Digital Twin Applications for Microgrids Components: Comparison
Please note this is a comparison between Version 2 by Catherine Yang and Version 1 by Namita Kumari.

The concept of the digital twin (DT) has been adopted as an important aspect in digital transformation of power systems. Microgrids (MG) can be seen as scaled-down versions of a centralised power system. A microgrid is a local power network that acts as a dependable island within bigger regional and national electricity networks, providing power without interruption even when the main grid is down. Microgrids are essential components of smart cities that are both resilient and sustainable, providing smart cities the opportunity to develop sustainable energy delivery systems.

  • digital twin
  • microgrid
  • point of common coupling
  • smart city

1. Solar Power

Solar power demand has been increasing extravagantly [40][1]. Although the construction of solar panels is a one-time investment, it requires high-quality maintenance to achieve its highest performance. Therefore, it is important to simulate and model it in advance for better operation, maintenance, planning, deployment, forecasting, fault diagnosis and asset performance management. The anatomy of groundwork, which has been performed in the area of solar panel digital twin, shows the importance of analytics to analyse asset data [41][2]. The photovoltaic (PV) panels, inverters, meters, environmental units, energy storage, plant and power grid can be designed with digital twins for solar power. Predictive analysis uses digital twins, which can be used to gain a better understanding of the failures and take preventive maintenance decisions.
Photovoltaic systems are exposed to different faults due to their complex outdoor installations, increased number of power electronics elements and ageing, which can impact PV system performance and reliability. Assessment of photovoltaic module failures can be carried out with the use of digital twin technology. A holistic digital twin approach to fault detection and identification for PV systems was developed in [42][3] as shown in Figure 61. In this approach, a physics-based digital twin was built to estimate the panel current and voltage. The difference between the estimated values and values measured from the physical twin helps the system detect and identify PV installation faults in real-time effectively.
Figure 61.
An overview of digital twin approach for fault diagnosis of the complete PV system.
The generated power by solar PV varies greatly because of its dependence on weather conditions. Therefore, forecasting power production will help in ensuring the reliability and availability of power. The forecasting model uses historical solar PV power data, solar irradiance, rainfall, temperature, etc., to forecast solar PV power output. Different machine learning algorithms [43][4] are applied to obtain the best prediction.
J. Shi et al. [44][5] proposed an algorithm to forecast the one-day-ahead power output of photovoltaic systems. Generally, there are two ways of forecasting PV power output; one is based on sunshine intensity, and another is based on system output. The intensity of sunlight is affected by a variety of factors, making it a nonlinear problem [44][5]. In a photovoltaic energy system, the hot spot is considered one of the main issues of PV modules, as local overheating can lead to module damage. Many data-driven approaches have recently been applied to find the hot spots in PV modules [45][6].

2. Wind Energy

Wind turbines are of two types, onshore wind turbines and offshore wind turbines. Due to adverse weather conditions they face, it is not easy to handle them manually. They are fitted with various sensors that continuously measure characteristics, such as wind speed, humidity, vibration and spindle temperature, resulting in continuous data streams [46][7]. Wind speed sensors are more error-prone, which deteriorates the performance of wind turbines and leads to faulty conditions. To detect fault sensors, Yang Li et al. [47][8] proposed a data-driven digital twin estimating the wind speed for the downwind turbines based on the wind speed measurements at the upwind turbines and their spatiotemporal correlation. The residual between the estimated and measured speeds is used to identify a possible fault. In [48][9], a condition monitoring approach for drivetrains on floating offshore wind turbines is proposed, utilising a DT framework. The data-driven DT uses a torsional dynamic model, online measurements and fatigue damage estimation to estimate the drivetrains’ remaining useful life (RUL). The proposed methodology has been simulated and tested to monitor the health of the turbine. However, only the mechanical aspect was considered in the model, while electrical aspects, such as power produced by wind, losses, etc., were not.
Sivalingam et al. [49][10] have established a physics-based methodology for predicting the RUL of electrical components, especially power converters. SCADA data are used to derive the wind turbine’s wind profile, such as wind speed, temperature, yaw angle and electrical power generation. The suggested methodology has been tested for both fixed and floating wind farm applications. In [50][11], a digital twin was developed based on the turbine’s geometric and aerodynamic properties to monitor the health of onshore wind turbines continuously. Data from the manufacturer catalogues were used to calibrate the system.

