Geospatial Approaches to Improve Water Availability through Demand Assessment in Agriculture Based on Treated Wastewater: A Case Study of Weinstadt, Baden-Württemberg
Abstract
:1. Introduction
- What is the extent of the agriculture irrigation water requirement (IWR) varied according to agro-climate variable in the CROPWAT model at different crop life stages?
- How can the definition of the urban roof catchment surface yield the volume of the water-retaining capacity for each roof type?
- How to economically compensate the agriculture irrigation and current water supply from the WWTP (wastewater treatment plant) by the urban roof catchment harvesting capacity?
2. Materials and Methods
2.1. Study Area
2.2. Datasets
2.3. Determination of Agriculture Water Requirements
2.3.1. Reference Evapotranspiration
2.3.2. Effective Rainfall
2.3.3. Irrigation Water Requirement (IWR)
2.3.4. Spatial Distribution of Agricultural Water Requirements
2.3.5. Agriculture Water Requirements Zonal Model
2.4. Urban Roof Water Harvesting
2.4.1. Roof Type Definition
2.4.2. Urban Water Catchment Area
2.4.3. Roof Runoff Coefficient
2.4.4. Catchment Water Volume
2.5. Economic Value Assessment
2.6. Visualization Workflow
3. Results
3.1. Agriculture Water Requirements
3.1.1. Spatial Distribution of Calculated CROPWAT Model Parameters
3.1.2. Irrigation Water Requirements (IWR) for Maize
3.1.3. Irrigation Water Requirements (IWR) for Wine Grapes
3.1.4. Irrigation Water Requirements (IWR) for Winter Wheat
3.1.5. Agriculture Irrigation Water Requirements
3.1.6. Zonal Severity for IWR
3.2. Urban Rainfall Water Harvesting
3.3. Economic Impact of Water Efficiency
4. Discussion
4.1. Comparative Overview with Related Research
4.2. Influence on Agriculture and Urban Water Demand
5. Conclusions
- ▪
- A comparative analysis can be performed using various methods in the CROPWAT model. In the depth of effective rainfall, other methods would be checked in CROPWAT models for the water sufficient region like Germany.
- ▪
- The snowfall as a water harvesting source could add the more reduced amount of water, which will improve the more proficient amount of potential economic water values.
- ▪
- The proper survey data on the degree of sloping, roof materials and roof covering can have huge impacts on the urban water availability potentials.
Author Contributions
Funding
Data Availability Statement
Acknowledgments
Conflicts of Interest
Appendix A
Months | Water Harvested in Urban Catchment (Whp) 103 m3 | Water Supply from WWTP (Ws) 103 m3 | Potential Reduced Water Use (Ws − Whp) 103 m3 |
---|---|---|---|
January | 4.9 | 33.3 | 28.3 |
February | 5.6 | 31.7 | 26.1 |
March | 2.4 | 24.5 | 22.1 |
April | 13 | 42 | 28.9 |
May | 5.2 | 30.6 | 25.4 |
June | 8.4 | 31.6 | 23.1 |
July | 4.8 | 26.2 | 21.4 |
August | 3.6 | 22.6 | 19 |
September | 11.6 | 34.4 | 22.8 |
October | 10.7 | 36.6 | 25.8 |
November | 7.7 | 34 | 26.2 |
December | 7.9 | 32.4 | 24.4 |
Total | 86 | 380 | 294 |
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Roof | RC | Reference | |
---|---|---|---|
Sloping Roof | Concrete/Asphalt | 0.9 | [34] |
Metal | 0.95 | [34] | |
0.81–0.84 | [35] | ||
Aluminum | 0.7 | [36] | |
Flat Roof | Bituminous | 0.7 | [36] |
Gravel | 0.8–0.85 | [34] | |
Level Cement | 0.81 | [35] |
Crop Name | Area (103 m2) | Potential Irrigation Water Requirement (mm) | Total Water Requirement (103 m3) |
---|---|---|---|
Maize | 375 | 189.0 | 70.8 |
Winter Wheat | 875 | 223.3 | 195.3 |
Wine Grapes | 470 | 60.92 | 28.6 |
Total | 294.7 |
References | Datasets and Time Frame | Methodological Philosophy | Research Methods | Findings | Study Regions |
---|---|---|---|---|---|
[37] | Wastewater treatment plant nominal flow rate, soil textures and depth, land use, DEM; Time period: 2009/2010 (Landsat TM imagery), 2000 (Google Earth data and land use map) | Analytical hierarchical process for geospatial integration | Study area characterization by classification, standardizing the sub criteria, sensitivity analysis and cross validation | 31% of the aquifer is fitting for irrigation, GIS sensitivity ranking cases 1–5. | Tunisia |
