Energy Management System in Microgrids: A Comprehensive Review
Abstract
:1. Introduction
2. MG Architecture and Elements
2.1. Microgrid Elements
2.1.1. Distributed Generators
2.1.2. Energy Storage Devices
2.1.3. Loads
2.1.4. Additional Elements
2.2. Control Scheme of MGs
2.2.1. Primary Control Level
2.2.2. Secondary Control Level
Minimize the Cost
Objective | Equation | Details |
---|---|---|
Operation Cost [74] | number of DERs and time of operation respectively.Thermal unit dispatch at hour start-up cost of the thermal unit at time. shutdown of thermal unit at time. | |
Operating Cost [75] | : energy delivered from dispatchable resources. : energy delivered from non-dispatchable resources. : unitary cost of each non-dispatchable and dispatchable generator at time | |
Operating Cost [78] | Where: . | power delivered from the grid. : feed-in tariff. electricity grid price. battery replacement cost. state of charge at time . |
Operation Cost [117] | coefficients of the appropriate measurement units that depend on DERs. generated power. | |
Total Operation [91] | costs of the output power of the generator. cost of buying and selling power to the main grid. power received from and sold to the main grid. state vectors that may be either 0 or 1. startup cost of each generator power delivered from DERs and ESS, respectively. | |
Economic Emission Dispatch [76] | : load block. time period. generator. : investment for line investment state of line at time number of transmission lines. : number of generators. a number of hours at load block. operation cost of generator. power generated at time | |
Grid Cost [81] | power consumption from the main grid at time , where cost of power consumption at time | |
The production Cost [90] | fuel coefficients of unit power generated from unit at time valve-point coefficients of each unit. minimum capacity limit of the unit. | |
The production Cost [93] | cost of energy generated by non-dispatchable and dispatchable resources, respectively. cost of energy from the charging and discharging of BESS, respectively. : cost of power from the responsive load demand. penalty cost. | |
Total Operational and Maintenance Costs [79] | operation cost of stations. capital recovery factor. installation of district heating pipelines. total cost related to the hydrogen refueling stations. Chemical Engineering Plant Cost Index, which allows the conversion of costs from their base year to the study year. | |
Carbon Dioxide Emission Cost [80] | carbon tax. carbon dioxide emissions per unit. electricity purchased from the main grid. power output of the gas boiler. heat produced by the micro gas turbine (GT). | |
Annual Power Loss [118] | power loss in state g. probability of any combination of load and wind-based DG output. takes a value of either 90 or 8760. number of discrete states. | |
Power Loss [95] | B-matrix coefficients. power outputs from the generatorsand , respectively. | |
Battery Cost [81] | capital cost. number of life cycles. power delivered from the battery during charging and discharging, respectively. hourly economic costs during charging and discharging, respectively. performance of the battery during charging and discharging, respectively. | |
Charging Cost [87] | unit price at time charging power at time . | |
Degradation Cost [119] | capital cost of the battery. battery life. | |
Charging and discharging Cost [88] | discharging price per unit of energy for EV. discharging rate for EV. selling price of electricity sold by the grid to the charging station. Amount of electricity that the charging station buys from the grid. charging price per unit of energy for EV. charging rate for conservative EV. charging price per unit of energy for premium EV. charging rate for premium EV. charging price per unit of energy for conservative EV. charging rate for conservative EVs. price of electricity purchased by the grid from the charging station. amount of electricity sold to the grid. | |
Purchase Cost [120] | prices of the sold and purchased energy at time : purchased and sold power from the grid at time . | |
Start-up Cost [120] | startup cost. ON-OFF binary variable. | |
Maintenance Cost [120] | maintenance cost. sampling time, set to 0.25 h. ON-OFF binary variable. | |
Shortage Cost [121] | loss factors of nodes power shortage between nodes | |
Shortage Cost [84] | penalty price for power shortage. electricity of power shortages. | |
Operation Cost of Battery [122] | maximum operation cost of charging and discharging, respectively. maximum power dispatched from the ESS during charging and discharging, respectively. power dispatched from the ESS during charging and discharging, respectively. | |
Daily Operation Cost [85] | probability of scenario transaction cost in the electricity market. cost of wind power curtailment. cost of the energy storage operation. cost of the micro-gas turbine resource. cost of the electrical demand. | |
