1. Introduction
In recent years, MGs have emerged as independent, autonomous, and scalable energy production and distribution systems, captivating electrical engineers focused on sustainable energy solutions [
1]. These systems deliver a reliable and eco-friendly power source, proving especially valuable in remote locations, regions with deficient infrastructure, or areas prone to frequent blackouts [
2]. MGs can seamlessly operate in islanded or grid-connected modes, enhancing resilience against disruptions [
3]. A defining feature of MGs is their integration of diverse RESs, such as PV panels, which offer clean DC power but require efficient inversion for AC compatibility; wind turbines, whose variable output demands advanced forecasting and stabilization techniques; FCs, providing steady baseload power with low emissions yet sensitive to fuel purity and load fluctuations [
4]. Coupled with energy storage systems like batteries, these components form a dynamic, controllable local network adaptable to varied loads [
4,
5]. This modular architecture enables MGs to maintain superior reliability amid grid faults or sudden load shifts. Nevertheless, harnessing decentralized and inherently intermittent RESs, such as solar’s diurnal variability or wind’s stochastic patterns—necessitates sophisticated control systems to uphold voltage and frequency stability, power quality, and seamless coordination among distributed generators, storage, and loads [
6,
7]. Depending on the nature of the interconnection bus, MGs are categorized into AC, DC, and hybrid AC/DC types. DC MGs, owing to their structural simplicity and high efficiency, are considered more suitable for remote and rural applications; however, they face technical challenges such as voltage fluctuations and the design of effective protection schemes. In contrast, AC MGs generally exhibit lower efficiency due to the multiple power conversion stages required to interface distributed energy resources and storage systems [
4]. In HMGs, which encompass both AC and DC subgrids interconnected via bidirectional power converters, additional complexities arise, including bidirectional power flow management, domain-specific coordination, and optimal interlinking converter performance [
8]. These challenges underscore the critical need for advanced, dependable control paradigms to ensure safe, reliable, and efficient HMG operation [
9].
Compared to conventional AC-only MGs, HMGs introduce heightened control and operational intricacies due to their dual AC/DC architecture [
10]. This stems from the imperative to regulate power flows across disparate infrastructures, compounded by the stochastic, weather-dependent nature of RESs like solar PV and wind. For instance, solar PV generates DC natively, yet most residential and industrial loads demand AC, necessitating BPCs for seamless conversion and distribution [
11]. However, converter efficacy is undermined by load transients, RES unpredictability, and control latencies, potentially precipitating voltage sags, harmonic distortions, or cascading failures. Moreover, the disparate dynamics—AC systems’ sinusoidal waveforms and frequency dependencies versus DC’s steady-state voltage/current profiles—demand intricate controls for concurrent voltage regulation, proportional load sharing, and overall stability.
To surmount these in the presence of uncertainties and disturbances, HMGs rely on tailored strategies like adaptive, resilient, or hierarchical controls [
12,
13]. Traditional linear controllers, tuned to nominal points, falter across HMGs’ broad operating envelopes, exacerbated by model inaccuracies, component drifts (for instance filter inductances), and unmodeled nonlinearities. Robust control theory emerges as a robust antidote, explicitly accounting for parametric uncertainties and external perturbations to guarantee bounded performance. Also, external disturbances are among the most critical factors that can degrade the accuracy and efficiency of controllers. In MGs, disturbances may arise from both internal and external sources, each directly influencing system stability. Several studies have specifically focused on enhancing operational stability by mitigating or eliminating such disturbances [
14].
