Hesitant Intuitionistic Fuzzy Approach in Optimal Irrigation Planning in India †
Abstract
:1. Introduction
2. Description of Study Area
3. Methodology and Model Development
3.1. Objective Functions and Constraints
3.2. Hesitant Intuitionistic Fuzzy Optimization (HIFO)
- (a)
- The membership and non-membership functions were formed with Equations (3) and (4) in order to minimize the objective function.
- (b) With the use of linear membership and non-membership excluding the hesitation index, the multi-objective fuzzy linear optimization problem (MOFLP) for objectives subject to constraints set can be described using Equations (5)–(11) (Bharti, [15]).
4. Results and Discussion
4.1. Sensitivity of δr on Hesitant Membership and Non-Membership Function
4.2. Optimal Cropping Pattern
5. Conclusions
- (a)
- The HIFO MOFLP model, recommended by Bharati [15], has been applied over KRBMC with compromised optimal values of NIB, EG, and CC as 5572.31 million Rs., 14,287.27 thousand man-days, and 3429.99 million Rs, respectively.
- (b)
- The optimal cropping pattern, determined by HIFO MOFLP, is shown in Table 2 with an irrigation intensity of 82.05%.
- (c)
- (d)
- The proposed methodology can be applied to the whole Ukai-Kakrapar command area while giving due consideration to more objectives and corresponding constraints such as inflows, outflows of the reservoir, evaporation losses from the reservoir, etc., which are uncertain in nature. The hesitant intuitionistic fuzzy optimization approach can be discovered further when membership function and non-membership functions are non-linear in nature.
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data availability Statement
Conflicts of Interest
References
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Type of Objective Function | Objective Function | Net Benefit | Employment Generation | Cost of Cultivation |
---|---|---|---|---|
Maximum | Net benefit, in million Rs | 5593.77 U | 5559.32 | 1552.55 L |
Maximum | Employment generation, in 1000 man-days | 14,631.25 | 14,824.02 U | 5499.49 L |
Minimum | Cost of cultivation, in million Rs | 3457.54 L | 3454.37 | 1076.75 U |
Solutions Obtained from Various Models | |||||||
---|---|---|---|---|---|---|---|
Crisp Linear Programming Individual Solutions * | IFO MOFLP * | MOFLP * | Hesitant Intuitionistic Algorithm | ||||
Crop No. (i) | Crops | Net benefit | Employment Generation | Cost of Cultivation | = 0.503 | α1 = 0.97, α2 = 0.98, α3 = 0.99, α4 = 0.05, α5 = 0.03, α6 = 0.02, α7 = 0.01, α8 = 0.01, α9 = 0.01, β1 = 0.01, β2 = 0.01, β3 = 0.01, β4 = 0.95, β5 = 0.97, β6 = 0.98, β7 = 0.00, β8 = 0.00, β9 = 0.00 | |
Cropareas allocated in ha | |||||||
1 | Paddy (k) | 13,100 | 16,965 | 13,100 | 13,386.38 | 13,386.38 | 13,100 |
2 | Juwar/Bajra (k) | 11,310 | 11,310 | 8100 | 11,310 | 11,310 | 11,310 |
3 | Vegetables (k) | 1131 | 1131 | 690 | 1131 | 1131 | 1131 |
4 | Wheat (r) | 3654 | 3654 | 3654 | 16,965 | 16,965 | 3654 |
5 | Vegetables (r) | 1120 | 1120 | 1120 | 1120 | 1120 | 1120 |
6 | Juwar/ Bajra (r) | 10,091 | 10,091 | 10,091 | 10,091 | 10,091 | 10,091 |
7 | Paddy (hw) | 8145 | 8145 | 8145 | 8145 | 8145 | 8145 |
8 | Groundnut (hw) | 192 | 192 | 192 | 192 | 192 | 192 |
9 | Cotton (ts) | 860 | 860 | 860 | 860 | 860 | 860 |
10 | Vegetables (ts) | 5655 | 5655 | 1335 | 5655 | 5655 | 3077.996 |
11 | Sugarcane (p) | 38,337.21 | 37,350.34 | 4998 | 17,529.92 | 17,529.92 | 39,503 |
12 | Banana (p) | 633 | 633 | 633 | 633 | 633 | 633 |
Total | 94,228.21 | 97,106.34 | 52,918 | 87,018.3 | 87,018.3 | 97,106.34 | |
Irrigation Intensity % | 83.30 | 85.84 | 46.78 | 76.92 | 76.92 | 82.05 | |
Maximum | Net benefit, in million Rs | 5593.77 | 5559.32 | 1552.55 | 3585.05 | 3585.05 | 5572.31 |
Maximum | Employment generation, in 1000 man-days | 14,631.25 | 14,824.02 | 5499.49 | 10,189.21 | 10,189.21 | 14,287.27 |
Minimum | Cost of cultivation, in million Rs | 3457.54 | 3454.37 | 1076.75 | 2260.13 | 2260.13 | 3429.99 |
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Pawar, S.V.; Patel, P.L.; Mirajkar, A.B. Hesitant Intuitionistic Fuzzy Approach in Optimal Irrigation Planning in India. Environ. Sci. Proc. 2023, 25, 93. https://doi.org/10.3390/ECWS-7-14190
Pawar SV, Patel PL, Mirajkar AB. Hesitant Intuitionistic Fuzzy Approach in Optimal Irrigation Planning in India. Environmental Sciences Proceedings. 2023; 25(1):93. https://doi.org/10.3390/ECWS-7-14190
Chicago/Turabian StylePawar, Sangita V., Premlal Lal Patel, and Ashwini B. Mirajkar. 2023. "Hesitant Intuitionistic Fuzzy Approach in Optimal Irrigation Planning in India" Environmental Sciences Proceedings 25, no. 1: 93. https://doi.org/10.3390/ECWS-7-14190
APA StylePawar, S. V., Patel, P. L., & Mirajkar, A. B. (2023). Hesitant Intuitionistic Fuzzy Approach in Optimal Irrigation Planning in India. Environmental Sciences Proceedings, 25(1), 93. https://doi.org/10.3390/ECWS-7-14190