Integrated Evaluation of the Water Deficit Irrigation Scheme of Indigowoad Root under Mulched Drip Irrigation in Arid Regions of Northwest China Based on the Improved TOPSIS Method
Abstract
:1. Introduction
2. Materials and Methods
2.1. Description of the Experimental Site
2.2. Experimental Design and Field Management
2.3. Measurements and Calculations
2.3.1. Soil Moisture Content
2.3.2. Plant Yield
2.3.3. Water Consumption and Water Use Efficiency
2.3.4. Root Quality
2.3.5. Determination of Weights
- (1)
- The relationship between various factors in the system are analyzed, and the hierarchical structure of the system is established.
- (2)
- Pair comparison is made of the relative importance of indicators at different levels and quantified on a scale from 1 to 9 in the definition of judgment matrix scale (Table 2). After that, the judgment matrix of pairwise comparison is formed by the quantization results.
- (3)
- The subjective weights from the judgment matrix ()are calculated. Then, the consistency of the judgment matrix is tested to ensure the scientificity and reliability of the calculation.
- Arithmetic average method:
- Geometric average method:
- Eigenvector method: The maximum eigenvalue of the matrix and its corresponding eigenvector are found, and the obtained eigenvector is normalized to obtain the weight result.
- The consistency index (CI) is calculated as follows:
- The corresponding average random consistency index (RI) is found (Table 3).
- The consistency ratio (CR) is calculated as follows:
- (1)
- The data is standardized. According to the data of n evaluation processes and the data of m evaluation indices, a matrix is constructed, and the data is processed to standardize and eliminate the influence of the dimension and order of magnitude. The low optimal indices are standardized according to Equation (11) to ensure consistent direction of the evaluation index, and the other indices are standardized using Equation (10).
- (2)
- The ratio of each index in each scheme is calculated. The matrix Z is obtained after the previous standardization process, and the proportion of the i-th sample under the j-th index is then calculated using Equation (13). The result is regarded as the probability used in the calculation for the relative entropy:
- (3)
- Based on the definition of information entropy, the entropy of the j-th index is calculated according to Equation (14). Then, the information utility value is calculated according to Equation (15) and normalized to obtain the entropy weight of each index according to Equation (16).
2.4. Statistical Analysis
3. Results
3.1. Selection of Evaluation Indicators
3.2. Determination of the Weight of Indices in the Evaluation System
3.2.1. The Analytic Hierarchy Process
- (1)
- Establishment of a hierarchy of steps
- (2)
- Construction of a judgment matrix
- (3)
- Calculation of the subjective weights from the judgment matrix ()
3.2.2. Entropy Weight Method
3.2.3. Combination Weights
3.3. Integrated Evaluation Model Based on the Improved TOPSIS Method
3.4. Analysis of the Evaluation Results
4. Discussion
4.1. CW of Evaluation Indicators
4.2. Comprehensive Evaluation Results of WDI Scheme
5. Conclusions
- (1)
- With the help of AHP and EWM, the CW of each evaluation index was finally determined, which stably reflected the degree of influence of each evaluation index on the comprehensive evaluation system of the WDI scheme for indigowoad root. Among the CWs obtained from the experimental data for two consecutive years, the largest weight of the indigowoad root yield was 0.4711 (2016) and 0.4702 (2017).
- (2)
- The comprehensive evaluation value was calculated by constructing the TOPSIS comprehensive evaluation model, and the value was used to rank the different WDI schemes. The results showed that V1G1 was the best water control treatment in 2016, followed by V1G0, with values of 0.9746 and 0.9741, respectively. Additionally, V1G0 was the best water control treatment in 2017, followed by V1G1, with values of 0.9762 and 0.9458, respectively. The V3G2 treatment was the worst for the two years, with values of 0.0078 and 0.0081.
