Optimization of Energy Storage Operation Chart of Cascade Reservoirs with Multi-Year Regulating Reservoir
Abstract
:1. Introduction
2. Methodology
2.1. Drawing and Simulation of ESOC
- (1)
- If TLt,inflow > TLt,chart, then the cascade system is going to store water, the reservoir that has maximum Kit begins to store water first, until the calculated total output is equal to TLt,chart. If this reservoir is filled up and the output has not yet reached TLt,chart, then the reservoir that has the second largest Kit begins to store water.
- (2)
- If TLt,chart > TLt,inflow, then the cascade system is going to supply water, the reservoir that has minimum Kit begins to supply water first, until the calculated total output is equal to TLt,chart. If this reservoir is emptied and the output has not yet reached TLt,chart, then the reservoir that has the second smallest Kit begins to supply water.
- (3)
- If TLt,chart = TLt,inflow, then there is no water supply or water storage, thus the system produces hydropower by natural inflow only.
2.2. Selection of Typical Dry Years Considering the Inflow Frequency Inconsistency
- Step1:
- Discretize the possible range of inflow frequency into S discretized values, and get P1, P2, …, PS.
- Step2:
- Obtain the corresponding Piy (I = 1, 2, …, n) of each station according to the actual inflow in the y year of the basin.
- Step3:
- For each Ps (s = 1, 2, …, S), calculate the esy (s = 1, 2, …, S) by formula (4).
- Step4:
- Obtain the actual inflow frequency Ps* of the whole basin in y year by finding the s that corresponds to the minimum esy.
2.3. Optimization of Output Coefficients for Energy Storage Operation Chart
- (1)
- In the output coefficients, there are two points equal to 1, which correspond to the basic operation curves, i.e., guaranteed output zone. This is a fixed value.
- (2)
- In order to avoid the intersection of output curves, the output coefficient decreases in turn (or increases in turn), i.e., two adjacent output values are separated by at least one discrete interval.
- Step 1:
- For the first point, randomly generate a value within the upper and lower boundary of the output coefficient to form the first point N(1).
- Step 2:
- For the second point of the output coefficient, randomly generate a value in the interval [Lower, N(1)] to form the second point N(2).
- Step 3:
- Similarly, for the lth point, randomly generate a value in the interval [N(l-1), Lower] to form the lth point N(l).
- Step 4:
- Repeat step 3 to get an initial solution N(1), N(2), …, N(l), …, N(L).
2.4. Optimization of Drawdown Level for Multi-Year Regulating Reservoir
3. Case Study
3.1. Basin Introduction and Basic Data
3.2. Results and Discussion
3.2.1. Typical Dry Years Selection
3.2.2. Output Coefficients Optimization
- (1)
- Provide the initial solution of output coefficients, such as (2.0, 1.8, 1.5, 1.2, 1, 1, 0.9, 0.8, 0.7, 0), draw the ESOC, and carry out the simulation. At this time, the corresponding average annual power generation is 1057.149 × 108 kWh, and the guaranteed rate is 0.999.
- (2)
- After the first round of optimization, the optimal output coefficients are (2.2, 1.8, 1.2, 1, 1, 1, 1, 0.8, 0.7, 0, 0, 0), and the corresponding average annual power generation is 1060.0047 × 108 kWh, the guaranteed rate is 0.991. Remove the repetition of 1 and 0, and change the number of curves to 8, then obtain the updated output coefficients, which are (2.2, 1.8, 1.2, 1, 1, 0.8, 0.7, 0).
- (3)
- After re-optimization, get the output coefficients (2.2, 1.8, 1, 1, 1, 1, 0.7, 0, 0, 0), and the average annual power generation is 1067.2245 × 108 kWh, the guaranteed rate is 0.9858 at this moment. Remove the repetition of 1 and 0, and change the number of curves to 6, then, obtain the updated output coefficients, which is (2.2, 1.8, 1, 1, 0.7, 0).
- (4)
- Re-optimization again, the optimization results are (2.1, 1.8, 1, 1, 0, 0). At this time, the average annual power generation is 1067.482 × 108 kWh, and the guaranteed rate is 0.9883. After removing the duplicate items, the results are (2.1, 1.8, 1, 1, 0).
- (5)
- Re-optimization again, the results are (2.1, 1.8, 1, 1, 0). At this time, the results of the adjacent two optimizations are no longer changed, so the final output coefficients, i.e., (2.1, 1.8, 1, 1, 0), are the optimal.
