Assessing Education from Space: Using Satellite Earth Observation to Quantify Overcrowding in Primary Schools in Rural Areas of Nigeria
Abstract
:1. Introduction
2. Materials and Methods
2.1. Study Area
- North Central—Kogi, Benue, Kwara, Nasarawa;
- North Eastern—Bauchi, Taraba, Gombe;
- North Western—Sokoto, Kaduna, Zamfira;
- South—Edo, Delta, Cross River;
- South Eastern—Enugu, Abia, Anambra;
- South Western—Ondo, Oyo, Osun.
2.2. Data Sources
2.3. Analysis
2.4. Evaluating the Teaching Area
2.4.1. Google Earth Schools’ Measurements
2.4.2. Validation and Uncertainty Analysis
2.5. Calculating Corrected Teaching Area Per Pupil
2.5.1. Model Development
2.5.2. Estimation of the Uncertainty of the Google Earth Measurements of the Buildings
2.5.3. Uncertainty Analysis for Teaching Area per Pupil
2.6. Summary Statistics
2.6.1. Corrected Teaching Area Per Pupil
2.6.2. Statistical Analysis using Socio-Economic Indicators
- Null Hypothesis (H0): all five groups means are the same
- Alternative hypothesis (Ha): at least one mean is different
3. Results
3.1. Values and Associated Uncertainties for Each School
3.2. Basic Summary Statistics
3.3. Teaching Area/Pupil in Relation to Socio-Economic Indicators
3.3.1. Literacy and Numeracy Rates
3.3.2. Poverty Indices
4. Discussion
5. Conclusions
- Overcrowded classrooms with less than 1.2 m2/pupil in rural primary schools in Nigeria were readily identified using satellite EO tools in combination with available school enrolment data.
- Results show that 84.4% (±0.2%) of schools measured are overcrowded and these are reflected in the education attainment (using literacy and numeracy rates) and poverty levels. The use of satellite images offers cost and time-efficient data to support improvements to education in Nigeria and elsewhere, particularly for those schools with one floor, and a simple measurement model and Monte Carlo Analysis can provide uncertainty to those satellite estimations that can be used to assess the fitness-for-purpose of the satellite data.
- Assessing pupil density using satellite EO can provide important information to help progress towards the UN SDGs for quality education and lifelong learning (SDG 4), equal access to opportunities (SDG 10), and reduce poverty (SDG 1). In wider terms, this study has also highlighted how EO-derived information can offer effective and complementary support for sustainable development, including for indicators that are more closely aligned with social dimensions.
Supplementary Materials
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Acknowledgments
Conflicts of Interest
References
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State | Percentage of Children Ages 5–16 Able to Read | Percentage of Children Ages 5–16 Who are Numerate |
---|---|---|
Bauchi | 8 | 18 |
Benue | 33 | 59 |
Edo | 76 | 79 |
Kaduna | 46 | 62 |
Kogi | 52 | 71 |
Kwara | 53 | 61 |
Nasarawa | 29 | 57 |
Ondo | 78 | 92 |
Oyo | 68 | 84 |
Sokoto | 9 | 14 |
Enugu | 51 | 81 |
Delta | 65 | 81 |
Osun | 83 | 92 |
Gombe | 32 | 35 |
Zamfara | 21 | 24 |
Taraba | 21 | 41 |
Cross River | 54 | 76 |
Anambra | 84 | 69 |
Abia | 83 | 92 |
Index | Description | Data Source |
---|---|---|
Poverty headcount ratio at US $3.20 (2011 PPP) (% of population, 2013) | Data are based on primary household surveys obtained from Nigeria statistical agencies and the World Bank. The indicator is calculating the percentage of the population living on less than US $3.20 a day in 2011 international purchasing power parity (PPPs). A detailed description of this poverty indicator is presented by Ferreira et al. [42]. | [43] |
