Distributed Energy Resources and the Application of AI, IoT, and Blockchain in Smart Grids
Abstract
:1. Background
- The electric battery’s invention that produces a continuous supply of electric current by Alessandro Volta is the first most significant event in 1800.
- The discovery of electromagnetic induction by Michael Faraday is the second most significant event in 1831.
- The incandescent bulb development by Thomas Edison and Joseph Sawm is the third most significant event that happened between the years 1878–1879. This event has spread its roots in developing new kinds of bulbs.
- The development of direct current (DC) streetlamps in New York, the United States of America (USA) in 1882, is the fourth most significant event.
- The widespread use of alternating current (AC) systems since 1886 is the fifth most significant and the fate changing event in electric grid evolution.
- The invention of the first working models of induction motor by two eminent scientists Nikola Tesla and Galileo Ferraris had revolutionized the alternating current power system. It is the most significant event in the evolution of the electric grid.
- The power plant infrastructure development for supplying energy to the small communities began to start in 1896. Different types of AC power generating units have evolved in other parts of the world, which is considered the seventh most significant event in the electric grid evolution.
- The commercialization of power metal-oxide-semiconductor field-effect transistor (MOSFET) is the eighth most significant event. It is regarded as another big game-changer in the electric grid’s evolution, which allowed integrating RE technologies into the grid.
- The ninth most significant event in the electric grid evolution is the deregulation of wholesale power from renewables and other power plants.
- The interconnection of photovoltaics (PV) and other power plants into the electric grid infrastructure is the tenth most significant event.
- DER integration with the electric grid had become popular between 2003 and 2004, and it is the eleventh most significant event in the electric grid evolution.
- Between 2008 to 2010, the guidelines for implementing microgrids (MGs), nanogrids (NGs) have evolved. Later, the methodology for implementing pilot-scale smart grids (SGs) also became a discussion topic among researchers and industrialists.
- In 2011, the smart power infrastructure demonstration took place, which emphasized ensuring reliability and security with ESN’s intelligent elements, which is the thirteenth most significant event.
- High penetration of renewables-based MGs with higher peak capacities has become quite popular since 2013, which is the most significant achievement in electric grid evolution.
- From 2014 onwards, grid modernization has taken place, and the SG’s have become economically viable for power generation. Their integration with the electric grid has also become possible due to the availability of technology.
1.1. Overview of a Smart Grid
1.2. Role of Smart Grid in the Existing Power System and Its Implementation Barriers
- It enables a broader range of RER, DER, and ESS technologies that allow higher RE deployment with cost-effectiveness while increasing reliability and quality of power.
- Rapid response to ESS, such as flywheels, can address intermittency problems, enhancing the grid’s overall reliability and power.
- Exchanges of real-time information make for a more flexible grid, achieving almost complete forecasting.
- Greater visibility enhances strategies for the price of forecasting.
- Assimilating clients into the power network as active players; energy savings made by reducing the peak demands and increasing energy quality and lowered GHG emissions.
- Regulation of voltage and subsequent load allows operating costs to be minimized based on the marginal output cost.
1.3. Key Contributions
- A comprehensive study of the DER, power electronics components and their control, electric vehicles (EVs) as load components, and communication and cybersecurity issues in SG are carried out.
- The techniques associated with AI, e.g., fuzzy logic (FL), knowledge-based systems (KbS), and artificial neural networks (ANN), have been briefly summarized, and their roles in DER-based SG are also thoroughly discussed.
- The IoT components, along with energy Internet architecture for SG applications, is presented.
- The role played by AI-based analytics in improving SG services is thoroughly presented.
- A comprehensive study on the IoT and BC enabled services like data sensing, data storage, secured, transparent, and traceable digital transactions among the peers within ESN and its clusters is carried out.
- Discussion is made on the AI, IoT, and BC to provide automated services to peers by monitoring the ESN’s real-time information, determining reliability, availability, resilience, stability, security, and sustainability.
