Transparency in Energy Scenario Studies: Survey of Different
Approaches Combining Scenario Planning, Energy System Analysis,
and Multi-criteria Analysis
Tobias Witt
a
Chair of Production and Logistics, Georg-August-Universität Göttingen,
Platz der Göttinger Sieben 3, 37073 Göttingen, Germany
Keywords: Energy Scenarios, Transparency, External Uncertainty, Scenario Planning, Energy System Analysis,
Multi-criteria Analysis.
Abstract: The transition of today’s energy supply systems to renewable energy technologies requires planning processes
that are usually supported by energy scenario studies. If scenario planning, energy system analysis, and multi-
criteria analysis are combined in the design of such energy scenario studies, two possible method
combinations can be identified in the literature. In this paper, these method combinations are discussed with
regard to transparency and communication of uncertainties, which are basic requirements for energy scenarios.
Finally, a clear specification of the intended purpose and of the method commendation is recommended to
improve transparency in energy scenario studies and avoid over-interpretation by decision makers.
1 INTRODUCTION
The transition of today’s nuclear and fossil-fueled
energy supply systems to renewable energy
technologies poses a major challenge for the 21
st
century. For example, the European Commission
(2018) proposed a strategy to reach an economy with
net-zero GHG emissions until 2050, mainly based on
renewable energy technologies. To investigate how to
achieve the transition to a competitive, sustainable,
and secure energy supply, energy system analysis
helps to support decision-making with quantitative
data (Möst & Fichtner, 2009). The results of such
system analyses are usually published in energy
scenario studies. One key requirement for these
studies is that they are transparent, i.e., that all
necessary information which is needed to
comprehend and potentially replicate the study is
adequately published (Cao et al., 2016).
Given the long-term planning perspective, it is
important to consider uncertainties in planning
processes. Scenario planning has long been used to
support decision making under uncertainty
(Schoemaker, 1995; van der Heijden, 2009). While
not strictly required in (energy) system analysis,
a
https://orcid.org/0000-0002-0111-4216
scenario planning is often combined with system
analysis to support quantitative analyses with
qualitative stories. Usually, these stories are
conveyed more easily than quantitative analyses and
can be used to foster discussions among relevant
decision makers and stakeholders (Alcamo, 2008),
one objective being to support consensus among
stakeholders.
As the objective of energy scenario studies is to
identify suitable, sustainable energy supply systems,
evaluating the suitability of future options is a core
task in energy scenario studies. In quantitative
techno-economic analyses such as energy scenario
studies, sustainability is usually operationalized with
technical, economic, social, and environmental
criteria (Antunes & Henriques, 2016). The
performance of a particular alternative in terms of a
particular criterion is called performance score.
However, given possible alternative system
configurations, their performance scores can be at
least partially conflicting; criteria are usually
measured with incommensurable units; and different
stakeholders may weigh them differently.
Therefore, identifying the best transition pathway
towards a sustainable energy supply is challenging
and calls for integration of a problem structuring
114
Witt, T.
Transparency in Energy Scenario Studies: Survey of Different Approaches Combining Scenario Planning, Energy System Analysis, and Multi-criteria Analysis.
DOI: 10.5220/0009464601140121
In Proceedings of the 9th Inter national Conference on Smart Cities and Green ICT Systems (SMARTGREENS 2020), pages 114-121
ISBN: 978-989-758-418-3
Copyright
c
2020 by SCITEPRESS Science and Technology Publications, Lda. All rights reserved
method (Antunes & Henriques, 2016; Grunwald et
al., 2016). Moreover, as strategic long-term decisions
with immense investments need to be made, decisions
should be well informed and transparent to increase
their acceptance (Dieckhoff et al., 2014). Methods
from multi-criteria analysis can be used to support
decisions given this complex background (Antunes &
Henriques, 2016).
Scenario planning and multi-criteria analysis can
complement energy system analysis in the
development and evaluation of energy scenarios
(Witt et al., 2020). The objective of the method
combination is to improve an energy scenario study’s
transparency regarding the consideration of
uncertainties during scenario construction and
evaluation. However, two possible method
combinations can be identified in the literature. In
particular, they differ in the consideration and
communication of external uncertainties, leading to
different levels of transparency. In this paper, these
approaches are described and discussed regarding
transparency.