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Acknowledgments
Conflicts of Interest
References
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Treatment Number | Treatment | Soil Moisture Contents of Different Treatments (Percentage of Field Capacity) | |||
---|---|---|---|---|---|
Seedling | Vegetative | Fleshy Root Growth | Fleshy Root Maturity | ||
V1G0 | V, mild WD | 75–85 | 65–75 | 75–85 | 75–85 |
V2G0 | V, moderate WD | 75–85 | 55–65 | 75–85 | 75–85 |
V3G0 | V, severe WD | 75–85 | 45–55 | 75–85 | 75–85 |
V1G1 | V, mild WD; G, mild WD | 75–85 | 65–75 | 65–75 | 75–85 |
V1G2 | V, mild WD; G, moderate WD | 75–85 | 65–75 | 55–65 | 75–85 |
V2G1 | V, moderate WD; G, mild WD | 75–85 | 55–65 | 65–75 | 75–85 |
V2G2 | V, moderate WD; G, moderate WD | 75–85 | 55–65 | 55–65 | 75–85 |
V3G1 | V, severe WD; G, mild WD | 75–85 | 45–55 | 65–75 | 75–85 |
V3G2 | V, severe WD; G, moderate WD | 75–85 | 45–55 | 55–65 | 75–85 |
FI | Full irrigation | 75–85 | 75–85 | 75–85 | 75–85 |
Scale | Meaning |
---|---|
1 | Comparison represents two factors having the same importance. |
3 | Comparison represents two factors, with the former slightly more important than the latter. |
5 | Comparison represents two factors, with the former significantly more important than the latter. |
7 | Comparison represents two factors, with the former strongly more important than the latter. |
9 | Comparison represents two factors, with the first extremely more important than the latter. |
2, 4, 6, 8 | Represents the median value of the above adjacent judgment. |
Reciprocal | If the ratio of importance of factor i and factor j is aij, then the ratio of importance of factor j and factor i is aji = 1/aij |
n | 1 | 2 | 3 | 4 | 5 | 6 | 7 | 8 | 9 | 10 | 11 | 12 | 13 | 14 |
---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|
RI | 0 | 0 | 0.52 | 0.89 | 1.12 | 1.24 | 1.36 | 1.41 | 1.46 | 1.49 | 1.52 | 1.54 | 1.56 | 1.58 |
Year | Treatment Number | Yield (kg·ha−2) | Water Use Efficiency (kg·ha−2·mm−1) | Water Consumption (mm) | Indigo (mg·kg−1) | (R,S)-Goitrin (mg·g−1) |
---|---|---|---|---|---|---|
2016 | V1G0 | 8239.56 a | 24.01 a | 343.28 bc | 6.153 c | 0.230 c |
V2G0 | 7219.67 b | 20.45 d | 353.05 b | 6.093 d | 0.231 bc | |
V3G0 | 6894.60 d | 20.52 d | 335.92 c | 5.737 e | 0.216 d | |
V1G1 | 8215.52 a | 24.11 a | 340.85 c | 6.463 b | 0.251 a | |
V1G2 | 7164.91 bc | 20.70 cd | 346.06 bc | 6.67 a | 0.253 a | |
V2G1 | 7083.69 c | 20.93 c | 338.38 c | 6.443 b | 0.24 b | |
V2G2 | 6965.85 d | 20.57 d | 338.56 c | 6.41 b | 0.239 bc | |
V3G1 | 5311.57 e | 16.81 e | 316.03 d | 5.733 e | 0.208 de | |
V3G2 | 5228.54 e | 16.58 e | 315.27 d | 5.713 e | 0.205 e | |
FI | 8315.58 a | 22.23 b | 374.04 a | 6.117 cd | 0.237 bc | |
Mean | 7063.949 | 20.691 | 340.144 | 6.153 | 0.231 | |
SD | 1094.808 | 2.520 | 16.946 | 0.343 | 0.017 | |
