Modelling Nitrate Reduction Strategies from Diffuse Sources in the Po River Basin
Abstract
:1. Introduction
2. Materials and Methods
2.1. Study Area: The Po River Basin
2.2. Model Description and Baseline Set-up
2.3. Calibration, Validation and Evaluation
2.3.1. Crop Yields
2.3.2. Streamflow
2.3.3. Nitrate Concentrations
2.4. Scenario Analysis
3. Results
3.1. Analysis of Model Calibration and Validation
3.1.1. Crop Yields
3.1.2. Streamflow and Nitrates
3.1.3. Annual Water and Nitrogen Balance
3.2. Analysis of Scenarios of Agricultural Practices
4. Discussion and Conclusions
Author Contributions
Conflicts of Interest
Appendix A
Crop Code | Crop Name | Management Type |
---|---|---|
HBAR | Barley | Highly intensive |
HMAI | Corn | Highly intensive |
HOOI | Other oil crops | Highly intensive |
HOPU | Other pulses | Highly intensive |
HPOT | Potato | Highly intensive |
HRIC | Rice | Highly intensive |
HSOR | Sorghum Hay | Highly intensive |
HSOY | Soybean | Highly intensive |
HSUB | Sugarbeet | Highly intensive |
HSUN | Sunflower | Highly intensive |
HTEM | Temperate fruits | Highly intensive |
HTRO | Tropical fruits | Highly intensive |
HVEG | Vegetables | Highly intensive |
HWHE | Wheat | Highly intensive |
IMAI | Corn | Irrigated |
IRES | Other crop | Irrigated |
IRIC | Rice | Irrigated |
ISUB | Sugarbeet | Irrigated |
ITEM | Temperate fruits | Irrigated |
ITOB | Tobacco | Irrigated |
ITRO | Tropical fruits | Irrigated |
IVEG | Vegetables | Irrigated |
LMAI | Corn | Low intensive |
LOCE | Other Cereal | Low intensive |
LTEM | Temperate fruits | Low intensive |
LVEG | Vegetables | Low intensive |
STEM | Temperate fruits | Subsistence |
SVEG | Vegetables | Subsistence |
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Land Use | Area (km2) | Percentage (%) |
---|---|---|
Bare | 804 | 1% |
Fodder crops | 12,848 | 17% |
Forest | 25,133 | 34% |
Irrigated crops | 4337 | 6% |
Managed grassland | 18,943 | 25% |
Rainfed crops | 7707 | 10% |
Shrub | 350 | 0% |
Urban area | 3297 | 4% |
Water | 1171 | 2% |
Total | 74,590 | 100% |
Scenario | Operation Code | Description | Month | Day | Application |
---|---|---|---|---|---|
Baseline | FERT MANN | Amount of N manure fertilizer application (0.99 ORGN) | 10 | 14 | 112.2 kg/ha |
FERT MANP | Amount of P manure fertilizer application (0.99 ORGP) | 10 | 14 | 24.7 kg/ha | |
TILLAGE1 | Disk Chisel (mulch Tiller) with depth of 150 mm and mixing efficiency of 0.55 | 10 | 15 | ||
TILLAGE2 | Harrow 10 Bar Tine 36 Ft with depth of 25 mm and mixing efficiency of 0.2 | 10 | 24 | ||
PLANTING CORN | Beginning of plant growth | 4 | 1 | 1787 HU | |
FERT MINN | Amount of elemental N fertilizer applied to HRU | 4 | 11 | 221.6 kg/ha | |
FERT MINP | Amount of elemental P fertilizer applied to HRU | 4 | 11 | 34.7 kg/ha | |
IRRIGATION 1 | Depth of irrigation water applied on HRU | 4 | 22 | 12.6 mm | |
IRRIGATION 2 | Depth of irrigation water applied on HRU | 5 | 7 | 12.6 mm | |
IRRIGATION 3 | Depth of irrigation water applied on HRU | 5 | 22 | 12.6 mm | |
IRRIGATION 4 | Depth of irrigation water applied on HRU | 6 | 6 | 12.6 mm | |
IRRIGATION 5 | Depth of irrigation water applied on HRU | 6 | 21 | 12.6 mm | |
