An Incentive-Based Optimization Approach for Load Scheduling Problem in Smart Building Communities
Abstract
:1. Introduction
1.1. Literature Review
1.2. Study Contributions
- The impact of thermal assets on the building energy consumption and human comfort are considered in the formulation.
- The user inconvenience levels for time-shiftable and thermal assets are considered in the formulation.
- The DR program participants’ incentives are included in the optimization model that helps them get incentivized based on the amount of energy they are willing to shift.
- For solving the nonlinear optimization problem, the method of feasible direction is discussed and employed.
- A complete data set for residential and office buildings’ appliances is prepared that can be used by other researchers in the field.
2. Problem Statement and Preliminaries
3. Problem Formulation
3.1. Time-Shiftable Assets
3.2. Thermal Assets
3.2.1. HVAC Systems
3.2.2. Electric Water Heater Systems
3.2.3. The Inconvenience Level for Thermal Assets
3.3. Objective Functions
3.4. The Optimization Model
3.5. The Solution Approach
4. Case Study Design
4.1. Case Scenarios
4.2. Building Functionalities
5. Results and Discussion
5.1. The Small-Scale Community
5.1.1. The Baseline Case
5.1.2. The Case without Building Collaboration
5.1.3. The Case with Building Collaboration
5.1.4. Comparison between Case Studies
5.2. The Large-Scale Building Community
5.3. Discussion
6. Conclusions
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Conflicts of Interest
Nomenclature
a binary number to represent the optimal on or off status of a flexible time-shiftable asset i of building j at time t, which equals 1 if asset i is to be turned on at time t and zero otherwise | |
an auxiliary binary decision variable to state the status operation of asset i of building j at time t. If , the operation of this asset is just completed during time slot t and the corresponding must be zero | |
a binary number for the inconvenience, which equals 1 if there is a miss-match between the preferred schedule and the optimal schedule for deferrable asset i of building j at time t | |
a binary number for incentives, which equals 1 if consumers earn incentives since they switched off asset i of building j at time t, against their preference, and zero otherwise | |
the consumer’s preferred on-off status of a flexible time-shiftable asset i of building j at time t | |
the inconvenience level for thermal asset i of building j at time t | |
power consumption of the HVAC system in building j at time t (kW) | |
power consumption of the EWH system in building j at time t (kW) | |
building indoor temperature at time t () | |
hot water temperature at time t () | |
the start time of operation range for asset i of building j | |
the end time of operation range for asset i of building j | |
the required number of time slots to operate the time-shiftable asset i of building j | |
the incentive offered at time t | |
the time step length (h) | |
rated power of time-shiftable asset i of building j | |
start time | |
planning horizon (h) | |
factor of inertia | |
difference between the actual temperature and the desired one () | |
thermal conductivity (kW/) | |
coefficient of performance | |
mc | total thermal mass (kWh/) |
the temperature of incoming water to the electric water heater system () | |
ambient temperature () | |
the capacity of the tank () | |
the surface area of the tank () | |
the density of water () | |
the specific heat of water () | |
the flow rate of water () | |
total hourly load for building j | |
R | the thermal resistance of the water storage tank () |
maximum allowable difference between the desired temperature and actual temperature () | |
, , | non-negative constants for the quadratic cost function |
Indices | |
