International Journal of Electrical Power and Energy Systems
International Journal of Electrical Power and Energy Systems
A R T I C L E I N F O A B S T R A C T
Keywords:                                                  The development of distributed energy resources in distribution networks has created a new concept called
Microgrid                                                  microgrids. Their control is one of the main development issues that must be addressed before any imple
Secondary control                                          mentation process. In this paper, a comprehensive literature review of the main hierarchical control algorithms
Centralized control
                                                           such as centralized, decentralized, and distributed, with a focus on the secondary level, with an emphasis on their
Decentralized control
                                                           main strengths and weaknesses are discussed and compared. Microgrid communication infrastructures allow the
Distributed control
                                                           use of different control schemes for the secondary control layer which is given the importance of secondary
                                                           control over the stable and reliable performance of microgrids, and the lack of comprehensive reference for
                                                           researchers. Also, provides a literature review on current key issues regarding microgrid secondary control
                                                           strategies with respect to communication network challenges. The issue of secondary control is discussed with a
                                                           focus on challenges such as time delays. Also Distributed control methods at the secondary level to reduce the use
                                                           of the communication network and subsequently reduce communication network delays are discussed.
1. Introduction                                                                                hierarchical structure has three levels of control; At the first level, the
                                                                                               controller is responsible for maintaining voltage and frequency stability,
    Over the past few decades, island power grids have been a viable                           which affects the stability of the MG due to the fast processes of the
solution for the supply of energy based on distributed generators (DGs).                       controller. The virtual impedance loop is optionally used to enhance the
The development and improvement of control systems has changed the                             power quality and accuracy power-sharing of first level [8]. At the pri
way these networks are understood and designed. This change has led to                         mary level, controllers are implemented using local measurements, so
the introduction of a new concept called microgrid (MG) [1,2]. The                             they will not require a complex communication network [9,10,11]. Due
development of MG has a few challenges, which should be evaluated                              to the time required for information exchanges to distribute equal power
individual; The challenges include operation, control, security, and                           in MG units, an unrelated approach is usually adopted for initial control
stability.                                                                                     [12–15].
    MGs can operate in islanded and connected modes [3,4,5]; In these                              Secondary level control methods are studied in proportion to the
operating modes, there are challenges, such as frequency maintenance,                          dependence on communication networks in three structures: central
voltage stability, and accurate power sharing [6,7]; So, a proper control                      ized, decentralized and distributed [16]. Since communication re
structure is necessary for a reliable MG performance. In addition,                             sources in the microgrid are limited, reducing dependence on the
choosing the appropriate communication network to increase system                              communication network is desirable. Therefore, this has led to more
reliability and security to improve bandwidth, time delay and packet                           attention to distributed and decentralized structures due to reduced
losses is an important challenge. The exchange of information in                               dependence on the communication network than the centralized struc
microgrids and different levels of control requires a communication                            ture that requires a complex communication network [17,18,19].
network; Which is organized by a hierarchical control structure. The                           Microgrid dependence on communication networks has disadvantages
    * Corresponding author.
      E-mail addresses: salami@arakut.ac.ir (A. Salami), joz@et.aau.dk (J.M. Guerrero), gdat@et.aau.dk (G.D. Agundis-Tinajero).
https://doi.org/10.1016/j.ijepes.2022.108081
Received 2 April 2021; Received in revised form 1 February 2022; Accepted 18 February 2022
Available online 1 March 2022
0142-0615/© 2022 Elsevier Ltd. All rights reserved.
N. Sheykhi et al.                                                                             International Journal of Electrical Power and Energy Systems 140 (2022) 108081
Table 1
Categories of secondary control types.