The paper is structured as follows: In Section 2,
different interpretations of the term scenario within
the three methods are delineated. In Section 3, the two
approaches for combining the methods are identified,
based on the literature. In Section 4, advantages and
disadvantages of the methods with regard to the
different requirements for energy scenarios are
discussed. Finally, the paper is concluded with a short
summary and outlook.
2 THE MEANING OF
“SCENARIO” IN DIFFERENT
METHODS
In the following, different interpretations of the term
scenario are introduced in the contexts of scenario
planning, energy system analysis, and multi-criteria
analysis. Because these interpretations are intertwined
with the roles of decision makers and external
uncertainties, both are paid special attention to.
2.1 Scenario Planning
In scenario planning, scenarios are consistent
descriptions of future states and/or developments
(Grunwald et al., 2016; van der Heijden, 2009). Those
scenario planning techniques that have been
developed specifically for the application in corporate
planning, e.g., by Gausemeier et al. (1998) or van der
Heijden (2009), additionally include the perspective
of one or more decision makers. (For simplicity, the
singular of the word decision maker is used from now
on.)
In those approaches, both a decision and scenario
field need to be defined. In the decision field, a
decision maker has the authority over necessary
resources so that she or he can decide upon the future
developments, which is why Gausemeier et al. (1998)
call these developments influenceable. For example,
for a decision, which technologies should be used to
provide heat and power in a bioenergy village (Lerche
et al., 2017), the range of available technologies,
including biogas power plants, wind energy plants, or
PV systems, constitutes the decision field. In contrast,
the scenario field consists of all developments that are
investigated in a scenario. The scenario field can
include a decision field, but does necessarily have to.
Usually, non-influenceable developments, so-called
external uncertainties, are also included in scenarios.
Based on the delineation of decision and scenario
fields, three types of scenarios can be identified (see
Figure 1): internal scenario, external scenario, and
system scenario. Gausemeier et al. (1998) note that
system scenarios are “easy to create but different to
deal with”, because they are only influenceable in
parts and alternate between actions and side
conditions. The choice of the type of scenario
depends on the requirements and objectives of the
case-specific problem.
Figure 1: Scenario classification, based on Gausemeier et
al. (1998).
2.2 Energy System Analysis
In energy system analysis, a scenario is represented
by a set of assumptions (Grunwald et al., 2016; Möst
& Fichtner, 2009). “Calculating a scenario” means
that the model calculates results for the endogenous
variables, based on the input of a set of exogenous
Internal scenario System Scenario
No Scenario External Scenario
No
No
Yes
Yes
Is a decision
field included
in the scenario
field?
Are external uncertainties considered in the
scenario field?
Transparency in Energy Scenario Studies: Survey of Different Approaches Combining Scenario Planning, Energy System Analysis, and
Multi-criteria Analysis
115
variables – in other words, based on a scenario. From
a modelling perspective, the perspective of a decision
maker is irrelevant for this calculation, which is
explained in the following.
Endogenous variables are also called “decision
variables” of a model. This means that, e.g., an
optimization model yields values that these variables
need to assume to optimize the solution for a
particular objective function. These variables usually
correspond to factors that a decision maker can
influence, but do not necessarily have to. For
example, energy scenario studies usually have at least
national scope, i.e., the energy system of a whole
country is modeled (Witt et al., 2018). These studies
typically include bottom-up or top-down
optimization models minimizing system costs (Keles
et al., 2011). Due to the minimization of system costs,
the model determines optimal investment and unit
commitment decisions from a system perspective.
However, there is no single decision maker who can
implement all these investment and unit commitment
decisions, because, for example, the operation of
energy supply facilities (power plants, solar panels,
grid) is distributed across many different actors. Even
if all actors were to act according to the same rational
reasoning, information asymmetries and attempts to
maximize personal gains can lead to decisions of
individuals that diverge from the global optimum, i.e.,
system-optimal decisions.
