Reducing Risks in Energy Innovation Projects: Complexity Theory Perspective
Abstract
:1. Introduction
1.1. The High-Risk Potential of Energy Innovation Projects
- Megaprojects: Despite huge financial investments in megaprojects, historical data indicate very poor performance [1].
- Innovative feature of EIPs: When it comes to innovation projects, goals often remain unclear and are vaguely defined; processes tend to be experimental and exploratory, while the risks run high [2]. A high failure rate, and the need to stimulate creativity [3], sets innovation projects apart from other types of projects as well as constant learning.
- Multidisciplinary project teams are common characteristics of both megaprojects and innovative projects.
- Many stakeholders, often with conflicting interests [5].
- Difficult decision making as consequence of the previous two characteristics.
- Numerous threats from the environment, which are hard to predict [5].
1.2. Energy Innovation Projects as Complex Adaptive Systems (CAS)
- Both consist of a vast number of different elements that interact with each other, and must constantly adapt to changing environmental conditions. There is a complex implementation of many project activities [5], and there are many actors of energy systems that interact through networks, e.g., physical and social structures [11].
- Uncertainty in the long run is the common characteristic of both EIPs and CAS. Unlike risks, there is no way to calculate uncertainty (or ’the unknown unknowns’), because we cannot imagine it [15]. Although managing uncertainty sounds a bit ‘oxymoronic’ [16], the same author believes that experimental learning can reduce uncertainty.
- Since innovation does not represent a linear process [17], the innovation feature of energy projects, by its very nature, contains elements of non-linearity or nonlinear behavior (for example, technical systems when operated close to saturation). Creativity is often brought in connection with a chaotic, experimental, unpredictable atmosphere, and poorly structured process [18], therefore engaging more people in the creative processes does not necessarily mean achieving better energy performances.
- In far-from-equilibrium conditions, positive (reinforcing) feedback loops convert small inputs into gigantic changes [19], which is also known as the butterfly effect which is present in innovation processes and energy systems. Positive (reinforcing) feedback loops are also present in social structures For example, bad interpersonal relations can cause the failure to achieve desired results; consequently, the lack of desired results can cause bad interpersonal relations and so on (domino effect).
- Emergence phenomenon goes together with systems approach as “the whole is greater than the sum of its parts” (Aristotle). Some manifestations of emergence in EIPs are:
- ○
- Synergy (or the T.E.A.M. acronym—“together everyone achieves more” [21]): People join their forces (ideas, knowledge, skills, technology, resources) and bring something new. This is a positive example of emergence, and it encourages innovation.
- ○
- Emergent risks: There are new risks which emerge from existing risks over time (such as global warming [22]).
- ○
- Emergent behavior: System behavior is independent of the behavior of its individual agents (for instance, a new project culture emerges from the group of people involved in a project).
- EIPs demand a systems approach (CAS are also systems). Kapsali [23] concluded that the methods of systems thinking provide the necessary flexibility for managing innovativeness, complexity, and uncertainty.
1.3. Research Goals
- Sources of risks in EIPs;
- Background for better understanding of risks; and
- Opportunities for risk reduction.
2. Literature Review
2.1. Reducing Risks in Energy Innovation Projects
2.2. Application of Complexity Theory Elements in Energy Innovation Projects
2.2.1. Specific Aspects of Energy Innovation Projects
- “[C]omplexity can refer to the complex interaction structures of components in a technological system”; and
- “[C]omplexity can refer to structures of interactions between agents in innovation networks.”
2.2.2. Social and Behavioral Aspects of Energy Innovation Projects
2.2.3. Operational Aspects of Energy Innovation Projects
3. Definition of Research Framework
4. Research Method
4.1. Description and Validation of Questionnaire
- The local minimum is reached with the next results:
- ○
- Chi-square = 171.922
- ○
- Degrees of freedom = 154
- ○
- Probability level = 0.153
- CMIN/DF (Minimum discrepancy, divided by its degrees of freedom) = 1.116
- RMSEA (Root mean square error of approximation) = 0.034
- RMR (Root mean square residual) = 0.044
- SRMR (Standardized RMR) = 0.0778
- IFI (Incremental fit index) = 0.934
- TLI (Tucker–Lewis index) = 0.906
- CFI (Comparative fit index) = 0.924
4.2. Formation of the Independent Variables and the Dependent Variable
4.3. Sample Description
5. Analysis of Data and Results
5.1. Data Reliability
5.2. Pearson Correlation and Partial Correlation
5.3. Linear Regression
- Tests for linearity: Since ANOVA deviation from linearity sig. is higher than 0.05 in all cases (for all independent variables in relation to the dependent one: 0.949, 0.185, 0.725), the authors conclude that there is linear relationship, so the linear regression can be applied to the data.
- Outliers: Casewise diagnostics in SPSS is used to ensure that there are no significant outliers.
- Autocorrelation: Durbin-Watson test equals 1.946, so there is no autocorrelation between the variables (please check Section 5.1).
