Multicriteria Spatial Decision Support Systems for Future Urban Energy Retrofitting Scenarios
Abstract
:1. Introduction
2. Methodological Theoretical Framework
- Provide mechanisms for the spatial data input;
- Allow representation of the spatial relations and structures;
- Include the analytical techniques of spatial and geographical analysis; and
- Provide output in a variety of spatial forms, including maps.
2.1. The Multicriteria Decision Analyses (MCDA)
2.1.1. The MACBETH Method
2.1.2. The “Playing Cards” Method
2.2. Methodological Steps of a MC-SDSS
- Intelligence phase: the decisional context analysis for structuring and identifying the decision problem should be provided in this phase. Both relevant decision criteria and alternative scenarios should be established, identified and assessed in this phase. The process model includes: (i) data collection and integration; (ii) criteria definition; and (iii) scenario definition;
- Design phase: once the alternative scenarios are defined, it is necessary to carefully choose the most appropriate MCDA method in order to structure the decision model and the evaluation matrix (criteria and alternatives matrix);
- Evaluation and Choice: the selected MCDA method will assess and evaluate the alternative scenarios. During this phase, a sensitivity analysis is suggested in order to examine the consistency of the obtained outcomes and the robustness of the model.
3. Identifying a Coherent Set of Criteria for the MC-SDSS
3.1. The Criteria Set in the DIMMER Project
The Ranking of the Criteria Based on MACBETH Approach
- (1a) Looking at the criteria under examination in Table 2, rank them from most preferred to least preferred.
- (1b) According to the rank so far provided, to what extent do you prefer one criterion to another?
- Example: I strongly prefer the criterion “investments’ costs” over the criterion “running costs” and I weakly prefer “running costs” to the criterion “resilience of the energy system”.
3.2. The Criteria Set in the EEB Project
The Ranking of the Criteria Based on Playing Card Method
4. Discussion
5. Conclusions
Acknowledgments
Author Contributions
Conflicts of Interest
References
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Categories | Description |
---|---|
Extremely | Extreme preference of the criterion/option A over the criterion/option B |
Very strongly | Very strong preference of the criterion/option A over the criterion/option B |
Strongly | Strong preference of the criterion/option A over the criterion/option B |
Moderately | Moderate preference of the criterion/option A over the criterion/option B |
Weakly | Weak preference of the criterion/option A over the criterion/option B |
Very weakly | Very weak preference of the criterion/option A over the criterion/option B |
Not at all | No difference in terms of preference |
Aspect | Criteria | Literature | Description | Unit |
---|---|---|---|---|
Economic | Investment costs | [40] | Investment costs related to refurbishment of buildings (efficiency investment) and new energy sources (infrastructure investment). | Euro |
Payback Period (PBP) | [41] | Performance measure used to evaluate the efficiency of an investment or to compare the efficiency of a number of different investments. | Years | |
Environmental | Reduction of the CO2 emissions. | [36] | Reduction of the CO2 pollutant emissions. | Percentage |
Technical | Reduction of the energy requirement | [34] | Percentage of reduction of the energy requirement due to the buildings’ intervention (coat insulations and windows). | Percentage |
Resilience of the energy system. | [34] | Ability of soak up economy and physical shocks of the energy system. | Ordinal |
Criteria Ranking | Scores (%) |
---|---|
Investment costs | 30 |
Payback period (PBP) | 27 |
Reduction of the energy requirement | 23 |
Reduction of the CO2 emissions | 18 |
Resilience of the energy system. | 2 |
Aspect | Criteria | Literature | Description | Unit |
---|---|---|---|---|
