论文成果
Dynamic Prediction of Natural Gas Calorific Value Based on Deep Learning
摘要:The natural gas quality fluctuates in complex natural gas pipeline networks, because of the influence of the pipeline transmission process, changes in the gas source, and fluctuations in customer demand in the mixing process. Based on the dynamic characteristics of the system with large time lag and non?linearity, this article establishes a deep?learning?based dynamic prediction model for calorific value in natural gas pipeline networks, which is used to accurately and efficiently analyze the dynamic changes of calorific value in pipeline networks caused by non?stationary processes. Numerical experiment results show that the deep?learning model can effectively extract the effects of non?stationary and large time lag hydraulic characteristics on natural gas calorific value distribution. The method is able to rapidly predict the dynamic changes of gas calorific value in the pipeline network, based on real?time operational data such as pressure, flow rate, and gas quality parameters. It has a prediction accuracy of over 99% and a calculation time of only 1% of that of the physical simulation model (built and solved based on TGNET commercial software). Moreover, with noise and missing key parameters in the data samples, the method can still maintain an accuracy rate of over 97%, which can provide a new method for the dynamic assignment of calorific values to complex natural gas pipeline networks and on?site metering management. ? 2023 by the authors.
ISSN号:1996-1073
卷、期、页:v 16,n 2,
发表日期:2023-01-01
影响因子:0.000000
期刊分区(SCI为中科院分区):四区
收录情况:EI(工程索引)
发表期刊名称:Energies
通讯作者:胡晶晶,杨兆铭
第一作者:苏怀
论文类型:期刊论文
论文概要:胡晶晶,杨兆铭,苏怀,Dynamic Prediction of Natural Gas Calorific Value Based on Deep Learning,Energies,2023,v 16,n 2,
论文题目:Dynamic Prediction of Natural Gas Calorific Value Based on Deep Learning