2.1. RES Simulation Methodology
Only the power sector is modelled, heat and mobility sectors are neglected. To assess the possibilities for flexible power generation from bioenergy, the power sector needs to be modelled as a first step. Since it is aimed for 100% RES in the power sector of rural counties, relevant generation capacities include wind, PV and biomass power. In rural contexts, hydroelectric power has been neglected as these power plants usually are connected to the transmission grid due to high rated power and therefore only play a minor role in decentralized power systems [
5].
The time series for all three RES as well as the load profiles are calculated individually for the county. The methodology presented in the following is applied to the in 2.2 identified clusters of municipal counties in Germany. This way, a holistic analysis of Germany can be conducted with efficient datasets. The time series are calculated for 2018. It is to be noted, though, that this only influences the wind and PV power tie series. Load profiles and bioenergy feed-in are independent from yearly fluctuations. All variables included in the analysis are listed in
Table 1 with the respective mode of determination.
The load profile is approximated based on standard load profiles (SLP) provided by the Federal Association of Energy and Water Economics in Germany [
14]. SLP are categorized in different detail levels and for the following approach the division in households, industry and agriculture is applied. For scaling of the SLP to the according county, the annual power consumption for each sector is needed.
Household power demand is calculated according to Equation (1):
With
ADP being the annual power demand,
ps being population size of the county,
hs being average household size of 3.1 and
adh being the average demand of a 3-person-household of 4.9 MWh/a [
9,
16].
Industry power demand can be calculated either based on area size or inhabitants. As both values vary significantly, the average is chosen, according to Equation (2):
with
as being area size and
adi being average annual industry power demand per km
2 or person amounting to 666.67 MWh/km
2 and 6.34 MWh/person, respectively [
9].
Agriculture power demand depends on the share of agricultural area in the county, according to Equation (3):
aa being agricultural area,
ab being the average are per agricultural businesses per km
2 (0.27 km
2 [
16]) and
ada being the average annual power demand per agricultural business of 13.98 MWh/a [
17].
Exemplary validation of this method for a county closely linked to the research project within which this study is placed is shown in
Table 2.
The results are satisfying for households and agriculture. However, industry is heavily overestimated and will need further sophistication in future studies.
Considering the local demand load profile in a 15-min time resolution, the power feed-in is modelled. Wind and solar power are dependent on the resource availability and not capped in any regard. Both wind and solar power time series are approximated based on Fraunhofer Energy Charts in 2018 [
15]. Based on the national installed capacity—52,328 MW onshore wind and 45,158 MW PV power [
19]—the time series is scaled down from the national time series of Fraunhofer Energy Charts according to the local installed capacity respectively [
20].
Power feed-in from biomass is simulated in BioPot considering the local need at each 15-min slot under consideration of the load profile and the current feed- in from solar and wind power. With the naturally fluctuating feed-in of wind and solar power, biomass remains an important source of adjustable and renewable feed-in to balance off-sets in power demand and supply. Based on individual characteristics of a county the potential for power generation from both energy crops and biogenic waste products is assessed. Waste products are included in the analysis, because an energetic utilization of regularly accumulating matter can enhance the system efficiency.
Figure 1 visualizes the methodology.
Obligatory input parameters include area size and population as well as existing biopower plants. If available, an individual load profile, agricultural land use shares and the local livestock can be inserted. If not available, these variables are statistically calculated based on standard allocation factors.
In a first model step, the biomass allocation is calculated. The available biomass is divided into wooden biomass and biomass for gasification. Relevant waste products from animal farming include liquid and solid manure from cattle, pigs and poultry. Other animal groups can be neglected as they represent less than 5% of the total livestock in Germany [
21].
Relevant agricultural waste products in Germany include leaves from sugar beet, wooden biomass and green waste from forest or grounds maintenance, organic waste and private sector as well as municipal waste products (domestic, bulky and garden waste) [
22]. Relevant energy crops include silage maize, sugar beet, oatlage, grain kernel, cup plant and grassland [
23].
Energy crops are determined based on the available agricultural area. It is assumed that 14% of the agricultural area is used for energy crops, 62% of which are produced for biogas [
23]. The biomass yield per crop is calculated based on standard allocation factors, listed in
Table 3 [
24].
Waste products from animal farming are calculated under consideration of standard allocation factors [
25,
26,
27,
28]. Wooden biomass and green waste from forest or grounds maintenance are approximated based on common land use shares in Germany [
29]. For organic waste from industry and private sector as well as municipal waste products mean factors for distribution based on population and area size respectively are used [
22]. The collected biomass is then combusted for power generation, either after transformation into biogas or as solid fuel.
In a second step, the energy yield of the available biomass mass flow is calculated under consideration of preparation & storage. For wooden biomass, this includes a drying process. For biomass for gas, the gasification process in included. If the available biomass exceeds the capacities of existing bioenergy plants, new plants are dimensioned. Depending on the kind of excess biomass (wooden biomass or biogas), CHP (combined heat and power plant) with either gas or steam turbine are chosen. Finally, the biopower feed-in depending on the local demand under consideration of available wind and solar power is calculated. Adding to the power output, the heat output is calculated, but neglected in this study.
