2023
DOI: 10.21203/rs.3.rs-3765572/v1
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Hybrid simplicial-randomized approximate stochastic dynamic programming for multireservoir optimization

Luckny Zephyr,
Bernard F. Lamond,
Pascal Lang

Abstract: We revisit an approximate stochastic dynamic programming method that we proposed earlier for the optimization of multireservoir problems. The method exploits the convexity properties of the value function to sample the reservoir level space based on the local curvature of the value function, which is estimated by the difference between a lower and an upper bounds (error bound). Unlike the previous approach where the state space was exhaustively partitioned into full dimensional simplices whose vertices formed … Show more

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