To mitigate the escalating complexities from RES integration and dual-subgrid management in HMGs, a diverse array of robust control algorithms has proliferated [
13,
15,
16,
17,
18], spanning traditional, intelligent, and robust paradigms. Traditional controllers, such as PID [
19] and droop-based [
20] schemes, form the bedrock of primary control layers. PID controllers excel in straightforward voltage/frequency regulation via error feedback, offering simplicity, low computational overhead, and ease of tuning for nominal conditions. Droop control, mimicking synchronous generator behavior, enables decentralized load sharing without communication, ideal for islanded modes, though it suffers from voltage/frequency deviations under heavy loads or imbalances. These model-based approaches leverage linearized plant models for predictable responses but degrade with unmodeled dynamics or parameter variations. Furthermore, recent research indicates that modern robust controllers generally demonstrate superior performance and efficiency compared to many conventional approaches. Also, increasingly, hybrid designs combine these methods to leverage their complementary strengths, ensuring stable and resilient HMG performance under dynamic conditions.
Intelligent controllers introduce bio-inspired or data-driven adaptability, circumventing rigid models. FLCs employ linguistic rules to handle nonlinearities and uncertainties, fuzzifying inputs like power errors for heuristic decision-making, thus enhancing transient response in RES-fluctuating scenarios [
21]. Neural network-based controllers, including adaptive NNs, learn system mappings from data, self-tuning gains online to approximate optimal control surfaces and mitigate disturbances [
22,
23]. While many modern controllers for MGs rely on models, there has also been interest in model-free adaptive schemes [
24]. Saverda et al. [
25] provide an overview of brain emotional learning-based model-free adaptive strategies for MG control and protection, highlighting their ability to handle complexity, nonlinearity, and uncertainty better than traditional methods. They also discuss the parallels between MG hierarchical control and the brain’s emotional learning process, along with challenges, future trends, and potential applications. Advanced variants such as BELBIC are inspired by neurobiological models and mimic the processing of the limbic system to enable fast, emotionally weighted decision-making. Likewise, variants like neuro-endocrine PID [
26] or CMAC [
27] controllers adjust their parameters via neural or fuzzy networks in real time. These model-free approaches can handle nonlinearities and uncertainties by learning from input/output data. However, they typically lack formal guarantees and may require extensive training to perform well in all scenarios. In contrast, model-based robust controllers offer provable stability bounds under bounded uncertainty. A key gap exists between these paradigms: robust controllers usually assume a structured model, whereas model-free controllers sacrifice guaranteed performance for adaptability. Comparing robust techniques with adaptive and intelligent approaches in the context of HMGs represents a significant research gap.
Robust controllers prioritize guaranteed stability margins against worst-case uncertainties. H∞ synthesis minimizes disturbance amplification via frequency–domain norms, ideal for HMG voltage control amid parametric drifts [
28]. SMC enforces invariance to matched uncertainties through high-frequency switching, ensuring finite-time convergence but risking chattering [
29,
30]. MPC optimizes over horizons using explicit models, balancing economic dispatch with constraints, though computationally intensive [
31,
32]. Also, adaptive robust variants, like μ-synthesis, fuse uncertainty bounds with online estimation for hybrid AC/DC power sharing.
The area of resilient control for hybrid AC/DC microgrids has seen significant advancements. New techniques have been developed recently to assist in increasing these MGs’ efficiency, adaptability, and stability. For AC/DC microgrids, a robust hybrid sensitivity-based control technique is presented with the goal of enhancing system performance in the face of uncertainties and disruptions. To improve stability in weak grid settings, two-way virtual inertia support is also taken into consideration while controlling the grid-forming converters [
33]. Furthermore, in order to enhance operational flexibility and lessen reliance on centralized communications, distributed resilient optimization techniques have been developed for AC/MTDC hybrid power systems taking the DC grid into consideration. Comparison research using H∞ control based on the IGWO algorithm has been carried out in the area of voltage control in DC MGs, and the findings are encouraging [
34,
35]. The absence of established criteria for performance assessment, the limits of empirical validation, and the difficulties of integration in decentralized systems are some of the issues that still exist despite these advancements.