Consumption Poverty Headcount (2013) | Data on consumption are collected by the General Household Survey which asks the households about broad categories of consumed items of food, health care, schools. The indicator is obtained by aggregating information on food consumption and non-food consumption. | [44,45] |
MPI Headcount (2013) | MPI uses 10 indicators to measure poverty in three dimensions: education, health and living standard in which the intensity of poverty denotes the proportion of weighted indicators in which they are deprived. A person who is deprived in 90% of the weighted indicators has a greater intensity of deprivation than someone deprived in 40% of the weighted indicators. The proportion of the population that is multidimensionally poor is the incidence of poverty or MPI headcount ratio. This index was calculated using 2013 data from Demographic Health Surveys. The consumption poverty and MPI headcount indicators are both largely used to measure poverty, but the data are collected under two different surveys and methods, thus the poor according to the MPI does not always correspond to the poor measured according to consumption poverty. | |
Relative poverty (2010) | Relative poverty measurement is defined by the living standards of the majority and separates the poor from the non-poor. The threshold at which relative poverty is defined varies from one country to another, thus households with expenditure in Nigeria greater than two-thirds of the total household per capita expenditure are considered non-poor whereas those below it is poor. | [46] |
State | Poverty Headcount Ratio Based on a Poverty Line of US $3.20 (2011 PPP) (% of Population, 2013) (Values 0 = Poorest and 1 = Non-Poor) | Consumption Poverty Headcount (% of Total Population) | MPI Headcount (% of Total Population) | Relative Poverty (% of Total Population) |
---|---|---|---|---|
Abia | 0.65 | 17.8 | 8.8 | 63.4 |
Anambra | 0.72 | 16 | 5 | 68 |
Bauchi | 0.96 | 46.9 | 58.3 | 83.7 |
Benue | 0.87 | 44 | 28 | 74.1 |
Cross River | 0.71 | 51 | 14.6 | 59.7 |
Delta | 0.65 | 13.6 | 10.7 | 70.1 |
Edo | 0.73 | 17.4 | 8 | 72.5 |
Enugu | 0.76 | 45.8 | 12.3 | 72.1 |
Gombe | 0.93 | 29.2 | 47.1 | 79.8 |
Kaduna | 0.85 | 41 | 31.1 | 73 |
Kogi | 0.84 | 22.4 | 11.3 | 73.5 |
Kwara | 0.87 | 34.4 | 9.9 | 74.3 |
Nassarawa | 0.93 | 33.6 | 25.1 | 71.7 |
Ondo | 0.74 | 15.6 | 12.7 | 57 |
Osun | 0.61 | 21.4 | 4.3 | 47.5 |
Oyo | 0.71 | 34.3 | 15.5 | 60.7 |
Sokoto | 0.96 | 25.9 | 54.8 | 86.4 |
Taraba | 0.84 | 51.8 | 44.8 | 76.3 |
Zamfara | 0.90 | 49.2 | 60.5 | 80.2 |
Equations (1) and (2) term | Probability Distribution the Monte Carlo Error Is Drawn From | Where This Came From |
---|---|---|
, number of pupils | 0 | It is assumed that the number of pupils is known from enrolment statistics without uncertainty. |
Set of for this school: lengths and widths of the external buildings measured in Google Earth | A Gaussian (normal) distribution centred on the original measurement, with a standard deviation of 0.5 m. Note each length and width has a different random error drawn from this distribution. | The analysis is described in Section 2.5.2 and Figure 5a,b. Statistically determined. |
No uncertainty is associated with the step points (6.5 m and 10 m). Veranda width is described by a Gaussian (normal) distribution centred on the calculated width (2 m or 1.6 m), with a standard deviation of 0.3 m. | The on situ data showed this variety in the veranda widths (see Section 2.5.1). | |
