An Integrated Participatory Systems Modelling Approach: Application to Construction Innovation
Abstract
:1. Introduction
2. Review of Participatory SD Modelling Approaches
3. Developed IPSM Approach for SD Modelling Applications
3.1. Stage 1: Problem Scoping
3.2. Stage 2: Conceptualisation
3.3. Stage 3: Dynamic Model Formulation
3.4. Stage 4: Model Analysis
3.5. Stage 5: Model Use and Recommendations
4. Application of IPSM Approach to Construction Innovation
4.1. Case Study: Construction Innovation System in the Russian Federation
4.2. Stage 1: Problem Scoping
4.3. Stage 2: Conceptualisation
4.3.1. Structural Analysis
- Influential variables act as input variables that exert strong influence on other elements and the system as a whole when they change. On the other hand, those factors are not dependent on the others. This group of variables must have a priority for decision makers when considering strategic actions and policy design under different scenarios.
- Dependent variables represent output variables that have low influence but are the most impacted by other variables and the system.
- Relay variables are both highly influential and dependent. These variables describe the system and condition of its dynamics as they are the most unstable and could change to be input or output variables.
- Autonomous variables are neither influential nor dependent and have low potential to affect the system. In other words, these variables exist within the system but are not controlled by the dynamics of the model.
4.3.2. CLD Development
4.3.3. System Archetypes
4.4. Stage 3: Dynamic Model Formulation
- business performance of construction companies is a function of a company’s profitability and client satisfaction as ones of the most essential industry motivation points;
- level of government support refers to a state of public support and public policies (e.g., federal targeted programmes and direct financial investments); and
- level of administrative barriers to innovation represents barriers related to the conservative building codes and standards, technical regulation, to name a few.
4.5. Stage 4: Model Analysis
4.6. Stage 5: Model Use and Recommendations
5. Conclusions and Future Research Directions
Supplementary Materials
Author Contributions
Funding
Acknowledgments
Conflicts of Interest
References
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Method | Strengths | Weaknesses | T * | C | L | I | C | P | D |
---|---|---|---|---|---|---|---|---|---|
GMB |
|
| High | High | High | No | Yes | No | Yes |
MM |
|
| High | High | High | No | Yes | No | Yes |
GT |
|
| High | High | Low | No | No | Yes | Yes |
DM |
|
| High | High | Moderate | Yes | No | Yes | No |
IPSM |
|
| Moderate | Moderate | High | Yes | No | No | Yes |
Task | Purpose | Input | Output | Stakeholder Engagement Form | Sample Questions |
---|---|---|---|---|---|
Modelling stage 1. Problem scoping | |||||
Exploratory study |
| Proposed research goals and objectives, comprehensive literature review |
| Questionnaire survey and one-on-one semi-structured post hoc interviews |
|
Modelling stage 2. Conceptualisation | |||||
Identification of the key variables |
| Comprehensive literature review and exploratory study outcomes |
| One-on-one consultations with expert stakeholders (here after experts) |
|
Structural analysis using the MICMAC technique |
| Expert opinion and judgment |
| Opinion survey through one-on-one structured interviews |
|
Confirmation of the system boundary |
| Final conceptual model based on the MICMAC analysis |
| Three facilitated 2-h workshops |
|
Modelling stage 3. Dynamic model formulation | |||||
Initial SD model development |
| Preliminarily SD model produced based on the previous modelling steps |
| A facilitated 1-day workshop |
|
Equation writing and parametrization |
| Initial SD model of the construction innovation system |
| A facilitated 1-day workshop |
|
Modelling stage 4. Model analysis | |||||
Model validation and calibration |
| Refined SD model representing the problem of innovation diffusion in the construction industry |
| One-on-one expert consultations |
|
Modelling stage 5. Model use and recommendations | |||||
Scenario and policy analysis |
| Final SD model |
| One-on-one expert consultations |
|
Feedback Loops | Loop Name | Structure | Key Message |
---|---|---|---|
R1 | Industry motivation | Level of innovation → Quality of construction projects → Client’s satisfaction → Level of private R&D activity → Level of applied research → Level of innovation | Increase in construction companies R&D activity due to improving business performance |
R2 | Government’s role | Level of government intervention → Government incentives → UIG partnership → UI R&D collaboration → Level of innovation → Level of applied research → Level of public R&D activity → Level of government intervention | Government involvement in the construction innovation process |