Although several review articles have discussed control techniques in MGs, most of them either address robust control methods in general without specific focus on hybrid configurations, or cover only AC or DC systems [
36], or do not fully concentrate on HMGs and instead examine them alongside AC and DC systems [
15]. Furthermore, the systematic categorization of resilient controllers based on deployment architectures (centralized, decentralized, distributed, plug-and-play) and control hierarchy (primary, secondary, tertiary) has received little attention. The main objective of this article is to provide a comprehensive review and a comparative analysis of robust control strategies developed for hybrid AC/DC microgrids, with the aim of addressing existing gaps in power systems research. This work is intended to serve as a useful reference for students and professionals interested in resilient MG control.
The main contribution of this review:
This paper provides a comprehensive and focused review of robust control strategies specifically designed for hybrid AC/DC microgrids. Unlike most previous surveys, which either address robust control in general without focusing on hybrid configurations, cover only AC or DC systems, examine HMGs alongside conventional AC/DC systems, or discuss other control methods not strictly belonging to the robust category, this work centers exclusively on robust approaches for hybrid AC/DC systems.
A comparative analysis of the most significant robust control schemes applied to hybrid AC/DC microgrids with different topologies and grid-connection modes is presented, highlighting their main control objectives and implementation methods.
Several key research gaps that have received limited attention in the existing literature have been identified.
The article proposes new research directions aimed at enhancing the reliability, efficiency, and scalability of robust controllers for hybrid AC/DC microgrids, paving the way for future advancements in this domain.
2. Hybrid Microgrids (HMGs)
HMGs are small-scale smart grid systems that co-locate AC and DC sub-networks within a single distribution framework. In these architectures the AC utility grid is linked via bidirectional converters to a DC bus hosting DC-native resources. In effect, hybrid AC/DC microgrids combine the advantages of AC and DC architectures. By allowing AC or DC-based devices to be tied in directly with minimal conversion stages, they reduce losses and simplify integration [
37,
38]. This makes them particularly well suited to today’s energy mix, where converter-based generation and loads are proliferating: for example, PV panels, FCs and batteries produce or store DC power, while loads such as EV chargers and electronics inherently use DC. As Unamuno and Barrena note, hybrid designs easily accommodate increasing DC-based units (EV, PV generation, FCs, ESS) while maintaining the AC-based devices on the AC network [
39]. In practice, HMGs serve as platforms for embedding high levels of renewables and storage in the grid. Recent studies describe hybrid systems combining solar and wind generation, utility-scale batteries and vehicle-to-grid connected EV fleets under unified energy management [
40]. These systems support bidirectional flows and flexible dispatch (using EVs as movable storage) and thus help meet smart-grid objectives for efficiency, resilience, and decarbonization. However, despite these advantages, HMGs pose several engineering challenges. Control strategies must simultaneously manage the dynamics of both AC and DC sub-networks while coordinating power sharing across a shared interface, often necessitating advanced EMSs and multilevel hierarchical control schemes. Moreover, initial capital costs remain relatively high due to the need for specialized bidirectional converters and hybrid protection mechanisms. A representative HMG configuration is shown in
Figure 1.
HMGs are modeled at multiple levels of detail. At the system level, detailed simulation models (in MATLAB/Simulink or PSCAD) are used to represent the full AC and DC networks and their interlinking converters [
41,
42]. For example, Ortiz et al. [
41] propose a 14-bus hybrid AC/DC microgrid benchmark (with separate AC and DC buses, PV, wind, storage units, diesel, loads, etc.) as a test system for power-flow and stability analysis. Jayaram et al. [
42] similarly describe a hybrid configuration where the DC sub-grid contains a PV array, a wind turbine, a battery ESS and DC loads, and the AC sub-grid contains a fuel cell, another wind turbine, diesel generator and AC loads; these are tied together via a bidirectional interlinking converter (see
Figure 2). Such comprehensive HMG models capture nonlinear behaviors and are used to study dynamic responses, power quality, and fault performance under realistic conditions.
