Willingness to Pay for Irrigation Services in the Cold Winter Deserts of Uzbekistan
Abstract
:1. Introduction
2. Description of the Study Area
3. Materials and Methods
3.1. The Choice Experiment
3.2. Analytical Framework
4. Results and Discussion
4.1. The Sample Population
4.2. Willingness to Pay
4.3. Irrigation Scheme Attribute Preference Heterogeneity
4.4. Irrigation Scheme Attribute Nonattendance
5. Conclusions
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Acknowledgments
Conflicts of Interest
References
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Attribute/Characteristic | Description | Levels Considered |
---|---|---|
| The number of months that irrigation water is available in the canals for irrigation purposes. It shows the level of water shortage during the cropping season. | 4 Months 5 Months 6 Months |
| This is the number of watering for a crop farm from the irrigation canals during the cropping season. | 2 watering/month 4 watering/month 6 watering/month |
| The purity of the irrigation water based on farmers’ subjective assessments. | Bad Medium Good |
| Some farmers directly use the canal water for themselves, while others share with neighboring farmers. Our measure is sharing once or twice per month with downstream farmers. | Once/month Twice/month |
| The amount of money the water-user households pay for irrigation in the cropping season. | UZS † 250K UZS 350K UZS 450K |
Mean | St. Dev. | Frequency | Percentage | |
---|---|---|---|---|
Age | 43.23 | 11.87 | ||
Household size (0.1 ha) | 15.34 | 7.98 | ||
Gender (1 = female) | 64 | 32 | ||
Education | ||||
Primary | 4 | 2 | ||
Secondary | 157 | 78.5 | ||
Professional school | 35 | 17.5 | ||
Bachelor’s degree | 4 | 2 | ||
Mainstay of livelihood | ||||
Farming only | 75 | 37.5 | ||
Farming and others | 125 | 62.5 | ||
Farming experience | 18.72 | 9.58 | ||
Distance to the water source | 2.06 | 0.88 | ||
Water shortage months | 3.07 | 1.31 | ||
Pump user † | ||||
“Sayyod” pump | 4 | 2 | ||
Private pump | 188 | 94 | ||
Neighbor pump (rent) | 165 | 82.5 | ||
Water shortage experience | ||||
None | 2 | 1 | ||
Sometimes | 176 | 88 | ||
Always | 22 | 11 | ||
Water quality (1 = good) | 192 | 96 | ||
WTP for irrigation water | ||||
<5K UZS | 81 | 40.5 | ||
5K to 10K UZS | 94 | 47 | ||
>10K UZS | 25 | 12.5 | ||
Single irrigation expenses (,000 UZS) | 40.17 | 17.23 | ||
Annual irrigation expenses (,000 UZS) | 351 | 196.59 | ||
Annual income from the household (Mil. UZS) | 2 | 0.98 | ||
Other monthly income (Mil. UZS) | 1.16 | 0.68 | ||
Observations | 200 |
Model 1 | Model 2 | |||
---|---|---|---|---|
Mean | ||||
Alternative specific constant | 9.468 *** | 2.413 | 5.102 ** | 2.076 |
Canal water available in dry seasons | 1.142 *** | 0.280 | 1.500 *** | 0.346 |
Crop water frequency | 1.707 *** | 0.315 | 1.769 *** | 0.320 |
Medium irrigation water quality | 0.019 | 0.187 | 0.248 | 0.216 |
High irrigation water quality | 1.187 *** | 0.323 | 1.205 *** | 0.355 |
Water sharing with downstream | −0.116 | 0.340 | 0.094 | 0.445 |
Annual irrigation fee | −1.523 *** | 0.172 | −1.417 *** | 0.170 |
SD | ||||
Canal water available in dry seasons | −0.846 *** | 0.292 | 0.997 *** | 0.227 |
Crop water frequency | 1.131 *** | 0.232 | 1.250 *** | 0.253 |
Medium irrigation water quality | −0.142 | 0.307 | 0.955 * | 0.491 |
High irrigation water quality | 1.715 *** | 0.414 | 1.797 *** | 0.424 |
Water sharing with downstream | 3.822 *** | 0.730 | 4.351 *** | 0.795 |
Annual irrigation fee | −0.053 | 0.085 | 0.543 *** | 0.066 |
Observations | 8100 | 8100 | ||
LL | −1832.139 | −1769.525 | ||
AIC | 3690.277 | 3595.050 | ||
BIC | 3781.272 | 3791.040 |
Group of Models | No. | LCM Model | LL | BIC(LL) | Npar |
---|---|---|---|---|---|
Non-scaled 1-6 LCM | Model1 | 1-class choice | −1913.62 | 3867.16 | 7 |
Model2 | 2-class choice | −1782.51 | 3650.57 | 15 | |
Model3 | 3-class choice | −1720.20 | 3571.58 | 23 | |