3.3.3. Optimization of Drawdown Level
4. Summary and Conclusions
- (1)
- The proposed selection method of typical dry years based on the minimum square sum of frequency difference can effectively consider the inflow frequency inconsistency of upstream and downstream and make the typical runoff processes representing the whole basin more reasonable. In the case study, we selected 10 dry years with the lowest frequencies by this method, and the ESOC is drawn based on this.
- (2)
- The optimization method of output coefficients and the method of generating an initial solution proposed in this paper can quickly and accurately find out the best output coefficients, and effectively solve the influence of output coefficients on the results of ESOC. In the case study, under the optimal output coefficients, the annual average power generation of the seven reservoirs in Yalong River can reach 1067.76 × 108 kWh, and compared with previous research results the total power generation of cascade system increased by 9%.
- (3)
- Aiming at the end-of-year drawdown level problem of multi-year regulating reservoirs, through the case study, it is found that when a multi-year regulating reservoir participates in the joint operation of cascade system and the sum of downstream reservoirs is large, the optimum of end-of-year drawdown level is the lower limit of the allowable operating water level range, and this conclusion is different from that of a multi-year regulating reservoir operated alone.
Author Contributions
Funding
Acknowledgments
Conflicts of Interest
References
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Item | Unit | Lianghekou | Yangfanggou | Jinxi | Jindong | Guandi | Ertan | Tongzilin |
---|---|---|---|---|---|---|---|---|
Normal level | m | 2865 | 2088 | 1880 | 1646 | 1330 | 1200 | 1015 |
Dead level | m | 2785 | 2094 | 1800 | 1640 | 1321 | 1155 | 1010 |
Flood control level | m | 2845.9 | none | 1859 | none | none | 1190 | none |
Regulation performance | --- | Multi-year | Daily | Annual | Daily | Daily | Seasonal | Daily |
Installed capacity | MW | 3000 | 1500 | 3600 | 4800 | 2400 | 3300 | 600 |
Guaranteed output | MW | 1130 | 253 | 1086 | 1443 | 709.8 | 1028 | 227 |
Range of operating water level | m | [2845.9, 2865] or [2785, 2865] | 2092 | [1859, 1880] or [1800, 1880] | 1644 | 1328 | [1155, 1200] or [1190, 1200] | 1013.5 |
Year | Lianghekou | Jingxi | Ertan | Year | Lianghekou | Jingxi | Ertan |
---|---|---|---|---|---|---|---|
1957–1958 | 25.4% | 17.5% | 6.3% | 1988–1989 | 66.7% | 58.7% | 58.7% |
1958–1959 | 85.7% | 69.8% | 57.1% | 1989–1990 | 14.3% | 20.6% | 23.8% |
1959–1960 | 92.1% | 90.5% | 88.9% | 1990–1991 | 31.7% | 22.2% | 20.6% |
1960–1961 | 19.0% | 23.8% | 27.0% | 1991–1992 | 47.6% | 28.6% | 11.1% |
1961–1962 | 71.4% | 79.4% | 81.0% | 1992–1993 | 76.2% | 77.8% | 76.2% |
1962–1963 | 27.0% | 19.0% | 15.9% | 1993–1994 | 7.9% | 4.8% | 9.5% |
1963–1964 | 15.9% | 33.3% | 39.7% | 1994–1995 | 93.7% | 95.2% | 93.7% |
1964–1965 | 46.0% | 34.9% | 34.9% | 1995–1996 | 73.0% | 55.6% | 54.0% |
1965–1966 | 1.6% | 1.6% | 1.6% | 1996–1997 | 55.6% | 41.3% | 49.2% |