At a more analytical level, researchers develop mathematical models of HMG dynamics to facilitate stability and control design. A common approach is to derive state–space models of the entire HMG by combining the equations of each converter, its control loops, and the network interconnections. For instance, Tripathy and Tyagi construct a full state–space model of a HMG by integrating multiple DC–DC and DC–AC converter models (each with their voltage, current and power controllers) and linking them via the network equations [
43]. This unified model (with dozens of states) was then used for eigenvalue-based stability analysis and pole-placement controller design. In practice, such dynamic models often include the droop-controlled inverters on both sides and any relevant filters or coupling inductances. Linearizing these models yields a small-signal model of the HMG, which is widely used to assess system stability and dynamic interactions. For example, stability studies have shown that controller parameters (such as the VSC droop gains on the AC side) have a direct impact on stability margins: reducing the droop gains tends to improve stability at the expense of load-sharing accuracy [
44]. Load dynamics are also incorporated—it has been reported that the behavior of dynamic loads (for instance induction machines or constant-power loads) significantly affects the low-frequency modes of the system. These analytical models (state-space and small-signal) provide insight into the stability limits of HMGs and guide the design of multi-level control schemes and robust energy management strategies [
43,
44]. By leveraging both modeling approaches, comprehensive simulators and mathematical model’s researchers can develop and validate advanced control and protection schemes that ensure stable, resilient operation of hybrid AC/DC microgrids.
5. Discussion
Intermittent energy sources, nonlinear loads, and a variety of management designs provide major obstacles to preserving system stability, power quality, and overall dependability in hybrid AC/DC microgrids. In order to handle the inherent uncertainties and external disruptions in such systems, robust control has become a sophisticated and scientifically supported method. Methods like mixed-sensitivity design, SMC, and H∞ control provide a high tolerance to measurement noise, time delays, and parameter changes. Without needing a precise model of every system component, these techniques allow the creation of controllers with strong disturbance rejection capabilities, large stability margins, and quick dynamic response. While each category of robust control techniques has been independently reviewed in the preceding subsections, a direct comparative analysis is essential for practitioners to select suitable methods under different operational contexts.
Table 8 summarizes key features of each control strategy, including implementation complexity, robustness level, adaptability to uncertainties, communication requirements, and suitability for different MG modes.
Research has shown that interlinking converters, which act as the crucial interface between AC and DC subsystems, benefit greatly from strong control tactics. Their use greatly enhances the MGs dynamic responsiveness, voltage stability, and power flow management. Furthermore, the system’s performance is improved under a variety of operational scenarios, including islanded mode, grid-connected mode, and power transfer conditions, by incorporating robust controllers into hierarchical control structures.
Figure 7 shows classification of robust control strategies based on design philosophy and adaptability.
Furthermore, the next generation of intelligent robust controllers is represented by new hybrid techniques like robust ML-based control and adaptive robust control. Without requiring human retuning, these techniques adjust in real time to significant changes in the environment and system uncertainty. Under changing operating circumstances, they provide optimum and real-time performance by using technologies such as neural networks, fuzzy logic, and reinforcement learning algorithms.
In summary, the use of intelligent and resilient control strategies that concurrently guarantee system stability, efficiency, and dependability has become essential due to the growing complexity of HMG operation. This is a crucial and exciting topic for future MG research as designing and implementing such controllers calls for precise modelling, a deep understanding of system dynamics, and the application of sophisticated analytical techniques.
Table 9 presents a comparative analysis of robust control strategies for HMGs, evaluating their performance across key technical parameters.
Although robust control systems have theoretical benefits, there are a number of practical obstacles to overcome before they can be used in HMGs. Scalability is still a big problem, particularly when using decentralized or distributed controllers in large-scale systems. Performance in hierarchical or multi-agent systems may be severely hampered by communication delays and data packet losses, especially at the secondary and tertiary control levels. Furthermore, the real-time application of sophisticated optimization or ML-based controllers may be limited by the processing limitations of embedded systems.
A review of the literature indicates that most robust control methods for hybrid AC/DC microgrids remain at the stage of algorithm design or simulation, highlighting a distinct lack of experimental validation in this field. In practice, however, several non-ideal operating conditions arise that significantly affect controller performance and practical feasibility.
