1. Introduction
In 2015, the 2030 Agenda for Sustainable Development was launched. The agenda outlines a plan of action for people, planet, and prosperity and encompasses 17 Sustainable Development Goals (SDGs). Of these goals, SDG7 aims to ensure access to affordable, reliable, sustainable and modern energy for all by 2030 [
1]. As shown by Fuso Nerini et al., SDG7 is heavily interlinked with the other goals, displaying synergies or trade-offs with 85% of the targets of the SDGs [
2]. Electricity plays an important role in the achievement of SDG7, with SDG indicator 7.1.1 focusing on achieving universal access to electricity [
1]. Electricity can be used to power appliances in health facilities [
3], enable the use of computers in school [
2], reduce the time spent on collecting traditional biomass for cooking, improve health through a reduction of indoor air pollution stemming from the burning of biomass for cooking [
4], provide better lighting, and enable productive uses in households, etc. The importance of electricity access for development is also reflected in regional and national strategies. The African Union includes electricity access as one of its Agenda 2063 targets [
5] and recognizes that modern energy access is a prerequisite for key priorities such as industrialization, agricultural development, poverty alleviation, and job creation [
6]. As of 2021, 675 million people worldwide were lacking access to electricity, the majority of which were in sub-Saharan Africa (SSA). However, progress towards achieving universal access to electricity has been made in recent years, as in 2010, this number stood at 1.2 billion. Still, a significant ramp-up is required in many countries in order to achieve SDG7; at the current rate of progress, it has been projected that an estimated 660 million people are to remain without access to electricity by 2030 [
7].
Increased access to electricity can be achieved at the lowest cost through a combination of on- and off-grid energy supply technologies. To identify
which of these technologies to use and
where geospatial electrification models can be used. These models combine geospatial data on demand, energy resources, infrastructure, etc., with techno-economic information on the potential electricity supply technologies to identify the least-cost technology in each location [
8]. In the scientific literature, such studies have been conducted both on a regional level for all of SSA (see [
9,
10,
11]), as well as in more tailored analysis for individual countries, including Burkina Faso [
12,
13], Ghana [
14], Ethiopia [
15,
16], Nigeria [
17], Uganda [
18], Kenya [
19,
20], and others.
One of the countries for which a country-specific geospatial electrification analysis has not yet been studied in the scientific literature is Somalia. As of 2018, the World Bank estimated that only 35% of the Somali population had access to electricity. A few challenges hamper electricity access increase in the country. First of all, there is no national power network in the country. This is a unique situation amongst non-island countries today. Those who have access to electricity in the country are supplied either by mini-grids or by stand-alone technologies [
21]. These mini-grids are mostly diesel-powered, but some solar- and wind-power generation exists as well. Secondly, the sector has been suffering from the conflict in the country. Before the civil war, the Somali National Electric Corporation (Ente Nationale Energia Elettrica—ENEE) was the public utility, operating local networks in the larger cities in the country with a total generation capacity of 70 MW. However, much of the infrastructure was destroyed during the civil war that started at the end of the 20th century [
22]. Today, mini-grids are operated by a multitude of private entities and Non-Governmental Organizations (NGOs) in many cities in the country. These mini-grids are operated in isolation, even in cases where there are multiple mini-grids in the same city [
21]. This can lead to sub-optimal solutions, such as the duplication of distribution networks. Thirdly, electricity prices per kWh are among the highest in the world. The World Bank’s flagship report on Regulatory Indicators for Sustainable Energy found that Somalia has among the highest power costs in the world, both in absolute numbers and as a share of household income [
23]. Finally, the existing mini-grid systems face high technical and commercial losses, as well as dependency on imported petroleum products for electricity generation [
21].