IRRIGATION 6 | Depth of irrigation water applied on HRU | 7 | 6 | 12.6 mm | |
IRRIGATION 7 | Depth of irrigation water applied on HRU | 7 | 21 | 12.6 mm | |
IRRIGATION 8 | Depth of irrigation water applied on HRU | 8 | 5 | 12.6 mm | |
IRRIGATION 9 | Depth of irrigation water applied on HRU | 8 | 11 | 12.6 mm | |
IRRIGATION 10 | Depth of irrigation water applied on HRU | 8 | 17 | 12.6 mm | |
HARVEST and KILL of CORN | Harvest and kill operation stops the plant growth in the HRU | 9 | 1 | ||
CRP2 | HARVEST and KILL RYE | Harvest and kill operation stops the plant growth in the HRU | 3 | 15 | |
FERT MANN | Amount of N manure fertilizer application (0.99 ORGN) | 3 | 20 | 112.2 kg/ha | |
FERT MANP | Amount of P manure fertilizer application (0.99 ORGP) | 3 | 20 | 24.7 kg/ha | |
PLANTING CORN | Beginning of plant growth | 4 | 1 | 1787 HU | |
FERT MINN | Amount of elemental N fertilizer applied to HRU | 4 | 11 | 199.5 kg/ha | |
FERT MINP | Amount of elemental P fertilizer applied to HRU | 4 | 11 | 34.7 kg/ha | |
IRRIGATION 1 | Depth of irrigation water applied on HRU | 4 | 22 | 12.6 mm | |
IRRIGATION 2 | Depth of irrigation water applied on HRU | 5 | 7 | 12.6 mm | |
IRRIGATION 3 | Depth of irrigation water applied on HRU | 5 | 22 | 12.6 mm | |
IRRIGATION 4 | Depth of irrigation water applied on HRU | 6 | 6 | 12.6 mm | |
IRRIGATION 5 | Depth of irrigation water applied on HRU | 6 | 21 | 12.6 mm | |
IRRIGATION 6 | Depth of irrigation water applied on HRU | 7 | 6 | 12.6 mm | |
IRRIGATION 7 | Depth of irrigation water applied on HRU | 7 | 21 | 12.6 mm | |
IRRIGATION 8 | Depth of irrigation water applied on HRU | 8 | 5 | 12.6 mm | |
IRRIGATION 9 | Depth of irrigation water applied on HRU | 8 | 11 | 12.6 mm | |
IRRIGATION 10 | Depth of irrigation water applied on HRU | 8 | 17 | 12.6 mm | |
HARVEST and KILL of CORN | Harvest and kill operation stops the plant growth in the HRU | 9 | 1 | ||
TILLAGE2 | Harrow 10 Bar Tine 36 Ft with depth of 25 mm and mixing efficiency of 0.2 | 9 | 3 | ||
PLANTING RYE | The initiation of plant growth | 9 | 4 | 800 HU |
ID | Description | Drained Area (km2) | Distance from the Source (km) | # Data Entries for Streamflow (2000–2012) | # Data Entries for N-NO3 (2000–2012) |
---|---|---|---|---|---|
720 | Po at Torino | 7193 | 462 | 60 | |
733 | Po at Pieve del Cairo | 26,467 | 355 | 108 | 33 |
684 | Po at Spessa | 38,468 | 303 | 108 | 55 |
691 | Po at Cremona Castelvetro | 51,337 | 247 | 144 | 63 |
889 | Po at Viadana | 56,350 | 172 | 108 | 62 |
757 | Po at Borgoforte | 63,765 | 147 | 108 | 59 |
763 | Po at Sermide | 70,007 | 101 | 108 | 61 |
902 | Po at Pontelagoscuro | 72,396 | 65 | 144 |
Process | Parameter and Input File | HRUs | Description | Range | Calibrated Value |
---|---|---|---|---|---|
Plant growth | T_Base.crop | Bare, shrub and grassland | Minimum/base temperature for plant growth | 0.12 | 1 |
Fodder crop | Minimum/base temperature for plant growth | 0–12 | 3 | ||
BIO_E.crop | Fodder crop | Radiation use efficiency | 10–90 | 5 | |
Irrigated sugar beet | Radiation use efficiency | 10–90 | 20 | ||
Rice | Radiation use efficiency | 10–90 | 25 | ||
HVSTI.crop | Rice | Harvest index | 0.01–1.25 | 0.54 | |
