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Autori principali: Enyam, Kobena Badu, Koepele, Cara, Asare, Timothy, Wallington, Kevin, Lygeros, John
Natura: Preprint
Pubblicazione: 2026
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Accesso online:https://arxiv.org/abs/2604.18268
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author Enyam, Kobena Badu
Koepele, Cara
Asare, Timothy
Wallington, Kevin
Lygeros, John
author_facet Enyam, Kobena Badu
Koepele, Cara
Asare, Timothy
Wallington, Kevin
Lygeros, John
contents Emissions reduction and resilience to outages motivate the adoption of renewable microgrids. Surprisingly, research integrating both probabilistic grid outages and electric vehicle (EV) charging requirements remains limited. This paper addresses this gap by developing a scenario-based stochastic model predictive controller (SMPC) for a microgrid energy hub comprising solar generation, battery storage, diesel backup, and an EV fleet connected to a weak grid. Grid outage and campus load scenarios are generated from a continuous-time Markov chain and a Gaussian Process, respectively. Using 2023 operational data from the Ashesi University Energy Hub in Ghana, we demonstrate that the SMPC achieves performance within 1\% of a perfect-forecast benchmark. In contrast, a naive MPC that assumes continuous grid availability offers no economic or sustainability advantage over rule-based control, with both incurring significantly higher costs and emissions than the SMPC. These results highlight that outage anticipation is essential for economic viability. Finally, we show that incorporating a deterministic buffer against EV consumption uncertainty eliminates over 90\% of state-of-charge violations with negligible impact on total operating costs
format Preprint
id arxiv_https___arxiv_org_abs_2604_18268
institution arXiv
publishDate 2026
record_format arxiv
spellingShingle Scenario-Based Stochastic MPC for Energy Hubs with EV Fleets Under Persistent Grid Outages
Enyam, Kobena Badu
Koepele, Cara
Asare, Timothy
Wallington, Kevin
Lygeros, John
Systems and Control
Emissions reduction and resilience to outages motivate the adoption of renewable microgrids. Surprisingly, research integrating both probabilistic grid outages and electric vehicle (EV) charging requirements remains limited. This paper addresses this gap by developing a scenario-based stochastic model predictive controller (SMPC) for a microgrid energy hub comprising solar generation, battery storage, diesel backup, and an EV fleet connected to a weak grid. Grid outage and campus load scenarios are generated from a continuous-time Markov chain and a Gaussian Process, respectively. Using 2023 operational data from the Ashesi University Energy Hub in Ghana, we demonstrate that the SMPC achieves performance within 1\% of a perfect-forecast benchmark. In contrast, a naive MPC that assumes continuous grid availability offers no economic or sustainability advantage over rule-based control, with both incurring significantly higher costs and emissions than the SMPC. These results highlight that outage anticipation is essential for economic viability. Finally, we show that incorporating a deterministic buffer against EV consumption uncertainty eliminates over 90\% of state-of-charge violations with negligible impact on total operating costs
title Scenario-Based Stochastic MPC for Energy Hubs with EV Fleets Under Persistent Grid Outages
topic Systems and Control
url https://arxiv.org/abs/2604.18268