A Neural Network-Based Distributional Constraint Learning Methodology for Mixed-Integer Stochastic Optimization
Antonio Alc\'antara, Carlos Ruiz

TL;DR
This paper introduces a neural network-based distributional constraint learning methodology that integrates uncertainty modeling into mixed-integer stochastic optimization, enhancing decision-making in complex systems like electricity markets.
Contribution
It extends existing constraint learning methods by incorporating distributional uncertainty using neural networks, enabling more robust stochastic optimization models.
Findings
Effective in modeling uncertainty in electricity system operations
Improves decision robustness under stochastic conditions
Combines neural network accuracy with scenario-based optimization
Abstract
The use of machine learning methods helps to improve decision making in different fields. In particular, the idea of bridging predictions (machine learning models) and prescriptions (optimization problems) is gaining attention within the scientific community. One of the main ideas to address this trade-off is the so-called Constraint Learning (CL) methodology, where the structures of the machine learning model can be treated as a set of constraints to be embedded within the optimization problem, establishing the relationship between a direct decision variable and a response variable . However, most CL approaches have focused on making point predictions for a certain variable, not taking into account the statistical and external uncertainty faced in the modeling process. In this paper, we extend the CL methodology to deal with uncertainty in the response variable . The novel…
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Taxonomy
TopicsEnergy Load and Power Forecasting · Neural Networks and Applications · Metaheuristic Optimization Algorithms Research
