Climate Change Impacts on Hydropower in Yunnan, China
Abstract
:1. Introduction
- 10 change projections from 5 global climate models (GCMs) under two representative concentration pathways (RCPs) are used to evaluate climate change effects on streamflow of Lancang River and Jinsha River.
- Hydropower potential, spill, and long-term drought under climate change are evaluated under different projections in the combined hydropower system spanning both basins.
- Different possible adaptations to climate change are evaluated with different conditions for the studied CHSs.
2. Materials
2.1. Study Area
2.2. Historical Data and Climate Change Data
3. Meteorological Change under Climate Change
3.1. Projected Changes of Precipitation in Lancang River Basin
3.2. Projected Changes of Precipitation in Jinsha River Basin
4. Streamflow Change Simulation
4.1. Model Training and Validation
4.2. Simulated Runoff under Climate Change
5. Hydropower Generation Model
5.1. Mathematical Model
- (1)
- Mass balance constraint
- (2)
- Reservoir initial storage constraint
- (3)
- Expected final storage constraint
- (4)
- Storage constraints
- (5)
- Turbine flow constraints
- (6)
- Minimum ecological streamflow constraint
- (7)
- Cascaded hydropower minimum output constraints
5.2. Progressive Optimality Algorithm for Cascaded Hydropower System Operation
- Generate an initial solution. For optimal operation of CHS, an initial solution (water level of each station at each period) can be found by setting the water level of each station to be constant and generated by the incoming water. Set the current stage as t.
- Fix the decision values of t − 1 and t + 1, solve the subproblem of stage t with Equation (14). Then update the state values of stage t with the optimal value of the subproblem.
- Set t = t − 1, if t > 0, go back to step 2, otherwise, go to step 4:
- If the termination condition is met, stop the algorithm, and the current trajectory is the optimal solution of the problem. Otherwise, set t = T and go back to step 2.
6. Results and Discussion
6.1. Hydropower Generation
- Generation increases in all projections, but increases more in scenario RCP8.5, for both CHSs.
- Figure 8a,b shows that the output of both CHSs is large during the flood season, especially from July to September. However, Figure 8c,d shows that the output increases less in these months, this may be because the inflow increases little or even decreases during this period. In addition, these CHSs can generate with full capacity during the flood season, with abundant inflow, and increased inflow can increase generation and reduce spill in other periods.
- Table 5 shows that the SD. of yearly generation increases in both CHSs in most cases, so yearly generation is prone to fluctuate more under climate change.
- Table 5 and Figure 8e,f show that both CHSs have much less power generation in extreme drought years. For example, the generation of LCCHS in the driest year is only 51.79 TWh in MRI-CGCM3 of RCP4.5, which is 10% less than the driest year in history and only about 69% of the historical yearly average. JSCHS shows a similar change: generation of the driest year in GFDL-ESM2M of RCP4.5 is about 78% of the historical yearly average. Both CHSs show that hydropower generation is prone to more vulnerability with climate change. Figure 8e,f shows that generation in JSCHS has milder outlier means, being more vulnerable than LCCHS; LCCHS’ large reservoirs can reduce vulnerability.
- These two CHSs have similar changes in most GCMs under the same scenario, but some show differences. For example, generation of LCCHS increases 0.37% in bcc-csm1 of RCP4.5, while JSCHS increases 8.17% for the same case, because meteorological conditions change differently in different areas and with different basin characteristics.
6.2. Spill
- Average annual spill, SD. of annual spill, average annual inflow and average annual storage range have similar trends, wherein more inflow increase spill and large reservoirs can be useful (Table 6).
- Both CHSs spill in most years, and JSCHS spills more because its smaller storage capacity is insufficient to regulate seasonal inflow variation (Table 6).
- Spill is concentrated from July to September in both CHSs. The difference of inflow and generation percentage show that large amounts of water can transfer from flood seasons to dry seasons in LCCHS, and nearly none in JSCHS (Figure 9a,b).
- The box plot of peak generation and spill in Figure 9c,d shows peak generation and spill have similar trends with more generation and spill. Although LCCHS can transfer some water from flood seasons to dry seasons, it still spills during extreme wet years, while JSCHS has little storage and spills nearly all surplus water during flood seasons, with more spill outliers in LCCHS than JSCHS.