From a mathematical point of view, it is therefore
irrelevant whether (endogenous or exogenous)
variables model developments, which are
influenceable by a particular decision maker or not.
Thus, energy system analysis can be used to model
internal scenarios, external scenarios, or system
scenarios. In the modeling process, the analyst needs
to pay special attention to the question, which
variables constitute a scenario, because this affects
the implications that can be drawn for a particular
decision maker.
2.3 Multi-criteria Analysis
In multi-criteria analysis, a scenario consists of all
developments that cannot be influenced by a decision
maker (Stewart et al., 2013). Such a scenario is an
external scenario. The term for an option that a
decision maker can implement is alternative, which
corresponds to an internal scenario. External
scenarios can be used to investigate the effects of
uncertain developments on the performance scores of
given alternatives. To that end, during the problem-
structuring phase of multi-criteria analysis,
influenceable developments, leading to a selection of
alternatives, and non-influenceable developments,
leading to a selection of scenarios, are identified in an
iterative process (Belton & Stewart, 2003). To
quantify the performance scores, different methods of
consequence modeling can be applied, also including
(energy) system analysis (Witt et al., 2020).
In the sense of scenario planning, assumptions
regarding the future should be internally consistent
(Götze, 1993; Kosow, 2015), so that the assumptions
regarding alternatives and scenarios are non-
contradictory. Therefore, system scenarios seem to be
very suitable for developing scenarios and fitting
alternatives in a common process.
3 METHOD COMBINATIONS
WITH DIFFERENT SCENARIO
PURPOSES
In the literature, two approaches for combining the
abovementioned methods can be identified. These
differ regarding the objective of the corresponding
energy scenario studies: Scenarios providing general
orientation and scenarios for specific decisions.
3.1 Orientation Scenarios
In this approach, the methods are combined with the
objective to create and evaluate scenarios. The terms
alternative and scenario are used synonymously.
(This is contradictory to the approach described in
Section 2.3.) Therefore, influenceable and non-
influenceable developments are not separated during
scenario creation and evaluation. Thus, scenario
planning is applied to systematically identify possible
future states or developments that are to be evaluated.
For example, Madlener et al. (2007) apply scenario
planning to identify a set of possible scenarios
representing combinations of key factors. The
consequences of these scenarios are quantified with
energy system analysis and finally evaluated with
multi-criteria analysis. Studies that use this concept
include Bertsch & Fichtner (2016), Browne et al.
(2010), Diakoulaki & Karangelis (2007), Jovanov
et al. (2009), Kowalski et al. (2009), McDowall &
Eames (2007), McKenna et al. (2018), Oberschmidt
et al. (2010), Trutnevyte et al. (2011), and Volkart et
al. (2017). An excerpt from an exemplary decision
table in Bertsch & Fichtner (2016) with two criteria
and three alternatives/scenarios is shown in Table 1.
SMARTGREENS 2020 - 9th International Conference on Smart Cities and Green ICT Systems
116
Table 1: Exemplary decision table for orientation scenarios,
excerpt from Bertsch & Fichtner (2016).
Scenarios (S) /
Alternatives (A)
S/A1 S/A2 S/A3
Total expenses of
electricity supply
(in Billion EUR)
182 200 224
CO
2
-emissions
(in Million t CO
2
/y)
204 201 158
On the one hand, evaluating such a decision table
can help to identify a desirable alternative/scenario.
Identifying an image of a desirable future corresponds
to one objective of scenario planning, namely shaping
the future (Götze, 1993). For example, such an
analysis can be used to investigate energy policy
targets related to the capacity expansion of renewable
energy technologies, so that a cost-minimal
expansion complying with GHG-reduction targets
can be found. Based on that analysis, energy policy
targets can be set accordingly.
