virgilio - input2012
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Giovanni Virgilio on "An ANN-based approach as support for decision-making processes regarding design of ecodistricts"TRANSCRIPT
An ANN-based approach as support
for decision-making processes
regarding design of ecodistrictsregarding design of ecodistricts
Giovanni Virgilio
Department of Architecture and Spatial Planning,
University of Bologna, Italy
AIM OF THE STUDY
• The aim of this study is to methodologically delineate a process for providing public decision-making support for analysis and assessment of the performance ratings of eco-sustainable settlements on all levels.
• The results obtainable from this methodological development are significant from the training angle, also for designers of are significant from the training angle, also for designers of eco-sustainable settlements, enabling learning and the gathering of knowledge from previous experiences in regard to urban contexts.
• Hermeneutic analysis of a significant sample of relevant case studies is required in order to extract all information necessary for decision-making.
AIM OF THE STUDY
• Given the considerable quantity of information and the
extremely complex interactions of the analysed variables,
however, considerable problems may arise which can
objectively impede the operation as a whole, at least in terms
of costs/derivable benefits. of costs/derivable benefits.
• An artificial neural network was therefore tested. Neural
networks can extract new information from raw data by
constructing computer-aided decision-making models shown
to be efficacious as support for planner decision-making.
Policymakers’ and planners’ assessment capabilities are also
enhanced.
THE ECODISTRICTS
• It is not easy to establish with precision the specific characteristics that connote an eco-sustainable district.
• Within the ambit of urban development processes, an “urban
green catalyst” role may be ascribed to such districts.
• “ […] A urban green catalyst reflects the principles of sustainability, • “ […] A urban green catalyst reflects the principles of sustainability,
and is able to stimulate new dynamics that guide urban
transformations: ecological, economic, social, institutional, etc. But
it is the engine of change too, able to stimulate a new culture of
urban planning, based on an integrated approach that combines
reduction of consumes and use of renewable energies, innovation
and local participation, creativity and good governance”
• (Cerreta and Salzano, 2009).
THE ECODISTRICTS
• It should now be clear what ecodistricts are. However, it is less clear how one is to plan for, or assess, the efficacy of the strategies adopted in creating an eco-compatible district.
• Selecting efficacious design strategies is an increasingly difficult task since public decision-makers must face up to difficult task since public decision-makers must face up to highly complex problems with limited resources.
• Lessons can be drawn from consolidated practices already considered successful. Of course, these experiences cannot be transposed without considering the specific conditions of the territorial context within which they developed.
THE ECODISTRICTS
• However, by analysing a significant sample of cases we can go some way toward isolating shared structural conditions which, in all likelihood, provide the essential premises for successful projects.
• Enormous quantities of non-homogeneous data and items of information must be processed and rendered comparable (through in-depth study of the aforesaid cases).
• For analysis, we require expert knowledge to extrapolate quantitative and qualitative information considered suitable for the purposes of pinpointing
• For analysis, we require expert knowledge to extrapolate quantitative and qualitative information considered suitable for the purposes of pinpointing the structural characteristics of the cases analysed.
• Furthermore, various sophisticated analytic instruments are required which are capable of ‘perceiving’ not only the nature and extent of interactions within a local territorial context but also the context’s ability to self-organise. Such instruments are vital, since traditional techniques are limited in their capacity to pinpoint the “implicit nexuses” subtending the dense web of interactions that turns territorial systems into complex systems.
METHODOLOGICAL APPROACH
• This study is therefore methodological in nature. Its aim is to demonstrate that we can extract informa5on on complexity from complexity itself − via the proposed method of systemic analysis using Artificial Neural Networks. The general aim is to pinpoint underlying trends characterising behaviour patterns, ascribable to actions, reactions and repercussions within urban systems. within urban systems.
• Observation of territorial dynamics tells us that the territorial components are related to each other in a variety of manners. They form a lattice of “implicit nexuses” which we must uncover if we are to grasp the principles upon which the urban project is based (a lattice that generates efficacious performance through interaction with the territorial context).