1966–1967 | 38.1% | 30.2% | 14.3% | 1997–1998 | 82.5% | 66.7% | 69.8% |
1967–1968 | 74.6% | 82.5% | 90.5% | 1998–1999 | 23.8% | 3.2% | 3.2% |
1968–1969 | 61.9% | 42.9% | 31.7% | 1999–2000 | 20.6% | 15.9% | 7.9% |
1969–1970 | 77.8% | 74.6% | 74.6% | 2000–2001 | 12.7% | 14.3% | 30.2% |
1970–1971 | 52.4% | 50.8% | 44.4% | 2001–2002 | 49.2% | 31.7% | 28.6% |
1971–1972 | 81.0% | 84.1% | 71.4% | 2002–2003 | 96.8% | 73.0% | 82.5% |
1972–1973 | 69.8% | 92.1% | 85.7% | 2003–2004 | 11.1% | 7.9% | 19.0% |
1973–1974 | 98.4% | 98.4% | 92.1% | 2004–2005 | 28.6% | 25.4% | 36.5% |
1974–1975 | 36.5% | 12.7% | 4.8% | 2005–2006 | 6.3% | 9.5% | 33.3% |
1975–1976 | 58.7% | 81.0% | 77.8% | 2006–2007 | 90.5% | 93.7% | 96.8% |
1976–1977 | 44.4% | 65.1% | 66.7% | 2007–2008 | 87.3% | 76.2% | 87.3% |
1977–1978 | 63.5% | 63.5% | 65.1% | 2008–2009 | 54.0% | 39.7% | 42.9% |
1978–1979 | 79.4% | 60.3% | 47.6% | 2009–2010 | 30.2% | 44.4% | 52.4% |
1979–1980 | 42.9% | 71.4% | 55.6% | 2010–2011 | 68.3% | 57.1% | 68.3% |
1980–1981 | 17.5% | 38.1% | 25.4% | 2011–2012 | 65.1% | 88.9% | 98.4% |
1981–1982 | 60.3% | 61.9% | 50.8% | 2012–2013 | 3.2% | 6.3% | 12.7% |
1982–1983 | 33.3% | 47.6% | 46.0% | 2013–2014 | 50.8% | 68.3% | 73.0% |
1983–1984 | 88.9% | 96.8% | 95.2% | 2014–2015 | 9.5% | 36.5% | 41.3% |
1984–1985 | 84.1% | 87.3% | 84.1% | 2015–2016 | 39.7% | 49.2% | 60.3% |
1985–1986 | 22.2% | 46.0% | 38.1% | 2016–2017 | 57.1% | 54.0% | 61.9% |
1986–1987 | 95.2% | 85.7% | 79.4% | 2017–2018 | 34.9% | 52.4% | 63.5% |
1987–1988 | 41.3% | 27.0% | 17.5% | 2018–2019 | 4.8% | 11.1% | 22.2% |
Year | Liang-hekou | Jingxi | Ertan | Whole Basin | Year | Liang-hekou | Jingxi | Ertan | Whole Basin |
---|---|---|---|---|---|---|---|---|---|
1965–1966 | 1.6% | 1.6% | 1.6% | 1.6% | 2015–2016 | 39.7% | 49.2% | 60.3% | 49.7% |
1993–1994 | 7.9% | 4.8% | 9.5% | 7.4% | 2017–2018 | 34.9% | 52.4% | 63.5% | 50.3% |
2012–2013 | 3.2% | 6.3% | 12.7% | 7.4% | 1979–1980 | 42.9% | 71.4% | 55.6% | 56.6% |
1998–1999 | 23.8% | 3.2% | 3.2% | 10.0% | 1981–1982 | 60.3% | 61.9% | 50.8% | 57.7% |
2003–2004 | 11.1% | 7.9% | 19.0% | 12.7% | 2016–2017 | 57.1% | 54.0% | 61.9% | 57.7% |
2018–2019 | 4.8% | 11.1% | 22.2% | 12.7% | 1976–1977 | 44.4% | 65.1% | 66.7% | 58.7% |
1999–2000 | 20.6% | 15.9% | 7.9% | 14.8% | 1995–1996 | 73.0% | 55.6% | 54.0% | 60.9% |
1957–1958 | 25.4% | 17.5% | 6.3% | 16.4% | 1988–1989 | 66.7% | 58.7% | 58.7% | 61.4% |
2005–2006 | 6.3% | 9.5% | 33.3% | 16.4% | 1978–1979 | 79.4% | 60.3% | 47.6% | 62.4% |
1974–1975 | 36.5% | 12.7% | 4.8% | 18.0% | 1977–1978 | 63.5% | 63.5% | 65.1% | 64.0% |
2000–2001 | 12.7% | 14.3% | 30.2% | 19.0% | 2013–2014 | 50.8% | 68.3% | 73.0% | 64.0% |
1989–1990 | 14.3% | 20.6% | 23.8% | 19.6% | 2010–2011 | 68.3% | 57.1% | 68.3% | 64.5% |
1962–1963 | 27.0% | 19.0% | 15.9% | 20.6% | 1958–1959 | 85.7% | 69.8% | 57.1% | 70.9% |
1960–1961 | 19.0% | 23.8% | 27.0% | 23.3% | 1975–1976 | 58.7% | 81.0% | 77.8% | 72.5% |
1990–1991 | 31.7% | 22.2% | 20.6% | 24.9% | 1997–1998 | 82.5% | 66.7% | 69.8% | 73.0% |