                                                                                                                          Controller
Secondary control of MG
such as communication disturbances. For this reason, novel control                   shared bus by a reference value [56,57]. Since the centralized method
structures have been introduced in a way that the control objectives can             requires an extensive communication system, it could be used to
always be guaranteed even with the communication disturbances                        monitor and control different aspects of the MG. This approach allows
[20,21]. Recent studies have discussed the development of a novel                    the DG to be easily imported to the MG without affecting the control
secondary control to restore voltage and frequency and accurate power                program. However, it is strongly dependent on the microgrid central
sharing based on event-triggered state [22,23,24]. Due to the high cost              controller (MGCC) and it could be considered as a strong limitation [22].
of communication networks, many studies have been conducted to                       Since all control calculations are performed at the MGCC, the failure
reduce controller dependency from the secondary level to the commu                  could be affected on the entire MG, therefore, a backup system is
nication infrastructure [25].                                                        required to improve reliability [22]. Conventional secondary control
    The purpose of this study is to provide an overview of the existing              methods use a centralized structure consisting of a droop control, unit of
secondary control structure and to highlight opportunities for future                computation, and a central control. These requirements reduce the
studies in this field. In this regard, some articles have provided reviews           reliability and flexibility of the MG and increase its susceptibility to
on MGs [26,27] some of which focus on MG control [28,29,30] and                      disturbance, so that failure of a unit will cause a big problem in the MG.
some on secondary control structure [16]. Given the significant research             For this reason, some distributed methods are presented [56,58,59].
conducted on the communication network of microgrid, this paper fo                      System stability is affected by delays in communication links in MG
cuses on the secondary control and the structures used at the secondary              control. The existence of time delay in communication network can
level by examining the reducing dependence on the communication                      cause instability in microgrid [60]. This shows the importance of having
infrastructure and looking at different approaches based on the                      a suitable control structure to eliminate the effect of time delay on
distributed control.                                                                 microgrid performance. The Multi-Agent System (MAS) based distrib
    The rest of this survey begins with the definition of the concept and            uted control has provided a promising method to eliminate the time
comparison of the MG structures and the secondary control approaches                 delay effect [61].
are classified and compared, and the importance of this structure will be                Fig. 1, shows the centralized control structure. Some of the control
highlighted by examining the approaches based on the distributed                     mechanisms used for centralized control are listed in Table 2; Also
structure in Section 2. In Section 3, the communication network used in              Table 3 summarizes the advantages and disadvantages of centralized
the microgrid is categorized. Finally, Section 4 will present the                    structures.
conclusion.
                                                                                     2.2. Decentralized structure in microgrid
2. Secondary control in microgrid
                                                                                         The decentralized structure operates on the basis of local measure
    In microgrid control, if a droop structure is used at the primary level,         ments. It means, unlike a centralized structure in decentralized con
The steady state error will not be zero; Therefore, restoration for voltage          trollers, each DG unit will be an independent unit [62]. Therefore, in this
and frequency deviations and further flexibility of the secondary level              structure, the need for communication network is reduced and control is
structure system has been proposed [31,32]. Secondary level has tasks                done locally [63]. Unlike centralized control, only local information is
such as, responsible for providing reliability and reducing frequency and            used, and the system can still work even if several agents fail. This
voltage deviations to determine the primary control operating points                 control strategy is considered to be the most reliable, despite its limi
and economic performance of the MG [33]. The secondary controller                    tations due to the absence of a communication link. The decentralized
sets the point of common coupling voltage, and the power exchange                    control is appropriate to reduce the complexity of communications and
between MG and main grid. The operating points of secondary control                  computing. It has three main branches, namely consensus-based algo
are determined on the basis of optimization criteria for loss reduction,             rithms, MASs and their combinations. In recent studies, a decentralized
power quality and result in increasing economic benefits [33,34,35].                 control structure has been developed using the MAS framework.
    The secondary control can be performed in three ways: centralized                Decentralized control based on the MAS concept for microgrids has been
[36,37], distributed and decentralized structure [38,39,40,41]. Cate                introduced in [64] and developed in [65]. Fig. 2 shows the decentralized
gories of secondary controller are shown in Table 1. This classification             control scheme. Table 4 shows the studies performed on decentralized
shows the types of secondary control methods that have been presented                controllers. However, the decentralized structure may not effectively
in various papers. It helps to understand more and get a glimpse of this             manage all control objectives due to lack of communication [66]. As a
level of the controller.                                                             result, the distributed structure is developed with the advantages of both
                                                                                     centralized and decentralized methods. The next section describes the
                                                                                     features of the distributed structure.
