Energies, Vol. 18, Pages 5417: Adaptive Risk-Driven Control Strategy for Enhancing Highway Renewable Energy System Resilience Against Extreme Weather

Energies, Vol. 18, Pages 5417: Adaptive Risk-Driven Control Strategy for Enhancing Highway Renewable Energy System Resilience Against Extreme Weather

Energies doi: 10.3390/en18205417

Authors:
Peiqiang Cui
Hongde Li
Wenwu Zhao
Xiaowu Tian
Jin Liu
Weijie Qin
Liya Hai
Fan Wu

Traditional centralized highway energy systems exhibit significant resilience shortcomings in the face of climate change mitigation requirements and increasingly frequent extreme weather events. Meanwhile, prevailing microgrid control strategies remain predominantly focused on economic optimization under normal conditions, lacking the flexibility to address dynamic risks or the interdependencies between transportation and power systems. This study proposes an adaptive, risk-driven control framework that holistically coordinates power generation infrastructures, microgrids, demand-side loads, energy storage systems, and transport dynamics through continuous risk assessment. This enables the system to dynamically shift operational priorities—from cost-efficiency in stable periods to robustness during emergencies. A multi-objective optimization model is established, integrating infrastructure resilience, operational costs, and traffic impacts. It is solved using an enhanced evolutionary algorithm that combines the non-dominated sorting genetic algorithm II with differential evolution (NSGA-II-DE). Extensive simulations under extreme weather scenarios validate the framework’s ability to autonomously reconfigure operations, achieving 92.5% renewable energy utilization under low-risk conditions while elevating critical load assurance to 98.8% under high-risk scenarios. This strategy provides both theoretical and technical guarantees for securing highway renewable energy system operations.

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