Predictive Multi-Microgrid Generation Maintenance: Formulation and Impact on Operations & Resilience
Farnaz Fallahi, Murat Yildirim, Jeremy Lin, Caisheng Wang

TL;DR
This paper introduces an integrated stochastic optimization framework that combines sensor data with operational and maintenance planning to improve microgrid reliability, cost-efficiency, and resilience.
Contribution
It presents a novel unified model that jointly optimizes operations and maintenance in multi-microgrid systems using sensor-driven predictions.
Findings
Significant improvements in microgrid reliability and operational outcomes.
Enhanced cost efficiency and renewable integration.
Increased resilience through optimized maintenance and operation strategies.
Abstract
Industrial sensor data provides significant insights into the failure risks of microgrid generation assets. In traditional applications, these sensor-driven risks are used to generate alerts that initiate maintenance actions without considering their impact on operational aspects. The focus of this paper is to propose a framework that i) builds a seamless integration between sensor data and operational & maintenance drivers, and ii) demonstrates the value of this integration for improving multiple aspects of microgrid operations. The proposed framework offers an integrated stochastic optimization model that jointly optimizes operations and maintenance in a multi-microgrid setting. Maintenance decisions identify optimal crew routing, opportunistic maintenance, and repair schedules as a function of dynamically evolving sensor-driven predictions on asset life. Operational decisions…
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Taxonomy
TopicsPower System Reliability and Maintenance · Advanced Battery Technologies Research · Reliability and Maintenance Optimization