R3a, R3b | Practical application | Level of applied research → Level of innovation → Level of applied research Level of applied research → Level of private R&D activity → Level of applied research | Necessity of research results application |
R4 | Reduction of regulatory burden | Import substitution → Government regulations → Level of administrative barriers to innovation → UI R&D collaboration → Level of innovation → Level of applied research → Import substitution | Building environment for the development of domestic innovations |
R5 | Need for innovation | Client’s demand → Level of private R&D activity → Level of applied research → Import substitution → Client’s demand | Requirements of the import substitution policy |
B1 | Expectation of short-term profit | Level of innovation → Quality of construction projects → Final product cost → Profit maximization → Level of private R&D activity → Level of applied research → Level of innovation | Industry’s conservatism due to high expenses and insufficient short-term profits |
B2 | Support for innovation | Level of private R&D activity → Level of government intervention → Government incentives → Level of private R&D activity | Necessity of additional support in order to boost an innovative activity |
B3 | Overcoming isolation | Level of private R&D activity → Level of public R&D activity → UIG partnership → Level of private R&D activity | Implementation of policies that promote R&D collaboration |
Variable | Scale (%) | Characterisation |
---|---|---|
Administrative barriers | <20 | Acceptable |
20–39 | Medium | |
40–59 | High | |
60–79 | Excessive | |
80–100 | Insurmountable | |
Government support | <20 | Insufficient |
20–39 | Poor | |
40–59 | Adequate | |
60–79 | Sufficient | |
80–100 | High | |
Industry business performance | <20 | Poor |
20–39 | Unsatisfactory | |
40–59 | Satisfactory | |
60–79 | Good | |
80–100 | Excellent |
Variables Impacting Attractiveness of Innovation | Components of the Impact Variables (Used in the MICMAC Analysis) | Components’ Rate of Influence on the Level of Innovation | Impact Variables’ Rate of Influence | Weight of Variables Impacting Attractiveness of Innovation (%) |
---|---|---|---|---|
Administrative barriers | Level of administrative barriers to innovation | 68 | 68 | 41.2 |
Government support | Government regulations | 46 | 54 | 32.7 |
Government incentives | 63 | |||
Level of government intervention | 54 | |||
Industry business performance | Quality of construction projects | 48 | 43 | 26.1 |
Client satisfaction | 41 | |||
Profit maximization | 40 | |||
165 | 100.0 |
Year | Government Forecast | Simulation Results | ||
---|---|---|---|---|
RSCI, 2017 | RSCI, 2015 | Pessimistic (Baseline) | Optimistic | |
2015 | 2 | 2 | 2 | 2 |
2016 | 2.3 | 3.5 | 2.1 | 2.1 |
2017 | 2.6 | 4.2 | 2.2 | 2.5 |
2020 | 3.5 | 9 | 2.8 | 4.7 |
2025 | 4.5 | 14 | 4.6 | 10.2 |
2030 | 7 | 18 | 6.8 | 12.7 |
Parameters | Pessimistic (Baseline) Scenario | Optimistic Scenario |
---|---|---|
A: Input parameters | ||
Business performance of construction companies (Index) | 0.4 | 0.7 |
Level of government support (Index) | 0.4 | 0.8 |
Level of administrative barriers to innovation (Index) | 0.7 | 0.2 |
Rate of industry and academia collaboration | 0.011 | 0.017 |
Rate of imitation | 0.22 | 0.33 |
B: SD simulation output parameters | ||
Attractiveness of innovation (Index) | 0.238 | 0.665 |
Innovators (No. firms) | 3912 | 5281 |
Imitators (No. firms) | 17,710 | 34,860 |
Actual innovative companies (No. firms) | 21,620 | 40,140 |
Level of innovation (%) | 6.8 | 12.7 |
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Suprun, E.; Sahin, O.; Stewart, R.A.; Panuwatwanich, K.; Shcherbachenko, Y. An Integrated Participatory Systems Modelling Approach: Application to Construction Innovation. Systems 2018, 6, 33. https://doi.org/10.3390/systems6030033
Suprun E, Sahin O, Stewart RA, Panuwatwanich K, Shcherbachenko Y. An Integrated Participatory Systems Modelling Approach: Application to Construction Innovation. Systems. 2018; 6(3):33. https://doi.org/10.3390/systems6030033
Chicago/Turabian StyleSuprun, Emiliya, Oz Sahin, Rodney Anthony Stewart, Kriengsak Panuwatwanich, and Yaroslav Shcherbachenko. 2018. "An Integrated Participatory Systems Modelling Approach: Application to Construction Innovation" Systems 6, no. 3: 33. https://doi.org/10.3390/systems6030033
APA StyleSuprun, E., Sahin, O., Stewart, R. A., Panuwatwanich, K., & Shcherbachenko, Y. (2018). An Integrated Participatory Systems Modelling Approach: Application to Construction Innovation. Systems, 6(3), 33. https://doi.org/10.3390/systems6030033