Electrical demand response [85] | demand response program at time and sc nario . shifted up electrical power by demand response program at time and scenario .unit cost of the electrical demand response. | |
Load Shading Cost [86] | number of loads. active power shedding of the cost coefficient of load. | |
Investment Cost [98] | a variable with a value of either 0 or 1. capital recovery rate of class energy conversion and storage equipment cycle. initial investment cost. |
Restoration
Objective | Equation | Details |
---|---|---|
The restored Load [125] | the weight factors for each load. the load pick-up. complex power demand at | |
Number of Switches [125] | Line or switch decision. set normally closed sectionalizing switches. set normally open tie switches. set of virtual edges for DG connection. | |
Number of switches [131] | the total number of switches. status of switch status of switch after fault occurs. | |
The energized Load [126] | the energized loads in the network. The restorable total buses. | |
The number of switches [126] | the number of switches operation. | |
Priority of load [127] | the priority weight of each load the status of the switch in the load | |
The resilience [130] | number of loads. the travel time. the number of restored loads. the active power dispatch from the microgrid and EV, respectively. the cost utilities. the unit capacity consumption cost. | |
The restoration paths [133] | the set of nodes of the power grid. the power dispatched from DER the power consumed by each node. coefficients for measuring the relative importance. coefficient of exponential decay. | |
The centralized Self-healing [135] | set of loads, set of nodes, set of branches, set of switches, active power requested in node resistance branch current in branch cost of de-energizing. cost of load-shedding and loss cost, respectively. cost of switch operation. | |
The total generation capability [137] | number of loads, number of non-black start generators. the power capability of the generator. | |
Out-of-service Area [153] | number of energized bus, load . set of energized buses. | |
Restoration/maintenance switching sequence [154] | set of zones, set of sequence, cost od de-energizing, binary variable. operating cost. set of switches. opening and closing of switch operation. | |
The network layer unit restarting [140] | number of DERs, the unit in the plan weight factor. the power delivered from distributing factor. the maximum output of DERs. | |
Restore the outage area [142] | probability of the scenario. voltage magnitude, basic voltage. indicator of boundary line. priority index of the load. active power, the status of the switch. | |
Served Loads [149] | controllable loads, non-controlable loads, weight factor, connecting status of the loads. priority of the loads . |
Power Quality
2.2.3. Tertiary Control Level
3. Transactive Energy Market in Microgrids
4. Protection Systems
5. Policy of Microgrid
6. Perspective and Discussion
- Future MGs may rely on a progressive combination of energy resources, including large-scale decentralized resources, to be suitable and variable. Energy storage systems have the potential to alter the nature of production and transmission;
- The deployment of the ESS only targets a few countries, such as Australia, Germany, and Japan. Such deployment is expected to cover 40% more countries every year until 2025 [193];
- A different change will occur in countries determined by market policy and regulatory structures, and the diversity of the resources supplying customers;
- While MGs are considered the best solution to local and general problems, they are essentially a novel architecture paradigm that offers higher flexibility and reliability against outages;
- Future MGs may improve their fault detection and self-healing capabilities to shorten recovery time, maximize loads restored, and identify gaps between research and implementation;
- The Internet of Things facilitates the emergence of real-time platforms and serves as an important link between decentralized and transactive energy markets. Moreover, from their previous research, the authors have determined that bidirectional exchanges of energy between customers and producers are considered the most challenging for the future; however, future techniques are expected to solve this challenge;
- The application of deep learning, including ANN, in MGs instead of classical and mathematical methods warrants exploration to achieve a dynamic adjustment of energy flow, reduction in GHG emissions, and enhanced protection for MGs;
- The use of blockchains and smart contracts in MGs should be promoted to guarantee secure energy transactions and DER operations.