The efficiency of the power plants depends on type and size as well as full load hours. In correlation with the current funding scheme in Germany, the economically most valuable variations are determined. For further details on the economic analysis at the example of an use case see [
30].
To assess the degree of self-sufficiency, meaning the coverage share of local power demand with local supply, the feed-in and demand time series are compared. It is evaluated in how many time steps, the local feed-in covers or exceeds the local demand load (compare
Section 3). It is to be emphasized, that in this study only timesteps with full coverage count as self-sufficient. This approach is chosen, because only with full coverage relying on the transmission grid becomes obsolete and economic advantageous can be gained through municipal energy supply. While when looking at annual net balances with disregard to time-series analysis, the dependence of the municipal grid on the overarching grid infrastructure is increasing instead of relieving the transmission grid [
31]. Consequently, the potential of biomass is determined in a flexible control manner: bioenergy is only fed-in at times when wind and solar power cannot fully cover the local demand. To visualize this connection, see
Figure 2. Biomass power is only provided at times when solar and wind power cannot fully cover the local demand. This way, storable biomass is on hold until needed to balance off-sets in power demand and supply. In this example, a further expansion of wind and solar power is definitely needed.
To ensure a certain reliability, validation of the model is provided by exemplary comparison of the results with the established potential model by [
21]. The comparison for ten municipalities in both rural and urban Germany is shown in detail in
Table 4.
In general, the validation results are satisfying, the deviation ranging between 30% over- and 19% underestimation. As the comparative study identifies different, strongly varying scenarios, the deviation to the BioPot results is considered acceptable.
2.2. Cluster Analysis
In the following, the data collection as well as the cluster analysis are described. The previously introduced methodology is then applied to the identified clusters to analyse the potential for self-sufficient energy systems. The cluster analysis provides a suitable tool to find patterns and correlations in large groups of data without time-intensive individual analyses. Hierarchically agglomerative cluster analysis with the Ward algorithm is chosen because it’s considered the best suited method for municipal cluster analyses [
13,
20]. The cluster analysis is conducted in RStudio.
Counties in rural Germany are clustered including 18 indicators consisting of publicly available data. Following an official definition, rural is characterised as counties with 845 or less inhabitants per square kilometre [
32]. This includes 46.9 million people and 90% of the total area in Germany [
33]. The county level is chosen as trade-off between to data availability and area size. In total, 319 rural counties are clustered.
In hierarchically agglomerative cluster analyses the number of clusters is not known in advance. In this study, the number of ten clusters was determined without thorough analysis rather than educated guessing. This approach needs sophistication in further research.
Table 5 shows the most important cluster criteria.
18 indicators are claimed relevant in the context of municipal energy supply systems roughly divided into “Demand Load & liquidity” and “Potential & Acceptance”. The data is collected from different, publicly available sources and standardised according to [
13]. All indicators are listed in
Table 6. The reference years vary depending on data availability (see sources in
Table 6).
“Demand Load & liquidity” includes data regarding the demand side of the energy system. Number of inhabitants as well as motor vehicles are influencing the demand load and demand load development, considering a growing electric vehicle branch. Unemployment rate and debt influence the potential liquidity of a county to implement further RES projects.
“Potential & Acceptance” on the other hand influences the techno-economical potential with regard to social interests. The area as well as the shares of certain land use types as settlement, traffic, agriculture and areas free of vegetation (waste land) leads to insights on available sights for new RES projects. Furthermore, the potential in biofuels, both waste products and energy crops, can be depicted. The already installed capacities of different energy sources, both renewables and fossil fuels, lead to the feed-in structure and the age group can give information on the potential acceptance of new RES projects [
34,
35,
36].
Not all indicators are relevant in the context of this specific study. However, regarding a broader applicability of the method, the consideration of further indicators is reasonable.
Table 6.
Indicators for cluster analysis.
Table 6.
Indicators for cluster analysis.
Demand Load & Liquidity | Potential & Acceptance |
---|
Indicator | Unit | Source | Indicator | Unit | Source |
---|
Inhabitants | - | [37] | Area | km2 | [38] |
Unemployment | % | [39] | Settlement | % | [40] |
Debt | €/person | [41] | Traffic | % | [40] |
Motor vehicles | -/person | [42] | Agriculture | % | [40] |
| Free of vegetation | % | [40] |
Bioenergy | kW/km2 | [20] |
Geothermal | kW/km2 | [20] |
Solar power | kW/km2 | [20] |
Nuclear power | kW/km2 | [20] |
Storage | kW/km2 | [20] |
Fossil energy | kW/km2 | [20] |
Hydroelectric Power | kW/km2 | [20] |
Wind power | kW/km2 | [20] |
Age Group 16–66 yrs | % | [43] |