[1].GIS based path optimization of natural gas pipelines in hilly areas[J].油气储运,2020,39(01):86-90.
 ZHOU Jun,MA Qi,LIANG Guangchuan,et al.GIS based path optimization of natural gas pipelines in hilly areas[J].Oil & Gas Storage and Transportation,2020,39(01):86-90.
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GIS based path optimization of natural gas pipelines in hilly areas

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备注/Memo

Received date: 07 Sep. 2017; Revised date: 17 Mar. 2019 *Corresponding author. E-mail: 549095220@qq.com Foundation item: Supported by the National Natural Science Foundation-funded project (51704253) https://doi.org/10.6047/j.issn.1000-8241.2019.01.013 Copyright ? 2019, Journal of Oil & Gas Storage and Transportation Agency.

更新日期/Last Update: 2019-11-25