2024
DOI: 10.21203/rs.3.rs-3258743/v2
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Decomposition methods for multi-horizon stochastic programming

Hongyu Zhang,
Ignacio E. Grossmann,
Asgeir Tomasgard

Abstract: Multi-horizon stochastic programming includes short-term and long-term uncertainty in investment planning problems more efficiently than traditional multi-stage stochastic programming. In this paper, we exploit the block separable structure of multi-horizon stochastic linear programming, and establish that it can be decomposed by Benders decomposition and Lagrangean decomposition. In addition, we propose parallel Lagrangean decomposition with primal reduction that, (1) solves the scenario subproblems in parall… Show more

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