3. Biogas Energy

In biogas plants, organic materials are transformed into biogas by physical and biochemical processes in anaerobic environments. As there is a lack of essential waste analysis, there may be decreases in the optimization of production processes and output stability. Machine learning and deep learning can help in the key waste selection and prediction improvement for biogas production [51,52][12][13]. Spinti et al. [53][14] proposed a digital twin approach to optimising boiler performance in uncertain conditions by combining Bayesian inference from science-based models and machine learning with decision theory. To implement it online in real-time, the simulated data extracted using the Bayesian analysis are evaluated using a Gaussian process regression as a fast and robust surrogate model.
Elmaz et al. [54][15] used four regression techniques to model the biomass gasification process of carbon monoxide, carbon dioxide and hydrogen peroxide outputs. These developed models can be utilised for predicting outputs in simulation platforms and real-world applications. For biogas production prediction, an RNN-based deep learning model was developed with the hybrid architecture of dual-stage attention, long short-term memory and variable selection networks. Wang et al. [55][16] studied different waste inputs and operating conditions that affect biogas production using industrial-scale anaerobic co-digestion data from 8 years, combining it with a tree-based pipeline optimisation tool. The significance of this work was that the tree-based pipeline optimisation tool was used with a larger data set than any previously catalogued work. But a true DT of biogas with a proper communication channel has not been achieved.
In the near future, IoT sensors may help collect data from the biogas field, integrating the recorded temperature, humidity, pressure, etc., in a dataset. The massive dataset can improve the training and provide a highly stable model. This learning can be implemented in MGs to reduce waste production and improve economic efficiency. The above-discussed RERs are three main energy resources integrated into the MG system.

4. Battery

Electrical utilities must supply energy continuously to meet the real-time demand of consumers. However, when energy demand decreases, such as in off-peak hours, the energy produced exceeds the demand. Therefore, using the battery as an energy storage device can store extra energy for future use and help maintain the energy in the microgrid. Storage is crucial to diversifying energy sources and providing renewable energy to the market. But their internal status is hard to measure. Traditional ways of estimating a battery’s internal states, such as state of charge (SOC) and state of health (SOH), are challenging to use with degrading batteries. Without a battery management system (BMS), safety, dependability, lifespan and affordability are compromised. With more battery cells and larger battery systems, wiring connection becomes more complex and expensive. To monitor battery health accurately, Li et al. [56][17] developed a model-based digital twin on the cloud with an adaptive extended H-infinity filter and particle swarm optimisation for SOC and SOH estimation.
Apart from SOC and SOH status, battery carbon emission is also a major concern. Electric vehicles and grid-scale energy storage are just two examples of how batteries will be critical in our low-carbon future. Even though the main problem remains in maximising the life and effectiveness of these devices, there is an opportunity for more intelligent control of battery systems with the emergence of ML methodologies [57][18].
A fully physics-based DT of a combustion engine in a power plant is demonstrated in [58][19] for the first time, including battery storage. A real-time engine model is constructed from a detailed, one-dimensional model, which is then reduced to a fast-running model. This digital twin concept offers predictive capabilities and advantages over previous black-box engine approaches, facilitating self-optimising integrated and coordinated grid-power plant control.

5. Electric Vehicle

Using emerging technologies, such as IoT, wireless networking and artificial intelligence (AI), the digital twin technology is improvising its application in the vehicle sector. Even being new to the vehicle industry, some practical ideas and theoretical work can be found.
The electricity in an electric car battery is stored in the form of chemical potential. Batteries can accept, store and release power at any time. ESS cell voltage or charge imbalances are developed due to undercharging, overcharging and temperature profiles. ESS cell voltage life will be prolonged by reducing imbalance and temperature impacts [60][20]. In addition, some other issues related to electric vehicle batteries are power electronic interfacing, sensitive energy management system, charging interfaces, etc.
The authors in [61][21] have presented a consolidation of modern battery and battery management technologies for hybrid and pure electric vehicles, along with the progress and obstacles they have faced. A proper architecture [62][22] is required to implement a digital twin of the battery management system. The application of this architecture can be considered as a blueprint for a domain-specific meta-model of high-voltage battery systems and related processes over the whole life cycle. Through this meta-model, an actual system can be created. The research work [63][23] proposes a digital twin paradigm for the BMS, shown in Figure 72, to estimate and anticipate battery conditions with only a voltage sensor.
Figure 72.
Digital twin for Battery Management System.
The battery’s health needs to be monitored because it degrades over time. In [64][24], the digital twin model of lithium-ion battery is proposed to predict the battery’s performance deterioration accurately by simulating the battery’s discharge process. Data from the observable parameters are used to indicate battery health (HI). The LSTM approach, with the temporal measurement as a HI, is used to create a battery digital twin. The digital twin model of the battery’s true capacity can be obtained by virtually draining it. Results from a series of experiments demonstrate the viability of this approach in dynamic operating situations. The drastic increase in demand for electric vehicles requires new and advanced infrastructures for charging. Yu et al. [64][24] discussed the idea of establishing a cognitive charging station infrastructure with power generation, energy storage and charging networks. DT and parallel intelligence (PI) enables smart and cognitive charging station architecture.
Various methods for modelling energy storage systems have been summarised. However, there is still a need for further study. DT is a novel method for this research work. In MG, the power converter is the third most crucial part. The converter in the MG system establishes connections among the various other parts of the system.