Table 10 summarizes the main challenges, their implications, and related references. However, some studies have established real-world or HIL platforms to evaluate the performance of robust control. For example, Espina et al. [
131] developed a hybrid AC/DC microgrid in a university laboratory consisting of three AC three-phase converters and six DC converters. By employing a distributed control approach for frequency regulation and load management, they demonstrated that after each load disturbance, the system frequency returned to its nominal value and transmission line congestion was relieved within a few seconds. Moreover, in simultaneous AC and DC load tests, the consensus algorithm for active/reactive power sharing and average voltage regulation successfully achieved convergence in both AC and DC subsystems, thus maintaining overall system stability [
131].
Similarly, Rehmat et al. [
132] implemented a robust hierarchical control scheme combining supervisory control with SMC in a shipboard HMG (laboratory emulation). Hardware experiments on an NVIDIA Jetson Nano board showed that under a load increase scenario (50%→80%), the frequency and voltage regulation errors remained below 2.5% and 3%, respectively. In addition, the AC bus voltage THD was about 3.8% under steady-state conditions, peaking at 5.1% but quickly stabilizing, indicating the effectiveness of the robust controller in preserving power quality.
Complementarily, emerging certifiable AI methods aim to embed safety certificates (such as Lyapunov-barrier functions) within controller design to guarantee stability and constrain behavior. Finally, closing the loop with actual hardware through more hardware-in-the-loop tests and standard benchmark problems is essential to build confidence. In summary, bridging the simulation–reality gap and establishing common standards are key steps toward enabling trustworthy AI control in HMG [
133].
6. Future Work
A brief review of HMGs’ architecture and a review of robust control strategies for HMGs have been performed in this paper. In recent years, significant progress has been made in the field of robust control for HMGs, but there are still challenges that will provide the basis for future research. One of the most important research directions is the development of ML-based robust controllers with real-time adaptive capabilities, so that these controllers can maintain optimal performance and system stability in the face of changing environmental conditions and dynamic uncertainties without relying on accurate models [
23]. Also, designing distributed robust control strategies that can cope with communication delays, link degradation, and scalability of MG structures is another important research priority [
134]. Various types of cyber-attacks can compromise system reliability and performance. Among these, DoS and FDI attacks are among the most prevalent threats. On the other hand, in today’s world where cyber-attacks in energy systems are increasing [
135], the need to improve cyber resilience in resilient control systems is strongly felt. To mitigate these risks, dedicated secure-control frameworks have been proposed. Kounev et al. [
136] advocate grouping control devices into protected enclaves with cryptographic authentication across their communications. Similarly, Angjelichinoski et al. [
137] embed an in-band power-talk handshake in the DC control loop to authenticate distributed energy resources. Industry standards (IEC 62351) recommend using digital signatures and hashing for message integrity. Recent work also leverages digital-twin simulators as virtual testbeds to expose controllers to cyberattack scenarios and evaluate resilience [
138]. Together, these approaches—combining encryption, authentication, anomaly detection, and redundant control paths—form a secure-control paradigm to maintain HMG stability in adversarial environments.
Looking ahead, we propose concrete research directions to integrate cybersecurity into MG control design. One key avenue is secure distributed control: for instance, developing consensus-based secondary controllers that can detect and isolate compromised agents while preserving power-sharing objectives [
139]. Embedding lightweight cryptographic protections (such as message authentication codes, hash-based signatures, or post-quantum schemes) into control communications is also critical to ensure data integrity without violating real-time constraints [
136]. Importantly, these strategies must be validated on realistic platforms: HIL testbeds—for example OPAL-RT based CHIL setups—can emulate actual MG hardware and inject coordinated cyber-attacks to rigorously assess controller robustness [
139]. Complementary use of digital-twin and co-simulation environments would enable systematic stress-testing of control algorithms under diverse cyber-physical scenarios. Pursuing these directions—secure distributed consensus control, cryptography-based resilience, and rigorous HIL/digital-twin validation—will help bridge the gap between theoretical robust-control designs and truly cyber-resilient HMG implementations.
