Environment-Smart Agriculture and Mapping of Interactions among Environmental Factors at the Farm Level: A Directed Graph Approach
Abstract
:1. Introduction
2. Materials and Methods
2.1. Literature Review
2.2. Methodology
2.2.1. The Proxy Indicator to Measure ESA
2.2.2. Construction of the Composite On-Farm Environmental Impact (COEI)
2.2.3. Validating the COEI as a Proxy Measure of Evaluating ESA: The Directed Graph Approach
2.2.4. Defining Factor Interactions: Understanding of the Relations
2.2.5. Construction of the Farmer’s Household Pollution Index
2.2.6. Mitigation Cost of Practicing ESA: The Distribution-Free Turnbull Estimator
2.2.7. Study Area and the Data
3. Results
3.1. Ranking of Individual Environmental Impacts Based on Standardized Scores
3.2. Analyzing Factor Interactions and Its Extent of Influence on ESA Practices
3.3. Valuation of Mitigation Cost of ESA Practices
4. Conclusions
Author Contributions
Acknowledgments
Conflicts of Interest
Appendix A
Disagree | Agree | |||||
---|---|---|---|---|---|---|
Scale of point | 0 | 1 | 2 | 3 | 4 | 5 |
Impact Interpretation | None | Very low | Low | Medium | High | Very high |
Impact Weights | 0 | 0.2 | 0.4 | 0.6 | 0.8 | 1.0 |
Appendix B
References
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Step (I) | Step (II) | Step (III) | Step (IV) | Step (V) |
---|---|---|---|---|
Identifying major aims of ESA practices at farm-level | Classifying basic categories of measurement components from Step (I) | Deriving relevant components of the ESA measure from Step (II) | Formulating and defining the proxy measure of ESA practices using relevant components from Step (III) | Validating the proxy index (COEI) of evaluating ESA defined in Step (IV) |
Reduce GHG emissions | Emission-related impacts | Soil toxicity, Pollution of surface and ground water sources. | Composite index value of the selected on-farm environmental impacts (COEI) measures the potential for uncertainties/constraints to practice ESA. Farms having higher COEI value influence the potential of achieving ESA adversely. | Mapping interaction between the COEI and on-farm ESA potential by measuring their degree of influence using farm-level data. |
Reduce impacts on the soil | Soil-related impacts | Soil stress factor, soil compaction, soil salinity. | ||
Improve farmer’s perception on on-farm environmental impacts | Perception-based impacts | Soil fertility, crop diseases, pest attack, soil erosion, waterlogging, fish catch reduction, human health impact |
Impact Name | Function Type | Threshold Values | Optimal Range Scoring Function | |
---|---|---|---|---|
Lower (L) | Upper (U) | |||
Soil fertility, crop diseases, pest attack, soil erosion, waterlogging, fish catch reduction, human health impact | Likert scale scoring using five-point scale. | 0 | 1 | |
Soil stress factor | MBF | 2 | 36 | if MBF if LBF |