2. Distributed Energy Resources in Smart Grids
2.1. Distributed Generation Technologies
- Solar PV power plants (SPVPP)
- Wind power plants (WPP)
- Hydroelectric power generation (HPG)
- Thermal power plants (TPP)
- Nuclear power plant (NPP)
- Energy storage systems (ESS)
- Electric vehicle (EV)
- Smart houses (SHs)
- Cities
- Factories
2.1.1. Solar Photovoltaic Power Plants
2.1.2. Wind Power Plants
2.1.3. Hydroelectric Power Generation Plants
Conventional Hydropower
Run-of-the-River Hydropower
Pumped Storage Hydropower
2.1.4. Thermal Power Plants
Combined Cycle Gas Power Plants
Combined Recovery of Blast Furnace and Coke-Oven Gas
Combined Heat and Power
Bioenergy
Nuclear Power Plants
2.2. Electric Storage Systems
2.3. Demand Side Management/Controllable Loads in a Smart Grid
2.4. Electric Vehicles as a Load Component in a Smart Grid
3. AC, DC, and Hybrid Microgrids-Based Distributed Generation
4. Power Electronic Components and Their Control in Smart Grids
4.1. Volt-VAR Control
4.2. Ramp-Rate Control
4.3. Frequency and Voltage Event Ride-Through
5. Communication and Cybersecurity in a Smart Grid
5.1. Role of Communication in the Smart Grid
5.2. Role of Cybersecurity in a Smart Grid
6. Application of Artificial Intelligence, Machine Learning, and Deep Learning in Smart Grids
7. Application of Internet-of-Things and Energy Internet in Smart Grids
7.1. IoT Components in the Context of Smart Grids
7.1.1. Advanced Sensing and Measurement
7.1.2. Automatic Monitoring and Control
7.1.3. Renewable Resources Forecasting
7.1.4. Information and Communication Technology
7.1.5. Distribution Automation
8. Application of Blockchain in Smart Grids
9. Discussion on the Benefits and Services Offered by the Smart Grid
- Support a more significant proportion of RE as SGs are well-designed with technology support that effectively controls the ESN by taking the uncertainties associated with RE,
- Acts as a better response system that mitigates the sudden disturbance by offering the services related to repair and faster restoration,
- Live statistics on the energy consumptions patterns and suggestions on improving energy efficiency,
- Live information on electricity generation prices along with the forecasted price based on the time of use,
- Peak demand adjustment within the ESN, based on the flexible and convenient time of operation,
- Enhanced grid efficiency and improvements in energy trading, metering, and RE integration,
- Flexible and sustainable energy trading is ensured and a choice of low carbon electricity selection while trade is possible,
- Advanced support for EV penetration and home energy management,
- Extended support is offered for plug-in energy infrastructures (e.g., city surveillance systems, public lighting, energy on-demand services).
