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Main Authors: Casassus, Nicolás, Castro, Margarita, Angulo, Gustavo
Format: Preprint
Published: 2025
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Online Access:https://arxiv.org/abs/2504.20889
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author Casassus, Nicolás
Castro, Margarita
Angulo, Gustavo
author_facet Casassus, Nicolás
Castro, Margarita
Angulo, Gustavo
contents The Chance-Constrained Parallel Machine Scheduling Problem (CC-PMSP) assigns jobs with uncertain processing times to machines, ensuring that each machine's availability constraints are met with a certain probability. We present a decomposition approach where the master problem assigns jobs to machines, and the subproblems schedule the jobs on each machine while verifying the solution's feasibility under the chance constraint. We propose two different Decision Diagram (DD) formulations to solve the subproblems and generate cuts. The first formulation employs DDs with a linear cost function, while the second uses a non-linear cost function to reduce the diagram's size. We show how to generate no-good and irreducible infeasible subsystem (IIS) cuts based on our DDs. Additionally, we extend the cuts proposed by Lozano & Smith (2018) to solve two-stage stochastic programming models. Our DD-based methodology outperforms traditional integer programming (IP) models designed to solve the CC-PMSP in several instances. Specifically, our best DD-based approach solves 55 more instances than the best IP alternative (from a total of 405) and typically achieves smaller gaps (50% vs. 120% gap on average).
format Preprint
id arxiv_https___arxiv_org_abs_2504_20889
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle A Decision Diagram Approach for the Parallel Machine Scheduling Problem with Chance Constraints
Casassus, Nicolás
Castro, Margarita
Angulo, Gustavo
Optimization and Control
The Chance-Constrained Parallel Machine Scheduling Problem (CC-PMSP) assigns jobs with uncertain processing times to machines, ensuring that each machine's availability constraints are met with a certain probability. We present a decomposition approach where the master problem assigns jobs to machines, and the subproblems schedule the jobs on each machine while verifying the solution's feasibility under the chance constraint. We propose two different Decision Diagram (DD) formulations to solve the subproblems and generate cuts. The first formulation employs DDs with a linear cost function, while the second uses a non-linear cost function to reduce the diagram's size. We show how to generate no-good and irreducible infeasible subsystem (IIS) cuts based on our DDs. Additionally, we extend the cuts proposed by Lozano & Smith (2018) to solve two-stage stochastic programming models. Our DD-based methodology outperforms traditional integer programming (IP) models designed to solve the CC-PMSP in several instances. Specifically, our best DD-based approach solves 55 more instances than the best IP alternative (from a total of 405) and typically achieves smaller gaps (50% vs. 120% gap on average).
title A Decision Diagram Approach for the Parallel Machine Scheduling Problem with Chance Constraints
topic Optimization and Control
url https://arxiv.org/abs/2504.20889