[28] | Agro climatic data, crop data showing and harvesting; Time period: 2017–2021 (agroclimatic data) | Irrigation water requirement (IWR) and irrigation scheduling for cultivated crops | CROPWAT model for calculation of Eto and effective rainfalls, calculation of evapotranspiration | IWR: 3108.0 mm-sugarcane, 1768.5 mm—banana, 1655.7 mm—cotton, 402.5 mm—wheat | Pakistan |
[13] | Ago-ecological datasets, crop data; Time periods: Not defined | Total water requirement in various agro-ecological zone in order to estimate ground water balance | CROPWAT model 8.0 used for calculation of evapotranspiration | Net irrigation requirement: Paddy: 442 to 1483 mm; water demand: 1146 mm3 | India |
[16] | CROPWAT station dataset and crop data; Time period: Not defined | Irrigation water requirement estimation for spatial modeling | CROPWAT model for crop water requirement and water qualitative measurements | IWR: 763 mm/year-citrus, 722 mm/year-almonds, 1083 mm/year-date palm, 591 mm/year-grapes. | Palestine |
[15] | Meteorological data; Time period: 1961 to 2001 | Spatial distribution of crop water requirement | CROPWAT model for irrigation water requirement and irrigation scheduling, DEM based methods | Spatial distribution of ETc of spring maize 324.57–500.55 mm; water deficit ratio up to 40% | China |
[21] | Daily rainfall, 2D and 3D model of building; Time period: January 2014–December 2018 (daily rainfall) | Rainwater harvesting assessment through Building Information Modeling (BIM) | Calculation of potential roofing catchment size, rainwater harvesting potential and fixing of tank capacity | Collected harvested rainfall water volume: 8190 L/yr to 103,300 L/yr | Pakistan |
[22] | CityGML building models; Time period: Not defined | Urban water demand assessment | Implementation of water analysis workflow of SimStadt, log-log model for water demand assessment | Industrial water demand: 397 to 579 m3 and Predicted precipitation: 248 mm by 2030 | Germany |
Our Proposed Methodology | Climate dataset, wastewater treatment Plant water supply volume, ALKIS maps Time period: 1991–2021 (temperature, humidity, rainfall), 1991–2019 (sunshine hours), 2022 (wind speed), 2021–2022 (WWTP supply), 2021 (ALKIS maps) | Agriculture water demand assessment by using the potentiality of urban rainwater harvesting and wastewater treatment plant supply | Employment of CROPWAT model for IWR, zonal severity analysis, urban roof catchment area measurement, economic value. | IWR estimation: 189 mm-maize, 223.3 mm-winter wheat, 60.92 mm for wine grapes, spatial volume of IWR 294.7 × 103 m3/yearly. Sensitivity phases 0–5. Rainfall water harvested volume: 86 × 103 m3/yearly | Germany |
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Karmaker, S.; Bandyopadhyay, S.; Bauer, S. Geospatial Approaches to Improve Water Availability through Demand Assessment in Agriculture Based on Treated Wastewater: A Case Study of Weinstadt, Baden-Württemberg. Water 2024, 16, 704. https://doi.org/10.3390/w16050704
Karmaker S, Bandyopadhyay S, Bauer S. Geospatial Approaches to Improve Water Availability through Demand Assessment in Agriculture Based on Treated Wastewater: A Case Study of Weinstadt, Baden-Württemberg. Water. 2024; 16(5):704. https://doi.org/10.3390/w16050704
Chicago/Turabian StyleKarmaker, Sourav, Sanchalita Bandyopadhyay, and Sonja Bauer. 2024. "Geospatial Approaches to Improve Water Availability through Demand Assessment in Agriculture Based on Treated Wastewater: A Case Study of Weinstadt, Baden-Württemberg" Water 16, no. 5: 704. https://doi.org/10.3390/w16050704
APA StyleKarmaker, S., Bandyopadhyay, S., & Bauer, S. (2024). Geospatial Approaches to Improve Water Availability through Demand Assessment in Agriculture Based on Treated Wastewater: A Case Study of Weinstadt, Baden-Württemberg. Water, 16(5), 704. https://doi.org/10.3390/w16050704