- Gongguoqiao has the most spill in LCCHS, while spillage in JSCHS is relatively evenly distributed across stations (Figure 9e). This might be because Gongguoqiao is the first station of LCCHS and lacks regulation storage capacity, while all JSCHS stations lack good regulation ability. With abundant inflow during the flood season and little storage, they must spill surplus water.
- The maximum yearly spillage and its SD. in most cases is much larger than the values with historical hydrology in both CHSs, indicating that spill exhibits greater inter-annual change under climate change.
6.3. Multi-Year Drought
6.4. Discussion
6.4.1. Large Longpan Hydropower Plant on Jinsha River
6.4.2. Increased Turbine Capacity of Gongguoqiao Hydropower Plant
7. Conclusions
- (1)
- The results show that hydropower generation is prone to increase in all projections, especially under the scenario of RCP8.5, and could become more variable under climate change. Generation in severe drought may be much lower, especially in JSCHS, due to lack of seasonal reservoir storage capacity.
- (2)
- The max yearly spill and its SD. for most projections is much larger than with historical hydrology in both CHSs, showing that annual spill is prone to fluctuate more with climate change.
- (3)
- Both CHSs will face more droughts, and consecutive multi-year droughts may cause severe adverse effects on electricity supply and export in Yunnan.
- (4)
- The planned Longpan large reservoir in upper Jinsha can increase power generation, reduce spill and alleviate uneven output during flood seasons and dry seasons remarkably. Adding turbine capacity to the Gongguoqiao plant on LCCHS can increase generation slightly, but reduces spill much more. Such solutions may be useful to help alleviate adverse effects of climate change.
Author Contributions
Funding
Conflicts of Interest
References
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Basin | Plant | Regulation | Normal Level | Minimum Operating Level | Power Capacity | Total Storage | Active Storage |
---|---|---|---|---|---|---|---|
Lancang River (annual flow mean: 318 × 108 m3, SD.: 48.2 × 108) m3 in Gongguoqiao) | Gongguoqiao | Daily | 1307 | 1303 | 900 | 3.16 | 0.49 |
Xiaowan | Multiyear | 1240 | 1160 | 4200 | 149.14 | 99.00 | |
Manwan | Seasonal | 994 | 982 | 1670 | 9.20 | 2.87 | |
Dachaoshan | Seasonal | 899 | 882 | 1350 | 9.40 | 3.70 | |
Nuozhadu | Multiyear | 812 | 765 | 5850 | 237.03 | 113.35 | |
Jinghong | Seasonal | 602 | 591 | 1750 | 11.40 | 3.09 | |
Jinsha River (annual flow mean: 444 × 108 m3, SD.: 68.5 × 108 m3 in Liyuan) | Liyuan | Daily | 1618 | 1605 | 2400 | 7.72 | 1.73 |