Efforts are being undertaken to improve the power sector in Somalia. Increased access to electricity is recognized as a key development facilitator in the 9th Somalia National Development Plan (SNDP-9) from 2020 to 2024, as this has been linked to GDP growth and poverty reduction in the country [
24]. A Power Master Plan (PMP) was produced in 2018 to produce power master plans for authorities and the sector that will guide the introduction and establishment of modern cost-effective reliable electricity supply systems over the next 20 years. This PMP outlined, among other things, the development of a High-Voltage (HV) transmission backbone [
25]. The authors of this paper supported the government in developing a geospatial least-cost electrification analysis in 2021 to examine pathways towards universal access to electricity in the country by 2030. It found that a Business-As-Usual scenario, using only mini-grids and stand-alone systems, led to lower investments than a scenario that included the development of a transmission backbone [
26]. The Ministry of Energy and Water Resources, in collaboration with the private sector and the public sector stakeholders, is to develop investment plans for the sector with the aim of developing adequate energy infrastructure based on the data developed under the least-cost geospatial electrification plan. Accomplishment of this plan is key for promoting and facilitating investments into the sector. Finally, the Somali Electricity Sector Recovery Project (SESRP), which was initiated in 2021, and the Objective is to increase access, lower the cost and cleaner electricity supply in the sector and to reestablish the electricity supply industry of the country.. In the first phase, the SESRP aims to improve existing mini-grids and increase renewable generation capacity in the sector, as well as to enhance and add more renewable energy generations to the sector. In the following phases, the SESRP considers laying the foundation for the establishment of a national grid, considering an HV backbone in line with the PMP. This includes potential interconnections for electricity imports from neighboring countries in the Horn of Africa [
22].
Previous geospatial electrification studies have shown that there is a strong correlation between electricity demand and the choice of electrification technology. At lower demand levels, stand-alone technologies are often the least-cost option for providing access in currently unelectrified settlements, whereas mini-grids and extensions of the centralized grid become more favorable at higher demands [
8,
9]. Dalla Longa et al. [
27] and Pappis et al. [
16] also showed the importance of time in the choice of least-cost electrification technology. Drawing on geospatial data to study electrification options in Ethiopia until 2050 and 2070, respectively, they identified an increasing shift towards mini-grids and grid extension over time. This shift was largely driven by increasing electricity demands throughout the years.
Traditionally, most geospatial electrification models have considered a simple time aspect to electrification, providing only a single snapshot solution. That is, they identify the least-cost electrification technology mix either for the current population and demand or for a single future year (e.g., 2030, in line with SDG7) [
28,
29]. In 2019, Korkovelos et al. [
30] improved the time representation in a geospatial electrification tool, the Open Source Spatial Electrification Tool (OnSSET), by developing a myopic modeling approach to analyze pathways towards universal access to electricity in Malawi. In their model, the least-cost electrification technology mix to increase the access rate in the country from 11% in 2018 to 50% by 2023 was identified first. The technology deployment identified by 2023 then acted as a starting point for increasing access to 100% by 2030. That is, the model provided two snapshots of least-cost electrification technologies rather than one. The aforementioned long-term electrification study by Pappis et al. [
16] followed this myopic approach for the case of Ethiopia, extending the timeline to provide snapshots for 2025, 2030, 2040, 2050, 2060, and 2070, each building on the previous one.
The traditional geospatial electrification models without the (myopic) time-step function can be considered to operate similarly to perfect foresight optimization models. In perfect foresight models, all variables are known to the model until the end-year of the analysis, and the optimal strategy over the whole timeline is identified. This type of analysis can find the “best” strategy to achieve long-term objectives. However, decision-making is often more short-sighted, focusing on the immediate future or government cycles. Myopic optimization models can more closely reflect this type of behavior, where the model takes decisions for a limited number of years at a time until the end-year of the analysis [
31]. Comparison of results and insights from perfect foresight models and myopic models have been made in several areas. For instance, Fuso Nerini et al. [
32] compared myopic planning and perfect foresight optimization for energy system decarbonization, highlighting how the former leads to overall higher cost and delayed or cancelled strategic investment. Similarly, Heuberger et al. [
33] studied disruptive technologies in decarbonization under perfect foresight and myopic optimization. They highlighted the risk of significantly higher investment under myopic decision-making. Poncelet et al. [
34] also compared perfect foresight and myopic optimization for the power sector in Belgium, finding different power capacity mixes under different modeling approaches.