On the other hand, this approach strongly suggests
that there actually is a choice between alternatives/
scenarios. This implies that the developed scenarios
are internal scenarios. Uncertain, external factors are
not considered. In the context of energy system
planning, a decision maker simply cannot stipulate all
future developments, due to the complexity of the
energy system, the long-term planning perspective,
and the limit to (geographical) system boundaries. To
exaggerate, a decision maker would always decide for
the best-case scenario, e.g., “successful energy
transition”, in which all performance scores develop
in the best possible way, resulting in the best
evaluation of said scenario. Thus, the authors of such
studies need to make clear that the developed
scenarios should not be interpreted as options for
choice, and thus avoid over-interpretation by a
decision maker. Rather, these scenarios can provide
orientation and loose guidelines, instead of options
for immediate implementation. Finally, eliciting crite-
ria weights for a multi-criteria analysis is complicated
in this approach, but can be supported with stake-
holder analysis (see, e.g., Steinhilber et al. (2016)).
3.2 Decision Scenarios
In this approach, the methods are combined with the
objective to create and evaluate alternatives under
different scenarios, in order to make robust decisions
(Schwarz et al., 2019; Witt et al., 2020). As a
precondition, the decision maker of a decision
problem needs to be known. Based on the decision
maker’s decision power, scenarios and alternatives
can be separated explicitly. (This corresponds to the
idea described in Section 2.3).
In the first step of this approach, system scenarios
are developed to ensure consistency of all
assumptions (Götze, 1993; Kosow, 2015). After
quantifying these assumptions, they can be used as
input for model calculations. To that end, the
assumptions are classified and separated. There are
(1) general parameters that are constant over all
scenarios and alternatives; (2) scenario-specific
parameters that vary for each scenario; (3)
alternative-specific parameters that vary for each
alternative. The parameters are specified successively
so that general parameters are quantified first. These
limit the possible range for scenario- and alternative-
specific parameters. After that, scenario-specific
parameters are quantified, further limiting the
possible range for alternatives. Finally, alternative-
specific parameters are quantified for each scenario.
The parameter classification also determines the
number of model runs required in an energy scenario
study, because each combination of scenario and alter-
native needs to be calculated with the energy system
model and evaluated with multi-criteria analysis (Witt
et al., 2019). For example, given two scenarios and
three alternatives, six model runs are needed to
quantify the effects of all scenarios on all alternatives.
An exemplary decision table with three criteria, three
alternatives and two scenarios is shown in Table 2.
Table 2: Exemplary decision table for decision scenarios, excerpt from Witt et al. (2020).
Scenarios (S)
Alterna-
tives (A)
Criteria
S1 S2
A1 A2 A3 A1 A2 A3
CO
2
-emissions
(in kg CO
2
-eq/MWh)
90.88 84.80 84.56 65.83 65.34 66.60
A
g
ricultural Land Occupation
(in m
2
/MWh)
5.46 4.96 5.14 5.44 5.39 5.48
Costs of electricit
y
production and
g
rid expansion
(in €/MWh)
69.38 68.10 67.87 34.26 27.24 27.91
Transparency in Energy Scenario Studies: Survey of Different Approaches Combining Scenario Planning, Energy System Analysis, and
Multi-criteria Analysis
117
By evaluating this decision table, the effects of
external effects on the performance of alternatives
can be investigated. For example, a loss-minimizing
strategy would be to identify alternatives that perform
relatively well in all scenarios (Dieckhoff et al., 2014;
Götze, 1993; Porter, 1983). Notably, uncertain,
external developments are made explicit in this
approach. In combination with a multi-criteria
analysis, in which preferences of different actors can
be considered, implications and recommendations
can be derived in a transparent way.
4 DISCUSSION
According to Grunwald et al. (2016), energy scenario
studies need to meet three basic requirements:
scientific validity, transparency, and unbiasedness. In
this paper, I focus on transparency, because it is a
cornerstone to achieve the two other requirements.
Transparency can be viewed as a substitute for
involvement in scenario development and evaluation.
In the context of energy scenario studies,
transparency means that all necessary information
that is needed to comprehend and potentially replicate
the study is adequately published (Cao et al., 2016).
To that end, the recipient should be able to access the
used models, data, and further assumptions.
Grunwald et al. (2016) note that it is particularly
important to point out very clearly any uncertainties
in an analysis, as well as their consequences for the
results and conclusions. Furthermore, conclusions
should be drawn in a transparent way. Finally,
addressee-specific documentation can enhance the
transparency of energy scenario studies.
