A Study on Improving Economy Efficiency of Pumping Stations Based on Tariff Changes
Abstract
:1. Introduction
2. Market Energy in Poland—Structure of Tariffs Energy
- -
- cut greenhouse gas emissions by at least 40% (compared to 1990);
- -
- increase the share of renewable energy by at least 32%;
- -
- improve energy efficiency by at least 32.5%.
3. Materials and Methods
3.1. Study Site Characterization and Analyzed Data
- FV is the future value, which transfers all the cost from the past to the base year (2021);
- PV is the present value or current value of the future of energy savings;
- pt is the interest factor, which is described by Equation (2):
- r is the interest rate (nominal);
- t is the number of years.
- rr is the real interest rate;
- r is the nominal interest rate;
- i is the inflation rate.
- fixed tariffs (in this work called 24 h tariffs);
- time of use (TOU) tariffs (often named multi-zone or multi-part tariffs).
3.2. Hydro-Meteorological Conditions and Their Influence on Pumping Stations’ Work
3.3. Energy Cost Calculation
- Opoi is the payment for electricity and distribution services (PLN);
- Ci is the electricity price in a given time zone k (PLN·kWh−1);
- SSVn is the fixed component of the grid rate (PLN·kW−1·miesiąc−1);
- Pi is the contracted capacity (kW);
- SZVnk is the variable component of the network rate for the time zone k (PLN·kWh−1);
- Epik is the amount of energy taken from the grid, in the time zone k (kWh);
- r is the number of time zones.
- fixed costs, independent of the amount of energy consumed and contracted capacity;
- variable costs, depending on the amount of active energy consumed;
- fixed costs, depending on the amount of contracted capacity.
- Opoi(MOD) is the payment for electricity and distribution services (PLN);
- A is the fixed costs independent of the amount of energy consumed and contracted capacity (PLN);
- Epik is the amount of energy taken from the grid, in the time zone k (kWh);
- B is the variable costs, depending on the amount of active energy consumed, (PLN·kWh−1);
- C is the fixed costs, depending on the amount of contracted capacity (PLN·kW−1).
3.4. Energy Charges at Different Zone Tariffs—Profitability Ratios (PR)
- E is the average unit price (expenditure) for consumed active energy (PLN·kWh−1);
- C is the cost of active energy (PLN);
- A is the amount of active energy consumed (kWh).
- changing the tariff and minimizing the average rate of charges for the consumed active energy;
- optimizing the contracted capacity (Pi).
- One-zone tariff (24 h):
- Two-zone tariff:
- Multi-zone tariff:
- PRI,II,III is the relative value of the profitability ratio index in tariffs (-);
- P is the average price for active energy (PLN·kWh−1);
- STc is the energy rate at a 24 h tariff zone taking into account additional charges related to the energy consumed, i.e., network and industry charges (PLN·kWh−1);
- STI is the energy rate at tariff zone I, taking into account additional charges related to the energy consumed, i.e., network and industry charges (PLN·kWh−1);
- STII is the energy rate at tariff zone II, taking into account additional charges related to the energy consumed, i.e., network and industry charges (PLN·kWh−1);
- STIII is the energy rate at tariff zone III, taking into account additional charges related to the energy consumed, i.e., network and industry charges (PLN·kWh−1);
- EII is the amount of peak energy (at tariff zone I) in relation to the 24 h rate (STI/STc) (-);
- EIII is the amount of off-peak energy ratio in relation to the 24 h rate (STII/STc) (-);
- EIIII is the amount of energy expressed as an indicator of the energy in the remaining hours in relation to the daily rate (STIII/STc) (-);
- αpeak is the share of energy consumed in the peak zone (-);
- αoffpeak is the share of energy consumed in the off-peak zone (-).
4. Results
Profitability from Changing Energy Tariffs
5. Discussion
6. Conclusions
- the amount of energy used in the process of pumping water and the amount of energy used for purposes related to the general operation of the pumping station (lighting, heating, etc.);
- the power of the largest pump unit, which affects the level of contracted capacity and, thus, increases costs;
- the conditions of water inflow to the pumping station, specifying the number and frequency of starts (the larger the inlet tank, the greater the possibility of adjusting the pump operation to off-peak hours).
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Conflicts of Interest
References
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Tariff Symbol X1,X2,X3,X4 | ||
---|---|---|
X1 | B | Consumer of energy from the medium voltage grid |
C | Consumer of energy from the low voltage grid | |
X2 | 1 | Contracted capacity ≤ 40 kW |
2 | Contracted capacity > 40 kW | |
X3 | 1 | One time zone (24 h) |
2 | Two time zones (off-peak, on-peak) | |
3 | Three time zones (off-peak, mid-peak, on-peak) | |
X4 | a | Division of the day into peak and off-peak |
b | Division of the day into a day and night |
Districts of WZMiUW | Pumping Stations | Q∑ (m3/s) | Fp∑ (ha) | P∑ (kW) |
---|---|---|---|---|
KONIN | 11 | 35.2 | 42,609 | 2477 |
POZNAŃ | 12 | 12.4 | 7544 | 836 |
LESZNO | 12 | 13.0 | 7477 | 753 |
PIŁA | 4 | 5.5 | 2231 | 484 |
OSTRÓW WLKP | 1 | 1.6 | 264 | 82 |
Districts of WZMiUW | 2010–2013 | 2014 | 2015 | 2016 | 2017 | 2018 | 2019 | 2020 | 2021 | Total |
---|---|---|---|---|---|---|---|---|---|---|
Poznań | 156,251 | 40,781 | 42,576 | 44,449 | 46,405 | 48,447 | 50,578 | 52,804 | 55,127 | 537,418 |
Konin | 134,341 | 35,063 | 36,606 | 38,216 | 39,898 | 41,653 | 43,486 | 45,399 | 47,397 | 462,059 |
Leszno | 161,576 | 42,171 | 44,027 | 45,964 | 47,986 | 50,098 | 52,302 | 54,603 | 57,006 | 555,733 |
Piła | 42,408 | 11,068 | 11,555 | 12,064 | 12,595 | 13,149 | 13,727 | 14,331 | 14,962 | 145,859 |
TOTAL: | 494,575 | 129,084 | 134,764 | 140,693 | 146,884 | 153,347 | 160,094 | 167,138 | 174,492 | 1,701,070 |
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Napierała, M. A Study on Improving Economy Efficiency of Pumping Stations Based on Tariff Changes. Energies 2022, 15, 799. https://doi.org/10.3390/en15030799
Napierała M. A Study on Improving Economy Efficiency of Pumping Stations Based on Tariff Changes. Energies. 2022; 15(3):799. https://doi.org/10.3390/en15030799
Chicago/Turabian StyleNapierała, Michał. 2022. "A Study on Improving Economy Efficiency of Pumping Stations Based on Tariff Changes" Energies 15, no. 3: 799. https://doi.org/10.3390/en15030799
APA StyleNapierała, M. (2022). A Study on Improving Economy Efficiency of Pumping Stations Based on Tariff Changes. Energies, 15(3), 799. https://doi.org/10.3390/en15030799