FRGRW2.crop | Rice | Fraction of the plant growing season corresponding to the 2nd point on the optimal leaf area development curve | 0–1 | 0.51 | |
LAIMX1.crop | Rice | Fraction of the maximum leaf area index corresponding to the 1st point on the optimal leaf area development curve | 0–1 | 0.28 | |
LAIMX2.crop | Rice | Fraction of the maximum leaf area index corresponding to the 2nd point on the optimal leaf area development curve | 0–1 | 0.99 | |
Baseflow generation | ALPHA_BF.gw | all | Baseflow alpha factor | −0.5–0.5 (relative) | 0.045 (relative) 1 |
GW_DELAY.gw | all | Groundwater delay time | −0.5–0.5 (relative) | −0.497 (relative) | |
RCHRG_DP.gw | all | Deep aquifer percolation fraction | −0.5–0.5 (relative) | 0.377 (relative) | |
Nitrogen cycle | HLIFE_NGW.gw | all | Half-life of the nitrate in shallow aquifer | 100–1000 | 1007.5 |
CMN.bsn | all | Rate factor for humus mineralization of active organic nutrients | 0.0001–0.003 | 0.001465 |
Scenario Acronym | Description | #HRU Affected | Area (km2) |
---|---|---|---|
NMIN | Strategic reduction of mineral fertilizer application in each HRU limiting the change in annual crop yield from baseline below 5% | 2208 | 12044 |
MAN170 | Restriction of manure application to maximum 170 kg N/ha/y | 71 | 332 |
MAN250 | Restriction of manure application to maximum 250 kg N/ha/y | 9 | 40 |
CRP1 | Planting rye after harvesting corn and harvesting it before planting corn. | 730 | 5503 |
CRP2 | Strategic reduction of mineral fertilizer application in each HRU with corn (as scenario NMIN) and planting rye as cover crop (as scenario CRP1) after harvesting corn | 730 | 5503 |
CRP3 | Strategic reduction of mineral fertilizer application in each HRU with corn (as scenario NMIN) and planting red clover as cover crop after harvesting corn | 730 | 5503 |
COMB | Combination of scenario NMIN, MAN170 and CRP3 | 2208 | 12044 |
Crop Code | Crop Name | Area (ha) | r |
---|---|---|---|
LMAI | Corn under low intensive management | 3717 | 0.58 |
IMAI | Irrigated corn | 1782 | 0.70 |
HWHE | Wheat under highly intensive management | 1748 | −0.06 |
IRIC | Irrigated rice | 1740 | −0.60 |
Variable | # Monitoring Stations/Data Entries | Simulation Period | PBIAS (%) |
---|---|---|---|
Monthly streamflow | 8/408 | Calibration (2005–2012) | 3.7 |
8/480 | Validation (2000–2004) | −10.8 | |
Monthly N-NO3 concentrations | 6/244 | Calibration (2005–2012) | 12 |
6/89 | Validation (2000–2004) | −4.1 | |
Monthly N-NO3 loads | 6/244 | Calibration (2005–2012) | 14.1 |
6/89 | Validation (2000–2004) | −19.4 | |
6/333 | Evaluation (2000–2012) | 4.3 |
Reference | Model | Period | N-NO3 (ton/y) |
---|---|---|---|
Our study | SWAT | 2000–2012 | 115,000 |
2003–2008 | 93,460 | ||
2003–2007 | 78,032 | ||
Salvetti et al. [20] | QUAL2E/SWAT | 1985–2001 | 107,000 |
Palmeri et al. [19] | MONERIS | 1996–2000 | 123,482 * |
Naldi et al. [55] | - | 2003–2007 | 85,000 |
Malagó et al. [11] | GREEN-Rgrid | 2003–2007 | 86,295 |
Long term average annual load at Sermide | - | 2003–2008 | 93,462 |
Scenarios | |||||||||||||||||
---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|
