A scalable parallel Progressive Hedging Algorithm for stochastic cluster-scenario-based mixed-integer models

Author

Castells Gasia, Joan Pau

Other authors

Mateo Fornés, Jordi

Pagès Bernaus, Adela

Universitat de Lleida. Escola Politècnica Superior

Publication date

2019-12-19T19:04:30Z

2019-12-19T19:04:30Z

2019-07



Abstract

This work presents a general parallelisation of the Progressive Hedging algorithm to coordinate the resolution of two-stage and multi-stage stochastic mixed-integer problems without (binary or integer) variables in the first stage. We report a benchmark study between the computational improvements using our proposal and the parallel version (using pyro) of the Pyomo integrated Progressive Hedging. Moreover, we study the influence of a quadratic term to accelerate the convergence, different scenario-cluster formation and several step update policies by solving different instances using our proposal.

Document Type

Project / Final year job or degree

Language

English

Subjects and keywords

Progressive Hedging Algorithm; Stochastic mixed-integer optimization; Parallelization; Algorismes; Paral·lelisme (Informàtica)

Rights

cc-by-nc-nd

http://creativecommons.org/licenses/by-nc-nd/4.0/

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