Multi-Period Newsvendor Problem for the Management of Battery Energy Storage Systems in Support of Distributed Generation
Abstract
:1. Introduction
- Investigating the analogy between the inventory management of regular commodities and the management of energy storage system;
- Developing a novel variant of the classical newsvendor model for the management of the storage device in the presence of intermittent sources and uncertain loads. A single user’s perspective has been considered in order to optimize the use of the battery energy storage system minimizing its energy cost.
2. Literature Review
2.1. Economic Models for the Electrical Energy Storage Systems
2.2. Inventory Models with Energy Considerations
3. Model Development
3.1. Notation
Levelized cost of energy for the BESS (€/kWh) | |
Levelized cost of energy for the photovoltaic system (€/kWh) | |
Battery degradation per cycle (-) | |
Energy demand rate at period with probability distribution (kWh) | |
Depth of discharge (-) | |
Maximum level of energy stored (kWh) | |
Minimum level of energy stored (kWh) | |
Amount of energy stored at time (kWh) | |
Inventory level at the end of period (kWh) | |
Charging efficiency of the BESS (-) | |
Discharging efficiency of the BESS (-) | |
Energy price for purchasing a kWh from the grid (€/kWh) | |
Energy price for selling a kWh from the PV system to the grid (€/kWh) | |
Quantity of energy charged in the BESS (kWh) | |
Energy production rate of the PV system at period distributed with (kWh) | |
State of charge (-) | |
Number of cycles already performed by the BESS (cycles) | |
Deteriorating rate due to self-discharge (-) | |
Inventory level at the beginning of period (kWh) |
3.2. Problem Definition
- The conversion losses can be considered into the definition of the relationship between the demand and the production rate as for the production of defective items. Moreover, the energy stored in the BESS continues to perish at a constant rate because of the self-discharge losses and, thus, the model should consider deteriorating items.
- BESS capacity degradation can be modeled as inventory models with space restrictions [30], which may degrade over time.
- Safety stock (SS) are taken into account to prevent issues related to the complete discharge.
- Uncertain and intermittent energy demand, , and production, rates defined through stochastic distributions;
- BESS parameters are fixed over time (i.e., static model);
- The amount of safety stocks corresponds to the lower threshold of energy stored,
- Demand can be satisfied, at least partly, through the energy stored in the BESS and the unsatisfied demand is not backlogged which means that the excess demand cannot be met in a sequent period;
- Shortages are considered as lost sales and should be met with different energy source, such as through energy purchase from the grid. Furthermore, the shortage cost is proportional to the size of the shortage (i.e., the amount of energy demand exceeding the energy available in the BESS);
- Production and order costs are not considered as they are not differential;
- Every cycle can start without delay and thus no lead time are considered;
- Self-discharge losses are linearly proportional to the amount of energy stored in the BESS, , and are evaluated in the model as holding costs;
- The energy produced is first used to meet the demand and, then, the surplus energy is used to charge the BESS;
- The energy stored in the battery in period , , is limited between two limits (i.e., and which are defined in Equations (1) and (2), respectively), where the maximum energy that can be stored reduces every cycle because of BESS capacity degradation.
3.3. Model Formulation
4. Numerical Example
5. Conclusions
Author Contributions
Funding
Acknowledgments
Conflicts of Interest
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Marchi, B.; Zanoni, S.; Pasetti, M. Multi-Period Newsvendor Problem for the Management of Battery Energy Storage Systems in Support of Distributed Generation. Energies 2019, 12, 4598. https://doi.org/10.3390/en12234598
Marchi B, Zanoni S, Pasetti M. Multi-Period Newsvendor Problem for the Management of Battery Energy Storage Systems in Support of Distributed Generation. Energies. 2019; 12(23):4598. https://doi.org/10.3390/en12234598
Chicago/Turabian StyleMarchi, Beatrice, Simone Zanoni, and Marco Pasetti. 2019. "Multi-Period Newsvendor Problem for the Management of Battery Energy Storage Systems in Support of Distributed Generation" Energies 12, no. 23: 4598. https://doi.org/10.3390/en12234598
APA StyleMarchi, B., Zanoni, S., & Pasetti, M. (2019). Multi-Period Newsvendor Problem for the Management of Battery Energy Storage Systems in Support of Distributed Generation. Energies, 12(23), 4598. https://doi.org/10.3390/en12234598