Internet of Things (IoT) and the Energy Sector
Abstract
:1. Introduction
1.1. Concepts
1.2. Motivation
1.3. Methodology
2. Internet of Things (IoT)
3. Enabling Technologies
3.1. Sensor Devices
3.2. Actuators
3.3. Communication Technologies
3.4. IoT Data and Computing
3.4.1. Cloud Computing
3.4.2. Fog Computing
4. IoT in the Energy Sector
4.1. IoT and Energy Generation
4.2. Smart Cities
4.3. Smart Grid
4.4. Smart Buildings
4.5. Smart Use of Energy in Industry
4.6. Intelligent Transportation
5. Challenges of Applying IoT
5.1. Energy Consumption
5.2. Integration of IoT with Subsystems
5.3. User Privacy
5.4. Security Challenge
5.5. IoT Standards
5.6. Architecture Design
6. Future Trends
6.1. Blockchain and IoT
6.2. Green IoT
7. Conclusions
Author Contributions
Funding
Acknowledgments
Conflicts of Interest
References
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Parameter | Range | Data Rate | Power Usage (Battery Life) | Security | Installation Cost | Example Application | |
---|---|---|---|---|---|---|---|
Technology | |||||||
LoRA | ⩽50 km | 0.3–38.4 kbps | Very low (8–10 years) | High | Low | Smart buildings (smart lighting) | |
NB-IoT | ⩽50 km | ⩽100 kbps | High (1–2 years) | High | Low | Smart grid communication | |
LTE-M | ⩽200 km | 0.2–1 Mbps | Low (7–8 years) | High | Moderate | Smart meter | |
Sigfox | ⩽50 km | 100 bps | Low (7–8 years) | High | Moderate | Smart buildings (electric plugs) | |
Weightless | <5 km | 100 kbps | Low (Very Long) | High | Low | Smart meter | |
Bluetooth | ⩽50 m | 1 Mbps | Low (Few months) | High | Low | Smart home appliances | |
Zigbee | ⩽100 m | 250 Kbps | Very Low (5–10 years) | Low | Low | Smart metering in renewable energies | |
Satellite | Very Long >1500 km | 100 kbps | High | High | Costly | Solar & wind power plants |
Application | Sector | Description | Benefits | |
---|---|---|---|---|
Regulation and market | Energy democratization | Regulation | Providing access to the grid for many small end users for peer to peer electricity trade and choosing the supplier freely. | Alleviating the hierarchy in the energy supply chain, market power, and centralized supply; liquifying the energy market and reducing the prices for consumers; and creating awareness on energy use and efficiency. |
Aggregation of small prosumers (virtual power plants) | Energy market | Aggregating load and generation of a group of end users to offer to electricity, balancing, or reserve markets. | Mobilizing small loads to participate in competitive markets; helping the grid by reducing load in peak times; Hedging the risk of high electricity bills at peak hours; and improving flexibility of the grid and reducing the need for balancing assets; Offering profitability to consumers. | |
Energy supply | Preventive maintenance | Upstream oil and gas industry/utility companies | Fault, leakage, and fatigue monitoring by analyzing of big data collected through static and mobile sensors or cameras. | Reducing the risk of failure, production loss and maintenance downtime; reducing the cost of O&M; and preventing accidents and increasing safety. |
Fault maintenance | Upstream oil and gas industry/utility companies | Identifying failures and problems in energy networks and possibly fixing them virtually. | Improving reliability of a service; improving speed in fixing leakage in district heating or failures in electricity grids; and reducing maintenance time and risk of health/safety. | |
Energy storage and analytics | Industrial suppliers or utility companies | Analyzing market data and possibilities for activating flexibility options such as energy storage in the system. | Reducing the risk of supply and demand imbalance; increasing profitability in energy trade by optimal use of flexible and storage options; and ensuring an optimal strategy for storage assets. | |
Digitalized power generation | Utility companies & system operator | Analyzing big data of and controlling many generation units at different time scales. | Improving security of supply; improving asset usage and management; reducing the cost of provision of backup capacity; accelerating the response to the loss of load; and reducing the risk of blackout. |
Application | Sector | Description | Benefits | |
---|---|---|---|---|
Transmission and distribution (T&D) grid | Smart grids | Electric grid management | A platform for operating the grid using big data and ICT technologies as opposed to traditional grids. | Improving energy efficiency and integration of distributed generation and load; improving security of supply; and reducing the need for backup supply capacity and costs. |
Network management | Electric grid operation & management | Using big data at different points of the grid to manage the grid more optimally. | Identifying weak points and reinforcing the grid accordingly and reducing the risk of blackout. | |