Ahai | Daily | 1504 | 1492 | 2000 | 8.82 | 2.38 | |
Jinanqiao | Daily | 1418 | 1398 | 2400 | 9.13 | 2.87 | |
Longkaikou | Daily | 1298 | 1290 | 1800 | 5.07 | 3.70 | |
Ludila | Daily | 1223 | 1216 | 2160 | 17.18 | 3.76 | |
Guanyinyan | Weekly | 1134 | 1122 | 3000 | 20.72 | 5.55 |
Abbr. | Sponsor | Temporal Resolution | Spatial Resolution |
---|---|---|---|
GFDL-ESM2M | Geophysical Fluid Dynamics Laboratory (US) | Daily | 0.25° × 0.25° |
CCSM4 | University Corporation for Atmospheric Research (US) | ||
IPSL-CM5A-LR | Institute Pierre Simon Laplace (France) | ||
MRI-CGCM3 | Meteorological Research Institute (Japan) | ||
bcc-csm1 | Beijing Climate Center (China) |
Basin | Plant | Items | R | NSE | MAPE |
---|---|---|---|---|---|
Lancang River | Gongguoqiao | Calibration | 0.96 | 0.93 | 12.60 |
Validation | 0.95 | 0.89 | 15.12 | ||
Xiaowan | Calibration | 0.97 | 0.93 | 12.28 | |
Validation | 0.95 | 0.89 | 15.87 | ||
Manwan | Calibration | 0.96 | 0.93 | 12.77 | |
Validation | 0.93 | 0.85 | 18.98 | ||
Dachaoshan | Calibration | 0.97 | 0.94 | 12.41 | |
Validation | 0.93 | 0.86 | 16.48 | ||
Nuozhadu | Calibration | 0.97 | 0.94 | 13.16 | |
Validation | 0.94 | 0.88 | 17.20 | ||
Jinghong | Calibration | 0.98 | 0.96 | 11.57 | |
Validation | 0.94 | 0.86 | 18.95 | ||
Jinsha River | Liyuan | Calibration | 0.97 | 0.93 | 12.62 |
Validation | 0.96 | 0.91 | 14.10 | ||
Ahai | Calibration | 0.97 | 0.93 | 12.56 | |
Validation | 0.94 | 0.88 | 14.91 | ||
Jinanqiao | Calibration | 0.97 | 0.93 | 12.86 | |
Validation | 0.96 | 0.92 | 13.07 | ||
Longkaikou | Calibration | 0.97 | 0.93 | 12.91 | |
Validation | 0.96 | 0.91 | 13.04 | ||
Ludila | Calibration | 0.97 | 0.94 | 11.71 | |
Validation | 0.96 | 0.95 | 12.71 | ||
Guanyinyan | Calibration | 0.97 | 0.94 | 12.99 | |
Validation | 0.96 | 0.91 | 13.93 |
Station | Scenario | GCM | Mean | Max | Min | SD. | C.V |
---|---|---|---|---|---|---|---|
Gongguoqiao | Historical | 318.5 | 426.6 | 233.7 | 48.2 | 0.151 | |
RCP4.5 | CCSM4 | 328.3 | 478.6 | 226.1 | 51.7 | 0.157 | |
GFDL-ESM2 M | 344.5 | 569.3 | 220.3 | 76.4 | 0.222 | ||
IPSL-CM5A-LR | 335.8 | 490.6 | 236.0 | 50.7 | 0.151 | ||
MRI-CGCM3 | 329.7 | 660.8 | 203.1 | 68.5 | 0.208 | ||
bcc-csm1 | 322.4 | 579.6 | 209.5 | 69.4 | 0.215 | ||
RCP8.5 | CCSM4 | 373.5 | 613.3 | 208.5 | 84.4 | 0.226 | |
GFDL-ESM2M | 372.3 | 559.1 | 222.5 | 79.3 | 0.213 | ||
IPSL-CM5A-LR | 349.8 | 624.4 | 235.5 | 62.3 | 0.178 | ||
MRI-CGCM3 | 334.3 | 572.8 | 235.6 | 63.5 | 0.190 | ||
bcc-csm1 | 356.0 | 550.8 | 208.4 | 79.1 | 0.222 | ||