- Integrating quantum computers into the MG may allow the system to restore more loads within a short period, use deep learning and machine learning methods for improving forecasting models, and apply algorithms for quickly directing DER dispatches;
- MG controllers should be evaluated and tested in controlled laboratory environments to minimize risks. Testing various technologies, such as hardware-in-the-loop, is expected to become a practical approach for evaluating controllers before their deployment.
7. Summary
- Primary control, which guarantees reliable operation by maintaining voltage and frequency stability;
- Secondary control, which optimizes the power quality of the system; and
- Tertiary control, which achieves economic optimization according to the prices in the electricity market.
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Conflicts of Interest
Nomenclature
RE | Renewable Energy |
MG | Microgrid |
EMS | Energy Management System |
GHG | Greenhouse Gases |
DG | Distributed generators |
PCC | Point of Common Coupling |
GW | Gigawatt |
KW | kilowatt |
DERs | Distributed Energy Resources |
PV | Photovoltaic |
MGCC | Microgrid central controller |
CHP | Combined Heat and Power |
HYD | Hydropower |
WT | Wind Turbine |
AC | Alternating Current |
DC | Direct Current |
kWh | kilowatt-hour |
NB-PLC | Narrow Band Power Line Communication |
BB-PLC | Broad Band Power Line Communication |
PON | Passive Optical Network |
DSL | Digital subscriber line |
MPC | Predictive Control |
VCM | Voltage Control Mode |
PCM | Active/Reactive Power Mode |
VPD | Voltage-Active Power Droop |
FQB | Frequency-Reactive Power Boost |
ESS | Energy Storage System |
BESS | Battery Energy Storage System |
WAM | Wide Area Measurement |
TEM | Transactive energy management |
ML | Machine Learning |
DL | Deep Learning |
LSTM | Long Short-term Memory |
KNN | K-Nearest-Neighbors |
GRNN | Generalized Regression Neural Network |
NNE | Neural Network Ensemble |
DRNN | Deep Recurrent Neural Networks |
Angular frequency | |
Voltage | |
Active Power | |
Reactive Power | |
Gains of the PI controller |
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[10] | Addressed the issues affecting DC MG safety from different aspects, such as fault location detection, and evaluated some protective devices. |
[11] | Comprehensively reviewed the stability issues being faced by MGs based on extant definitions and classifications of stability and illustrated these issues as modeling examples. |
[12] | Examined the existing MG architectures in detail, and demonstrated the widely distributed technologies along with their advantages and disadvantages. |
[13] | Highlighted several issues, challenges, and solutions related to the protection of an AC MG. |
[14] | Represents features of, and the large-disturbance stability that prevails for, a power-converter-dominated MG, with some stability analysis highlighted. |
[15] | Comprehensively reviewed the main components, size, and energy management of harbor MGs. |
This work | Comprehensively reviews the operation strategies and objectives used in EMSs and explains the architecture and elements of an EMS in an MG. |
Ref | CHP 1 | DG 2 | GG 3 | FC 4 | MT 5 | PV 6 | HYD 7 | WT 8 | TI 9 |
---|---|---|---|---|---|---|---|---|---|
[22] | ✓ | ✓ | |||||||
[23] | ✓ | ✓ | ✓ | ✓ | ✓ | ||||
[24] | ✓ | ✓ | |||||||
[25] | ✓ | ✓ | ✓ | ✓ | |||||
[26] | ✓ | ✓ | ✓ | ||||||
[27] | ✓ | ✓ | ✓ | ||||||
[28] | ✓ | ✓ | ✓ | ✓ | ✓ | ||||
[29] | ✓ | ✓ | ✓ | ✓ | ✓ | ||||
[30] | ✓ | ✓ | ✓ | ||||||
[31] | ✓ | ✓ | |||||||
[32] | ✓ | ||||||||
[33] | ✓ | ✓ | ✓ | ||||||
[34] | ✓ | ✓ |
Ref | Details |
---|---|