10. Conclusions
Author Contributions
Funding
Conflicts of Interest
References
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Distributed Energy Resources | Power Modeling Equation | Description of the Equation Parameters |
---|---|---|
Solar photovoltaics |
| |
Wind turbine |
| |
Biomass energy |
| |
Hydropower |
| |
Battery energy storage | State of the charge equation: Depth of the discharge equation: |
|
Keyword from Title | Methods | Highlights | Discussion | Reference |
---|---|---|---|---|
ANN, load forecasting, SG |
|
|
| [119] |
ANN, Short-term load forecasting |
|
|
| [120] |
NN, self-model, seasonal impact of weather, exogenous variables |
|
|
| [121] |
Load forecasting, ACO, GA, FL. |
|
|
| [122] |
ANN, statistical methods, short-term peak load forecasting |
|
|
| [123] |
Toward self-healing energy infrastructure systems |
|
|
| [127] |
Optimal operation of distribution feeders in SGs |
|
|
| [128] |
Demand response forecasting in SGs: Use of anthropologic and structural data for short-term multiple loads forecasting |
|
|
| [129] |
Real-time operation, SG, FCN networks, optimal power flow |
|
|
| [130] |
Real-time energy information infrastructure, STG, Router network management |
|
|
| [131] |
SGM, RE generation |
|
|
| [132] |
SGM architecture, The multi-agent energy system, Energy demand forecasting, Virtual power plants |
|
|
| [133] |
Methods | Advantages | Disadvantages |
---|---|---|
CNN | CNN’s are robust, extremely competitive performing, supervised DL approaches. With added features of CNNs, its scalability is improved, and the duration of their training combined with those of ANNs is enhanced. CNN’s provide possible IoT privacy uses because they can dynamically learn functionality from raw data on protection. | CNN’s include high computational costs. Therefore, it is challenging to implement them on commodity-constrained platforms to support onboard safety features. |
RNN | RNNs also includes their equivalents better performance with serial data in many scenarios. In some cases, IoT security data consists of serial data. Thus, RNNs have a possible application in IoT protection. | The major downside of RNNs is the problem of gradients vanishing or exploding. |
AE | AEs are theoretically significant for the extraction of functionality. For representation learning, AEs can be used effectively to learn features instead of the manually designed features used in conventional ML and minimize dimensionality without prior knowledge of the data. | AEs use a large number of computing resources. While AEs can easily train to capture training data characteristics, if the training dataset is not representative of a test data set, AEs can only confuse the learning process rather than reflect the characteristics. |
RBM | Using a feedback system on RBMs allows multiple critical features to be extracted from an unsupervised approach. | RBMs include high computational costs. Hence, it is challenging to incorporate them on resource-constrained IoT devices to support onboard protection systems. |
DBN | DBNs are non-supervised methods of learning, trained iteratively with unlabeled data to represent significant features. | DBNs have high computational costs due to the large number of parameters generated by the lengthy initialization process. |
GAN | In GAN, the only way to produce a sample is by going through the model, as with DBNs and RBMs, in which the Markov network requires an unknown number of iterations. | GAN is unpredictable and demanding preparation. It is a difficult task to learn how to generate discrete data through GAN. |
EDLN | Mixing DL optimization algorithms may lead to a diversity of models, enhancing model efficiency and generalization of models. | The system’s time complexity can be increased significantly. |
The Role Played by Blockchain in Microgrids and Smart Grid | Reference |
---|---|
| [171] |
| [172] |
| [173] |
| |
| [174] |
| [175] |
| [176] |
| [177] |
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Kumar, N.M.; Chand, A.A.; Malvoni, M.; Prasad, K.A.; Mamun, K.A.; Islam, F.R.; Chopra, S.S. Distributed Energy Resources and the Application of AI, IoT, and Blockchain in Smart Grids. Energies 2020, 13, 5739. https://doi.org/10.3390/en13215739
Kumar NM, Chand AA, Malvoni M, Prasad KA, Mamun KA, Islam FR, Chopra SS. Distributed Energy Resources and the Application of AI, IoT, and Blockchain in Smart Grids. Energies. 2020; 13(21):5739. https://doi.org/10.3390/en13215739
Chicago/Turabian StyleKumar, Nallapaneni Manoj, Aneesh A. Chand, Maria Malvoni, Kushal A. Prasad, Kabir A. Mamun, F.R. Islam, and Shauhrat S. Chopra. 2020. "Distributed Energy Resources and the Application of AI, IoT, and Blockchain in Smart Grids" Energies 13, no. 21: 5739. https://doi.org/10.3390/en13215739
APA StyleKumar, N. M., Chand, A. A., Malvoni, M., Prasad, K. A., Mamun, K. A., Islam, F. R., & Chopra, S. S. (2020). Distributed Energy Resources and the Application of AI, IoT, and Blockchain in Smart Grids. Energies, 13(21), 5739. https://doi.org/10.3390/en13215739