Liyuan | Historical | 444.0 | 572.0 | 304.8 | 68.5 | 0.154 | |
RCP4.5 | CCSM4 | 470.1 | 739.3 | 308.6 | 80.1 | 0.170 | |
GFDL-ESM2 M | 469.4 | 733.7 | 299.6 | 89.6 | 0.191 | ||
IPSL-CM5A-LR | 484.2 | 667.6 | 365.0 | 65.4 | 0.135 | ||
MRI-CGCM3 | 444.4 | 746.4 | 301.0 | 85.8 | 0.193 | ||
bcc-csm1 | 458.6 | 691.4 | 325.5 | 72.5 | 0.158 | ||
RCP8.5 | CCSM4 | 513.4 | 765.4 | 341.0 | 93.0 | 0.181 | |
GFDL-ESM2M | 491.9 | 649.4 | 337.1 | 79.4 | 0.161 | ||
IPSL-CM5A-LR | 505.9 | 821.8 | 359.2 | 95.7 | 0.189 | ||
MRI-CGCM3 | 445.4 | 576.2 | 302.6 | 69.3 | 0.156 | ||
bcc-csm1 | 475.1 | 677.5 | 315.7 | 72.9 | 0.153 |
CHS | Scenario | Model | Mean | Anomaly | Anomaly pct (%) | Max | Min | SD. |
---|---|---|---|---|---|---|---|---|
LCCHS | - | Historical | 75.26 | - | - | 93.66 | 57.12 | 9.37 |
RCP4.5 | CCSM4 | 77.56 | 2.30 | 3.06 | 97.63 | 56.81 | 8.77 | |
GFDL-ESM2M | 78.39 | 3.14 | 4.17 | 98.74 | 55.02 | 10.72 | ||
IPSL-CM5A-LR | 79.16 | 3.90 | 5.18 | 100.83 | 59.31 | 8.78 | ||
MRI-CGCM3 | 75.78 | 0.52 | 0.69 | 101.23 | 51.79 | 10.33 | ||
bcc-csm1 | 75.54 | 0.28 | 0.37 | 101.63 | 52.13 | 11.57 | ||
RCP8.5 | CCSM4 | 83.55 | 8.29 | 11.02 | 107.64 | 55.07 | 11.23 | |
GFDL-ESM2M | 81.28 | 6.02 | 7.99 | 95.85 | 56.57 | 9.08 | ||
IPSL-CM5A-LR | 80.77 | 5.51 | 7.32 | 97.82 | 58.13 | 9.31 | ||
MRI-CGCM3 | 78.10 | 2.84 | 3.78 | 102.71 | 58.53 | 10.65 | ||
bcc-csm1 | 80.83 | 5.57 | 7.40 | 103.69 | 52.24 | 11.80 | ||
JSCHS | - | Historical | 60.46 | - | - | 70.30 | 47.58 | 4.83 |
RCP4.5 | CCSM4 | 66.19 | 5.73 | 9.48 | 81.60 | 49.99 | 5.82 | |
GFDL-ESM2M | 64.79 | 4.32 | 7.15 | 74.77 | 46.93 | 5.18 | ||
IPSL-CM5A-LR | 68.26 | 7.80 | 12.90 | 79.96 | 58.03 | 4.37 | ||
MRI-CGCM3 | 63.26 | 2.80 | 4.62 | 74.86 | 47.66 | 6.36 | ||
bcc-csm1 | 65.40 | 4.94 | 8.17 | 77.78 | 52.54 | 5.60 | ||
RCP8.5 | CCSM4 | 68.57 | 8.11 | 13.41 | 80.85 | 53.48 | 5.71 | |
GFDL-ESM2M | 67.27 | 6.80 | 11.25 | 77.31 | 52.74 | 4.91 | ||
IPSL-CM5A-LR | 68.76 | 8.30 | 13.72 | 79.42 | 55.58 | 4.87 | ||
MRI-CGCM3 | 64.34 | 3.87 | 6.40 | 75.76 | 47.94 | 6.23 | ||
bcc-csm1 | 66.65 | 6.19 | 10.24 | 78.73 | 50.40 | 5.52 |
CHS | Scenario | Model | Annual Spillage | ASR | AIR | |||
---|---|---|---|---|---|---|---|---|
Mean | Anomaly | SD. | Spill Years (%) | |||||
LCCHS | Historical | 42.4 | - | 52.1 | 92 | 49.6 | 3258 | |
RCP4.5 | CCSM4 | 43.2 | 0.7 | 67.2 | 88.75 | 49.8 | 3169 | |
GFDL-ESM2M | 128.4 | 86.0 | 237.8 | 93.75 | 67.9 | 3792 | ||
IPSL-CM5A-LR | 50.6 | 8.2 | 87.8 | 92.50 | 55.7 | 3217 | ||
MRI-CGCM3 | 106.4 | 64.0 | 222.8 | 83.75 | 45.9 | 3390 | ||
bcc-csm1 | 61.4 | 19.0 | 132.1 | 75.00 | 50.2 | 3208 | ||
