期刊文献+
共找到1篇文章
< 1 >
每页显示 20 50 100
A novel optimization framework for natural gas transportation pipeline networks based on deep reinforcement learning 被引量:1
1
作者 Zemin Eitan Liu Wennan Long +7 位作者 Zhenlin Chen James Littlefield Liang Jing Bo Ren Hassan M.El-Houjeiri Amjaad S.Qahtani muhammad y.jabbar Mohammad S.Masnadi 《Energy and AI》 2024年第4期281-290,共10页
Natural gas is an emerging and reliable energy source in transition to a low-carbon economy.The natural gas transportation pipeline network systems are crucial when transporting natural gas from the production endpoin... Natural gas is an emerging and reliable energy source in transition to a low-carbon economy.The natural gas transportation pipeline network systems are crucial when transporting natural gas from the production endpoints to processing or consuming endpoints.Optimizing the operational efficiency of compressor stations within pipeline networks is an effective way to reduce energy consumption and carbon emissions during transportation.This paper proposes an optimization framework for natural gas transportation pipeline networks based on deep reinforcement learning(DRL).The mathematical simulation model is derived from mass balance,hydrodynamics principles of gas flow,and compressor characteristics.The optimization control problem in steady state is formulated into a one-step Markov decision process(MDP)and solved by DRL.The decision variables are selected as the discharge ratio of each compressor.By the comprehensive comparison with dynamic programming(DP)and genetic algorithm(GA)in three typical element topologies(a linear topology with gun-barrel structure,a linear topology with branch structure,and a tree topology),the proposed method can obtain 4.60%lower power consumption than GA,and the time consumption is reduced by 97.5%compared with DP.The proposed framework could be further utilized for future large-scale network optimization practices. 展开更多
关键词 Transmission pipeline network Deep reinforcement learning Mathematical model Energy optimization Markov decision process
在线阅读 下载PDF
上一页 1 下一页 到第
使用帮助 返回顶部