Components | Units of Measures | REF | NMIN | NMAN170 | NMAN250 | CRP1 | CRP2 | CRP3 | COMB | ||||||||
NAPP | Mineral fertilizer and manure application | kg N/ha | 199.28 | 165.23 | (−17%) | 198.28 | (−1%) | 199.18 | (0%) | 199.28 | (0%) | 184.2 | (−8%) | 184.2 | (−8%) | 164.24 | (−18%) |
NMIN | Mineral fertilizer | kg N/ha | 149.07 | 115.03 | (−23%) | 149.07 | (0%) | 149.07 | (0%) | 149.07 | (0%) | 134 | (−10%) | 134 | (−10%) | 115.03 | (−23%) |
NMAN | Manure | kg N/ha | 50.2 | 50.2 | (0%) | 49.2 | (−2%) | 50.1 | (0%) | 50.2 | (0%) | 50.2 | (0%) | 50.2 | (0%) | 49.2 | (−2%) |
NFIX | Nitrogen fixation | kg N/ha | 3.21 | 3.21 | (0%) | 3.23 | (1%) | 3.21 | (0%) | 3.21 | (0%) | 3.21 | (0%) | 21.49 | (569%) | 21.66 | (575%) |
NRAIN | Nitrogen in atmospheric deposition | kg N/ha | 13.4 | 13.4 | (0%) | 13.4 | (0%) | 13.4 | (0%) | 13.4 | (0%) | 13.4 | (0%) | 13.4 | (0%) | 13.4 | (0%) |
NUP 1 | Nitrogen uptake in the soil | kg N/ha | 185.38 | 166.29 | (−10%) | 185.19 | (0%) | 185.37 | (0%) | 209.07 | (13%) | 193.89 | (5%) | 217.28 | (17%) | 210.99 | (14%) |
Nleach | NO3 leached into the aquifer | kg N/ha | 125.4 | 95.47 | (−24%) | 124.71 | (−1%) | 125.33 | (0%) | 109.65 | (−13%) | 98.83 | (−21%) | 97.19 | (−22%) | 78.63 | (−37%) |
Nem | Nitrogen emissions | kg N/ha | 66.51 | 52.64 | (−21%) | 66.25 | (0%) | 66.48 | (0%) | 55.86 | (−16%) | 51.59 | (−22%) | 50.7 | (−24%) | 41.7 | (−37%) |
SRN | Nitrogen transported via surface runoff | kg N/ha | 1.24 | 1.08 | (−13%) | 1.24 | (0%) | 1.24 | (0%) | 1.24 | (0%) | 1.13 | (−9%) | 1.16 | (−6%) | 1.09 | (−12%) |
LFN | Nitrogen transported via lateral flow | kg N/ha | 0.07 | 0.06 | (−14%) | 0.07 | (0%) | 0.07 | (0%) | 0.06 | (−14%) | 0.06 | (−14%) | 0.06 | (−14%) | 0.05 | (−29%) |
ORGN | Organic nitrogen transported with sediment | kg N/ha | 9.57 | 9.2 | (−4%) | 9.55 | (0%) | 9.57 | (0%) | 6.39 | (−33%) | 6.2 | (−35%) | 5.78 | (−40%) | 5.68 | (−41%) |
BFN | NO3 transported via groundwater | kg N/ha | 55.63 | 42.3 | (−24%) | 55.39 | (0%) | 55.6 | (0%) | 48.17 | (−13%) | 44.2 | (−21%) | 43.7 | (−21%) | 34.88 | (−37%) |
SYLD | Sediment yield | ton/y | 6.25 | 6.26 | (0%) | 6.25 | (0%) | 6.25 | (0%) | 3.03 | (−52%) | 3.04 | (−51%) | 2.93 | (−53%) | 2.93 | (−53%) |
YLD | Crop yield | ton/y | 5.97 | 5.78 | (−3%) | 5.96 | (0%) | 5.96 | (0%) | 6.53 | (9%) | 6.39 | (7%) | 7.07 | (18%) | 7.01 | (17%) |
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Malagó, A.; Bouraoui, F.; Pastori, M.; Gelati, E. Modelling Nitrate Reduction Strategies from Diffuse Sources in the Po River Basin. Water 2019, 11, 1030. https://doi.org/10.3390/w11051030
Malagó A, Bouraoui F, Pastori M, Gelati E. Modelling Nitrate Reduction Strategies from Diffuse Sources in the Po River Basin. Water. 2019; 11(5):1030. https://doi.org/10.3390/w11051030
Chicago/Turabian StyleMalagó, Anna, Fayçal Bouraoui, Marco Pastori, and Emiliano Gelati. 2019. "Modelling Nitrate Reduction Strategies from Diffuse Sources in the Po River Basin" Water 11, no. 5: 1030. https://doi.org/10.3390/w11051030
APA StyleMalagó, A., Bouraoui, F., Pastori, M., & Gelati, E. (2019). Modelling Nitrate Reduction Strategies from Diffuse Sources in the Po River Basin. Water, 11(5), 1030. https://doi.org/10.3390/w11051030