2.1. Centralized structure in microgrid
                                                                                 2
N. Sheykhi et al.                                                                                           International Journal of Electrical Power and Energy Systems 140 (2022) 108081
Table 2
Control method used for centralized control.
  Control method         Control approach                               Application                      Performance in the presence of communication delays               Relevant
                                                                                                                                                                           reference
  Model predictive       -It is based on future behavior of the         -Suitable for systems greatly    -MPC can be effectively applied to systems as a secondary         [23]
   control(MPC)          system and predictions.                        dependent on demand.             control even under a severe condition where the
                         -It provides a feedback mechanism.             -Suitable for systems greatly    communication delays are unknown and complex.
                                                                        dependent on renewable energy
                                                                        generation.
  Droop based            -In this control, an offline calculation is    -Suitable for microgrids with    -The controller uses complex potential functions to detect        [36]
    control              being performed, which is a cost               limited distributed generation   perturbations due to time delays.
                         effective approach.                            resources.
  Prediction based       -It is based on H∞ control and                 -Suitable for in time delay      -The predictor-based robust controller maintained good voltage
                                                                                                                                                                           [61]
    memory control       predictions.                                   systems.                         regulation time-delayed systems.
                                                                                               3
N. Sheykhi et al.                                                                                              International Journal of Electrical Power and Energy Systems 140 (2022) 108081
Table 4
Control methods used for decentralized control.
  Control method             Performance Control approach                    Application                                        Performance in the presence of                 Relevant
                                                                                                                                communication delays                           reference
  Adaptive                   -The strategy is based on the static droop      -The control structure preserves the dynamics      - Not investigated.                            [67]
    decentralized            characteristics combined with an adaptive       and stability of each inverter unit at different
    droop controller         transient droop function.                       loading conditions.
  Consensus                  -Based on state feedback.                       -The event-triggered consensus problem is          -Not investigated.                             [68]
                             -Without requiring continuous                   studied for multi-agent systems with general
                             communication among agents.                     linear dynamics under a general directed
                                                                             graph.
  Event-Triggered            - The control will detect the predefined        -Systems of which there is time delay.             -It is observed that the response of the       [57]
                             event function.                                                                                    system become more oscillatory as the
                                                                                                                                communication delays increase.
3. Communication network
           C1               C2                C3                Cn
                                                                                                      The study of the communication networks has been examined in two
                                                                                                   parts, communication network modelling by graph theory and
                                                                                                   communication protocols.
Local Controller
Physical Connection
Table 5
Summary of distributed control methods.
  Control                Method           Implementation                Other Features                                                                                 Relevant reference
  Technique                               Complexity
                                                                                               4
N. Sheykhi et al.                                                                                     International Journal of Electrical Power and Energy Systems 140 (2022) 108081
Table 6
Advantages and disadvantage of event triggered control scheme.
  Scheme                           Disadvantage
Table 7                                                                                    Table 8
Types of graphs for communication network modelling in microgrids.                         Control methods used against communication disturbances.
  Graph theory                                                                              Control              Communication         Effect of communication         Related
                                                                                            methods              disturbance           disturbances on microgrid       Literature
  Type              Advantages                Disadvantages            Relevant
                                                                       references           Noise-resilient      Gaussian noise        -The communication links        [143]
                                                                                             control                                   are subjected to uncertain
  Directed          • Asymmetric property     • Complex                [84,85,86]
                                                                                                                                       noises, which can
                      of directed graph
                                                                                                                                       significantly affect the
  Undirected        • Low demand for          • Asymmetric             [87,92]
                                                                                                                                       synchronization
                      communication             property of directed
                                                                                                                                       performance of MG control.
                      channel                   graph
                                                                                            Distributed          Additive type of      -The communication links        [144]
                    • communication
                                                                                              noise resilient    noise                 are subjected to additive
                      equipment
                                                                                                                                       communication noise,
                    • low resource cost
                                                                                                                                       which can significantly
                    • high scalability
                                                                                                                                       affect the Voltage and
                    • robustness against
                                                                                                                                       frequency of MG control.
                      delay
                                                                                            Event-triggered      Channel noise         -The channel noise can          [145]
                                                                                              SMC-virtual                              significantly affect the
                                                                                              leader                                   Voltage and frequency of
nodes indicate the DG and the edge of their communications links [130].                                                                MG control.
