Litcius/Paper detail

Energy Hub Operation Under Uncertainty: Monte Carlo Risk Assessment Using Gaussian and KDE-Based Data

Spyros Giannelos, Danny Pudjianto, Tai Zhang, Goran Štrbac

2025Energies35 citationsDOIOpen Access PDF

Abstract

Energy hubs integrating onsite renewable generation and battery storage provide cost-efficient solutions for meeting building electricity requirements. This study presents methods for modeling uncertainties in load demand and solar generation, ranging from normal distribution assumptions to distributions sourced from CityLearn 2.3.0. We also implement kernel density estimation (KDE) to represent the non-parametric distribution characteristics of actual data. Through Monte Carlo simulation, we emphasize the value of robust, data-driven methodologies in optimizing energy hub operations under realistic uncertainty conditions and effectively conducting risk assessment. The CityLearn real-world data confirms that the non-Gaussian nature of building-level energy demand and solar PV electricity output is most accurately represented through KDE, leading to more precise cost projections for the considered energy hub.

Topics & Concepts

Monte Carlo methodGaussianComputer scienceReliability engineeringEnvironmental scienceEngineeringStatisticsMathematicsPhysicsQuantum mechanicsSmart Grid Energy ManagementIntegrated Energy Systems OptimizationBuilding Energy and Comfort Optimization
Energy Hub Operation Under Uncertainty: Monte Carlo Risk Assessment Using Gaussian and KDE-Based Data | Litcius