RCP8.5 | CCSM4 | 146.9 | 104.5 | 235.9 | 96.25 | 79.8 | 3822 | |
GFDL-ESM2M | 267.5 | 225.1 | 331.0 | 93.75 | 56.2 | 4172 | ||
IPSL-CM5A-LR | 111.8 | 69.4 | 216.0 | 90.00 | 55.5 | 3446 | ||
MRI-CGCM3 | 60.3 | 17.9 | 114.2 | 88.75 | 54.3 | 3369 | ||
bcc-csm1 | 117.2 | 74.8 | 169.1 | 87.50 | 75.8 | 3817 | ||
JSCHS | Historical | 312.0 | - | 272.9 | 96.00 | 4.1 | 3758 | |
RCP4.5 | CCSM4 | 299.6 | −12.4 | 314.2 | 95.00 | 3.8 | 3641 | |
GFDL-ESM2M | 342.3 | 30.3 | 418.7 | 91.25 | 3.6 | 3810 | ||
IPSL-CM5A-LR | 287.8 | −24.2 | 290.5 | 98.75 | 3.9 | 3675 | ||
MRI-CGCM3 | 241.0 | −71.1 | 316.1 | 86.25 | 3.8 | 3418 | ||
bcc-csm1 | 254.9 | −57.1 | 270.7 | 90.00 | 3.6 | 3543 | ||
RCP8.5 | CCSM4 | 463.8 | 151.7 | 410.0 | 95.00 | 3.0 | 4016 | |
GFDL-ESM2M | 400.7 | 88.6 | 360.2 | 92.50 | 3.7 | 4018 | ||
IPSL-CM5A-LR | 397.8 | 85.7 | 451.5 | 92.50 | 3.4 | 3813 | ||
MRI-CGCM3 | 206.7 | −105.3 | 210.8 | 85.00 | 3.6 | 3419 | ||
bcc-csm1 | 324.1 | 12.1 | 293.3 | 93.75 | 2.5 | 3802 |
Scenario | Model | Generation | Spill Years (%) | ||||
---|---|---|---|---|---|---|---|
Mean | Anomaly | Max | Min | SD. | |||
Historical | 60.46 | - | 70.30 | 47.58 | 4.83 | 96.00 | |
RCP4.5 | CCSM4 | 75.52 | 15.06 | 100.02 | 58.09 | 9.15 | 10.00 |
GFDL-ESM2M | 74.06 | 13.59 | 97.38 | 55.00 | 9.95 | 18.75 | |
IPSL-CM5A-LR | 77.81 | 17.35 | 98.77 | 63.01 | 7.60 | 10.00 | |
MRI-CGCM3 | 70.60 | 10.14 | 98.56 | 52.87 | 10.11 | 5.00 | |
bcc-csm1 | 72.28 | 11.81 | 98.16 | 55.12 | 8.50 | 10.00 | |
RCP8.5 | CCSM4 | 79.67 | 19.20 | 100.73 | 56.38 | 9.68 | 18.75 |
GFDL-ESM2M | 79.50 | 19.03 | 97.69 | 59.15 | 10.02 | 16.25 | |
IPSL-CM5A-LR | 78.49 | 18.02 | 100.70 | 60.75 | 10.60 | 13.75 | |
MRI-CGCM3 | 71.92 | 11.46 | 88.01 | 52.69 | 8.75 | 6.25 | |
bcc-csm1 | 73.81 | 13.35 | 93.85 | 55.96 | 8.60 | 15.00 |
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Liu, B.; Lund, J.R.; Liu, L.; Liao, S.; Li, G.; Cheng, C. Climate Change Impacts on Hydropower in Yunnan, China. Water 2020, 12, 197. https://doi.org/10.3390/w12010197
Liu B, Lund JR, Liu L, Liao S, Li G, Cheng C. Climate Change Impacts on Hydropower in Yunnan, China. Water. 2020; 12(1):197. https://doi.org/10.3390/w12010197
Chicago/Turabian StyleLiu, Benxi, Jay R. Lund, Lingjun Liu, Shengli Liao, Gang Li, and Chuntian Cheng. 2020. "Climate Change Impacts on Hydropower in Yunnan, China" Water 12, no. 1: 197. https://doi.org/10.3390/w12010197
APA StyleLiu, B., Lund, J. R., Liu, L., Liao, S., Li, G., & Cheng, C. (2020). Climate Change Impacts on Hydropower in Yunnan, China. Water, 12(1), 197. https://doi.org/10.3390/w12010197