So the multi-agent system is presented as a graph where V = {v1 .v2 .v3 ⋯                   Cooperative          Measurement           -Causes instability in the      [146]
.vn } is the set of agents, ε ⊆ V × V, ε = {e1 .e2 ⋯en } an edge set, The                     control            noises                microgrid voltage.
                                     [ ]                                                                         Link failure          - Link failure has a direct     [147]
associated adjacency matrix A = aij ∈ Rn×n with aii = 0. The Lap
                                                                                                                                       effect on transient control
lacian matrix is given by L = D-A; Where D is the degree matrix and L =                                                                performance and weakens
 Lij ∈ Rn×n , L is symmetric positive semi-definite [131]. In Table 7, the                                                             it.
graph structure is divided into two subsections.                                            Fully                Packet loss           -Communication packet           [148]
                                                                                              distributed                              loss leads to longer
                                                                                              cooperative                              transient regulating time
3.2. Communication protocol                                                                                                            for the DGs.
                                                                                            Cyber-physical       Packet loss           -The packet loss has a direct   [149]
                                                                                              cooperative                              impact on communication
    For proper microgrid performance in addition to the appropriate                           control                                  data. Moreover, the large
control structure, the choice of a communication protocol can have a                                                                   loss rate will cause the
significant impact on microgrid performance. In other words, it is                                                                     interruption of
appropriate for the communication protocol to be in line with the                                                                      communication.
                                                                                       5
N. Sheykhi et al.                                                                                          International Journal of Electrical Power and Energy Systems 140 (2022) 108081
Table 9
The effect of secondary control methods on time delay in microgrid.
  Method            Type of time delay     Performance of the MG in the presence of delay       Delay             Effect of proposed controller                              Reference
                                                                                                margin
  SMC               Time-varying delay     Time delays will make control signals for            Time-             The accuracy of random                                     [160]
                                           reference voltage waveforms delayed, which           varying           delay estimation τ (t) and microgrid states estimation x
                                           causes phase shift between reference LPG voltage                       (t) can be adaptively improved by SMC control.
                                           and microgrid voltage.
                    Time-varying delay     The estimated stochastic delays.                     Time-             This control schemes has shown the benefits for dealing    [161]
                                                                                                varying.          with long time delays using the predictive structure
                                                                                                                  plus the robustness of the sliding mode theory.
  MPC               constant               The voltage observer-based DMPC cannot achieve       Simulation        Compared to conventional control schemes, this             [162]
                    communication link     accurate voltage recovery under time delay.          (0.2 s)           scheme can fully take into account the constraints
                    time delay                                                                                    caused by the time delay and achieve an adjustable
                                                                                                                  balance between node voltage and power-sharing.
                    Variable and unknown   Unstable eigenvalues.                                Simulation        The MPC based secondary control system is                  [34]
                    communication delays                                                        (1.11 s)          considerably more robust in terms of maximum delay
                                                                                                                  allowed.
  Consensus         Communication link     The RMS currents have some oscillations before       Simulation        This structure shows the excellent performance of          [163]
                    time delay             the consensus is achieved.                           (1 s)             consensus algorithms in terms of resistance to time
                                                                                                                  delay in a short time.
                    Communication link     Increasing of communication delays lead to           Simulation        Compared to existing controllers, the proposed             [157]
                    time delay             higher fluctuations and slower agreement rates.      (10 ms)           controller gave a faster convergence rate based on the
                                                                                                                  finite-time consensus protocol.
                    Communication link     The closed-loop system response becomes              Simulation        Demonstrates significant robustness against load           [159]
                    time delay             oscillatory and the convergence becomes slow         (800 ms)          disturbances, and successfully tolerates, small as well
                                           under communication time delays.                                       as large, communication time-delays.