The objective of this paper is to study the effects of different timelines and levels of myopia on the least-cost technology mix and costs for the achievement of universal access to electricity in Somalia. Doing so, we expand on the literature on geospatial electrification modeling in two ways, namely:
- (a)
developing the first geospatial electrification study in the literature focused on the country of Somalia;
- (b)
examining for the first time how different levels of myopia affect technology choice, costs, and insights in geospatial electrification modeling.
Korkovelos et al. [
30], Pappis et al. [
16], and Sahlberg et al. [
13] all applied a myopic approach to model multiple scenarios using a geospatial electrification model for Malawi, Ethiopia, and Burkina Faso, respectively. However, they kept their end-year and level of myopia (length of time-steps) constant throughout all of their scenarios. In this paper, we run the geospatial electrification model using different end-years and different levels of myopia and compare the results.
2. Methodology
In this paper, the least-cost pathways towards universal access to electricity in Somalia are studied using the OnSSET tool. OnSSET is a geospatial electrification tool that has been used to study least-cost electrification pathways in countries including Ethiopia [
15], Nigeria [
17], Malawi [
30], Afghanistan [
35], Cameroon [
36], and others. The tool is open-source, facilitating replicability and reproducibility (the specific version of the tool used is found in the Data Availability Statement of this paper). OnSSET draws on geospatial data, socio-demographic, and techno-economic inputs to identify the least-cost mix of grid connection, mini-grids, and stand-alone technologies to provide access to electricity in a region. The tool compares the technologies based on the Levelized Cost of Electricity (LCOE) and selects the technology that can provide electricity at the lowest LCOE in each settlement [
9]. The geospatial electrification analysis using the OnSSET tool in this study is outlined in
Figure 1 and described in more detail below.
The model draws on data collected for the Somali Electricity Access Project in 2020–2021. These data were collected from federal and state ministries, as well as Energy Service Providers operating in Somalia. Where no local data could be identified, this was complemented by data from international sources. The geospatial datasets used in the model are described in
Appendix A and the techno-economic parameters in
Appendix B. The model starts in 2020 and runs until 2030 or 2040, depending on the scenario (see
Section 2.5 for more details).
2.1. Creation of Population Cluster Data
In the first step of the analysis, population clusters representing every settlement in the country are created. In this study, we define a settlement as anything from just a few rural households up to entire cities. The underlying 100 m × 100 m raster data were retrieved from WorldPop (
https://apps.worldpop.org/peanutButter/, accessed on 19 November 2020) based on building counts from satellite imagery [
37]. The raster data were aggregated into polygon settlements using the clustering algorithm developed by Khavari et al. [
38]. In the next step, clusters were classified as urban or rural based on population size and density. Finally, the population is projected to the end-year of each time-step. The key demographic parameters used in this step of the analysis for Somalia are presented in
Table 1.
2.2. Extraction of Geospatial Information and Calibration
In the second step of the analysis, geospatial information is extracted for each settlement. This includes information about energy resource availability (solar, wind, and hydro), distance to existing infrastructure, terrain, etc. The existing mini-grid locations in the country were retrieved from the Somalia Electrification Platform (SEP). The SEP is available at
https://somalielectrification.so/gep (accessed on 19 February 2021) and contains data collected during the Somali Electricity Access Project. to identify which settlements were already electrified in 2020. In total, existing mini-grids are operating in 103 locations across the country (
Figure 2). The full list of geospatial datasets used is found in
Appendix A.
2.3. Electricity Demand Analysis
In the third step of the analysis, the electricity demand was estimated for five sectors: health facilities, educational facilities, agricultural irrigation, and residential and commercial uses. The method for each of these sector follows below.
