The N(itrogen)- and P(hosphorus)-Related Grey Water Footprints of Domestic and Industrial Water Use—A Global Analysis from 1990 to 2019
Highlights
- First historic global N and P grey water footprints (GWFs) from 1990 to 2019.
- Global domestic and industrial GWFs at 5 × 5 arc minute resolution.
- N and P GWFs increased by factors of 2.4 and 2.6 from 1990 to 2019, respectively.
- GWF reduction potential is high in densely populated areas and industrial hotspots.
- Wastewater treatment upgrade is key for reducing global N and P GWFs.
Abstract
1. Introduction
2. Materials and Methods
2.1. Grey Water Footprint Calculation
- GWF [m3/yr] is the grey water footprint;
- Load [kg/yr] is the amount of pollutants entering freshwater bodies;
- Cmax [kg/m3] is the maximum allowable concentration of a pollutant;
- Cnat [kg/m3] is the natural background concentration of a pollutant in a freshwater body.
2.1.1. The Domestic Loads to Freshwater
- L [kg/capita/yr] represents the nutrient load reaching freshwater bodies;
- Lh [kg/capita/yr] is the nutrient emission from human waste;
- Ldet [kg/capita/yr] accounts for emissions detergents (only for phosphorous);
- Dc [-] is the fraction of people connected to wastewater treatment plants;
- Dnc [-] is the fraction of people connected to a sewage system but not to a wastewater treatment plant;
- Rn [-] is the fraction of nutrients removed by wastewater treatment plants;
- fsw [-] is the fraction of uncollected wastewater entering freshwater bodies.
Nutrient Emissions from Human Waste
Dishwasher and Laundry Detergent
Wastewater Treatment and Collection
Fraction of Uncollected Wastewater Entering Freshwater Bodies
2.1.2. The Industrial Loads to Freshwater
- L [kg/capita/yr] represents the nutrient load reaching freshwater bodies;
- I [-] is the ratio between the domestic and industrial loads;
- F [-] accounts for wastewater stabilization ponds and represents the fraction of nutrients not eliminated by such;
- U [-] is the proportion of the population living in urban areas;
- Lh [kg/capita/yr] is the nutrient emission from human waste;
- Ldet [kg/capita/yr] accounts for emission detergents (only for phosphorous);
- Rn [-] is the fraction of nutrients removed by wastewater treatment plants.
Country-Specific Data
- The industrial-to-domestic load ratio is calculated for countries with available PRTR data for 2007–2019 (Equation (4)).
- A trendline is derived from these ratios, allowing for the extrapolation of ratios from 1990 to 2006.
- These estimated ratios are multiplied by domestic load data of the corresponding years to approximate the industrial loads for the years where the data is missing.
- R [-] is the fraction of industrial load over domestic load;
- ID [kg/yr] represents industrial pollutants directly released into water;
- II [kg/yr] represents industrial pollutants entering wastewater treatment;
- Rn [-] is the fraction of nutrients removed in wastewater treatment;
- Ndom [kg/yr] is the total domestic load.
Countries Without Data
2.1.3. Natural Background Concentration
2.1.4. Maximum Allowed Concentration
2.2. Mapping Industrial and Domestic Grey Water Footprint
2.3. What if Scenarios
2.3.1. Scenario: Sanitation Levels in China and India Comparable to Central Europe
2.3.2. Scenario: Effects of Political Shifts on Detergent Emissions in Europe
3. Results and Discussion
3.1. Grey Water Footprint of Nitrogen and Phosphorus (1990–2019)
3.2. Absolute and Relative Changes in GWF (1990–2019)
3.3. Scenario Analyses
3.3.1. Scenario: Sanitation Levels in China and India Comparable to Central Europe
3.3.2. Scenario: Effects of Political Shifts on Detergent Emissions in Europe
3.4. General Observations
3.5. Limitations and Uncertainties
3.6. Comparison to Previous Studies
3.7. Conclusions and Final Remarks
Supplementary Materials
Author Contributions
Funding
Data Availability Statement
Acknowledgments
Conflicts of Interest
Abbreviations
| m3/yr | cubic metre per year |
| kg/yr | kilogram per year |