Some notes on transparency: First, the concept of
transparency is subjective. A documentation can be
transparent for some recipients, but intransparent for
others, because the technical expertise and skills of
the recipient are relevant for understanding complex,
(model-based) energy scenario studies (Baecker,
2010). Second, an excessive, confusing supply of
information is the opposite of transparency. A
recipient needs to select the relevant parts from all
available information. Therefore, supplying too much
information can also be counter-productive if one
wants to achieve a transparent documentation.
According to Grunwald et al. (2016), many
energy scenario studies lack transparency and
adequate communication of uncertainties. Two of
their suggestions to increase transparency are: (1)
development of methods to integrate diverging
interests and (2) integration and increased use of
methods for the systematic analysis of uncertainties.
Both method combinations (described in Sections
3.1 and 3.2) allow for the integration of diverging
interests in the evaluation of energy scenarios. For
example, different interests can be considered during
scenario creation in a scenario planning process. In
addition, stakeholders’ interests can be made explicit
in the weighting factors used in the multi-criteria
evaluation.
However, regarding the communication of
uncertainties, I argue that the presented approaches
differ considerably. The approach based on
orientation scenarios is suitable if no particular
decision makers are involved, i.e., if no specific
decision is to be supported. The objective is to
identify desirable future states that are relevant for a
problem and foster discussion about them. For
example, the potential effects of certain energy policy
measures (represented by alternatives/scenarios) can
be determined and desirable or non-desirable
developments can be identified (Dieckhoff et al.,
2014). In general, this approach is less suitable for
supporting specific decisions, because uncertainties
that are relevant for specific decision makers are not
identified and their effects are not modeled explicitly.
This approach leaves untapped a powerful potential
of scenario planning, namely sensitizing decision
makers to effects of external uncertainties (Stewart et
al., 2013). Special care is required by decision makers
when they interpret the results.
The approach based on decision scenarios is
suitable if the perspectives of specific decision
makers need to be included. It allows including and
analyzing the effects of external uncertainties on the
performance scores of decision makers’ alternatives.
Thereby, an alternative can be recommended with a
transparent procedure that also considers different
developments of external factors (Dieckhoff et al.,
2014). This approach focuses on problem structuring,
so that decision makers and analysts are forced to
consider, which different alternatives and
uncertainties are relevant for and should be
quantitatively modeled in the decision problem.
Thereby, underlying assumptions that would
otherwise be unspoken can be discussed, which
allows decision makers and analysts to achieve a
deeper understanding of the decision problem. This
deeper understanding is presumed to lead to better
decision-making (Götze, 1993), in addition to the
quantitative results of a multi-criteria analysis of
alternatives.
To improve the transparency, authors of energy
scenario studies combining scenario planning, energy
system analysis, and multi-criteria analysis, should
therefore make very clear, which purpose their
SMARTGREENS 2020 - 9th International Conference on Smart Cities and Green ICT Systems
118
method combination fulfills: providing general
orientation or providing decision support for a
specific decision with known decision makers. I
argue that this can limit the unintended effects of
over-interpretation of energy scenario studies. While
an approach based on orientation scenarios can
support a discussion of possible futures and their
desirability, an approach based on decision scenarios
can support specific decision makers’ choices
between options for immediate implementation in
uncertain environments.
However, an approach with decision scenarios
requires more effort for decision support, because, in
general, more parameter quantifications and energy
system model runs are needed (Witt et al., 2019).
Finally, a multi-criteria evaluation of alternatives
under different scenarios proves to be challenging to
be interpreted by decision makers (Durbach &
Stewart, 2020; Marttunen et al., 2017). This also
stresses the need to communicate clearly, which
implications can or cannot be drawn from a multi-
criteria analysis, based on an analysis of system
scenarios and specific decision makers’ preferences.
5 CONCLUSION
In this paper, two different approaches for combining
scenario planning, energy system analysis, and multi-
criteria analysis have been investigated, one based on
orientation scenarios, the other based on decision
scenarios. Their impact on the transparency and
communication of uncertainties in energy scenario
studies has been investigated. I argue that authors of
energy scenario studies should make very clear the
purpose of their method combination. This should
increase not only the transparency of energy scenario
studies that are based on these methods, but also
increase acceptance of the implications and
recommendations drawn from them by the relevant
stakeholders. Increased acceptance may make it
easier to implement measures to reach energy policy
goals and thereby foster the transition to sustainable
energy supply systems.