2.3.1. Electricity Demand for Health and Education Facilities
Electricity demand for health and education facilities was estimated based on the location of existing facilities (
Figure 3), as well as the typical appliances used in each sub-category of health and education facilities and their associated electricity demand. If a health or education facility was not located directly within one of the settlement clusters, its demand was allocated to the closest settlement. The health facilities’ locations were retrieved from the Somali Service Availability and Readiness Assessment [
40]. Five different types of health facilities were identified in Somalia, which were split into three categories. Each category has an estimated annual electricity demand, as detailed in
Table 2. In total, 799 health facilities were identified.
The educational facilities are divided into two categories: primary and secondary schools. This dataset was created using data from the Federal Ministry of Education, Culture and Higher Education, the Puntland Ministry of Education website, UNICEF, and the World Bank and includes 2084 primary, 898 secondary schools, and 182 unclassified schools. The electricity demand was assumed to be 730 kWh/year for primary schools and 2810 kWh/year for secondary schools, based on [
42]. For unclassified schools, the average value of primary and secondary facilities was used.
2.3.2. Electricity Demand for Agricultural Irrigation
In this study, electricity demand requirements for agricultural irrigation were estimated using the Agrodem model. Agrodem is a geospatial model that calculates the electricity requirements for groundwater pumping based on a combination of geospatial datasets (e.g., cultivated areas, rainfall, evapotranspiration) and crop-specific data (e.g., crop calendars, crop coefficients) [
43]. Agriculture is a key sector in Somalia. The sector contributes to approximately 75% of the national GDP and is the highest priority for four out of five Federal Member States, according to SNDP-9. However, there are issues of water shortages in the country impacting this sector [
24]. Four crops were included in the model: sorghum, maize, dry beans, and sesame. Combined, these make up 90% of the cultivated area in Somalia [
44,
45]. In total, the annual electricity requirements for irrigation of all cultivated areas in Somalia are estimated to be 47.3 GWh based on the Agrodem model.
2.3.3. Electricity Demand for Residential and Commercial Sectors
In a review of the existing mini-grids in Somalia, it was found that the average residential electricity consumption in 2020 was 320 kWh/household/year [
26]. This is in the higher range of Tier 2 of the World Bank’s Multi-Tier Framework for Energy Access (
Table 3) [
46]. In the PMP, the projected annual electricity consumption by 2030 was 1740 kWh/household/year in urban areas (Tier 4) and 430 kWh/household/year in rural areas (Tier 3). In this paper, three demand pathways have been developed. In the high-demand pathway, it is assumed that the projections of the PMP are met, whereas in the medium- and low-demand pathways, lower consumption is seen. These demand pathways are outlined in
Table 4. Demand for commercial activities was assumed to be 25% of the residential demand, assuming the same ratio between commercial and residential demand, as was found in the review of the existing mini-grids.
2.4. Electricity Supply Options
In the fourth step of the analysis, the various electricity supply options are compared. The electricity supply option that can meet the demand at the lowest LCOE is selected as the least-cost option in each settlement. The LCOE takes into account investment, operation, maintenance and fuel costs throughout the lifetime of the system and can be used to compare technologies with different cost structures [
8]. In this study, five technologies have been considered:
- (a)
Stand-alone PV systems
- (b)
PV hybrid mini-grids
- (c)
Wind hybrid mini-grids
- (d)
Hydro mini-grids
- (e)
Centralized grid connection.
For stand-alone systems, each customer has their own generation and storage system. The total cost in the settlement is the combined cost of all the individual systems. For mini-grids, there is a central source of generation within the settlement combined with the cost of the distribution network connecting the customers with the generation source. For the centralized grid, the cost for the settlement includes the cost of extending a line to connect the settlement to the HV transmission backbone, the cost of the distribution network within the settlement, and the cost of the electricity generation supplying electricity to the network. First, the LCOE for all off-grid technologies are calculated and compared. The least-cost off-grid technology and corresponding LCOE are identified. Next, it is identified where the centralized grid can be expanded to supply electricity at a lower LCOE compared to the least-cost off-grid technology. Note that this step is iterative, as an extension of the centralized grid may allow for a continued extension to another settlement and so on.