| kg/capita/yr | kilogram per capita and year |
| kg/m3 | kilogram per cubic metre |
| mg/L | milligram per litre |
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| Sanitation Parameters | China (%) | India (%) | The Netherlands (%) | |||
|---|---|---|---|---|---|---|
| Dc [-] | 32.30 | 10.80 | 99.50 | |||
| Dnc [-] | 27.01 | 0.54 | 0 | |||
| Pollutant | N | P | N | P | N | P |
| Rn [-] | 17.35 | 20 | 10 | 10 | 79.95 | 90 |
| Detergent | SSP2 | SSP3 |
|---|---|---|
| Laundry detergents P (kg/capita/yr) | 0.05675 | 0.0995 |
| Dishwasher detergents P (kg/capita/yr) | 0.091 | 0.1135 |
| Pollutant | Current Scenario (×109 m3/yr) | Hypothetical Scenario (×109 m3/yr) | Absolute Difference (×109 m3/yr) | Relative Difference (%) | |
|---|---|---|---|---|---|
| China | N | 2145.30 | 753.01 | 1392.29 | 64.90 |
| P | 69,173.12 | 12,782.13 | 56,390.99 | 81.52 | |
| India | N | 543.55 | 425.05 | 118.50 | 21.80 |
| P | 16,489.72 | 6939.00 | 9550.72 | 57.92 | |
| Global | N | 6329.76 | 4823.44 | 1506.32 | 23.80 |
| P | 194,527.02 | 128,623.58 | 65,903.44 | 33.88 |
| Region | Current Scenario (×109 m3/yr) | Hypothetical Scenario (×109 m3/yr) | Absolute Difference (×109 m3/yr) | Relative Difference (%) |
|---|---|---|---|---|
| Europe | 11,716.10 | 12,652.32 | 936.22 | 7.99 |
| Global | 194,527.02 | 195,463.24 | 936.22 | 0.48 |
| Region | Domestic GWF [5] (m3 × 109) | Industry GWF [5] (m3 × 109) | Total GWF [5] (m3 × 109) | Domestic GWF This Study (m3 × 109) | Industrial GWF This Study (m3 × 109) | Total GWF This Study (m3 × 109) |
|---|---|---|---|---|---|---|
| China | 891 | 68 | 959 | 1157 | 34 | 1191 |
| United States | 224 | 21 | 245 | 277 | 16 | 293 |
| Russia | 107 | 10 | 117 | 188 | 6 | 194 |
| India | 192 | 23 | 215 | 325 | 13 | 338 |
| Pakistan | 23 | 3 | 26 | 58 | 2 | 60 |
| Brazil | 102 | 16 | 118 | 200 | 10 | 210 |
| Egypt | 28 | 4 | 32 | 75 | 2 | 77 |
| Japan | 114 | 12 | 126 | 105 | 9 | 114 |
| Germany | 26 | 2 | 28 | 43 | 2 | 45 |
| Ukraine | 32 | 3 | 35 | 49 | 2 | 51 |
| Others | 1235 | 127 | 1362 | 1716 | 83 | 1799 |
| World total | 2974 | 288 | 3262 | 4193 | 179 | 4372 |
| Region | Domestic GWF [4] (m3 × 109) | Industry GWF [4] (m3 × 109) | Total GWF [4] (m3 × 109) | Domestic GWF This Study (m3 × 109) | Industrial GWF This Study (m3 × 109) | Total GWF This Study (m3 × 109) |
|---|---|---|---|---|---|---|
| China | 22,270 | 2540 | 24,810 | 38,626 | 1188 | 39,815 |
| India | 4810 | 860 | 5670 | 7318 | 622 | 7941 |
| United States | 7100 | 967 | 8067 | 5581 | 167 | 5748 |
| Spain | 1010 | 100 | 1110 | 9435 | 399 | 9833 |
| Brazil | 3170 | 760 | 3930 | 1717 | 53 | 1770 |
| Russia | 3130 | 420 | 3550 | 6316 | 332 | 6648 |
| Japan | 2840 | 450 | 3290 | 2394 | 69 | 2464 |
| Mexico | 2020 | 430 | 2450 | 3159 | 274 | 3434 |
| Turkey | 1670 | 200 | 1870 | 823 | 28 | 851 |
| France | 1230 | 130 | 1360 | 1576 | 60 | 1636 |
| Others | 30,610 | 4760 | 35,370 | 50,359 | 2618 | 52,977 |
| World total | 79,870 | 11,610 | 91,480 | 127,305 | 5810 | 133,116 |
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Tulp, B.J.H.; Wöhler, L.; Berger, M. The N(itrogen)- and P(hosphorus)-Related Grey Water Footprints of Domestic and Industrial Water Use—A Global Analysis from 1990 to 2019. Water 2026, 18, 1425. https://doi.org/10.3390/w18121425
Tulp BJH, Wöhler L, Berger M. The N(itrogen)- and P(hosphorus)-Related Grey Water Footprints of Domestic and Industrial Water Use—A Global Analysis from 1990 to 2019. Water. 2026; 18(12):1425. https://doi.org/10.3390/w18121425
Chicago/Turabian StyleTulp, Bjorn J. H., Lara Wöhler, and Markus Berger. 2026. "The N(itrogen)- and P(hosphorus)-Related Grey Water Footprints of Domestic and Industrial Water Use—A Global Analysis from 1990 to 2019" Water 18, no. 12: 1425. https://doi.org/10.3390/w18121425
APA StyleTulp, B. J. H., Wöhler, L., & Berger, M. (2026). The N(itrogen)- and P(hosphorus)-Related Grey Water Footprints of Domestic and Industrial Water Use—A Global Analysis from 1990 to 2019. Water, 18(12), 1425. https://doi.org/10.3390/w18121425