Soil compaction | MBF | 100 psi | 500 psi | |
Soil salinity | MBF | 0.2 ds/m | 2.0 ds/m | |
Water contamination/water pH, soil toxicity/Soil pH | MBF if pH > 7 LBF if pH < 7 | 7.05 4.0 | 8.5 6.9 | |
Composite on-farm environmental impact (COEI) | Weighted summation of standardized values of the selected impacts |
No. of the Basic Relations | First | Second | Third |
---|---|---|---|
Definition of the basic relations | Factor A is related with factor B. [A→B] | If factor A is related with factor B and factor B is related with factor C, then factor A is related with factor C through B by transitivity rule [A→B, B→C then A→C]. The total extent of interaction is the multiplication of these two relations. (A→B) × (B→C) = (A→C)B | Factor A relates to factor C, factor B relates to factor C. [A→C, B→C]. Here two or more relations from different path direct to the same target node. The total extent of the factor interaction to the environmental issue is the sum of these two relations, which is (A→C) + (B→C). |
Graph of basic relations | |||
Definition of the rules | Slope A/B implies [A→B] | Slope A/B × Slope B/C implies [(A→C)B] | Slope A/C + Slope B/C implies [Total extent of factor interaction → the environmental issue under study (e.g., ESA)] |
Arctan of the slope value that ranges from angle 0° to 30° (segment 1), 31° to 60° (segment 2) and 61° to 90° (segment 3) means the relation (interaction) between factors influences the challenges of practicing ESA poorly, moderately and extremely respectively. |
Environment Polluting Activity Weights (Ew) | ||||
---|---|---|---|---|
Attributes (r) | (4) Least | (3) Good | (2) Better | (1) Best |
House category | Clay | Straw | Half-concrete | Full-concrete |
Sanitation | Open place | Temporary latrine | Sanitary latrine (without water seal) | Sanitary latrine (with water seal) |
Access to health facility | Village doctor | Health center | Clinic | Hospital |
Drinking water source | Pond/river | Well | Supply | Deep tube well |
Household energy source | Timber/straw/cow dung/dried leafs/kerosene | Electricity | Biogas/natural gas | Solar power |
Waste disposal | No specific place to dispose | Burnt | Buried | Specific place/waste bin |
Mean | Std. Dev. | Min | Max | |
---|---|---|---|---|
Chemical fertilizers (CFR) (Kg per hectare) | 555.25 | 118.4 | 296.52 | 3743.64 |
Chemical pesticides (CPS) (Kg per hectare) | 11.86 | 2.74 | 0.74 | 49.42 |
Irrigation (IRR) (Ground water extraction hours per hectare) | 289.36 | 33.7 | 108.73 | 593.05 |
Farmers household pollution index (FHP) | 0.741 | 0.12 | 0.11 | 1 |
Proportion of land under HYV rice cultivation (PLH) | 0.82 | 0.37 | 0.15 | 1 |
Composite on-farm environmental impact (COEI) | 7.39 | 2.4 | 3.33 | 10.67 |
Impact Names | Rajshahi | Pabna | Natore | All Region |
---|---|---|---|---|
SFP (problem of soil fertility) | 0.67 (4) | 0.72 (2) | 0.58 (5) | 0.66 (3) |