• An artificial neural network (ANN) is used for this purpose. The idea is to reveal the relations between the design options pertaining to the various ecodistricts and respective contextual attributes. ANNs can in fact capture the non-linear behaviour patterns of planning processes in complex urban systems.
METHODOLOGICAL APPROACH
To achieve all this, a fully articulated methodological approach is required.as outlined below. The steps which characterize the methodological path are the following:
• Selecting case studies;
• Analysis of experts group;• Analysis of experts group;
• The choice of the neural network model;
• The test phase: recognition of the identification profiles for
the various ecodistricts;
• Interrogation of the network: identification of ideal-type
profiles
SELECTING CASE STUDIES
The case studies analysed were selected on the basis of the following characteristics:
• they must have been developed in medium-sized or large European towns/cities, to ensure, at least in theory, uniformity of the basic problem areas, as well as potential homogeneousness of social, political and cultural dynamics;
• the interventions must regard processes of new urban transformation (expansion or integration), and must be executed on an urban district scale;
• the case studies have been implemented and are therefore economically and socially consolidated and comparable;socially consolidated and comparable;
• completed interventions are preferred, involving as many aspects of urban sustainability as possible;
• a characteristic appearance specifically connoting intervention;
• various typologies of promoters;
• validity of the intervention, and availability of reference material.
SELECTING CASE STUDIES
• On the basis of the above requisites, the following case studies were selected:
- SCHEDA 01: Hammaeby Sjostad (Stockholm, Sweden);
- SCHEDA 02: Bo01 (Malmö, Sweden);
- SCHEDA 03: Viikki project (Helsinki, Finland);
- SCHEDA 04: Greenwich Millenium Village (London, UK)- SCHEDA 04: Greenwich Millenium Village (London, UK)
- SCHEDA 05: Villaggio Olimpico ex MOI (Turin, Italy);
- SCHEDA 06: Kronsberg (Hannover - Germany);
- SCHEDA 07: Vauban (Freiburg - Germany);
- SCHEDA 08: Südstadt (Tübingen- Germany);
- SCHEDA 09: Scharnhauser Park (Ostfildern – Germany);
- SCHEDA 10: Solarcity (Linz, Austria);
- SCHEDA 11: GWL-Terrein (Amsterdam - Netherlands);
- SCHEDA 12: EVA(Culemborg, Netherlands);
SELECTING CASE STUDIES
• Structuring of information
• This step provides an articulated classification of the information collected on various case studies, based on following criteria:
4 SPHERES-Environmental sustainability: understood as the ability to conserve the quality of natural resources and safeguard their reproducibility;-Economic and financial sustainability: understood as the ability to generate incomes and employment as means of support for the population;-Social sustainability: understood as the ability to ensure, in terms of class and gender, fairness in distribution of the conditions of human wellbeing (safety/security, health, education);-Political and institutional sustainability: understood as the ability to ensure conditions of stability, democracy, ability to ensure conditions of stability, democracy, participation, justice.