CV (%) | 15.50 | 12.18 | 4.98 | 5.58 | 7.21 | |
2017 | V1G0 | 8390.80 a | 23.62 a | 355.25 cd | 6.139 d | 0.234 cd |
V2G0 | 7462.24 b | 20.39 c | 366.06 b | 6.109 d | 0.232 d | |
V3G0 | 6800.36 e | 19.79 d | 343.62 f | 5.722 e | 0.212 e | |
V1G1 | 8235.32 a | 23.27 a | 353.93 cde | 6.458 b | 0.252 b | |
V1G2 | 7051.11 c | 19.72 d | 357.65 c | 6.733 a | 0.258 a | |
V2G1 | 6981.71 cd | 20.02 cd | 348.66 def | 6.415 bc | 0.249 b | |
V2G2 | 6819.79 de | 19.63 d | 347.35 ef | 6.344 c | 0.238 cd | |
V3G1 | 5686.71 f | 17.28 e | 329.02 g | 5.741 e | 0.21 e | |
V3G2 | 5539.79 f | 16.90 e | 327.78 g | 5.715 e | 0.208 e | |
FI | 8322.25 a | 21.80 b | 381.75 a | 6.121 d | 0.239 c | |
Mean | 7129.008 | 20.242 | 351.107 | 6.150 | 0.233 | |
SD | 1010.398 | 2.208 | 16.120 | 0.347 | 0.018 | |
CV (%) | 14.17 | 10.91 | 4.59 | 5.65 | 7.70 |
O | C1 | C2 | C3 | C4 | C5 |
---|---|---|---|---|---|
C1 | 1 | 1/2 | 4 | 3 | 3 |
C2 | 2 | 1 | 6 | 4 | 4 |
C3 | 1/4 | 1/6 | 1 | 3/4 | 3/4 |
C4 | 1/3 | 1/4 | 4/3 | 1 | 1 |
C5 | 1/3 | 1/4 | 4/3 | 1 | 1 |
Method | C1 | C2 | C3 | C4 | C5 | CI | CR | |
---|---|---|---|---|---|---|---|---|
Average method | 0.2788 | 0.4463 | 0.0736 | 0.1006 | 0.1006 | 5.0177 | 0.0044 | 0.0039 |
Geometric means method | 0.2783 | 0.4468 | 0.0737 | 0.1006 | 0.1006 | |||
Eigenvector method | 0.2784 | 0.4477 | 0.0733 | 0.1002 | 0.1002 |
Indicator | Subjective Weight | Objective Weight | Combination Weight | ||
---|---|---|---|---|---|
2016 | 2017 | 2016 | 2017 | ||
Yield | 0.2784 | 0.4900 | 0.4684 | 0.4711 | 0.4702 |
Water use efficiency | 0.4477 | 0.2974 | 0.2734 | 0.4598 | 0.4412 |
Water consumption | 0.0733 | 0.0482 | 0.0482 | 0.0122 | 0.0127 |
Indigo | 0.1002 | 0.0614 | 0.0731 | 0.0212 | 0.0264 |
(R,S)-goitrin | 0.1002 | 0.1031 | 0.1369 | 0.0357 | 0.0495 |
Year | Treatment Number | Yield | Water Use Efficiency | Water Consumption | Indigo | (R,S)-Goitrin |
---|---|---|---|---|---|---|
2016 | V1G0 | 0.171915 | 0.16761 | 0.00381 | 0.006705 | 0.011207 |
V2G0 | 0.150635 | 0.142758 | 0.003704 | 0.00664 | 0.011256 | |
V3G0 | 0.143853 | 0.143247 | 0.003893 | 0.006252 | 0.010525 | |
V1G1 | 0.171413 | 0.168308 | 0.003837 | 0.007043 | 0.012231 | |
V1G2 | 0.149493 | 0.144504 | 0.003779 | 0.007268 | 0.012328 | |
V2G1 | 0.147798 | 0.146109 | 0.003865 | 0.007021 | 0.011695 | |
V2G2 | 0.145339 | 0.143596 | 0.003863 | 0.006985 | 0.011646 | |
V3G1 | 0.110824 | 0.117348 | 0.004138 | 0.006247 | 0.010135 | |
V3G2 | 0.109091 | 0.115742 | 0.004148 | 0.006226 | 0.009989 | |
FI | 0.173501 | 0.155184 | 0.003497 | 0.006666 | 0.011548 | |
Optimal vector | 0.173501 | 0.155184 | 0.003497 | 0.006666 | 0.011548 | |
Worst vector | 0.109091 | 0.115742 | 0.004148 | 0.006226 | 0.009989 | |
2017 | V1G0 | 0.173432 | 0.161947 | 0.003972 | 0.008324 | 0.015653 |
V2G0 | 0.154239 | 0.139801 | 0.003855 | 0.008284 | 0.01552 | |
