IrrigTool—A New Tool for Determining the Irrigation Rate Based on Evapotranspiration Estimated by the Thornthwaite Equation
Abstract
:1. Introduction
2. Methodology
- (m3/ha)—the minimum water reserve in the soil, corresponding to the wilting point, at the depth H,
- (m3/ha)—the maximum water reserve in the soil, corresponding to the water field capacity, at the depth H,
- DAH (t/m3)—the soil bulk density corresponding to the depth H,
- (%)—the water field capacity corresponding to the depth H,
- (%)—the wilting coefficient corresponding to the depth H.
- (t/m3)—the soil bulk density corresponding to the depth h,
- (%)—the water field capacity corresponding to the depth h.
- (%)—the minimum moisture level, defined as the limit under which the soil humidity should not decrease for ensuring normal conditions for the plant growth. It is computed at the depth h by [34]:
- The water reserve in soil must be lower than () in the cold (vegetation) season. When it is higher, the quantity that exceeds the above limits is considered lost by infiltration and cannot be used by plants;
- In the cold period, the water reserve can decrease without limitation except for the crops subject to water provision.
- In the vegetation period, the water reserve cannot decrease under If the reserve decreases under this value, watering must be applied.
- (a)
- Input data from the Excel files where they have been previously introduced. They are: monthly precipitation (Pu in the flowchart) and temperature series (t– in the flowchart), the series of the monthly coefficients K1 and Kp, and the series.The input data are validated by checking if the cells are filled in with numerical values. If not, the algorithm stops. Otherwise, it passes to the next step, as follows:
- (b)
- Read the soil characteristics, namely H, h, DA, , and corresponding to h and H from the worksheets where they were previously introduced. If all the values are numerical, and none is absent, the algorithm passes to step (c). Otherwise, it stops.
- (c)
- Compute and for winter;
- (d)
- Compute ;
- (e)
- Compute and for summer;
- (f)
- Compute the monthly irrigation rate;
- (g)
- Compute the initial and final water reserve for each month;
- (h)
- Compute the water application rate and the annual irrigation rate;
- (i)
- Display the results and the graphical representation.
3. Data Series
4. Implementation
- − in Q4—a code selected from the first column of the worksheet “K1”;
- − in Q5—a code selected from the first column of the worksheet “Kp”;
- − in Q6—a code selected from the first column of the worksheet “Af”;
- − in Q7—a code selected from the first column of the worksheet “Soil” corresponding to the winter season;
- − in Q8—a code selected from the first column of the worksheet “Soil” corresponding to the summer season;
- − in Q9—a code selected from the first column of the worksheet “ETRM” or “auto”;
- − in Q10—"0” or a value selected by the user.
5. Results
6. Discussion
7. Conclusions
Supplementary Materials
Author Contributions
Funding
Data Availability Statement
Conflicts of Interest
References
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Series | Max | Min | Mean | Median | Std. Dev. | Coef. of Variation | Skewness | Kurtosis |
---|---|---|---|---|---|---|---|---|
CT precipitation | 259.20 | 0.30 | 43.27 | 36.00 | 36.53 | 0.84 | 1.96 | 6.95 |
TL precipitation | 173.00 | 0.00 | 44.83 | 37.35 | 33.91 | 0.76 | 1.06 | 0.85 |
CT temperature | 26.70 | −0.20 | 12.83 | 12.60 | 8.17 | 0.64 | −0.03 | −1.29 |
TL temperature | 26.20 | −4.50 | 12.08 | 11.65 | 8.60 | 0.71 | −0.06 | −1.28 |
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Dumitriu, C.Ș.; Bărbulescu, A.; Maftei, C.E. IrrigTool—A New Tool for Determining the Irrigation Rate Based on Evapotranspiration Estimated by the Thornthwaite Equation. Water 2022, 14, 2399. https://doi.org/10.3390/w14152399
Dumitriu CȘ, Bărbulescu A, Maftei CE. IrrigTool—A New Tool for Determining the Irrigation Rate Based on Evapotranspiration Estimated by the Thornthwaite Equation. Water. 2022; 14(15):2399. https://doi.org/10.3390/w14152399
Chicago/Turabian StyleDumitriu, Cristian Ștefan, Alina Bărbulescu, and Carmen Elena Maftei. 2022. "IrrigTool—A New Tool for Determining the Irrigation Rate Based on Evapotranspiration Estimated by the Thornthwaite Equation" Water 14, no. 15: 2399. https://doi.org/10.3390/w14152399