Analysis Application of Controllable Load Appliances Management in a Smart Home
Abstract
:1. Introduction
1.1. Framework and the State-of-the-Art
1.2. Benefits and Risks of a Smart House and Demand Response Concept
- Confidentiality—the guarantee that the data will be disclosed only to authorized entities or systems. This means that only authorized people are allowed to access certain information;
- Integrity—the guarantee that the accuracy and consistency of the data will be maintained. No unauthorized modifications, destruction, or losses of data will go undetected;
- Availability—the assurance that any network resource (data/bandwidth/equipment) will always be available for any authorized entity. Such resources have to also be protected against any incident that threatens their availability;
- Authenticity and authorization—the validation that communicating parties are, who they claim they are, and that messages supposedly sent by them are indeed sent by them;
- Non repudiation—undeniable proof to verify the truthfulness of any claim of an entity [21]. In order to minimize the energy costs, the SHs have programs that help users to reduce their expenses. These programs are called demand response (DR) programs.
1.3. Related Works Considering Management of Controllable Appliances in a Smart Home
1.4. Goals, Contributions and Structure
- The evaluation of the load distribution of the SWH for each tariff under analysis;
- The evaluation of the load distribution of the HVAC system, in cooling mode, for each tariff;
- The evaluation of the cost/profit associated for each tariff (flat price, TOU, RTP, and CPP schemes).
2. Mathematical Formulation
2.1. Objetive Function and Market Pricing Modelling
2.2. Sanitary Water Heating Load Model
2.3. Heating, Ventilation and Air Conditioning Load Model
3. Case Study and Results Analysis
3.1. Details, Data, and System Considered
3.2. Analysis Results
3.3. Cases Comparison Overview and Discussion
3.3.1. Comparison and Discussion between Cases 2, 3, and 4
3.3.2. Comparison and Discussion between Case 1 and Case 4: The Best Case
4. Conclusions
5. Future Research
Author Contributions
Funding
Conflicts of Interest
Nomenclature
Smart house rooftop angle (deg). | |
Sanitarian water heater capacitance (kWh/). | |
Thermal capacity of air (kJ/kg). | |
Heating, ventilation, and air conditioning system performance coefficient ( Summer; Winter). | |
Electricity price cost (buying) in the real-time market (€/kWh). | |
Duration of the time interval (h). | |
Day-ahead market electricity price (€/kWh). | |
Sold electricity price in the real-time market (€/kWh). | |
Expected profit (€). | |
Battery-based energy storage system efficiency. | |
Size dimensions of the smart house, length, width, height (m). | |
Predicted energy value of the heating, ventilation and air conditioning system in the day-ahead market (kWh). | |
Energy consumption of the heating, ventilation, and air conditioning system in the real-time market (kWh). | |
Predicted energy value of the most run services in the day-ahead market (kWh). | |
Energy consumption of the most-run services in the real-time market (kWh). | |
Predicted energy value of the sanitarian water heating system in the day-ahead market (kWh). | |
Energy consumption of the sanitarian water heating system in the real-time market (kWh). | |
Sanitarian water heater tank capacity (). | |
Volume of the smart house (m3). | |
Hot water usage from the sanitarian water heater (). | |
Rated power of the heating, ventilation, and air conditioning system (kW). | |
Probability of the wind power scenario. | |
Charging energy of the electric vehicle in the day-ahead market (kWh). | |
Discharging energy from the electric vehicle in the day-ahead market (kWh). | |
Traded energy with the day-ahead market (kWh). | |
Energy traded in the day-ahead market in the day-ahead market (kWh). | |
Sold energy in the day-ahead market (kWh). | |
Power for each time slot from the sanitarian water heater (kW). | |
Charging energy of the battery-based energy storage system in the day-ahead market (kWh). | |
Charging energy of the battery-based energy storage system in the real-time market (kWh). | |
Battery-based energy storage system discharging in the real-time market (kWh). | |
Charging energy of the electric vehicle in the real-time market (kWh). | |
Discharged energy from the electric vehicle in the real-time market (kWh). | |
Wind power point forecast in the day-ahead market (kW). | |
Energy consumed in the day-ahead market (kWh). | |
Energy bought in the real-time market (kWh). | |
Energy sold in the real-time market (kWh). | |
Wind power spillage in the real-time market (kW). | |
Sanitarian water heater power (kWh). | |
Sanitarian water heater resistivity (/kWh). | |
Equivalent resistance of the heating, ventilation and air conditioning system (). | |
Smart house environment temperature set-point (). | |
Smart house environment temperature deviation (). | |
Available wind power at time at scenario . (kW) | |
Time-step period (); . | |
Minimum permanent hot water temperature in the sanitarian water heater (). | |
Maximum permanent hot water temperature in the sanitarian water heater (). | |
Minimum hot water temperature for the showering process (). | |
Temperature of the sanitarian water heater tank (). | |
Outdoor environment temperature (). | |
Inlet hot water temperature in the sanitarian water heater (). | |
Smart house environment temperature. | |
Auxiliary binary variable for the heating, ventilation, and air conditioning system status (). | |
Auxiliary binary variable for the sanitarian water heater status (). | |
Spillage cost of the wind system (€). | |
Wind power scenario index (); . |
Abbreviations
CPP | Critical-peak pricing. |
DR | Demand response. |
EC | Expected cost. |
EP | Expected profit. |
ESS | Energy storage system. |
EU | European Union. |
EV | Electric vehicle. |
G2V | Grid to vehicle. |
HEM | Home energy management systems. |
HVAC | Heating, ventilation and air conditioning. |
IBDR | Demand response-based on incentives. |
PBDR | Demand response-based on prices. |
RC | Residential customer. |
RTP | Real-time pricing. |
RTP | Real-time pricing. |
SG | Smart grids. |
SH | Smart house. |
SWH | Sanitarian water heater. |
TOU | Time-of-use. |
V2G | Vehicle to grid. |
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Case | Tariff Scheme | Objective Function (€) |
---|---|---|
case 2 | CPP | 1.06 |
case 3 | Flat price | 2.99 |
case 4 | TOU | 4.89 |
Case | Tariff Scheme | Objective Function (€) |
---|---|---|
case 1 | RTP | 0.45 |
case 4 | TOU | 4.89 |
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Osório, G.J.; Shafie-khah, M.; Carvalho, G.C.R.; Catalão, J.P.S. Analysis Application of Controllable Load Appliances Management in a Smart Home. Energies 2019, 12, 3710. https://doi.org/10.3390/en12193710
Osório GJ, Shafie-khah M, Carvalho GCR, Catalão JPS. Analysis Application of Controllable Load Appliances Management in a Smart Home. Energies. 2019; 12(19):3710. https://doi.org/10.3390/en12193710
Chicago/Turabian StyleOsório, Gerardo J., Miadreza Shafie-khah, Gonçalo C. R. Carvalho, and João P. S. Catalão. 2019. "Analysis Application of Controllable Load Appliances Management in a Smart Home" Energies 12, no. 19: 3710. https://doi.org/10.3390/en12193710
APA StyleOsório, G. J., Shafie-khah, M., Carvalho, G. C. R., & Catalão, J. P. S. (2019). Analysis Application of Controllable Load Appliances Management in a Smart Home. Energies, 12(19), 3710. https://doi.org/10.3390/en12193710