Model4 | 4-class choice | −1684.70 | 3546.22 | 31 | |
Model5 | 5-class choice | −1666.99 | 3556.42 | 39 | |
Model6 | 6-class choice | −1637.40 | 3542.87 | 47 | |
Scaled 1-6 LCM with 2 scale classes | Model7 | 2-sclass 1-class choice | −1896.54 | 3844.42 | 9 |
Model8 | 2-sclass 2-class choice | −1733.59 | 3564.15 | 17 | |
Model9 | 2-sclass 3-class choice | −1700.95 | 3544.49 | 25 | |
Model10 | 2-sclass 4-class choice | −1676.49 | 3541.20 | 33 | |
Model11 | 2-sclass 5-class choice | −1656.46 | 3546.77 | 41 | |
Model12 | 2-sclass 6-class choice | −1639.75 | 3558.98 | 49 | |
Scaled 1-6 LCM with 3 scale classes | Model13 | 3-sclass 1-class choice | −1896.50 | 3855.74 | 11 |
Model14 | 3-sclass 2-class choice | −1724.66 | 3557.70 | 19 | |
Model15 | 3-sclass 3-class choice | −1694.69 | 3543.39 | 27 | |
Model16 | 3-sclass 4-class choice | −1677.28 | 3548.50 | 34 | |
Model17 | 3-sclass 5-class choice | −1655.08 | 3549.73 | 42 | |
Model18 | 3-sclass 6-class choice | −1642.98 | 3565.45 | 49 |
Attributes | Class1 | z-Value | Class2 | z-Value | Class3 | z-Value | Class4 | z-Value |
---|---|---|---|---|---|---|---|---|
Class size | 0.6430 | 0.1925 | 0.1432 | 0.0213 | ||||
Canal water availability (dry season) | 0.098 ** | 2.178 | 5.405 ** | 2.130 | −0.394 | −0.945 | 0.027 | 0.064 |
Crop water frequency | 0.126 *** | 5.764 | 4.309 ** | 2.271 | 2.436 *** | 6.497 | 0.398 * | 1.831 |
Low irrigation water quality | −0.150 *** | −3.696 | −0.529 * | −1.942 | −2.916 *** | −6.142 | −4.124 | −1.509 |
Medium irrigation water quality | 0.102 ** | 2.216 | −2.204 * | −1.867 | 0.237 | 0.494 | 0.858 | 0.612 |
High irrigation water quality | 0.048 | 0.993 | 2.733 ** | 2.041 | 2.679 *** | 4.019 | 3.267 ** | 2.314 |
Water sharing with downstream | 0.140 ** | 2.385 | 7.862 * | 1.965 | −7.337 *** | −6.106 | −0.864 | −1.215 |
Annual irrigation fee | −0.147 *** | −3.766 | −0.865 * | −1.703 | −1.464 *** | −4.013 | −0.475 * | −1.177 |
Alternative specific constant | 4.211 *** | 8.020 | −40.982 ** | −2.211 | 13.639 *** | 3.553 | −0.537 | −0.169 |
Class | LC Model 1 | LC Model 2 | LC Model 3 | |
---|---|---|---|---|
Class Size | Class Size | Class Size | ||
Full attendance | 1 | 26.4% | 21.2% | 22.0% |
Full non-attendance | 2 | 59.1% | 53.8% | 47.1% |
Availability NA | 3 | 2.1% | ||
Frequency NA | 4 | 2.0% | ||
Quality NA | 5 | 0.1% | ||
Downstream NA | 6 | 10.0% | 0.1% | |
Fee NA | 7 | 0.3% | ||
Availability and frequency NA | 8 | 1.7% | ||
Availability and quality NA | 9 | 0.0% | ||
Availability and downstream NA | 10 | 0.1% | ||
Availability and fee NA | 11 | 0.3% | ||
Frequency and quality NA | 12 | 0.4% | ||
Frequency and downstream NA | 13 | 1.6% | ||
Frequency and fee NA | 14 | 0.2% | ||
Quality and downstream NA | 15 | 15.3% | 23.2% | |
Quality and fee NA | 16 | 0.1% | ||
Downstream and fee NA | 17 | 5.3% | 7.6% | |
LL | −1845.92 | −1809.40 | −1844.14 | |
BIC(LL) | 3760.28 | 3721.46 | 3739.62 | |
AIC(LL) | 3715.84 | 3654.79 | 3706.29 | |
Class. err. | 0.12 | 0.18 | 0.21 |
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Kassie, G.T.; Boboev, H.; Sharma, R.; Akramkhanov, A. Willingness to Pay for Irrigation Services in the Cold Winter Deserts of Uzbekistan. Sustainability 2022, 14, 94. https://doi.org/10.3390/su14010094
Kassie GT, Boboev H, Sharma R, Akramkhanov A. Willingness to Pay for Irrigation Services in the Cold Winter Deserts of Uzbekistan. Sustainability. 2022; 14(1):94. https://doi.org/10.3390/su14010094
Chicago/Turabian StyleKassie, Girma T., Hasan Boboev, Ram Sharma, and Akmal Akramkhanov. 2022. "Willingness to Pay for Irrigation Services in the Cold Winter Deserts of Uzbekistan" Sustainability 14, no. 1: 94. https://doi.org/10.3390/su14010094
APA StyleKassie, G. T., Boboev, H., Sharma, R., & Akramkhanov, A. (2022). Willingness to Pay for Irrigation Services in the Cold Winter Deserts of Uzbekistan. Sustainability, 14(1), 94. https://doi.org/10.3390/su14010094