Assessing the value of natural gas underground storage in the Brazilian system via stochastic dual dynamic programming

被引:0
|
作者
Larissa de Oliveira Resende
Davi Valladão
Bernardo Vieira Bezerra
Yasmin Monteiro Cyrillo
机构
[1] PUC-Rio,Industrial Engineering Department
[2] PSR Energy Consulting and Analytics (PSR),undefined
[3] National Electrical System Operator (ONS),undefined
来源
TOP | 2021年 / 29卷
关键词
Underground storage of natural gas; Natural gas supply chain; Stochastic dual dynamic programming; Brazilian natural gas sector; 90C15; 90C39; 90B05;
D O I
暂无
中图分类号
学科分类号
摘要
The Brazilian natural gas sector is currently characterized by low maturity and dynamism of the market. The stochastic behavior of the demand for natural gas added to its associated market price volatility motivates the usage of underground storage to provide supply flexibility and protection against price fluctuations. However, the existing literature lacks a proper analytical tool to assess the benefits of underground natural gas storage (UNGS) activity. In this work, it is proposed a stochastic dynamic programming model for long/medium-term operation planning to determine the optimal gas supply and storage policies. A markovian model characterizes the uncertainty over the thermoelectric demand and market price. The proposed model is efficiently solved using the stochastic dual dynamic programming algorithm for the Brazilian case study considering realistic data for the actual gas network and electric power system. For an exogenous but meaningful choice of underground storage location and size, it is observed the operational and economic benefits of the provided storage flexibility. Finally, our numerical simulations show that the economic benefit for the system surpasses the operational and capital expenses for the storage infrastructure in depleted fields and salt caverns.
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页码:106 / 124
页数:18
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