2.5. Scenarios
As mentioned, there is currently no centralized grid network in Somalia. Those that do have access are mainly supplied by mini-grids. However, for the future electrification of the country, two different electricity supply pathways have been considered in this study. The
off-grid-only supply pathway builds on a continuation of the current supply options, where access to electricity can be provided by mini-grid and stand-alone technologies only. The
centralized grid supply pathway considers also the construction of a High-Voltage (HV) network backbone in addition to the off-grid technologies. The layout of this HV backbone is derived from the SEP, seen in
Figure 4. According to the PMP, the cost of constructing this HV backbone is estimated at 1.28 billion USD [
25].
In the first analysis, two different target end-years are considered: 2030 and 2040, respectively. Both are run as a perfect foresight model, providing only a single snapshot solution for achieving universal access to electricity by the end-year. Nine scenarios are considered for each end-year. These nine scenarios are based on the three demand pathways presented in the
Section 3 and variations of the two supply pathways presented in
Section 2.4. For each demand level, three supply scenarios are considered: one with only off-grid supply (mini-grid and stand-alone technologies), one including an HV backbone with a cost of centralized grid electricity generation of 0.05 USD/kWh, and one including an HV transmission backbone with a cost of centralized grid electricity generation of 0.010 USD/kWh. The scenarios are summarized in
Table 5.
In the second step of the analysis, the different modeling methods (level of myopia) are compared. The scenario with medium demand, a national transmission backbone with a cost of centralized grid electricity generation of 0.05 USD/kWh, and a modeling period until 2040 (scenario #17 in
Table 5) is run three times. The first time, the model is run considering perfect foresight; only a single snapshot solution by 2040 is included. The second time, the model is run myopically in 5-year time-steps. The third and final time, the model is run myopically at an annual resolution (1-year time-steps). The mathematical equations in OnSSET are based on annual energy balances, so 1-year time-steps is the highest possible level of myopia using this tool. In all scenarios, it is assumed that the electrification rate will increase linearly towards universal access by 2030.
4. Conclusions
In this paper, we present the first scientific study of electrification in Somalia, and we study for the first time the effects of different end-years and modeling approaches (with regard to myopia) in geospatial electrification modeling. We have identified important links between both the end-year selected and the level of myopia used to the least-cost technology mix as well as overall system costs.
We identify a correlation between longer modeling periods and the higher economic feasibility of a centralized national grid network in Somalia compared to off-grid technologies. We suggest that while many studies focus on the immediate need to provide increased access to electricity within the next few years or by 2030, additional modeling efforts with longer timelines could be undertaken to understand how the system should evolve after that point. This can help put policies and regulations in place to ensure the system can reach the best long-term electricity supply mix as well.
We also note that running the model myopically leads to a sub-optimal electricity supply rollout in the long term compared to running the model with perfect foresight until the end-year of the analysis and that this effect is stronger with higher levels of myopia. However, running the model with time-steps provides important insights into the system dynamics over time. Running the model myopically also gives some insights into the implications of decision-making strategies. Arguably, myopic models are closer to the reality of decision-making, where investments and decisions follow shorter-term election cycles [
32]. Our analysis shows how longer-sighted decision-making would result in lower costs overall and less sunken costs to provide electricity access for all in Somalia. It also shows how the consistent investments in a grid backbone for the country would only be justified with a long-term perspective on Somalia’s population growth and assumptions on consistent growth in energy demand and living standards.
Somalia does provide a unique case on a country scale, given that there is no existing national grid network in the country. Still, the findings in this study may support the electrification planning process in other sub-national regions in SSA to help identify a system that performs well both in the short and long term. Large regions without access to a centralized grid network can be found in, e.g., the Democratic Republic of the Congo, the Central African Republic, and Madagascar.