Regional Sustainability ›› 2024, Vol. 5 ›› Issue (1): 100117.doi: 10.1016/j.regsus.2024.100117cstr: 32279.14.j.regsus.2024.100117
• Full Length Article • Previous Articles
Setyardi Pratika MULYAa,b,*(), Delik HUDALAHc
Received:
2023-06-11
Accepted:
2024-03-29
Published:
2024-03-30
Online:
2024-04-30
Contact:
E-mail address: Setyardi Pratika MULYA, Delik HUDALAH. Agricultural intensity for sustainable regional development: A case study in peri-urban areas of Karawang Regency, Indonesia[J]. Regional Sustainability, 2024, 5(1): 100117.
Table 1
Variables used in scalogram analysis."
Concept | Variable* | Formula and description | Source |
---|---|---|---|
Total population (persons) | Original data | MoHA ( | |
Utilization | Conversion of agricultural land to non-agricultural land during 2017-2021 (hm2) | where LC2021 and LC2017 represent land cover (hm2) in 2021 and 2017, respectively. | Zanaga et al. ( |
Percentage of land suitable for agriculture (%) | where VA is the village area (hm2). | Wall ( | |
Average ownership of rice fields in 2014 (m2) | where ∑Opf represents the area of rice fields owned by each farmer (m2); and nfarmer is the total number of farmers who grow rice in the village. | Central Statistics Agency of Indonesia ( | |
Average ownership of non-rice fields in 2014 (m2) | where ∑Nlof represents the area of non-rice fields owned by each farmer (m2); and nfarmerNRF is the total number of farmers who do not grow rice in the village. | Central Statistics Agency of Indonesia ( | |
Average planted area per village (m2) | where ∑Rfpf represents the area of rice fields planted by each farmer (m2); and nfarmer is the total number of farmers who grow rice in the village. | Central Statistics Agency of Indonesia ( | |
Percentage of non-rice fields per village (%) | where nrfa represents the area of non-rice field (hm2); and VA is the village area (hm2). | MoEF ( | |
Percentage of rice fields per village (%) | where rfa represents the area of rice field (hm2); and VA is the village area (hm2). | MoA ( | |
Percentage of spatial planning area planned for agriculture per village (%) | where lapff represents the area of land planned for farming (hm2); and VA is the village area (hm2). | Public Works and Housing Office ( | |
Percentage of agricultural land aligned with spatial planning (%) | where fasp represents the area of land aligned with spatial planning (hm2); and VA is the village area (hm2). | Public Works and Housing Office ( | |
Percentage of forest area aligned with spatial planning (%) | where faasp represents the area of forest aligned with spatial planning (hm2); and VA is the village area (hm2). | Public Works and Housing Office ( | |
Production | Existence of irrigation channels as a source of agricultural water | (1=yes, 0=no) | Central Statistics Agency of Indonesia ( |
Existence of lakes or sites as agricultural water sources | (1=yes, 0=no) | Central Statistics Agency of Indonesia ( | |
Presence of a shop selling village unit cooperative-owned crops | (1=yes, 0=no) | Central Statistics Agency of Indonesia ( | |
Number of farmer groups per village | Original data | Central Statistics Agency of Indonesia ( | |
Number of irrigation institutions per village | Original data | Central Statistics Agency of Indonesia ( | |
Percentage of households in each village engaged in agriculture (%) | where nfh represents the number of farm households; and nh is the number of households. | MoHA ( | |
Production | Empowerment of productive business management in agricultural and non-agricultural industries | (1=yes, 0=no) | Central Statistics Agency of Indonesia ( |
Construction of agricultural facilities | (1=yes, 0=no) | Central Statistics Agency of Indonesia ( | |
Impact | Main source of income for most farmers | (1=agriculture, other=non-agriculture) | Central Statistics Agency of Indonesia ( |
Existence of village flagship or main products | (1=yes, 0=no) | Central Statistics Agency of Indonesia ( |
Table 2
Variables used for the local sustainability index (LSI) and village sustainability index (VSI) analysis."