, the proportion of the buildings taken up by offices (for a school big enough) is 15% | Office proportion has taken as a uniform distribution from to . That is each school that is big enough for an office is assigned an office proportion randomly from this interval with an equally likely probability of any value in this interval | The authors do not have any strong justification for this range and have made a “best guess” based on the UBEC report [6] requirement of 15% area for a school, and allowing for a “reasonable” range of values around this. |
, Boolean criterion to decide whether or not to subtract office space. | No uncertainty is assumed. | Arguably, other criteria could be used to decide whether or not to select office space, but this was not analysed in the Monte Carlo simulation. |
Form of equation. | No uncertainty is assumed. | Arguably, the form of Equation (1) could be different–for example, the office area could be removed before subtracting a veranda. But for this analysis, alternative forms were not considered. |
Youth Literacy (%) | Group 1 0–25% | Group 2 26–50% | Group 3 51–64% | Group 4 65–80% | Group 5 81–100% |
---|---|---|---|---|---|
Studied States | Bauchi | Benue | Kogi | Edo | Abia |
Taraba | Nasarawa | Kwara | Delta | Anambra | |
Sokoto | Gombe | Cross River | Ondo | Osun | |
Zamfara | Kaduna | Enugu | Oyo |
Youth Numeracy (%) | Group 1 0–25% | Group 2 26–60% | Group 3 61–75% | Group 4 76–81% | Group 5 82–100% |
---|---|---|---|---|---|
Studied States | Sokoto | Gombe | Kwara | Cross River | Oyo |
Bauchi | Taraba | Kaduna | Edo | Ondo | |
Zamfara | Nasarawa | Anambra | Enugu | Osun | |
Benue | Kogi | Delta | Abia |
Statistics | Value | Standard Uncertainty Associatedwith this Value |
---|---|---|
Number of schools measured | 1900 | |
Total of buildings measured | 4490 | |
Mean teaching area per pupil | 0.782 m2 | 0.002 m2 |
Median teaching area per pupil | 0.601 m2 | 0.004 m2 |
Proportion of schools overcrowded | 81.4% | 0.2% |
Literacy Groups (as per Table 5) | Numeracy Groups (as per Table 6) | |||||||||
---|---|---|---|---|---|---|---|---|---|---|
1 | 2 | 3 | 4 | 5 | 1 | 2 | 3 | 4 | 5 | |
Statistics | 0–25% | 26–50% | 51–64% | 65–80% | 81–100% | 0–25% | 26–60% | 61–75% | 76–81% | 82–100% |
Sample size (N) | 398 | 400 | 391 | 406 | 302 | 298 | 400 | 391 | 400 | 408 |
Mean (area/pupil) | 0.43 | 0.50 | 0.86 | 1.04 | 1.14 | 0.43 | 0.51 | 0.65 | 1.11 | 1.11 |
Standard Error (SE) | 0.01 | 0.01 | 0.03 | 0.03 | 0.04 | 0.02 | 0.02 | 0.03 | 0.03 | 0.04 |
Standard Deviation (SD) | 0.28 | 0.37 | 0.65 | 0.64 | 0.75 | 0.28 | 0.36 | 0.53 | 0.69 | 0.72 |
Welch’s F Ratio = 144.10 (p < 0.0001) df = 4879.14 | Welch’s F Ratio = 139.86 (p < 0.0001) df = 4936.59 |
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Andries, A.; Morse, S.; Murphy, R.J.; Lynch, J.; Woolliams, E.R. Assessing Education from Space: Using Satellite Earth Observation to Quantify Overcrowding in Primary Schools in Rural Areas of Nigeria. Sustainability 2022, 14, 1408. https://doi.org/10.3390/su14031408
Andries A, Morse S, Murphy RJ, Lynch J, Woolliams ER. Assessing Education from Space: Using Satellite Earth Observation to Quantify Overcrowding in Primary Schools in Rural Areas of Nigeria. Sustainability. 2022; 14(3):1408. https://doi.org/10.3390/su14031408
Chicago/Turabian StyleAndries, Ana, Stephen Morse, Richard J. Murphy, Jim Lynch, and Emma R. Woolliams. 2022. "Assessing Education from Space: Using Satellite Earth Observation to Quantify Overcrowding in Primary Schools in Rural Areas of Nigeria" Sustainability 14, no. 3: 1408. https://doi.org/10.3390/su14031408
APA StyleAndries, A., Morse, S., Murphy, R. J., Lynch, J., & Woolliams, E. R. (2022). Assessing Education from Space: Using Satellite Earth Observation to Quantify Overcrowding in Primary Schools in Rural Areas of Nigeria. Sustainability, 14(3), 1408. https://doi.org/10.3390/su14031408