6. Power Converters

The power converter plays a vital role in the integration of components of the microgrid. Most of the MG’s generating sources (PV, wind turbine), storage devices and loads require power electronics interfacing devices. A literature survey on power electronic converters for MGs is mentioned in [9][25]. Power converters include DC converters, AC converters and back-to-back converters. When MGs are connected to the grid, converters behave as current sources sustaining MGs. On the other hand, it behaves as a voltage source while working in islanded mode [12][26]. Renewable energy sources generally produce DC as output power. To feed that power to the main AC grid, DC/AC converters are needed [6][27]. As a result, converters are critical to developing microgrids, and, therefore, special attention must be paid to them. The use of data-driven approaches and digital twin models can solve various challenges relating to power electronic equipment, such as device faults, health conditions, remaining life, optimisation and control.
When it comes to the protection of power converters, the part that is most likely to be affected by a malfunction is the power switch. Therefore, fault analysis is being phased out in favour of a data-driven method that makes use of ML to facilitate rapid diagnosis and protection from additional harm. Fault characteristics provide opportunities for data collection. DC–DC converters can now be monitored using a digital twin based on linear differential equations and the linearisation of the 4th order Runga–Kutta method [65][28]. The suggested approach can identify the internal parameters of the buck converter and create a digital twin buck converter with the same operation waveforms as the physical one, according to both theoretical and experimental results. With the suggested method, both MOSFET and capacitor can be monitored without the use of any extra circuits [66][29]. In this paper [67][30], a data-driven technique to deploy a local model network (LMN) for the identification of a DC–DC converter has been proposed. To have a deeper understanding of the efficacy of the suggested strategy, a DC microgrid is taken into consideration. Comparisons to a traditionally tuned PI control indicate that the proposed method is superior in both of the test conditions. As explained in the wind turbine section, [49][10], a credible physics-based model has been developed for forecasting the remaining useful life (RUL) of power converters in variable-speed wind turbines.
An approach to diagnostic monitoring of modular power electronic converter systems within subsystem control layers is proposed in [68][31]. This solution makes use of real-time probabilistic DTs that are integrated into the controllers of the system. A case study has also been presented using a digital twin-based diagnostics concept. Using dynamic neural networks, Wunderlich et al. [69][32] proposed an innovative method to create real-time models of power electronic converters. The proposed modelling methodology is evaluated against existing real-time modelling approaches as well as ML approaches proposed in the past and is proven to be superior to both sets of methodologies. The findings demonstrate that the model is very accurate.
Power converters function as the connecting switches between elements of the MG. The discussed works showed that DT can provide better real-time monitoring and optimised functioning of the power converters. A tabulated summary of the DT of microgrid components, with references and brief descriptions, is provided in Table 1.
Table 1.
Summary of the DT of Microgrid Components.
Generally, the simulation studies and modelling on grid-connected microgrids are carried out considering physics-based, data-driven and hybridisation modelling techniques. These models are available on simulation platforms, such as MATLAB Simulink and Real Time Digital Simulator (RTDS). The simulation study on the impact of the operation of a grid-connected microgrid on the rest of the power system network does not mimic the real-world scenario due to the utilisation of a fixed microgrid model. The MGDT can address this challenge as it is considered to be closer to the real-world scenario. The present approach of microgrid simulation relies on fixed models of various components of microgrids. Therefore, the integrated system simulation results generally do not mimic the actual response on the ground. The data-driven approach helps in creating better models of the DT components. When integrated and connected with the rest of the power system network, we may get the simulation response close to real-world scenarios. Therefore, the MGDT can better mimic the real operation of the microgrid when connected to the simulation platform. Hence, MGDT can provide better insight into the impact of an event in the microgrid, such as a fault, on the rest of the grid operation. The necessity of continuously updating the models is a key challenge when establishing an MGDT for different systems/processes. Models must be continuously updated throughout the systems’ lifetime from real-time data streams collected through monitoring systems.
Microgrid is a small self-contained power system network having renewable energy sources (mostly wind and solar), a battery energy storage system and controllable loads. A microgrid acts as a single entity when interacting with the rest of the electrical power grid. As the structure and operation of the microgrid system are well established in the electrical power system literature, it has not been reviewed in the present manuscript of the paper. Being a relatively new concept, the present work focuses more on reviewing the concept of DT of the microgrid. DT of the microgrid is developed at the point of interconnection of the microgrid with the rest of the electrical grid to understand better the impact of microgrid operation on the rest of the electrical grid. The establishment of MGDT comprises a digital twin of each section of the microgrid. For the formulation of DT, the planning layout includes data from each unit of MG that needs to be collected to develop a model, model adaptation, algorithm formulation, bi-directional exchange of data between the physical and virtual model and model validations. The goal of MGDT is to improve the efficiency, life cycle cost, service quality, asset management and longevity of energy systems.

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