PAP (problem of pest attack) | 0.75 (2) | 0.39 (6) | 0.42 (6) | 0.53 (6) |
CDP (problem of crop diseases) | 0.80 (1) | 0.69 (4) | 0.77 (3) | 0.76 (1) |
SER (soil erosion) | 0.15 (9) | 0.67 (5) | 0.90 (1) | 0.56 (5) |
SCM (soil compaction) | 0.49 (5) | 0.34 (8) | 0.29 (8) | 0.38 (7) |
SSL (soil salinity) | 0.20 (8) | 0.36 (7) | 0.35 (7) | 0.30 (8) |
SSF (soil stress factor) | 0.19 (10) | 0.73 (1) | 0.80 (2) | 0.56 (4) |
WLG (problem of water logging) | 0.20 (7) | 0.27 (9) | 0.26 (11) | 0.24 (9) |
GWpH (ground water pH/water contamination) | 0.10 (12) | 0.10 (12) | 0.29 (9) | 0.16 (11) |
RFC (problem of fish catch reduction) | 0.74 (3) | 0.70 (3) | 0.73 (4) | 0.72 (2) |
HI (health impact) | 0.25 (6) | 0.17 (10) | 0.28 (10) | 0.23 (10) |
SpH (soil pH/soil toxicity) | 0.13 (11) | 0.11 (11) | 0.17 (12) | 0.14 (12) |
No. of Operations | Interaction between Factors and Their Influence on the State of On-Farm Negative Externality | Extent of the Influence to Target Node (Negative Externality Condition) |
---|---|---|
1. | (ΔPLH→ΔCOEI) = 0.27 | 0.27 (≈15.1°) |
2. | (ΔPLH→ΔCFR × ΔCFR→ΔCOEI) = (ΔPLH→ΔCOEI)ΔCFR = 0.29 × 0.85 = 0.25 | (ΔPLH→ΔCOEI)ΔCFR + (ΔPLH→ΔCOEI) = 0.25 + 0.27 = 0.52 (≈27.47°) |
3. | (ΔPLH→ΔCPS × ΔCPS→ΔCOEI) = (ΔPLH→ΔCOEI)ΔCPS = 1.65 × 0.41= 0.68 | (ΔPLH→ΔCOEI)ΔCPS + (ΔPLH→ΔCOEI) = 0.68 + 0.27 = 0.95 (≈43.53°) |
4. | (ΔPLH→ΔIRR × ΔIRR→ΔCOEI) = (ΔPLH→ΔCOEI)ΔIRR = 3.04 × 0.002=0.007 | (ΔPLH→ΔCOEI)ΔIRR + (ΔPLH→ΔCOEI) = 0.007 + 0.27 = 0.28 (≈15.64°) |
5. | (ΔPLH→ΔFHP × ΔFHP→ΔCOEI) = (ΔPLH→ΔCOEI)ΔFHP = 0.007 × 1.09 = 0.008 | (ΔPLH→ΔCOEI)ΔFHP + (ΔPLH→ΔCOEI) = 0.008 + 0.27 = 0.28 (≈15.64°) |
Total extent of COEI influence on practicing ESA practices | 2.30 (≈66.5°) |
Rajshahi | Pabna | Natore | Three Region Average | |||||
---|---|---|---|---|---|---|---|---|
E(WTP) | BDT | E(WTP) | BDT | E(WTP) | BDT | E(WTP) | BDT | |
Soil fertility | 13.48 | 4.67 (1) | 7.20 | 2.62 (5) | 11.53 | 3.83 (2) | 10.74 | 3.71 (1) |
(0.86) | (0.76) | (0.89) | ||||||
[11.79, 15.17] | [5.71, 8.69] | [9.79, 13.27] | ||||||
Pest attack | 10.22 | 3.64 (3) | 6.02 | 2.19 (6) | 11.48 | 3.82 (3) | 9.33 | 3.22 (3) |
(0.96) | (0.99) | (0.68) | ||||||
[8.34, 12.10] | [4.08, 7.96] | [10.14, 12.18] | ||||||
Crop diseases | 10.49 | 3.54 (4) | 7.33 | 2.67 (4) | 11.73 | 3.89 (1) | 9.76 | 3.37 (2) |
(0.88) | (0.80) | (0.71) | ||||||
[8.76, 12.83] | [5.76, 8.89] | [10.33, 13.12] | ||||||
Soil erosion | 10.70 | 3.71 (2) | 4.88 | 1.78 (9) | 10.45 | 3.47 (5) | 8.68 | 3.00 (5) |
(1.09) | (0.69) | (0.78) | ||||||
[8.56, 12.83] | [3.52, 6.23] | [8.92, 11.97] | ||||||
Soil compaction | 10.12 | 3.51 (6) | 4.51 | 1.64 (11) | 7.65 | 2.54 (9) | 7.43 | 2.56 (10) |
(1.02) | (0.79) | (0.81) | ||||||
[8.12, 12.12] | [2.96, 6.05] | [6.06, 9.23] | ||||||
Soil salinity | 4.33 | 1.50 (12) | 5.18 | 1.89 (8) | 5.65 | 1.88 (11) | 5.05 | 1.76 (12) |
