An Online Machine Learning Multi-resolution Optimization Framework for Energy System Design Limit of Performance Analysis
Oluwamayowa O. Amusat, Luka Grbcic, Remi Patureau, M. Jibran S. Zuberi, Dan Gunter, Michael Wetter

TL;DR
This paper introduces an online, machine-learning-accelerated multi-resolution optimization framework for energy system design that reduces high-fidelity evaluations and approaches optimal performance bounds.
Contribution
It presents a novel ML-guided multi-resolution approach that estimates performance bounds and enhances high-fidelity model efficiency in energy system design.
Findings
Reduces architecture-to-operation performance gap by up to 42%.
Decreases high-fidelity model evaluations by 34%.
Enables faster, more reliable energy system design verification.
Abstract
Designing reliable integrated energy systems for industrial processes requires optimization and verification models across multiple fidelities, from architecture-level sizing to high-fidelity dynamic operation. However, model mismatch across fidelities obscures the sources of performance loss and complicates the quantification of architecture-to-operation performance gaps. We propose an online, machine-learning-accelerated multi-resolution optimization framework that estimates an architecture-specific upper bound on achievable performance while minimizing expensive high-fidelity model evaluations. We demonstrate the approach on a pilot energy system supplying a 1 MW industrial heat load. First, we solve a multi-objective architecture optimization to select the system configuration and component capacities. We then develop an machine learning (ML)-accelerated multi-resolution,…
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