                    Communication link     The communication delay will Reduce the              Simulation        Simulation results verify the effectiveness of the         [164]
                    time delay             convergence speed of the control system.             (400 ms)          proposed strategy, especially, it has strong robustness
                                                                                                                  to communication delay.
  Event             Communication link     Worsening of microgrid performance in                Simulation        The simulation results confirm the effectiveness of the    [162]
    triggered       time delay             maintaining stability.                               (0.1 s)           proposed strategy against large time delays. However,
                                                                                                                  in the proposed method, the convergence speed is slow.
                    Communication link     Worsening of microgrid performance in                Simulation        The proposed control is resistant to time delays of less   [165]
                    time delay             maintaining stability.                               (15 ms)           than 15 (ms). However, with increasing delay, the
                                                                                                                  system becomes unstable.
approach. Failure in the communication network is one of the distur                          shown that each has different requirements in terms of communication
bances affecting the performance of the microgrid controller, which is                        performance. In this study, it was found that the primary level is a time-
studied in [142] a proposed approach for the reconstruction of                                sensitive mechanism that ensures voltage and instantaneous frequency
communication lines. Table 8 summarizes the control methods used in                           control, so communication-less control methods are adopted. The sec
the presence of communication disturbances. Among the communica                              ondary level, unlike the primary level, is more dependent on the
tion disturbances studied, time delay has been studied by researchers in                      communication network. Depending on the communication network,
recent studies due to its importance in maintaining stability. Therefore,                     this level was divided into three structures; centralized, decentralized
it has been studied in Section 3.3.1.                                                         and distributed. Comparison of control structures showed that distrib
                                                                                              uted control has many advantages over a centralized design (e.g., higher
3.3.1. Communication delays on secondary control                                              reliability and resistance to unit failure), it may require more complex
    Data transmission by communication networks such as WiFi, WiMax,                          data transmission through communication lines. Dependence on the
Internet, Ethernet and ZigBee in microgrid is associated with time delay                      communication network in the distributed control structure requires the
[150,151]. Time delay in communication networks at the worst case it                          study of the controller behavior in the presence of communication dis
can cause poor and unstable performance of microgrids. To investigate                         turbances. Thus, “how to stabilize data transmission with communica
the time delay in communication networks, it can be divided into two                          tion disturbances in the limited network resources of an MG” is one of
groups; input delay and communication delay [152].                                            the challenges in controlling MG. Finally, this study provided a
    The distributed control structure is an effective method for microgrid                    comprehensive overview of the secondary level with respect to the
control in the presence of time delay [153]. However, this structure has                      communication network in MG and the behavior of controllers in the
limited resistance to time delays. So, finding the delay margin so that the                   presence of communication disturbance. It is recommended that com
microgrid performs well is a challenging issue. Taylor series [154],                          munications attacks and their impact on the secondary level control
Linear matrix inequality [155,156], Simulation-based [157,158],                               structure and MG performance be investigated in future work.
Experiment/HIL [159] are well-known methods for determining the
delay margin in microgrids. In addition, in [159] an extensive study has
been conducted on methods for determining the time delay margin in                            Declaration of Competing Interest
microgrids. Table 9 summarizes the four control structures in order to
study the types of delays and how to calculate the delay margin, as well                          The authors declare that they have no known competing financial
as the effect of the control method on time delay.                                            interests or personal relationships that could have appeared to influence
                                                                                              the work reported in this paper.
4. Conclusion
                                                                                              Acknowledgement
    One of the challenges in microgrids is the proper control system. In
this paper, the structure of secondary control with the definition of three                      The third and fourth author would like to acknowledge the supported
levels of primary, secondary and tertiary was examined and it was                             by VILLUM FONDEN under the VILLUM Investigator Grant (no. 25920):
                                                                                              Center for Research on Microgrids (CROM); www.crom.et.aau.dk.
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N. Sheykhi et al.                                                                                          International Journal of Electrical Power and Energy Systems 140 (2022) 108081
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