Environmental | Global emissions CO2 | [36,43,44] | Measure the equivalent emission of CO2, which is avoided by the examined action. | Tons/year |
Local emissions (NOX + PM10) | [43] | Direct impact on the health of the community and an indirect impact on the social state of the community. | Ordinal scale | |
Economic | Payback period (PBP) | [41] | Performance measure used to evaluate the efficiency of an investment or to compare the efficiency of a number of different investments. | Years |
Investment cost | [40] | Investment costs related to refurbishment of building (efficiency investment) and/or new heating system (infrastructure investment). | Euro | |
Socio-economic feasibility | [45] | The economic capability and willingness of the people. | Number | |
Maintenance costs | [46] | Running fixed and variable costs due to maintenance of the heating system (does not take into account fuel costs). | Euro | |
Technical | Reliability | [36,47] | Efficiency of the technology and the requalification result. | Ordinal scale |
Technical life | [44] | Durability of the whole strategy in relation to the service life of each retrofit measure. | Years | |
Social | Social acceptability | [47,48] | The perception of the people related to specific impacts due to the refurbishments. | Ordinal scale |
Local Job creation | [49] | Potentiality of creating job and better regularity of the employee. | Man-day/ordinal scale | |
Architectural Impact | [49] | The visual and architectural impact of refurbishments in the existing built environment. | ordinal scale |
Rank | Subset of Ex-Equo | Number of Cards | Positions | Non-Normalize Weights | Normalized Weights | Total 2 |
---|---|---|---|---|---|---|
1 | Architectural Impact | 1 | 1 | 1 | 1316 | 132 |
2 | White cards | 3 | (2,3,4) | - | - | - |
3 | Local Job creation | 1 | 5 | 5 | 6579 | 658 |
4 | White cards | 1 | (6) | - | - | - |
5 | Reliability | 1 | 7 | 7 | 9211 | 921 |
6 | White cards | 2 | (8,9) | - | - | - |
7 | Socio/economic feasibility + Local emissions | 2 | 10,11 | 10,5 | 13,816 | 2763 |
8 | White cards | 1 | (12) | - | - | 0 |
9 | Investment costs | 1 | 13 | 13 | 17,105 | 1710 |
10 | Payback Period | 1 | 14 | 14 | 18,421 | 1842 |
11 | Global emissions CO2 | 1 | 15 | 15 | 19,737 | 1973 |
SUM | 76 1 | 100 |
MACBETH Approach | Playing Card (Simos Approach) | |
---|---|---|
Selecting and Weighting Methods | Guided (ordinal scale) | Subjective (subjective scale) |
Participation Structure | Participative approach structured through the use of a dedicated software | Semi-structured participative based on free discussion |
Approach | Participants are asked to pair-wise compare the importance of criteria through worksheets | Participants are asked to rank the cards according to their personal knowledge and background |
Importance ranking | Scales can vary from 0 (equal importance) to 5 (absolutely more important) | Rank importance position by inserting a set of cards “white cards” between colored cards |
Stakeholders acceptance | Black box | Intuitive and entertaining |
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Lombardi, P.; Abastante, F.; Torabi Moghadam, S.; Toniolo, J. Multicriteria Spatial Decision Support Systems for Future Urban Energy Retrofitting Scenarios. Sustainability 2017, 9, 1252. https://doi.org/10.3390/su9071252
Lombardi P, Abastante F, Torabi Moghadam S, Toniolo J. Multicriteria Spatial Decision Support Systems for Future Urban Energy Retrofitting Scenarios. Sustainability. 2017; 9(7):1252. https://doi.org/10.3390/su9071252
Chicago/Turabian StyleLombardi, Patrizia, Francesca Abastante, Sara Torabi Moghadam, and Jacopo Toniolo. 2017. "Multicriteria Spatial Decision Support Systems for Future Urban Energy Retrofitting Scenarios" Sustainability 9, no. 7: 1252. https://doi.org/10.3390/su9071252
APA StyleLombardi, P., Abastante, F., Torabi Moghadam, S., & Toniolo, J. (2017). Multicriteria Spatial Decision Support Systems for Future Urban Energy Retrofitting Scenarios. Sustainability, 9(7), 1252. https://doi.org/10.3390/su9071252