- Normality: The errors are normally distributed (Figure 4).
- Homoscedasticity, i.e., homogeneity of variance: The error variance is shown to be fairly constant.
6. Discussion
- Technological complexity is still traditionally associated with high risks.
- In the case of uncertainty in energy innovations, in addition to project learning, there is a need to constantly learn from the environment as well as “in-house” learning (for more details please see Figure 5).
- Most respondents believed that the reliance on intuition is not desirable in risk management processes.
7. Conclusions
- Statistical significance of the main indices suggests that taking into account complexity theory elements leads to reducing risks in EIPs. It gives reasonable ground to justified belief that complexity theory can find application in challenging field of overcoming the high-risk potential of EIPs.
- Social and behavioral aspects, in general human/non-technical risk factors, are becoming increasingly important for the success of EIPs, which calls for further research in this direction.
- Complexity theory offers a solid theoretical background for the better understanding of risk factors in EIPs. Therefore, education of the project manager in this regard is important for the success of EIPs. It also implies the use of methods that support dealing with complexity in the field of risk management in an appropriate manner.
- Risk philosophy based on complexity theory is useful in finding opportunities for risk reduction. In addition, this paper suggests that complexity does not necessarily increase the EIP risks, on the contrary, complexity insights can be useful for decreasing the high-risk potential of EIPs.
- Integrated consideration of different risk factors, not separately, is one of the crucial ideas from this paper.
- Reducing risks in EIPs from the complexity theory viewpoint is more efficient in the case of the prevention of unwanted events, in comparison to reducing the effects of unwanted events that have already occurred.
- Lessons learnt from complexity theory (presented in the form of recommendations for project managers) show how to take into account all discussed elements of complexity theory, thus reducing risks in EIPs. In turn, this is supposed to generate better results in EIP management and in the field of energy innovation in general.
Author Contributions
Funding
Acknowledgments
Conflicts of Interest
Appendix A. Questionnaire
- Reducing risks in EIPs:
- Rate the importance of flexibility of EIP structure for reducing risks in EIPs.
- Rate the importance of the adjusting of EIPs to changes in the environment for reducing risks in EIPs.
- Rate the influence of focus on interpersonal relationships in EIP teams on risk reduction in EIPs.
- Rate the influence of dedication to stakeholder relations on risk reduction in EIPs.
- Rate the importance of using different methods and different combinations of methods for solving different risk problems in EIPs in order to reduce the probability and impact of such risks.
- Rate the influence of the early identification of risk events on the suppression of risk factors in EIPs.
- Specific aspects:
- 7.
- Rate the agreement with the statement that self-organization between too much control and too much freedom in EIPs decreases the risk of EIP failure.
- 8.
- Rate the influence of avoidance of negative attitudes towards risks related with usage of complex technology on reducing risks in EIPs.
- 9.
- Rate the importance of the experiential knowledge, gained in previous projects and during the implementation of EIP, for the management of EIP under uncertainty, i.e., the importance of evolutionary learning for reducing risks in EIP that come from uncertainty.
- 10.
- Rate the importance of consideration of complexity of the time we live on reducing risks in EIPs.
- Social and behavioral aspects:
- 11.
- Rate the importance of intuition in identifying risk factors in EIPs (and hence its reduction).
- 12.
- Rate the importance of adequate dealing with cognitive complexity (e.g., by raising the motivation of EIP team members) for risk reduction in EIPs.
- 13.
- Rate the influence of considering the aspects of cultural complexity on decreasing human factor risks in EIP teams.
- 14.
- Rate the agreement with the statement that increasing the quality of communication by overcoming communication complexity in EIP teams is a significant factor in reducing risks in EIPs.
- 15.
- Rate the importance of the leadership role of the project manager and their understanding of social complexity in conditions of uncertainty for risk reduction in EIPs.
- 16.
- Rate the importance of successfully dealing with the emotional complexity of the project manager for eliminating human risk factors in EIPs.
- Operational aspects:
- 17.
- Rate the importance of the analysis of mutual influences of risks in EIP and identifying new risks over time (emerging from the ‘old’ risks) for EIP risk reduction.
- 18.
- Rate the importance of fuzzy logic application for subjective risk assessments, i.e., for the reduction of subjective risk factors in EIPs, under the conditions of handling with insufficient data and incomplete knowledge.
- 19.
- Rate the importance of using the system dynamics technique for solving problems of causal embeddedness easier, and for more efficient solution of risk events in EIPs, and, therefore, the importance of using the system dynamics technique for reducing risks in EIPs.
- 20.
- Rate the influence of decreasing organizational complexity (simplifying tasks, work processes, and organizational layers in a project) on risk reduction in EIPs.
