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Brazilian Power System Data

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IEEE2021-07-05 更新2026-04-17 收录
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https://ieee-dataport.org/documents/brazilian-power-system-data
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This paper exploits the decomposition structure of the hydrothermal generation expansion planning problem with an integrated modified Benders Decomposition and Progressive Hedging approach. We consider a detailed representation of hourly chronological short-term constraints based on typical days per month and year. Also, we represent the multistage stochastic nature of the hydrothermal operational policy through an optimized linear decision rule, thereby ensuring investment decisions compatible with a nonanticipative implementable operational policy. To solve the resulting large-scale optimization problem, we propose an improved Benders Decomposition method with multiple instances of the master problem, each of which strengthened by primal cuts and new Benders cuts generated by each master's trial solution. Additionally, our new approach allows using Progressive Hedging penalization terms for regularization purposes. We show that our method is 60\% faster than the traditional ones and also that the consideration of a nonanticipative operational policy can save, on average, 8.27\% of the total cost in out-of-sample tests.
提供机构:
Soares, Alessandro
创建时间:
2021-07-05
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