4 SPHERES
23 GENERAL THEMES
Amb.1. BiodiversityAmb.2. Soil ConsumptionAmb.3. SettlementAmb.4. BioclimaticAmb.5. EnergyAmb.6. WaterAmb.7. MaterialsAmb.8. WasteAmb.9. TransportationAmb.10. HealthEco.1. GovernanceEco.1. GovernanceEco.2. ImplementationEco.3. ManagementEco.4. Settlement CostsEco.5. Economic ActivitiesSoc.1. PopulationSoc.2. Quality LivingSoc.3. ManagementSoc.4. Services And Public FacilitiesPol.1. ImplementationPol.2. ParticipationPol.3. GovernancePol.4. Management
4 SPHERES
23 GENERAL THEMES
60 FEATURES
Biodiversity: vegetationBiodiversity: LandscapeSoil consumption: pre-existingSoil consumption: soil / subsoilSoil consumption: land useSettlement: settlement locationSettlement: settlement morphologySettlement: building typologiesBioclimatic: Building orientationBioclimatic: natural lightingBioclimatic: Hygrothermal comfortBioclimatic: ventilationEnergy: reduction / controlEnergy: optimizing resourcesEnergy: use of renewable resources
Health: Noise And Air PollutionGovernance: Public ParticipationGovernance: Private ParticipationImplementation: Acquisition AreasImplementation: ProgrammingImplementation: SecurityManager: MaintenanceManagement: UseManager: TaxationSettlement: PropertySettlement: Social HousingEconomic Activities: Job OfferEconomic Activities: Uses / DestinationsEconomic Activities: TourismPopulation: Composition60 FEATURES Energy: use of renewable resources
Water: outflowWater: treatmentMaterials: constructionMaterials: impact energyWaste recoveryWaste management systemWaste treatmentTransportation: connectivityTransportation: collective mobilityTransportation: Individual MobilityTransportation: slow mobilityTransport: Road safetyHealth: Indoor Air Quality
Population: CompositionPopulation: MarginalityPopulation: Aggregation / InclusionPopulation: Social SecurityQuality of Living: Sense of SpaceQuality of Living: The Aesthetic QualityManagement: SociabilityServices: SociabilityServices: Destination-scale NeighborhoodServices Destinations Urban ScaleImplementation: Ad Hoc InitiativesParticipation: InvolvementGovernance: Institutional And PolicyGovernance: Political OrientationManagement: Institutional And Communication
4 SPHERES
23 GENERAL THEMES
60 FEATURES60 FEATURES
131 TARGETSsome examples of targets .............AMB A.1. - Integration of green space to built environment and all living spaces.AMB B.1. - Facilitate and promote action of plant vegetation.AMB C.1. - Environmental qualification of mobility infrastructures…………………………………………………………………………………………..
4 SPHERES
23 GENERAL THEMES
60 FEATURES60 FEATURES
131 TARGETS
285 STRATEGIES
some examples of strategies .............
AMB A.1.1. - Environmental connotation of public spaceAMB A.1.2. - Inserting inverdite between built areasAMB A.1.3. - Creation of green spaces for sport activitiesAMB B.1.1. - Protection of biodiversityAMB B.1.2. - Improve the greening of plants vegetationAMB B.1.3. - Formation of an urban network of link with the biological system of green land.AMB C.1.1. - Environmental connotation of mobility spaces……………………………………………………………………………….
ANALYSIS OF EXPERTS GROUP
4 SPHERES
23 GENERAL THEMES
60 FEATURES
The phase encoding of the data thus allows us to define the
MATRIX OF URBAN SUSTAINABILITY
60 FEATURES
131 TARGETS
285 STRATEGIES
ANALYSIS OF EXPERTS GROUP
• The adopted approach has been focused on an analysis conducted by a group of experts based on the method of Nominal Group Technique (Delbecq et al., 1975). More precisely, here it has evaluated the level of implementation of various strategies, that is been identified by assigning a structured score as follows:
• 0 = no strategy adopted
• 0.5 = partially adopted strategy• 0.5 = partially adopted strategy
• 1 = full implementation of the strategy.
• The final step is to assign a weight to each "general theme". This value expresses the significance that theme assumes in the development of the project. This result is easily achieved for all the specific themes, by adding the scores attributed to the different implemented strategies and by dividing the obtained value for the maximum score theoretically achievable. By classifying the various strategies adopted in the case studies according to the criteria of interpretation given below, we can establish the evaluation matrix (the matrix being based on the judgments of analysts or experts).
