediction model. A few neural networks architecture are modeled and simulated; Radial basis Function (RBF), Multilayer Perceptron (MLP), Elman Network, Generalized Regression Neural Networks (GRNN) and Elman Neural Network. In order to select the best architecture, the performance of the various networks considered are compared. From the results obtained, the network architecture that results in the best performance is the RBF network structure. Hence recommended for adoption for the design.
机译:本文介绍了不同神经网络架构的比较研究和分析,其中将建议采用一种用于开发气体计量系统预测模型的采用。 因此,本文的焦点是为气体计量系统预测模型选择最合适的神经网络架构。 一些神经网络架构是建模和模拟的; 径向基函数(RBF),多层erceptron(MLP),ELMAN网络,广义回归神经网络(GRNN)和ELMAN神经网络。 为了选择最佳架构,比较了各种网络的性能。 从获得的结果,导致最佳性能的网络架构是RBF网络结构。 因此建议采用设计。

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