Variable | Reference | |
---|---|---|
Social aspect | Percentage of people enrolled in formal education per 1000 persons (%) | Pravitasari et al. ( |
Percentage of people enrolled innon-formal education per 1000 persons (%) | ||
Average distance from village office to education institutions (km) | ||
Average distance from village office to health facilities (km) | ||
Total number of health facilities | ||
Percentage of people suffering from malnutrition in 2019 (%) | ||
Percentage of people suffering from diseases in 2019 (%) | ||
Percentage of worship placesper 1000 persons (%) | ||
Economic aspect | Percentage of households using electricity from state-owned electricity companies (%) | Pravitasari et al. ( |
Percentage of households living in slums (%) | ||
Number of base stations or cell towers | ||
Number of communication service operators | ||
Number of small industries per 1000 persons | ||
Number of cooperatives and banks per 1000 persons | ||
Number of markets and minimarkets per 1000 persons | ||
Distance from village office to sub-district general office (km) | ||
Distance from village office to bank (km) | ||
Distance from village office to market or minimarket (km) | ||
Travel time from village office to sub-district office (min) | ||
Environmental aspect | Number of landslide events in a year | Pravitasari et al. ( |
Number of flood events in a year | ||
Number of flash flood events in a year | ||
Number of earthquake events in a year | ||
Number of tornado events in a year | ||
Number of forest fire events in a year | ||
Number of drought events in a year |
Table 3
Logical matrix of the village agriculture index (VAI) and the level of agricultural sustainability (LoAS)."
LoAS | |||||||
---|---|---|---|---|---|---|---|
Extremely low values (EL) | Low values (L) | Medium values (M) | High values (H) | Extremely high values (EH) | |||
VAI | High values (H) | H-EL (LoAS 1) | H-L (LoAS 2) | H-M (LoAS 3) | H-H (LoAS 4) | H-EH (LoAS 5) | |
Medium values (M) | M-EL (LoAS 1) | M-L (LoAS 2) | M-M (LoAS 3) | M-H (LoAS 4) | M-EH (LoAS 5) | ||
Low values (L) | L-EL (LoAS 1) | L-L (LoAS 2) | L-M (LoAS 3) | L-H (LoAS 4) | L-EH (LoAS 5) |
Table 4
Detail description about the LoAS classification."
LoAS classification | Percentage of agricultural land per village (%) | Description |
---|---|---|
LoAS 1 | 0.0 | The village area is not planned for agriculture. |
LoAS 2 | 0.1-33.0 | A total of 0.1%-33.0% of the village area is planned for agriculture. |
LoAS 3 | 33.1-66.0 | A total of 33.1%-66.0% of the village area is planned for agriculture. |
LoAS 4 | 66.1-90.0 | A total of 66.1%-90.0% of the village area is planned for agriculture. |
LoAS 5 | 90.1-100.0 | A total of 90.1%-100.0% of the village area is planned for agriculture. |
Table 5
Results of factor analysis (FA) in social aspect."
Variable in social aspect | Factor 1 | Factor 2 | Factor 3 |
---|---|---|---|
Percentage of people enrolled in formal education per 1000 persons | 0.680552 | 0.072883 | -0.162538 |
Percentage of people enrolled in non-formal education per 1000 persons | 0.858004 | -0.079487 | 0.094542 |
Average distance from village office to education institutions | -0.513241 | 0.015427 | -0.594235 |
Average distance from village office to health facilities | 0.032650 | -0.006847 | -0.899240 |
Total number of health facilities | 0.840806 | -0.049193 | 0.167169 |
Percentage of people suffering from malnutrition in 2019 | -0.046853 | 0.866815 | -0.076713 |
Percentage of people suffering from diseases in 2019 | -0.005478 | 0.870675 | 0.071666 |
Percentage of worship places per 1000 persons | 0.759355 | -0.045506 | 0.165533 |
Explained variance | 2.749604 | 1.525849 | 1.263472 |
Proportion of the total variance (%) | 36.598130 | 18.862420 | 13.776020 |
Eigenvalue | 2.927850 | 1.508994 | 1.102081 |
Cumulative eigenvalue | 2.927850 | 4.436844 | 5.538925 |
Table 6
Results of FA in economic aspect."