ANALYSIS OF EXPERTS GROUP
THEMESECODISTRICTS(*)
q.1 q.2 q.3 q.4 q.5 q.6 q.7 q.8 q.9 q.10 q.11 q.12
AMB.1. Biodiversity 0,67 0,50 0,72 0,89 0,33 0,56 0,89 0,44 0,94 0,56 0,50 0,56
AMB.2. Soil Consumption 0,56 0,72 0,59 0,75 0,34 0,53 0,78 0,41 0,78 0,53 0,75 0,56
AMB.3. Seetlement System 0,72 0,78 0,38 0,53 0,59 0,41 0,59 0,63 0,56 0,50 0,72 0,41
AMB.4. Bioclimatic 0,75 0,54 0,50 0,71 0,29 0,64 0,64 0,29 0,79 0,57 0,46 0,36
AMB.5. Energy 0,78 0,72 0,58 0,83 0,56 0,69 0,61 0,50 0,81 0,67 0,56 0,53
AMB.6. Water 0,77 0,62 0,58 0,73 0,27 0,62 0,77 0,42 0,73 0,50 0,58 0,65
AMB.7. Building Materials 0,50 0,67 0,67 0,72 0,56 0,44 0,78 0,50 0,78 0,67 0,67 0,61
AMB.8. Waste 0,68 0,45 0,50 0,55 0,27 0,59 0,86 0,32 0,59 0,55 0,55 0,55
AMB.9. Transportation 0,68 0,78 0,63 0,78 0,35 0,63 0,95 0,65 0,68 0,65 0,75 0,63
THE EVALUATION MATRIX
AMB.10. Health 0,55 0,58 0,48 0,63 0,30 0,50 0,60 0,50 0,58 0,60 0,63 0,50
ECO.1. Governance 0,69 0,75 0,50 0,50 0,31 0,56 0,88 0,81 0,56 0,69 0,56 0,56
ECO.2. Implementation 0,56 0,67 0,61 0,44 0,50 0,78 0,83 0,78 0,50 0,72 0,67 0,50
ECO.3. Management 0,50 0,52 0,62 0,52 0,17 0,69 0,86 0,55 0,57 0,45 0,69 0,57
ECO.4. Seetlement System 0,20 0,45 0,55 0,35 0,30 0,80 0,90 0,70 0,50 0,50 0,60 0,50
ECO.5. Economic Activities 0,70 0,87 0,33 0,53 0,27 0,83 0,77 0,77 0,87 0,77 0,50 0,43
SOC.1. Population 0,34 0,53 0,63 0,50 0,22 0,81 0,81 0,53 0,91 0,78 0,78 0,56
SOC.2. Living Quality 0,63 0,50 0,58 0,71 0,58 0,79 0,71 0,54 0,79 0,71 0,42 0,46
SOC.3. Management 0,25 0,50 0,83 0,33 0,08 0,83 1,00 0,67 0,67 0,83 0,83 0,67
SOC.4. Services 0,69 0,69 0,47 0,78 0,53 0,78 0,72 0,50 0,72 0,56 0,50 0,47
POL.1. Implementation 0,50 1,00 0,50 1,00 0,50 1,00 1,00 0,50 1,00 1,00 1,00 0,50
POL.2. Partecipation 0,08 0,42 0,67 0,46 0,04 0,54 0,96 0,79 0,46 0,75 0,75 0,46
POL.3. Governance 0,50 0,50 0,81 1,00 0,50 0,56 1,00 1,00 1,00 0,88 0,69 0,44
POL.4. Management 0,75 0,50 0,58 0,83 0,33 0,58 0,92 0,83 0,83 0,50 0,50 0,58
(*The following codes are used to indicate the different ECO DISTRICTS: q.1 = Hammaeby Sjostad; q.2 = Bo01; q.3 = Viikki project;q.4 = GMV; q.5 = Villaggio Olimpico ex MOI; q.6 = Kronsberg; q.7 = Vauban; q.8 = Südstadt; q.9 = Scharnhauser Park; q.10 =Solarcity; q.11 = GWL-Terrein; q.12 = EVA.
ANALYSIS OF EXPERTS GROUP
• Interpretation of the information produced is an arduous task, and the sheer volume of this information very greatly complicates decision-making tasks. Above all, considering the various strategies adopted, an account of the (positive and negative) interactions noted cannot be fully provided.
