Optimal Residential Battery Storage Sizing Under ToU Tariffs and Dynamic Electricity Pricing
Abstract
:1. Introduction
2. Mathematical Model
- The model can run on a centralized smart home management unit, which computes the optimal operation plan and sends setpoints to the smart inverter.
- Alternatively, the smart inverter’s onboard processing unit can execute the model directly if equipped with sufficient computational resources and real-time data inputs.
2.1. Objective Function
- Power supply investment decision variables: PV plant investment (, ), BSS; investment (, ), grid connection purchase power ()
- Consumer power supply variables: PV plant production (), BSS operation (, , , ), grid supply and associated costs (, , ).
2.2. Investment and Loan Costs
2.3. Maintenance and Replacement Costs
2.4. Energy Costs and Profits
- Monthly net metering/billing: Under a pure monthly net metering compensation mechanism, any excess electricity produced by a PV system that is delivered to the grid is credited at the same retail rate that the customer would pay for electricity consumption. This means that for every kilowatt-hour (kWh) exported, the consumer receives a full kWh credit that can offset future electricity consumption from the grid. In Croatia, suppliers use a less common approach that combines both net metering and net billing simultaneously. Consumers receive full retail credits (net metering) for the portion of exported electricity equal to the amount of monthly imported electricity, but after this threshold is reached, any further excess energy is compensated at the lower rate (currently 80% of the energy retail rate [26]).
- 15 min interval net billing: Under the 15 min net billing compensation mechanism, excess electricity exported to the grid is compensated at a lower rate, rather than the full retail price. The customer is then billed separately for the electricity consumed from the grid at the standard retail rate. This often results in lower financial benefits compared to monthly net metering.
2.5. Battery Storage and PV Plant Operation
3. Case Study
3.1. Input Data Description
3.2. Numerical Results and Discussion
- CASE I—involves a monthly net metering/billing scheme with ToU tariff prices that is currently used in most residential grid-connected PV systems in Croatia;
- CASE II—involves a 15 min net billing scheme with ToU tariff prices that is usually used for industrial grid-connected PV prosumers in Croatia;
- CASE III—involves a 15 min net billing scheme with dynamic day-ahead market prices.
- Limiting the output of the PV system to avoid exporting energy at a loss;
- Utilizing BSS to store surplus energy for later use or sale when market conditions are more favorable.
- Energy purchased at negative/low prices can be stored and later sold during peak price periods, creating an arbitrage opportunity. With the increase in the relative sellback price (), the profit from arbitrage opportunity increases.
- A larger BSS capacity allows for greater energy manipulation, potentially increasing income through strategic buying and selling.
- The ability to store more energy provides a buffer against price volatility on a daily basis and enhances system flexibility to handle/market PV production surplus.
- The average DA market prices are higher than the current regulated ToU tariff prices in Croatia;
- The analysis assumes that the consumer load pattern remains unchanged under the dynamic pricing tariff, similar to the load pattern observed under the ToU tariff.
4. Conclusions
Author Contributions
Funding
Data Availability Statement
Conflicts of Interest
Nomenclature
Sets | |
Set of all optimization problem variables | |
T | Time instances set |
M | Month set |
Y | Lifetime year set |
L | Loan payback period year set |
Time instance duration | |
Parameters | |
Load at time step t | |
Total annual load | |
Total energy demand on annual basis | |
d | Discount rate |
PV plant variable costs per kW installed | |
BSS variable costs per kWh | |
Grid connection variable cost per kW contracted | |
f | Portion of total investment financed through a loan |
Energy surplus price to energy production price ratio | |
Energy production costs in high tariff | |
Energy production costs in low tariff | |
Grid usage costs in high tariff | |
Grid usage costs in low tariff | |
RES support tax price | |
Value-added tax | |
Grid peak power costs | |
r | Fixed annual growth rate |
PV plant maintenance costs | |
BSS maintenance costs | |
k | Loan interest rate |
Battery replacement costs | |
z | BSS battery replacement year |
PV plant maximum install power | |
Relative PV plant production at time step t | |
Initial BSS state of charge | |
Maximum BSS energy capacity | |
Charging efficiency | |
Discharging efficiency | |
Inverter efficiency | |
BSS depth of discharge limit | |
BSS maximum charging–discharging power | |
Variations in BSS charging penalty | |
Variables | |
BSS maximum charging power at time step t | |
Optimal PV plant install power | |
PV plant power production at time step t | |
BSS C factor | |
Optimal BSS energy capacity | |
BSS binary investment decision variable | |
PV plant binary investment decision variable | |
Binary variable indicating net energy surplus/deficit for month m at high tariff | |
Binary variable indicating net energy surplus/deficit for month m at low tariff | |
BSS energy state at time step t | |
BSS charging power at time step t | |
BSS discharging power at time step t | |
BSS charging ramp rate power at time step t | |
Power imported from grid at time step t | |
Power exported to grid at time step t | |
Total exported and imported grid power at time step t | |
Monthly grid peak power at month m | |
Grid connection purchase power | |
Net energy at high tariff for month m | |
Net energy at low tariff for month m | |
Total energy exported to grid at high tariff for month m | |
Total energy imported from grid at high tariff for month m | |
Total energy exported to grid at low tariff for month m | |
Total energy imported from grid at low tariff for month m | |
Total net present cost | |
Investment costs | |
Total electric energy costs for the considered period | |
Present value of total electric energy costs (energy + grid usage + peak power costs) | |
Total maintenance cost | |
Present value of total equipment maintenance costs | |
PV plant maintenance cost | |
BSS maintenance cost | |
Battery replacement cost | |
The electric energy cost for month m | |
Present value of loan costs | |
Annuity cost for loan | |
Annual variations in the BSS charging cost | |
Variations in the BSS charging total cost |
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Jakus, D.; Novaković, J.; Vasilj, J.; Jolevski, D. Optimal Residential Battery Storage Sizing Under ToU Tariffs and Dynamic Electricity Pricing. Energies 2025, 18, 2391. https://doi.org/10.3390/en18092391
Jakus D, Novaković J, Vasilj J, Jolevski D. Optimal Residential Battery Storage Sizing Under ToU Tariffs and Dynamic Electricity Pricing. Energies. 2025; 18(9):2391. https://doi.org/10.3390/en18092391
Chicago/Turabian StyleJakus, Damir, Joško Novaković, Josip Vasilj, and Danijel Jolevski. 2025. "Optimal Residential Battery Storage Sizing Under ToU Tariffs and Dynamic Electricity Pricing" Energies 18, no. 9: 2391. https://doi.org/10.3390/en18092391
APA StyleJakus, D., Novaković, J., Vasilj, J., & Jolevski, D. (2025). Optimal Residential Battery Storage Sizing Under ToU Tariffs and Dynamic Electricity Pricing. Energies, 18(9), 2391. https://doi.org/10.3390/en18092391