Data-driven Bi-level Optimization of Thermal Power Systems with embedded Artificial Neural Networks
Talha Ansar, Muhammad Mujtaba Abbas, Ramit Debnath, Vivek Dua, Waqar Muhammad Ashraf

TL;DR
This paper introduces a machine learning-based bi-level optimization framework using neural networks and KKT conditions to efficiently optimize large-scale thermal power systems, enabling scalable, data-driven, and energy-efficient operations.
Contribution
It presents a novel ANN-KKT framework that reformulates hierarchical power system optimization into a single-level problem, validated on real-world power plants.
Findings
Comparable solutions to bi-level methods on benchmark problems
Very low computational time (0.22 to 0.88 seconds)
Effective delineation of feasible operating envelopes under uncertainty
Abstract
Industrial thermal power systems have coupled performance variables with hierarchical order of importance, making their simultaneous optimization computationally challenging or infeasible. This barrier limits the integrated and computationally scaleable operation optimization of industrial thermal power systems. To address this issue for large-scale engineering systems, we present a fully machine learning-powered bi-level optimization framework for data-driven optimization of industrial thermal power systems. The objective functions of upper and lower levels are approximated by artificial neural network (ANN) models and the lower-level problem is analytically embedded through Karush-Kuhn-Tucker (KKT) optimality conditions. The reformulated single level optimization framework integrating ANN models and KKT constraints (ANN-KKT) is validated on benchmark problems and on real-world power…
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Taxonomy
TopicsIntegrated Energy Systems Optimization · Electric Power System Optimization · Energy Load and Power Forecasting