• It was therefore decided to employ an instrument capable of efficaciously and rapidly performing this function. When compared to those obtained and rapidly performing this function. When compared to those obtained exclusively through the assessments of experts, the error margins are generally encouraging.
• The opportunities provided by Artificial Neural Networks are therefore of considerable interest.
THE CHOICE OF THE NEURAL NETWORK MODEL
• There are different types of networks, for the purposes of our study, we have chose a neural network algorithm that exploits the internal recirculation. Recirculation Neural Network (RNN) were introduced by Geoffrey Hinton and James McClelland (Hinton and McClelland,1988).
• This type of networks belongs to the family of autoassociative neural networks, their main feature is take input and output the same vector more specifically, in a RNN, data is processed in one direction and learning more specifically, in a RNN, data is processed in one direction and learning takes place using only local knowledge. The weights matrix of a RNN consists of maximum gradient connections between the Input and the Output layer.
• Also, each element in both the hidden and visible layers are connected to a bias element. These connections have variable weights which learn in the same manner as the other variable weights in the network.
THE CHOICE OF THE NEURAL NETWORK MODEL
• Therefore, if there are N Input Nodes in a RNN, the weights matrix Wij will be made up of N2
connections. The scheme of used RNN is shown in the following scheme:
Massimo Buscema and theSemeion Group havedeveloped a techniquecalled the Re-entry (seeBuscema, 1994,1999), that isrepurposed in this study. Thealgorithm, on which thisalgorithm, on which thistechnique is founded, is verysimple, but at the same timeeffective, as it allows tocreate a cycle in which theoutput that is generated bythe network is re-entered
into the network as newinput. The process endswhen the output generatedis not subject to additionalmutations.
THE CHOICE OF THE NEURAL NETWORK MODEL
• The training phase
We can, at this stage, proceed with the RNN training phase by inserting the following vector as real input:
where GThi indicates the value attributed in the evaluation matrix to the h-th general theme relative to the i-th district.
The term aij= 0 if j ≠ i and aij= 1 if j = i;
the term in question therefore assumes the value of 1 only for the i-th
district, thus enabling identification of the said term.
THE CHOICE OF THE NEURAL NETWORK MODEL
• The data-input matrix
• Slightly more than 14,000 ANN training cycles (epochs) took place. The error value noted is approximately 0,4% .
• Following the training phase, the network should be capable of reconstructing its own matrix of weights (which can be attributed to the various strategies applied to the analysed districts) and of providing useful indications if appropriately interrogated.
•
THE CHOICE OF THE NEURAL NETWORK MODEL
• The test phase: recognition of the identification profiles for
the various ecodistricts
• At this stage, verification of the level of “self-awareness” reached by the neural network becomes important. In other words, we must verify whether the network is capable of reconstructing the profile of the 12 districts.
• Hence, the aim is to test the capacity of the network to recognise a given • Hence, the aim is to test the capacity of the network to recognise a given district, to see what scores the network assigns to the set of eco-oriented strategies, and then to assess the deviation between the data of the original evaluation matrix (produced by expert group) and the data of the evaluation matrix produced by the network.