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Sustainable Development | Project Management |
---|---|
Long-term and short-term oriented | Short-term oriented (i.e., during project life cycle) |
In the interest of this generation and future generations | In the interest of sponsor/stakeholders |
Life-cycle oriented | Deliverable/result oriented |
People, planet, and profit | Scope, time, and budget |
Increasing complexity | Reduced complexity |
Description of Respondents | |
---|---|
Average work experience | 16.39 years: = 5 years: 2% 6–10 years: 30% 11–20 years: 41% 21–35 years: 24% > 35 years: 3% |
Qualifications | Bachelor or equivalent degree—32% Master of Science or equivalent degree—41% Doctoral degree—27% |
Education in the field of project management | Formal education and/or professional certificates (IPMA, PMI, PRINCE, etc.)—74% Informal education (training, educational seminars, experience accumulated through practice)—26% |
Current position | Portfolio manager—9% Program manager—13% Project manager—33% Assistant project manager—14% Other managerial positions—6% Expert positions—11% None *—14% |
Average number of projects that the respondents have participated in | 31.47 |
Average number of EIPs that the respondents have participated in | 9.05 |
Total number of respondents | 100 |
Specific Aspects | Social and Behavioral Aspects | Operational Aspects | Reducing Risks in EIPs | |
---|---|---|---|---|
Specific aspects | 1 | |||
Social andbehavioral aspects | 0.142 | 1 | ||
Operational aspects | 0.367 ** | 0.388 ** | 1 | |
Reducing risks in EIPs | 0.404 ** | 0.581 ** | 0.543 ** | 1 |
Control Variables | Relationship between Two Variables | Correlation | |
---|---|---|---|
Social and behavioral aspects | Specific aspects | Reducing risks in EIPs | 0.400 ** |
Operational aspects | Specific aspects | Reducing risks in EIPs | 0.267 |
Specific aspects | Social and behavioral aspects | Reducing risks in EIPs | 0.578 ** |
Operational aspects | Social and behavioral aspects | Reducing risks in EIPs | 0.477 ** |
Specific aspects | Operational aspects | Reducing risks in EIPs | 0.461 ** |
Social and behavioral aspects | Operational aspects | Reducing risks in EIPs | 0.416 ** |
Model | Unstandardized Coefficients | Standardized Coefficients | T | Sig. | Correlations | Collinearity Statistics | ||||
---|---|---|---|---|---|---|---|---|---|---|
B | Std. Error | Beta | Zero-Order | Partial | Part | Tolerance | VIF | |||
(Constant) | 0.837 | 0.351 | 2.386 | 0.019 | ||||||
Specific aspects | 0.239 | 0.078 | 0.237 | 3.072 | 0.003 | 0.404 | 0.299 | 0.221 | 0.865 | 1.156 |
Social and behavioral aspects | 0.383 | 0.068 | 0.436 | 5.591 | 0.000 | 0.581 | 0.496 | 0.402 | 0.849 | 1.177 |
Operational aspects | 0.238 | 0.069 | 0.287 | 3.454 | 0.001 | 0.543 | 0.332 | 0.248 | 0.750 | 1.334 |
Individual Complexity Theory Elements | Influence on Reducing Risks in EIPs |
---|---|
Self-organization | 0.262 ** |
Technological complexity | 0.045 |
Evolutionary learning verses uncertainty | 0.132 |
Time complexity | 0.320 ** |
Intuition | 0.189 |
Cognitive complexity | 0.489 ** |
Cultural complexity | 0.347 ** |
Communication complexity | 0.486 ** |
Social complexity | 0.276 ** |
Emotional complexity | 0.321** |
Emergence phenomenon and systems approach | 0.355 ** |
Fuzzy logic (uncertainty, ambiguity, subjectivity) | 0.440 ** |
Positive feedback loops and systems approach (system dynamics (SD) technique) | 0.299 ** |
Organizational complexity | 0.219 ** |
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Mihić, M.M.; Dodevska, Z.A.; Todorović, M.L.; Obradović, V.L.; Petrović, D.Č. Reducing Risks in Energy Innovation Projects: Complexity Theory Perspective. Sustainability 2018, 10, 2968. https://doi.org/10.3390/su10092968
Mihić MM, Dodevska ZA, Todorović ML, Obradović VL, Petrović DČ. Reducing Risks in Energy Innovation Projects: Complexity Theory Perspective. Sustainability. 2018; 10(9):2968. https://doi.org/10.3390/su10092968
Chicago/Turabian StyleMihić, Marko M., Zorica A. Dodevska, Marija Lj. Todorović, Vladimir Lj. Obradović, and Dejan Č. Petrović. 2018. "Reducing Risks in Energy Innovation Projects: Complexity Theory Perspective" Sustainability 10, no. 9: 2968. https://doi.org/10.3390/su10092968
APA StyleMihić, M. M., Dodevska, Z. A., Todorović, M. L., Obradović, V. L., & Petrović, D. Č. (2018). Reducing Risks in Energy Innovation Projects: Complexity Theory Perspective. Sustainability, 10(9), 2968. https://doi.org/10.3390/su10092968