Commissioning institutions of energy scenarios
need to clarify energy scenario studies’ objectives,
decision makers, stakeholders, the consideration of
uncertainties and other desired features of the
methodology in their tenders (Grunwald et al., 2016).
Additionally, a short summary of a study’s features
would be helpful for transparent documentation. For
example, the morphological analysis provided in Witt
et al. (2018) could be extended by different methods
(energy system analysis, scenario planning, multi-
criteria analysis) and their corresponding scenario
purposes to provide an overview of studies’ key
features.
ACKNOWLEDGEMENTS
Discussions with my colleagues on the research
project NEDS – Nachhaltige Energieversorgung
Niedersachsen (www.neds-niedersachsen.de),
especially Marcel Dumeier and Jutta Geldermann, are
gratefully acknowledged. The views expressed in this
paper are entirely those of the author, however.
REFERENCES
Alcamo, J. (2008). The SAS Approach: Combining
Qualitative and Quantitative Knowledge in
Environmental Scenarios. In J. Alcamo (Ed.),
Developments in integrated environmental assessment:
volume 2. Environmental Futures: The Practice of
Environmental Scenario Analysis (1
st
ed., pp. 123–150).
Elsevier. https://doi.org/10.1016/S1574-101X(08)00
406-7.
Antunes, C. H., & Henriques, C. O. (2016). Multi-Objective
Optimization and Multi-Criteria Analysis Models and
Methods for Problems in the Energy Sector. In S. Greco,
M. Ehrgott, & J. Figueira (Eds.), International Series in
Operations Research & Management Science: Vol. 233.
Multiple criteria decision analysis: State of the art
surveys. Springer. https://doi.org/10.1007/978-1-4939-
3094-4_25
Baecker, D. (2010). Das Quantum Management. In S. A.
Jansen, E. Schröter, & N. Stehr (Eds.), Transparenz:
Multidisziplinäre Durchsichten durch Phänomene
und Theorien des Undurchsichtigen (pp. 112–
130). VS Verlag für Sozialwissenschaften.
https://doi.org/10.1007/978-3-531-92466-3_8
Belton, V., & Stewart, T. J. (2003). Multiple criteria
decision analysis: An integrated approach
(2. print). Kluwer Academic Publishers.
https://doi.org/10.1007/978-1-4615-1495-4
Bertsch, V., & Fichtner, W. (2016). A participatory multi-
criteria approach for power generation and transmission
planning. Annals of Operations Research, 245 (1-2),
177–207. https://doi.org/10.1007/s10479-015-1791-y
Browne, D., O’Regan, B., & Moles, R. (2010). Use of
multi-criteria decision analysis to explore alternative
domestic energy and electricity policy scenarios in an
Irish city-region. Energy, 35 (2), 518–528.
https://doi.org/10.1016/j.energy.2009.10.020
Cao, K.-K., Cebulla, F., Gómez Vilchez, J. J., Mousavi, B.,
& Prehofer, S. (2016). Raising awareness in model-
based energy scenario studies a transparency checklist.
Energy, Sustainability and Society, 6 (1), 1–20.
https://doi.org/10.1186/s13705-016-0090-z.
Transparency in Energy Scenario Studies: Survey of Different Approaches Combining Scenario Planning, Energy System Analysis, and
Multi-criteria Analysis
119
Diakoulaki, D., & Karangelis, F. (2007). Multi-criteria
decision analysis and cost–benefit analysis of alternative
scenarios for the power generation sector in Greece.
Renewable and Sustainable Energy Reviews, 11 (4),
716–727. https://doi.org/10.1016/j.rser.2005. 06.007.
Dieckhoff, C., Appelrath, H.-J., Fischedick, M., Grunwald,
A., & Höffler, F. (2014). Zur Interpretation von
Energieszenarien. Schriftenreihe Energiesysteme der
Zukunft. acatech - Deutsche Akademie der
Technikwissenschaften.