• The Index of compliance obtained as total value of the ratio for the value proposed by the neural network (NN) and the real value (R) is meanly equal to 0.95. A lower mean deviation of 5% is noted between the profile proposed by the neural network and the real profile of the 12 ecodistricts. All in all, for the scopes of this study, this deviation may be considered satisfactory
EVALUATION MATRIX PRODUCED BY THE RNN
THEMES ECODISTRICTS
q.1 q.2 q.3 q.4 q.5 q.6 q.7 q.8 q.9 q.10 q.11 q.12
AMB.1. Biodiversity 0,65 0,46 0,71 0,89 0,26 0,50 0,92 0,41 0,96 0,52 0,45 0,52
AMB.2. Soil Consumption 0,54 0,75 0,58 0,76 0,29 0,49 0,80 0,37 0,79 0,49 0,77 0,54
AMB.3. Seetlement System 0,74 0,81 0,36 0,51 0,58 0,36 0,60 0,63 0,56 0,46 0,76 0,38
AMB.4. Bioclimatic 0,78 0,54 0,49 0,73 0,22 0,67 0,67 0,24 0,81 0,58 0,44 0,30
AMB.5. Energy 0,78 0,74 0,56 0,85 0,51 0,72 0,60 0,48 0,81 0,67 0,54 0,48
AMB.6. Water 0,80 0,62 0,56 0,75 0,20 0,61 0,80 0,38 0,72 0,46 0,57 0,66
AMB.7. Building Materials 0,46 0,69 0,66 0,71 0,54 0,37 0,80 0,47 0,79 0,66 0,68 0,61
AMB.8. Waste 0,72 0,41 0,45 0,52 0,22 0,60 0,90 0,26 0,55 0,54 0,53 0,58
AMB.9. Transportation 0,67 0,78 0,59 0,79 0,27 0,59 0,97 0,60 0,62 0,60 0,74 0,60
AMB.10. Health 0,56 0,58 0,45 0,65 0,25 0,49 0,61 0,48 0,57 0,59 0,65 0,49 AMB.10. Health 0,56 0,58 0,45 0,65 0,25 0,49 0,61 0,48 0,57 0,59 0,65 0,49
ECO.1. Governance 0,71 0,77 0,46 0,49 0,25 0,52 0,91 0,83 0,54 0,66 0,52 0,55
ECO.2. Implementation 0,55 0,67 0,62 0,42 0,49 0,79 0,86 0,78 0,47 0,74 0,65 0,47
ECO.3. Management 0,52 0,52 0,62 0,52 0,12 0,70 0,88 0,52 0,55 0,39 0,70 0,57
ECO.4. Seetlement System 0,16 0,44 0,53 0,33 0,29 0,82 0,93 0,70 0,49 0,47 0,57 0,49
ECO.5. Economic Activities 0,70 0,90 0,27 0,50 0,20 0,85 0,78 0,80 0,90 0,77 0,44 0,38
SOC.1. Population 0,30 0,51 0,59 0,45 0,18 0,81 0,81 0,50 0,94 0,79 0,80 0,53
SOC.2. Living Quality 0,62 0,47 0,54 0,72 0,56 0,83 0,72 0,52 0,83 0,74 0,36 0,42
SOC.3. Management 0,21 0,47 0,82 0,26 0,05 0,81 1,00 0,55 0,61 0,84 0,81 0,64
SOC.4. Services 0,69 0,70 0,41 0,80 0,50 0,82 0,74 0,49 0,71 0,56 0,46 0,42
POL.1. Implementation 0,28 1,00 0,18 1,00 0,32 1,00 1,00 0,31 1,00 1,00 1,00 0,23
POL.2. Partecipation 0,06 0,43 0,69 0,48 0,02 0,47 0,97 0,79 0,40 0,76 0,74 0,42
POL.3. Governance 0,36 0,34 0,70 1,00 0,35 0,41 1,00 1,00 1,00 0,80 0,61 0,29
POL.4. Management 0,76 0,44 0,53 0,85 0,25 0,56 0,94 0,86 0,85 0,42 0,46 0,57
THE CHOICE OF THE NEURAL NETWORK MODEL
• Interrogation of the network: identification of ideal-type
profiles• At this stage we are in a position to interrogate the network in order to obtain indications
relative to the performance ratings of individual districts. In other words, the aim of this phase is that of assessing which of the analysed cases may constitute a model (and therefore an ideal-type profile) with reference to the strategies adopted in order to deal with the four spheres of sustainability.