(0.89) | (0.73) | (0.75) | ||||||
[2.59, 6.07] | [3.74, 6.61] | [4.18, 7.12] | ||||||
Soil stress Factor | 7.44 | 2.58 (8) | 8.58 | 3.12 (2) | 10.85 | 3.61 (4) | 8.82 | 3.10 (4) |
(0.92) | (0.90) | (0.94) | ||||||
[5.64, 9.24] | [6.81, 10.34] | [9.01, 12.69] | ||||||
Waterlogging | 5.88 | 2.04 (10) | 8.48 | 3.09 (3) | 10.02 | 3.33 (6) | 8.13 | 2.82(6) |
(0.70) | (0.73) | (0.94) | ||||||
[4.51, 7.25] | [7.04, 9.91] | [8.17, 11.86] | ||||||
Water contamination | 10.19 | 3.53 (5) | 4.42 | 1.61 (12) | 8.53 | 2.84 (7) | 7.71 | 2.66 (7) |
(1.06) | (0.73) | (1.08) | ||||||
[8.11, 12.27] | [2.98, 5.85] | [6.41, 10.65] | ||||||
Fish catch reduction | 4.41 | 1.53 (11) | 10.30 | 3.75 (1) | 8.02 | 2.67 (8) | 7.58 | 2.65 (8) |
(0.78) | (0.74) | (0.80) | ||||||
[2.88, 5.94] | [8.84, 11.75] | [6.45, 9.58] | ||||||
Human health impact | 9.84 | 3.41 (7) | 5.73 | 2.09 (7) | 6.81 | 2.26(10) | 7.46 | 2.59 (9) |
(0.76) | (0.74) | (1.09) | ||||||
[8.35, 11.33] | [4.28, 7.18] | [4.67, 8.95] | ||||||
Soil toxicity | 7.40 | 2.57 (9) | 4.67 | 1.70 (10) | 5.39 | 1.79(12) | 5.82 | 2.02 (11) |
(1.09) | (0.66) | (1.02) | ||||||
[5.26, 9.54] | [3.38, 5.96] | [3.39, 7.38] | ||||||
Overall impact | 8.12 | 2.82 | 5.29 | 1.95 | 5.84 | 1.94 | 6.42 | 2.23 |
(0.78) | (0.83) | (0.92) | ||||||
[6.59, 9.65] | [3.66, 6.91] | [4.03, 7.64] | ||||||
Farm size-wise mitigation expense | ||||||||
Large farms | 13.48 (1.75) | 4.67 (1) | 6.4 (1.95) | 2.33 (1) | 5.80 (2.38) | 1.93 (1) | 8.56 | 2.98 (1) |
[10.05, 16.91] | [2.58, 10.22] | [1.14, 10.46] | ||||||
Medium farms | 6.32 (1.19) | 2.19 (2) | 6.4 (1.33) | 2.33 (2) | 5.05 (1.22) | 1.69 (2) | 7.60 | 2.07 (2) |
[3.98, 8.65] | [3.79, 9.01] | [2.65, 7.44] | ||||||
Small farms | 5.27 (0.50) | 1.83 (3) | 3.91 (0.61) | 1.43 (3) | 4.59 (0.67) | 1.53 (3) | 5.88 | 1.60 (3) |
[4.29, 6.25] | [2.71, 5.10] | [3.27, 5.90] |
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Noor-E-Sabiha; Rahman, S. Environment-Smart Agriculture and Mapping of Interactions among Environmental Factors at the Farm Level: A Directed Graph Approach. Sustainability 2018, 10, 1580. https://doi.org/10.3390/su10051580
Noor-E-Sabiha, Rahman S. Environment-Smart Agriculture and Mapping of Interactions among Environmental Factors at the Farm Level: A Directed Graph Approach. Sustainability. 2018; 10(5):1580. https://doi.org/10.3390/su10051580
Chicago/Turabian StyleNoor-E-Sabiha, and Sanzidur Rahman. 2018. "Environment-Smart Agriculture and Mapping of Interactions among Environmental Factors at the Farm Level: A Directed Graph Approach" Sustainability 10, no. 5: 1580. https://doi.org/10.3390/su10051580
APA StyleNoor-E-Sabiha, & Rahman, S. (2018). Environment-Smart Agriculture and Mapping of Interactions among Environmental Factors at the Farm Level: A Directed Graph Approach. Sustainability, 10(5), 1580. https://doi.org/10.3390/su10051580