Durbach, I. N., & Stewart, T. J. (2020). Probability and
Beyond: Including Uncertainties in Decision Analysis.
In L. White, M. Kunc, K. Burger, & J. Malpass (Eds.),
Behavioral Operational Research (Vol. 46, pp. 75–91).
Springer International Publishing. https://doi.org/
10.1007/978-3-030-25405-6_5.
European Commission. (2018). A Clean Planet for all - a
Eurioean strategic long-term vision for a prosperous,
modern, competitive and climate neutral economy:
Communication From The Commission To The
European Parliament, The European Council, The
Council, The European Economic and Social
Committee, The Committee of The Regions and The
European Investment Bank (COM 773 final). Bruxelles
https://eur-lex.europa.eu/legal-content/EN/TXT/PDF/?
uri=CELEX:52018DC0773&from=EN.
Gausemeier, J., Fink, A., & Schlake, O. (1998). Scenario
Management: An Approach to Develop Future
Potentials. Technological Forecasting and Social
Change, 59 (2), 111–130. https://doi.org/10.1016/
S0040-1625(97)00166-2.
Götze, U. (1993). Szenario-Technik in der strategischen
Unternehmensplanung (2., aktualisierte Auflage).
Deutscher Universitätsverlag. https://doi.org/10.1007/
978-3-322-96174-7.
Grunwald, A., Dieckhoff, C., Fischedick, M., Höffler, F.,
Mayer, C., & Weimer-Jehle, W. (2016). Consulting
with energy scenarios: Requirements for scientific
policy advice (Monograph Series on Science-based
Policy Advice). München. acatech - Deutsche
Akademie der Technikwissenschaften e. V.
Jovanović, M., Afgan, N., Radovanović, P., & Stevanović,
V. (2009). Sustainable development of the Belgrade
energy system. Energy, 34 (5), 532–539.
https://doi.org/10.1016/j.energy.2008.01.013
Keles, D., Möst, D., & Fichtner, W. (2011). The
development of the German energy market until
2030—A critical survey of selected scenarios. Energy
Policy, 39 (2), 812–825. https://doi.org/10.1016/j.enpol.
2010.10.055.
Kosow, H. (2015). New outlooks in traceability and
consistency of integrated scenarios. European
Journal of Futures Research, 3 (1), 1–12.
https://doi.org/10.1007/s40309-015-0077-6
Kowalski, K., Stagl, S., Madlener, R., & Omann, I. (2009).
Sustainable energy futures: Methodological challenges
in combining scenarios and participatory multi-criteria
analysis. European Journal of Operational Research,
197
(3), 1063–1074. https://doi.org/10.1016/j.ejor.
2007.12.049.
Lerche, N., Wilkens, I., Schmehl, M., Eigner-Thiel, S., &
Geldermann, J. (2017). Using methods of Multi-
Criteria Decision Making to provide decision support
concerning local bioenergy projects. Socio-Economic
Planning Sciences 68, 100594. https://doi.org/
10.1016/j.seps.2017.08.002.
Madlener, R., Kowalski, K., & Stagl, S. (2007). New ways
for the integrated appraisal of national energy
scenarios: The case of renewable energy use in
Austria. Energy Policy, 35 (12), 6060–6074.
https://doi.org/10.1016/j.enpol.2007.08.015
Marttunen, M., Lienert, J., & Belton, V. (2017). Structuring
problems for Multi-Criteria Decision Analysis in
practice: A literature review of method combinations.
European Journal of Operational Research, 263 (1), 1–
17. https://doi.org/10.1016/j.ejor.2017.04.041
McDowall, W., & Eames, M. (2007). Towards a sustainable
hydrogen economy: A multi-criteria sustainability
appraisal of competing hydrogen futures. International
Journal of Hydrogen Energy, 32 (18), 4611–4626.
https://doi.org/10.1016/j.ijhydene.2007.06.020
McKenna, R., Bertsch, V., Mainzer, K., & Fichtner, W.
(2018). Combining local preferences with multi-criteria
decision analysis and linear optimization to develop
feasible energy concepts in small communities.