• Hence, the first type of interrogation aims to pinpoint 4 ideal-type district profiles, a summary description of which may be provided as follows:summary description of which may be provided as follows:
• Environmental Profile: this profile is characterised by a focus on the sphere of environmental sustainability, and, therefore, the strategies which are adopted aim, primarily, at ensuring environmental quality of the settlement and reduction of consumption of natural resources;
• Social Profile: for this profile the strategies receiving most attention are those that aim at attaining conditions for the settlement such as are capable of fostering social cohesion and inclusion;
• Economic Profile: this profile is characterised by the mainly economic nature of the strategies adopted, which aim to produce wealth and jobs for the inhabitants;
• Political Profile: here, the focus is on forms of direct democracy and on the manners of participation through which direct democracy is implemented in collective decision-making processes.
INTERROGATION OF THE NETWORK: IDENTIFICATION
OF IDEAL-TYPE PROFILES• In the cases analysed, of course, these characteristics coexist (with varying intensities). Our
investigation aims to identify which characteristic emerges significantly, to such an extent that it univocally connotes the case analysed.
• Operationally speaking, it is a question of constructing an input vector relative to each district which, in regard to the sphere analysed, shall present maximum intensity relative to the themes characterising it.
ENVIRONMENTAL PROFILE
amb.1 1,00 amb.6 1,00 eco.1 0,00 soc.1 0,00 pol.2 0,00
The network result is the following (case of Hammarby Sjöstad)
ACTIVED
INDICATORS:
amb.1 1,00 amb.6 1,00 eco.1 0,00 soc.1 0,00 pol.2 0,00
amb.2 1,00 amb.7 1,00 eco.2 0,00 soc.2 0,00 pol.3 0,00
amb.3 1,00 amb.8 1,00 eco.3 0,00 soc.3 0,00 pol.4 0,00
amb.4 1,00 amb.9 1,00 eco.4 0,00 soc.4 0,00 input
amb.5 1,00 amb.10 1,00 eco.5 0,00 pol.1 0,00
ENVIRONMENTAL PROFILE
IDENTIFIED
STRATEGIES
amb.1 0,74 amb.6 0,75 eco.1 0,45 soc.1 0,37 pol.2 0,10
amb.2 0,73 amb.7 0,68 eco.2 0,38 soc.2 0,52 pol.3 0,23
amb.3 0,65 amb.8 0,65 eco.3 0,48 soc.3 0,28 pol.4 0,53
amb.4 0,68 amb.9 0,69 eco.4 0,18 soc.4 0,61 output
amb.5 0,75 amb.10 0,54 eco.5 0,34 pol.1 0,88
INTERROGATION OF THE NETWORK: IDENTIFICATION
OF IDEAL-TYPE PROFILES
• The network identifies Hammarby Sjöstad as the district, among those analysed, with the most marked pertaining characteristics .
• However, the network also indicates the importance assumed, for the project’s success, both by community involvement during the implementation phase and by the array of services at hand.
• This latter aspect reveals the network’s ability to pinpoint the implicit • This latter aspect reveals the network’s ability to pinpoint the implicit nexuses which come about among the various strategies, underscoring an ability to fully grasp the complexity of the system and provide valid support during the decision-making phase.
Interrogation of the network: identification of ideal-type profiles
ENVIRONMENTAL PROFILE
HAMMARBY SJÖSTAD (STOCKHOLM, SWEDEN)
INTERROGATION OF THE NETWORK: IDENTIFICATION
OF IDEAL-TYPE PROFILES
• Likewise, the other ideal-type profiles were analysed. While, for allinterrogations, the network is capable of detecting the presence of theanalysed characteristic, in the case of the social and political profiles theintensity of the characteristic is not high.• This is probably due to the scarcity of the information gathered during the
reconnoitring phase relative to these two aspects. Hence the input datawere found to be fairly homogeneous. In any case, this fact underscoreswere found to be fairly homogeneous. In any case, this fact underscoreseven more clearly the potentials provided by the network duringexploratory investigation, in that the network manages (at least in part) tohighlight districts in which certain characteristics are most marked.