i | index of building assets |
j | index of buildings |
t | index of time |
Sets | |
set of assets in building j | |
set of buildings in the community |
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No. | Asset | Rated Power (kW) | User Preferred Time | The Operation Range | Duration (Minutes) |
---|---|---|---|---|---|
1 | Clothes washing machine | 3.5 | 17:20–18:00 | 15–21 | 40 |
2 | Clothes dryer | 3.2 | 18:10–19:20 | 15–22:30 | 70 |
3 | Dishwasher | 2.8 | 20:10–22:10 | 18–23:30 | 120 |
4 | Microwave | 0.9 | 18:30–18:40 | 18:20–19:10 | 10 |
5 | Electric kettle | 1.8 | 7:30–7:40 19–19:10 | 7:10–7:50 18:50–19:30 | 10 |
6 | Electric stove | 5.2 | 7–7:40 18–18:40 | 6:30–7:50 17:30–19:20 | 40 |
7 | Blender | 0.8 | 17:40–17:50 | 17:20–18:40 | 10 |
8 | Hair dryer | 1.5 | 6:40–6:50 | 6:30–8 | 10 |
9 | Steam iron | 1.4 | 20–20:20 | 19:30–23:30 | 20 |
10 | Vacuum cleaner | 1.35 | 19:30–20 | 14–21 | 30 |
11 | Coffee maker | 1.1 | 7:10–7:20 | 6:40–8 | 10 |
12 | Phone charger | 0.01 | 21:30–23:30 | 18–1 (next day) | 120 |
No. | Asset | Rated Power (kW) | User Preferred Time | The Operation Range | Duration (Minutes) |
---|---|---|---|---|---|
1 | Microwave | 0.9 | 12:10–12:20 12:20–12:30 12:30–12:40 | 11:40–13:00 | 10 |
2 | Electric kettle | 1.8 | 8:30–8:40 14–14:10 | 8:00–9:20 13:30–14:30 | 10 |
3 | Bottleless water cooler and heater | 5.1 | 9–9:30 14–14:30 | 8:30–10 12:30–15 | 30 |
4 | Paper shredder | 0.15 | 15–15:20 | 14–17 | 20 |
5 | Coffee maker | 1.1 | 8:20–8:30 11–11:10 14–14:10 | 8–8:40 10:30–11:30 13:30–15 | 10 |
Building Type | Number of PEVs | User Preferred Time | The Operation Range | Charging Duration for One Car (mins) |
---|---|---|---|---|
Residential unit, Type 1 | 1 | 17–22 | 17–6 (next day) | 300 |
Residential unit, Type 2 | 2 | 19–24 | 18:30–6 (next day) | 300 |
Residential unit, Type 3 | 1 | 17–18 21–2 (next day) | 17–18 21–6 (next day) | 360 |
Office building | 10 | 9–12 | 8:30–16:30 | 180 |
Parameters | Value |
---|---|
Thermal conductivity | |
The total thermal mass of the fluid of the cooling system | |
The coefficient of performance of the cooling system | |
The temperature of incoming water to the EWH system | |
The volume of the storage tank of the EWH system | |
The surface area of the storage tank of the EWH system | (m2) |
The density of water | |
The specific heat of water | |
The thermal resistance of the water storage tank | R = 1.309(m2°C/W) |
The flow rate of the hot water | |
Power range of the EWH system | |
Power range of the cooling system |
Case | Energy Consumption Reduction | Peak Demand Reduction | Energy-Cost Saving | |
---|---|---|---|---|
Small-scale building community | Without collaboration | 3.98% | 17.35% | 8.76% |
With collaboration | 5.31% | 44.15% | 10.47% | |
Large-scale building community | Without collaboration | 4.05% | 26.13% | 9.91% |
With collaboration | 5.43% | 53.15% | 13.02% |
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Nazemi, S.D.; Jafari, M.A.; Zaidan, E. An Incentive-Based Optimization Approach for Load Scheduling Problem in Smart Building Communities. Buildings 2021, 11, 237. https://doi.org/10.3390/buildings11060237
Nazemi SD, Jafari MA, Zaidan E. An Incentive-Based Optimization Approach for Load Scheduling Problem in Smart Building Communities. Buildings. 2021; 11(6):237. https://doi.org/10.3390/buildings11060237
Chicago/Turabian StyleNazemi, Seyyed Danial, Mohsen A. Jafari, and Esmat Zaidan. 2021. "An Incentive-Based Optimization Approach for Load Scheduling Problem in Smart Building Communities" Buildings 11, no. 6: 237. https://doi.org/10.3390/buildings11060237
APA StyleNazemi, S. D., Jafari, M. A., & Zaidan, E. (2021). An Incentive-Based Optimization Approach for Load Scheduling Problem in Smart Building Communities. Buildings, 11(6), 237. https://doi.org/10.3390/buildings11060237