Integrated control of electric vehicle fleet (EV) | Electric grid operation & management | Analyzing data of charging stations and charge/discharge cycles of EVs. | Improving the response to charging demand at peak times; analyzing and forecasting the impact of EVs on load; and identifying areas for installing new charging stations and reinforcement of the distribution grid. | |
Control and management of vehicle to grid (V2G) | Electric grid operation & management | Analyzing load and charge/discharge pattern of EVs to for supporting the grid when needed. | Improving the flexibility of the system by activating EVs in supplying the grid with electricity; Reducing the need for backup capacity during peak hours Control and management of EV fleet to offer optimal interaction between the grid and EVS. | |
Microgrids | Electricity grid | Platforms for managing a grid independent from the central grid. | Improving security of supply; creating interoperability and flexibility between microgrids and the main grid; and offering stable electricity prices for the consumers connected to the microgrid. | |
Control and management of the District heating (DH) network | DH network | Analyzing big data of the temperature and load in the network and connected consumers. | Improving the efficiency of the grid in meeting demand; reducing the temperature of hot water supply and saving energy when possible; and identifying grid points with the need for reinforcement. | |
Demand side | Demand response | Residential/commercial & industry | Central control (i.e., by shedding, shifting, or leveling. | Reducing demand at peak time, which itself reduces the grid congestion. |
Demand response (demand side management) | Residential/commercial & industry | Central control (i.e., by shedding, shifting, or leveling; load of many consumers by analyzing the load and operation of appliances. | Reducing demand at peak time, which itself reduces the grid congestion; reducing consumer electricity bills; and reducing the need for investment in grid backup capacity. | |
Advanced metering infrastructure | End users | Using sensors and devices to collect and analyze the load and temperature data in a consumer site. | Having access to detailed load variations in different time scale; identifying areas for improving energy efficiency (for example overly air-conditioned rooms or extra lights when there is no occupants); and reducing the cost of energy use. | |
Battery energy management | End users | Data analytics for activating battery at the most suitable time | Optimal strategy for charge/discharge of battery in different time scale; improving energy efficiency and helping the grid at peak times; and reducing the cost of energy use. | |
Smart buildings | End users | Centralized and remote control of appliances and devices. | Improving comfort by optimal control of appliances and HVAC systems; reducing manual intervention, saving time and energy; increasing knowledge on energy use and environmental impact; improving readiness for joining a smart grid or virtual power plant; and improved integration of distributed generation and storage systems. |
Challenge | Issue | Example Solution | Benefit |
---|---|---|---|
Architecture design | Providing a reliable end-to-end connection | Using heterogeneous reference architectures | Interconnecting things and people |
Diverse technologies | Applying open standard | Scalability | |
Integration of IoT with subsystems | IoT data management | Designing co-simulation models | Real-time data among devices and subsystems |
Merging IoT with existing systems | Modelling integrated energy systems | Reduction in cost of maintenance | |
Standardization | Massive deployment of IoT devices | Defining a system of systems | Consistency among various IoT devices |
Inconsistency among IoT devices | Open information models and protocols | Covering various technologies | |
Energy consumption | Transmission of high data rate | Designing efficient communication protocols | Saving energy |
Efficient energy consumption | distributed computing techniques | Saving energy | |
IoT Security | Threats and cyber-attacks | Encryption schemes, distributed control systems | Improved security |
User privacy | Maintaining users’ personal information | Asking for users’ permission | Enables better decision-making |
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Hossein Motlagh, N.; Mohammadrezaei, M.; Hunt, J.; Zakeri, B. Internet of Things (IoT) and the Energy Sector. Energies 2020, 13, 494. https://doi.org/10.3390/en13020494
Hossein Motlagh N, Mohammadrezaei M, Hunt J, Zakeri B. Internet of Things (IoT) and the Energy Sector. Energies. 2020; 13(2):494. https://doi.org/10.3390/en13020494
Chicago/Turabian StyleHossein Motlagh, Naser, Mahsa Mohammadrezaei, Julian Hunt, and Behnam Zakeri. 2020. "Internet of Things (IoT) and the Energy Sector" Energies 13, no. 2: 494. https://doi.org/10.3390/en13020494