[42] | Comprehensively reviewed the challenges, modeling approaches, and estimation of impact on market structures when utilizing energy storage. |
[43] | Presented an overview of the applications of ESSs, which may introduce challenges to MGs. |
[44] | Comprehensively reviewed the most recent ESS innovations in MG technologies, including the concepts and optimization techniques, architectures, control techniques, future trends, and challenges in ESSs. |
[45] | Addressed some factors in sizing of the ESSs in MGs and various applications through the integration with RE. |
[46] | Presented a comprehensive techno-economic analysis of the battery storage system under various MG system configurations. |
Type | Element | Output Type | Capacity | Generation Cost ($/kWh) | Advantages | Disadvantages | |
---|---|---|---|---|---|---|---|
DG | Dispatchable resources. | CHP | AC | 20 kW–10 MW | – |
|
|
Diesel backup generator | AC | 20 kW–10 MW | 125–300 | ||||
Gas generator | AC | 50 kW–5 MW | 250–600 | ||||
Fuel cell | AC | 50 kW–1 MW | 1500–3000 | ||||
Micro turbine | AC | 25–100 kW | 350–750 | ||||
Non-Dispatchable resources. | Photovoltaic (PV) | DC | 10 kW–300 MW | – |
|
| |
Hydro | AC | 50 kW–30 MW | – | ||||
Wind turbine | AC | 10 kW–300 MW | – | ||||
Tidal | AC | 50 kW–200 MW | – | ||||
ESS | Pumped hydro | AC | 102–107 kWh | 1000–2500 |
|
| |
Compressed air | 12,000 kWh–6.42 GWh | 1000–2800 | |||||
Thermal storage | 1000 kWh–1.1 GWh | 1250–1500 | |||||
Flywheel | 2–25 kWh | 250–300 | |||||
Li-ion | 10–120,000 kWh | 250–500 | |||||
Lead-acid | 7–15 kWh | 250–500 | |||||
Capacitors | 3.5–150 kWh | 25–50 |
Ref | Type | Remarks |
---|---|---|
[51] | Centralized | Proposed an MG control based on a centralized architecture where different DERs are connected to a single bus, and applied a centralized heuristic approach to managing the reliability and economical use of energy. |
[52] | Performed a centralized real-time simulation in an MG connected to DERs and found that the optimization model in a centralized control can operate a virtual power of DERs. | |
[53] | Proposed a centralized control for an intelligent network of greenhouses connected to an MG. The control of stochastic power DERs was based on model predictive control (MPC) to optimize crop production and control indoor climate conditions. | |
[54] | Managed the active and reactive power in a power system by using centralized control in an MG connected to the primary grid, which can provide an auxiliary to control frequency and voltage. | |
[55] | Employed an optimal operation approach to schedule energy in multiple MGs and allocated economic benefits. | |
[56] | Decentralized | Developed a multi-agent system relying on an MG cluster (MGC). Performed multi-time scale optimization to control and manage the EMS in the MGC and to schedule the day based on stability and economy. |
[57] | Proposed and simulated an adaptive control with DERs, including an ESS, to adjust the power injection by managing the DC voltage bus on an efficiency point. | |
[58] | Applied the decentralized control of an MG to ensure the robustness and reliability of the power system by considering several objectives, such as economic power dispatch and reduction in power transmission losses. | |
[59] | Promoted decentralized control by using a near real-time algorithm that operates the elements of an MG at the event of changing conditions. |
Method | Description | Advantages | Disadvantages |
---|---|---|---|
VPD & FQB method [67] | This approach solves many shortcomings in MG applications. VPD and FQB can support those DERs with power factor impedance and help control the low voltage of highly resistive transmission lines where the common bus voltage Vbus is adjusted to manage a reference voltage Vref for a specific bus. |