Variable in economic aspect | Factor 1 | Factor 2 | Factor 3 | Factor 4 |
---|---|---|---|---|
Percentage of households using electricity from state-owned electricity companies | -0.019676 | 0.305219 | 0.671250 | 0.150373 |
Percentage of households living in slums | 0.007955 | 0.256210 | -0.711264 | 0.165064 |
Number of base stations or cell towers | 0.174015 | 0.840142 | 0.012593 | 0.028943 |
Number of communication service operators | 0.031884 | 0.840611 | 0.001222 | -0.077582 |
Number of small industries per 1000 persons | -0.735944 | 0.073430 | 0.163860 | 0.086633 |
Number of cooperatives and banks per 1000 persons | -0.563205 | -0.272259 | 0.011838 | 0.049155 |
Number of markets and minimarkets per 1000 persons | -0.039952 | 0.009062 | 0.014369 | -0.899607 |
Distance from village office to sub-district general office | -0.630550 | -0.027113 | 0.055335 | -0.158234 |
Distance from village office to bank | -0.636926 | 0.110621 | 0.023625 | -0.547824 |
Distance from village office to market or minimarket | 0.634535 | 0.143364 | 0.233843 | 0.052561 |
Travel time from village office to sub-district office | 0.514456 | 0.360418 | 0.069472 | 0.269525 |
Explained variance | 2.362724 | 1.814294 | 1.046958 | 1.276485 |
Proportion of total variance (%) | 25.776050 | 14.738600 | 9.471530 | 9.108930 |
Eigenvalue | 2.835365 | 1.621246 | 1.041868 | 1.001982 |
Cumulative eigenvalue | 2.835365 | 4.456611 | 5.498480 | 6.500461 |
Table 7
Results of FA in environmental aspect."
Variable in environmental aspect | Factor 1 | Factor 2 | Factor 3 | Factor 4 |
---|---|---|---|---|
Number of landslide events in a year | -0.008142 | 0.183871 | 0.052128 | -0.595832 |
Number of flood events in a year | -0.013001 | -0.621632 | -0.505851 | 0.032332 |
Number of flash flood events in a year | 0.900029 | 0.070082 | -0.006595 | -0.000664 |
Number of earthquake events in a year | 0.894302 | -0.105647 | 0.013713 | 0.004931 |
Number of tornado events in a year | 0.038056 | -0.849075 | 0.171770 | 0.024040 |
Number of forest fire events in a year | -0.005985 | 0.167926 | 0.047389 | 0.806269 |
Number of drought events in a year | -0.001139 | 0.079983 | -0.907898 | 0.004733 |
Explained variance | 1.611550 | 1.191833 | 1.114862 | 1.006755 |
Proportion of total variance (%) | 23.136910 | 18.126730 | 14.728280 | 14.365230 |
Eigenvalue | 1.619584 | 1.268871 | 1.030980 | 1.005566 |
Cumulative eigenvalue | 1.619584 | 2.888455 | 3.919435 | 4.925001 |
Fig. 6.
Spatial distribution of the combination of the VAI and VSI as well as the detailed combination of the VSI in social aspect, economical aspect, and environmental aspect in different sub-districts of Karawang. In the legend of the combination of the VAI and VSI (combination of the VSI in social aspect, economical aspect, and environmental aspect), the first and second letters outside parentheses represent the VAI and VSI, respectively; the first, second, and third letters in parentheses represent the VAI in social aspect, economical aspect, and environmental aspect, respectively."
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