V3G0 | 0.140558 | 0.135687 | 0.004107 | 0.007759 | 0.014182 | |
V1G1 | 0.170218 | 0.159548 | 0.003987 | 0.008757 | 0.016857 | |
V1G2 | 0.145741 | 0.135208 | 0.003946 | 0.00913 | 0.017259 | |
V2G1 | 0.144307 | 0.137264 | 0.004047 | 0.008699 | 0.016657 | |
V2G2 | 0.14096 | 0.13459 | 0.004063 | 0.008602 | 0.015921 | |
V3G1 | 0.11754 | 0.118478 | 0.004289 | 0.007785 | 0.014048 | |
V3G2 | 0.114503 | 0.115873 | 0.004305 | 0.00775 | 0.013914 | |
FI | 0.172015 | 0.149469 | 0.003697 | 0.0083 | 0.015988 | |
Optimal vector | 0.173432 | 0.161947 | 0.003972 | 0.008324 | 0.015653 | |
Worst vector | 0.114503 | 0.115873 | 0.004305 | 0.00775 | 0.013914 |
Treatment Number | 2016 | 2017 | ||||||||
---|---|---|---|---|---|---|---|---|---|---|
Ranking | Ranking | |||||||||
V1G0 | 0.0022 | 0.0815 | 0.9741 | 0.1710 | 2 | 0.0018 | 0.0748 | 0.9762 | 0.1846 | 1 |
V2G0 | 0.0343 | 0.0496 | 0.5910 | 0.1037 | 6 | 0.0294 | 0.0464 | 0.6124 | 0.1158 | 4 |
V3G0 | 0.0389 | 0.0443 | 0.5328 | 0.0935 | 8 | 0.0422 | 0.0327 | 0.4368 | 0.0826 | 7 |
V1G1 | 0.0021 | 0.0816 | 0.9746 | 0.1711 | 1 | 0.0041 | 0.0709 | 0.9458 | 0.1789 | 2 |
V1G2 | 0.0338 | 0.0497 | 0.5949 | 0.1044 | 4 | 0.0385 | 0.0369 | 0.4895 | 0.0926 | 6 |
V2G1 | 0.0340 | 0.0492 | 0.5917 | 0.1039 | 5 | 0.0382 | 0.0368 | 0.4908 | 0.0928 | 5 |
V2G2 | 0.0375 | 0.0458 | 0.5497 | 0.0965 | 7 | 0.0425 | 0.0325 | 0.4333 | 0.0820 | 8 |
V3G1 | 0.0808 | 0.0025 | 0.0294 | 0.0052 | 9 | 0.0709 | 0.0040 | 0.0540 | 0.0102 | 9 |
V3G2 | 0.0832 | 0.0007 | 0.0078 | 0.0014 | 10 | 0.0749 | 0.0006 | 0.0081 | 0.0015 | 10 |
FI | 0.0132 | 0.0755 | 0.8515 | 0.1494 | 3 | 0.0127 | 0.0666 | 0.8403 | 0.1589 | 3 |
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Wang, Z.; Zhang, H.; Wang, Y.; Zhou, C. Integrated Evaluation of the Water Deficit Irrigation Scheme of Indigowoad Root under Mulched Drip Irrigation in Arid Regions of Northwest China Based on the Improved TOPSIS Method. Water 2021, 13, 1532. https://doi.org/10.3390/w13111532
Wang Z, Zhang H, Wang Y, Zhou C. Integrated Evaluation of the Water Deficit Irrigation Scheme of Indigowoad Root under Mulched Drip Irrigation in Arid Regions of Northwest China Based on the Improved TOPSIS Method. Water. 2021; 13(11):1532. https://doi.org/10.3390/w13111532
Chicago/Turabian StyleWang, Zeyi, Hengjia Zhang, Yucai Wang, and Chenli Zhou. 2021. "Integrated Evaluation of the Water Deficit Irrigation Scheme of Indigowoad Root under Mulched Drip Irrigation in Arid Regions of Northwest China Based on the Improved TOPSIS Method" Water 13, no. 11: 1532. https://doi.org/10.3390/w13111532
APA StyleWang, Z., Zhang, H., Wang, Y., & Zhou, C. (2021). Integrated Evaluation of the Water Deficit Irrigation Scheme of Indigowoad Root under Mulched Drip Irrigation in Arid Regions of Northwest China Based on the Improved TOPSIS Method. Water, 13(11), 1532. https://doi.org/10.3390/w13111532