|
|
Adaptive voltage droop control [69] | The voltage response coefficient is changed adaptively, based on the operating state of the converter station in DERs. |
|
|
virtual output impedance [68] | A virtual impedance is used to cancel out the negative impedance by simplifying the coupling relationship of active and reactive power. |
|
|
Virtual transformation method [66] | This method uses an instantaneous power calculation unit, a coordinate rotation transformation unit, and an adaptive inverse control unit, the last of which can adjust and modify the active power frequency droop control module by using a different optimization technique. |
|
|
Angle droop control [70] | The angle of the reference voltage in the inverters is used to control the active power and the frequency produced from DERs. |
|
|
Synchronized reactive power compensation [71] | To recognize the errors in power sharing, the system injects a real-reactive power transient coupling term and then compensates for the errors by using a slow integral term for regulating the DG voltage magnitude. |
|
|
Self-Adjusting control [72] | The control method uses a multi-droop controller whose parameters are adjusted based on the power consumption from the local loads. Virtual inductive impedance is used to improve the control of voltage and transient responses of the power sharing. |
|
|
Objective | Equation | Details |
---|---|---|
Voltage deviation [157] | the voltage at load bus- is the specified value (usually set as 1.0 p. u). | |
Voltage deviation [165] | reference voltage. is the lower limit of load bus voltage. the upper limit of load. | |
The voltage unbalance [158] | the set of the distributed system. is the voltage in each phase. | |
Voltage profile [162] | all system buses, bus voltage [p.u]. rated voltage [p.u]. |
Protection Scheme | Ref | Advantages | Disadvantages |
---|---|---|---|
Undervoltage-based protection schemes. | [183] |
|
|
Voltage-restrained protection schemes. | [184] |
|
|
Harmonic content-based schemes. | [185] |
|
|
Distance protection schemes. | [186] |
|
|
Adaptive overcurrent protection schemes | [187] |
|
|
Differential protection schemes. | [188] |
|
|
Region | Standard/Policy | Description |
---|---|---|
EU | PD IEC TS 62898-2 | Applies to the operation and control of MGs, including:
|
IEC TS 62898-1/2/3 |
| |
IEC TS 62257-9-2 |
| |
US | IEEE Standard 1547-Family |
|
China | Renewable Energy Law amendments |
|
National Climate Change Program |
| |
Preferential Tax Policies for Renewable Energy |
|
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Zahraoui, Y.; Alhamrouni, I.; Mekhilef, S.; Basir Khan, M.R.; Seyedmahmoudian, M.; Stojcevski, A.; Horan, B. Energy Management System in Microgrids: A Comprehensive Review. Sustainability 2021, 13, 10492. https://doi.org/10.3390/su131910492
Zahraoui Y, Alhamrouni I, Mekhilef S, Basir Khan MR, Seyedmahmoudian M, Stojcevski A, Horan B. Energy Management System in Microgrids: A Comprehensive Review. Sustainability. 2021; 13(19):10492. https://doi.org/10.3390/su131910492
Chicago/Turabian StyleZahraoui, Younes, Ibrahim Alhamrouni, Saad Mekhilef, M. Reyasudin Basir Khan, Mehdi Seyedmahmoudian, Alex Stojcevski, and Ben Horan. 2021. "Energy Management System in Microgrids: A Comprehensive Review" Sustainability 13, no. 19: 10492. https://doi.org/10.3390/su131910492
APA StyleZahraoui, Y., Alhamrouni, I., Mekhilef, S., Basir Khan, M. R., Seyedmahmoudian, M., Stojcevski, A., & Horan, B. (2021). Energy Management System in Microgrids: A Comprehensive Review. Sustainability, 13(19), 10492. https://doi.org/10.3390/su131910492