In future research, the SWO–FOPI(1 + PDN) framework [
140], can be extended toward robust control classifications for hybrid AC/DC microgrids. By integrating robust schemes such as sliding mode, or adaptive backstepping into the optimization-based controller design, the system can achieve higher resilience against uncertainties, parameter variations, and renewable intermittency. Also, the adaptive power-sharing strategy [
141] can be extended within a robust control framework for HMGs. This may involve designing algorithms that, in addition to considering the state of charge and instantaneous power of storage systems, are also capable of handling uncertainties, severe load variations, and communication disturbances.
In addition, combining risk assessment models with robust control design can help identify system vulnerabilities and prevent instability [
142]. Also, combining data-driven probabilistic predictions with robust control, especially in the field of energy planning and distributed resource management, can provide an effective solution to reduce uncertainty and optimize operation in future MGs [
143]. Also, given the limited attention given to backstepping control methods in HMG applications, future research can focus on developing an advanced adaptive backstepping controller specifically designed to address the unique challenges of HMGs. This controller should simultaneously handle parametric uncertainties, disturbances from intermittent RESs, and operational mode transitions. Also, the need for standardized evaluation frameworks for AI/ML-based robust controllers in hybrid AC/DC microgrids. In particular, development of public benchmark scenarios and open datasets covering diverse MG operating conditions is recommended, to enable fair comparison of control approaches. HIL testbeds and real-time co-simulation platforms should be established to validate controller performance under realistic grid conditions recommendations. Formal certification methodologies, including rigorous stability and safety proofs (via Lyapunov or barrier certificates) and compliance with cyber-physical security standards, should be developed. Such practices would foster trust in AI controllers by providing verifiable performance and safety guarantees and could help align research and industry through shared benchmarks.
Also, one of the key challenges in decentralized control of hybrid AC/DC microgrids is system scalability. As the number of distributed power resources and interconnected MGs increases, computational burden and communication requirements also grow. Therefore, distributed control architectures must ensure sufficient redundancy and modularity. For instance, a scalable clustering architecture has been proposed that employs Energy Networking Units to provide a reconfigurable topology for flexible interconnection of AC and DC sub-grids [
144].
Furthermore, the development of communication efficient algorithms such as event-triggered or distributed optimization methods can reduce the need for continuous data exchange and thus minimize communication overhead. Also, AI- and ML- based controllers equipped with formal stability guarantees (safe learning with barrier functions or reachability analysis) can provide novel pathways for scalable and adaptive control. In summary, these combined approaches ranging from clustering and hierarchical architectures to communication-efficient algorithms and intelligent edge-based control hold strong potential to significantly enhance the scalability and efficiency of decentralized control strategies for hybrid AC/DC microgrids in future research.
Additionally, bridging the gap between theoretical development and experimental verification is imperative to advance the field from conceptual frameworks to deployable solutions for enhancing the resilience and reliability of modern power systems.
Finally, looking ahead, the anticipated development of 6G networks promises to revolutionize MG operations further. Future 6G networks are expected to provide sub-millisecond ultra-reliable low-latency communication, massive machine-type connectivity, and native edge intelligence. These features create a unified communication–computation platform that can support real-time distributed control and scalable multi-agent coordination across a large hybrid AC/DC microgrid. For example, 6G’s URLLC and high-bandwidth links could enable predictive dispatch of distributed generators and real-time HIL optimization, by allowing control and monitoring signals to be exchanged with minimal delay [
145]. The integrated edge-AI capabilities of 5G and 6G would allow advanced AI/ML algorithms, such as multi-agent reinforcement learning or distributed model-predictive control, to be implemented throughout the grid for intelligent energy management and rapid fault response. Collectively, these developments could greatly enhance the scalability, intelligence, and resilience of future HMG operations.