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首页> 外文期刊>Procedia Computer Science >Intelligent Prediction System for Gas Metering System using Particle Swarm Optimization in Training Neural Network
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Intelligent Prediction System for Gas Metering System using Particle Swarm Optimization in Training Neural Network

机译:训练神经网络中基于粒子群算法的燃气计量智能预测系统

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In this paper, a study on development of prediction model based on an intelligent systems is discussed for gas metering system in order to validate the instrument reliability. In providing reliable measurement of gas metering system, an accurate prediction model is required for model validation and parameter estimation. The intelligent prediction system has been developed for gas measurement validation. Then the project focused on the application of particle swarm optimization (PSO) and Genetic Algorithm (GA) in training neural network prediction model in enhancing the performance of Intelligent Prediction System (IPS). In this study, the three experiment has been conducted to improve the accuracy of the neural network prediction model. The comparison of the performance of PSONN and GANN with pure ANN is presented in this paper. The results shows that the proposed PSONN model give promising results in the prediction accuracy of gas measurement.
机译:为了验证仪器的可靠性,本文对基于智能系统的燃气计量系统预测模型的开发进行了研究。为了提供可靠的燃气计量系统测量,需要一个准确的预测模型来进行模型验证和参数估计。已经开发了用于气体测量验证的智能预测系统。然后,该项目着重于粒子群优化(PSO)和遗传算法(GA)在训练神经网络预测模型以增强智能预测系统(IPS)的性能中的应用。在这项研究中,已经进行了三个实验以提高神经网络预测模型的准确性。本文将PSONN和GANN与纯人工神经网络的性能进行了比较。结果表明,所提出的PSONN模型在气体测量的预测精度上具有可喜的结果。

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