This article provides a comprehensive review of advanced control strategies for power electronics in microgrid applications, focusing on hierarchical control, droop control, model predictive control (MPC), adaptive control, and artificial intelligence (AI)-based. . This article provides a comprehensive review of advanced control strategies for power electronics in microgrid applications, focusing on hierarchical control, droop control, model predictive control (MPC), adaptive control, and artificial intelligence (AI)-based. . Quick summary: How a clear control philosophy enables microgrid resilience and efficiency Driven by demands for resilience, sustainability, and autonomy, the adoption of microgrids is accelerating across industries. Yet many projects encounter setbacks not in hardware, but in logic. Control. . Resilience, efficiency, sustainability, flexibility, security, and reliability are key drivers for microgrid developments. These factors motivate the need for integrated models and tools for microgrid planning, design, and operations at higher and higher levels of complexity. A microgrid is a group of interconnected loads and. . High penetration of Renewable Energy Resources (RESs) introduces numerous challenges into the Microgrids (MG), such as supply–demand imbalance, non-linear loads, voltage instability, etc. Hence, to address these issues, an effective control system is essential.