1980–1981 | 17.5% | 38.1% | 25.4% | 27.0% | 1969–1970 | 77.8% | 74.6% | 74.6% | 75.7% |
1966–1967 | 38.1% | 30.2% | 14.3% | 27.5% | 1992–1993 | 76.2% | 77.8% | 76.2% | 76.7% |
1987–1988 | 41.3% | 27.0% | 17.5% | 28.6% | 1961–1962 | 71.4% | 79.4% | 81.0% | 77.2% |
1991–1992 | 47.6% | 28.6% | 11.1% | 29.1% | 1971–1972 | 81.0% | 84.1% | 71.4% | 78.8% |
2014–2015 | 9.5% | 36.5% | 41.3% | 29.1% | 1967–1968 | 74.6% | 82.5% | 90.5% | 82.5% |
1963–1964 | 15.9% | 33.3% | 39.7% | 29.6% | 1972–1973 | 69.8% | 92.1% | 85.7% | 82.5% |
2004–2005 | 28.6% | 25.4% | 36.5% | 30.2% | 2007–2008 | 87.3% | 76.2% | 87.3% | 83.6% |
1985–1986 | 22.2% | 46.0% | 38.1% | 35.4% | 2002–2003 | 96.8% | 73.0% | 82.5% | 84.1% |
2001–2002 | 49.2% | 31.7% | 28.6% | 36.5% | 2011–2012 | 65.1% | 88.9% | 98.4% | 84.1% |
1964–1965 | 46.0% | 34.9% | 34.9% | 38.6% | 1984–1985 | 84.1% | 87.3% | 84.1% | 85.2% |
1982–1983 | 33.3% | 47.6% | 46.0% | 42.3% | 1986–1987 | 95.2% | 85.7% | 79.4% | 86.8% |
2009–2010 | 30.2% | 44.4% | 52.4% | 42.3% | 1959–1960 | 92.1% | 90.5% | 88.9% | 90.5% |
1968–1969 | 61.9% | 42.9% | 31.7% | 45.5% | 1983–1984 | 88.9% | 96.8% | 95.2% | 93.7% |
2008–2009 | 54.0% | 39.7% | 42.9% | 45.5% | 2006–2007 | 90.5% | 93.7% | 96.8% | 93.7% |
1996–1997 | 55.6% | 41.3% | 49.2% | 48.7% | 1994–1995 | 93.7% | 95.2% | 93.7% | 94.2% |
1970–1971 | 52.4% | 50.8% | 44.4% | 49.2% | 1973–1974 | 98.4% | 98.4% | 92.1% | 96.3% |
Drawdown Level/m | 2785 | 2790 | 2795 | 2800 | 2805 | 2810 | 2815 | 2820 | 2825 | 2830 | 2835 | 2840 | 2845 |
---|---|---|---|---|---|---|---|---|---|---|---|---|---|
Power generation/108 kWh | 103.8 | 104.7 | 105.7 | 106.6 | 107.6 | 108.5 | 109.2 | 109.9 | 110.7 | 111.4 | 112.0 | 112.3 | 112.1 |
Drawdown Level/m | Power Generation/108 kWh | Guaranteed Rate |
---|---|---|
2785 | 1067.8 | 98.80% |
2790 | 1064.1 | 98.80% |
2795 | 1060.5 | 98.60% |
2800 | 1056.1 | 98.50% |
2805 | 1051.6 | 98.30% |
2810 | 1046.5 | 97.90% |
2815 | 1041 | 97.10% |
2820 | 1035.1 | 96.10% |
2825 | 1028 | 94.20% |
2830 | 1020 | 92.30% |
2835 | 1012.6 | 89.90% |
2840 | 1004.9 | 87.00% |
2845 | 996.9 | 84.10% |
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Liu, Y.; Jiang, Z.; Feng, Z.; Chen, Y.; Zhang, H.; Chen, P. Optimization of Energy Storage Operation Chart of Cascade Reservoirs with Multi-Year Regulating Reservoir. Energies 2019, 12, 3814. https://doi.org/10.3390/en12203814
Liu Y, Jiang Z, Feng Z, Chen Y, Zhang H, Chen P. Optimization of Energy Storage Operation Chart of Cascade Reservoirs with Multi-Year Regulating Reservoir. Energies. 2019; 12(20):3814. https://doi.org/10.3390/en12203814
Chicago/Turabian StyleLiu, Yi, Zhiqiang Jiang, Zhongkai Feng, Yuyun Chen, Hairong Zhang, and Ping Chen. 2019. "Optimization of Energy Storage Operation Chart of Cascade Reservoirs with Multi-Year Regulating Reservoir" Energies 12, no. 20: 3814. https://doi.org/10.3390/en12203814
APA StyleLiu, Y., Jiang, Z., Feng, Z., Chen, Y., Zhang, H., & Chen, P. (2019). Optimization of Energy Storage Operation Chart of Cascade Reservoirs with Multi-Year Regulating Reservoir. Energies, 12(20), 3814. https://doi.org/10.3390/en12203814