European Journal of Operational Research, 268 (3),
1092–1110. https://doi.org/10.1016/j.ejor.2018.01.036
Möst, D., Fichtner, W. (2009). Einführung zur
Energiesystemanalyse. In D. Möst, W. Fichtner, & A.
Grunwald (Eds.), Energiesystemanalyse (pp. 11-32).
Universitätsverlag Karlsruhe.
Oberschmidt, J., Geldermann, J., Ludwig, J., & Schmehl,
M. (2010). Modified PROMETHEE approach for
assessing energy technologies. International Journal of
Energy Sector Management, 4 (2), 183–212.
https://doi.org/10.1108/17506221011058696
Porter, M. (1983). Wettbewerbsstrategie, Methoden zur
Analyse von Branchen und Konkurrenten. Campus
Verlag.
Schoemaker, P. J. H. (1995). Scenario Planning: a tool for
strategic thinking. Sloan Management Review, 36, 25–
40.
Schwarz, J. S., Witt, T., Nieße, A., Geldermann, J.,
Lehnhoff, S., & Sonnenschein, M. (2019). Towards an
Integrated Development and Sustainability Evaluation
of Energy Scenarios Assisted by Automated
Information Exchange. In B. Donnellan, C. Klein, M.
Helfert, O. Gusikhin, & A. Pascoal (Eds.),
Communications in Computer and Information
Science: Vol. 921. Smart Cities, Green Technologies,
and Intelligent Transport Systems: 6
th
International
Conference, SMARTGREENS 2017, and Third
International Conference, VEHITS 2017, Porto,
Portugal, April 22-24, 2017, Revised Selected Papers
(pp. 3–26). Springer Nature. https://doi.org/10.1007/
978-3-030-02907-4_1
Steinhilber, S., Geldermann, J., Wietschel, M. (2016).
Renewables in the EU after 2020: a multi-criteria
decision analysis in the context of the policy formation
SMARTGREENS 2020 - 9th International Conference on Smart Cities and Green ICT Systems
120
process. EURO Journal on Decision Processes, 4 (1-2),
119–155. https://doi.org/10.1007/s40070-016-0060-x
Stewart, T. J., French, S., & Rios, J. (2013). Integrating
multicriteria decision analysis and scenario planning—
Review and extension. OMEGA - International Journal
of Management Science, 41 (4), 679–688.
https://doi.org/10.1016/j.omega.2012.09.003
Trutnevyte, E., Stauffacher, M., & Scholz, R. W. (2011).
Supporting energy initiatives in small communities by
linking visions with energy scenarios and multi-criteria
assessment. Energy Policy, 39 (12), 7884–7895.
https://doi.org/10.1016/j.enpol.2011.09.038
Van der Heijden, K. (2009). Scenarios: The art of strategic
conversation (2. ed., reprinted.). Wiley.
Volkart, K., Weidmann, N., Bauer, C., & Hirschberg, S.
(2017). Multi-criteria decision analysis of energy
system transformation pathways: A case study for
Switzerland. Energy Policy, 106, 155–168.
https://doi.org/10.1016/j.enpol.2017.03.026
Witt, T., Dumeier, M., & Geldermann, J. (2020).
Combining scenario planning, energy system analysis,
and multi-criteria analysis to develop and evaluate
energy scenarios. Journal of Cleaner Production, 242,
118414. https://doi.org/10.1016/j.jclepro.2019.118414
Witt, T., Minnemann, J., Kleinau, M. (2019). Transition
paths. In B. Engel (Ed.), Development of a Process for
Integrated Development and Evaluation of Energy
Scenarios for Lower Saxony: Final report of the
research project NEDS – Nachhaltige
Energieversorgung Niedersachsen (pp. 86–88).
Cuvillier.
Witt, T., Stahlecker, K., & Geldermann, J. (2018).
Morphological analysis of energy scenarios.
International Journal of Energy Sector Management,
12 (4), 525–546. https://doi.org/10.1108/IJESM-09-
2017-0003
Transparency in Energy Scenario Studies: Survey of Different Approaches Combining Scenario Planning, Energy System Analysis, and
Multi-criteria Analysis
121