INTERROGATION OF THE NETWORK: IDENTIFICATION OF IDEAL-TYPE
PROFILES
ECONOMIC PROFILE
SÜDSTADT (TÜBINGEN- GERMANY)
INTERROGATION OF THE NETWORK: IDENTIFICATION OF IDEAL-TYPE
PROFILES
SOCIAL PROFILE
KRONSBERG (HANNOVER - GERMANY)
INTERROGATION OF THE NETWORK: IDENTIFICATION OF IDEAL-TYPE
PROFILES
POLITICAL PROFILE
SÜDSTADT (TÜBINGEN- GERMANY)GREENWICH MILLENIUM VILLAGE (LONDON, UK)
INTERROGATION OF THE NETWORK: IDENTIFICATION
OF IDEAL-TYPE PROFILES
• The next step consists in an analysis of the performance ratings of various districts in terms of the mix of strategies adopted. Here, too, the responses obtained on interrogation of the network are of particular interest.
• As above, here too, from the operational viewpoint, no major problems arise, because it will be sufficient to activate with maximum intensity the arise, because it will be sufficient to activate with maximum intensity the themes that shall constitute the analysed combination of strategies. This can be readily achieved by assigning a value of 1 to the theme.
• With the first theme that shall be illustrated, the idea was to carry out analysis in order to understand which mix will be capable of simultaneously ensuring encouraging performance ratings in the fields of environmental and economic options.
INTERROGATION OF THE NETWORK: IDENTIFICATION
OF IDEAL-TYPE PROFILES
• The network identifies the winning strategies: – strengthening the transportation network and the coexistence of various
forms of mobility;
– the presence of public-private partnerships capable of activating efficacious governance processes;
– accessibility of the settlement;
– development and safeguarding of water as a resource; – development and safeguarding of water as a resource;
– development of economic activities, with particular attention paid to activities with low environmental impact;
– activation of processes of implementation and political management.
• Hammarby is the district which most satisfactorily brings together the aspects investigated in this profile. Hammarby not only confirms its environmental vocation; it is noted, also, that this vocation is even enhanced by the presence of strategies aiming at promotion of economic aspects
INTERROGATION OF THE NETWORK: IDENTIFICATION
OF IDEAL-TYPE PROFILES
ENVIRONMENTAL-ECONOMIC PROFILE
HAMMARBY SJÖSTAD (STOCKHOLM, SWEDEN)
INTERROGATION OF THE NETWORK: IDENTIFICATION
OF IDEAL-TYPE PROFILES
• The last two profiles presented are socio-economic and political -economic.
• In regard to the socio-economic profile, the network identifies as winning strategies implementation and development of economic activities together with collective forms of management. Thus we see a strengthening of the position of Kronsberg, which becomes the case study strengthening of the position of Kronsberg, which becomes the case study most capable of representing this profile.
INTERROGATION OF THE NETWORK: IDENTIFICATION
OF IDEAL-TYPE PROFILES
• To conclude, the political and economic profile is the final profile recognised by the network.
• This profile is characterised by special attention paid to development of strategies that foresee implementation of forms of political and economic governance; the participation of citizens; diversification of typologies of home diversification of typologies of home ownership and, in particular, the presence of social housing; integration and integrated development of various forms of transportation and mobility; and forms of community management. The Südstadt district practically fully embodies the characteristics identified by the network, thereby confirming a satisfactory level of integration of the strategies adopted with reference to the problem areas analysed.
CONCLUSIONS
• The methodological approach which has been developed has enabled a full appreciation of the structural complexity of the case studies analysed, while enabling identification of the particular characteristics which render exemplary a number of these cases.
• The analytic instrument adopted has been found to be • The analytic instrument adopted has been found to be extremely powerful and efficacious in its ability to identify the “implicit nexuses” coming about among the various territorial components, and which are capable of conditioning the success of the various implemented strategies. Hence, from this point of view, the neural network is capable of pinpointing not only synergic dynamics but also potentially antagonistic dynamics, thereby most surely facilitating decision-making processes.
CONCLUSIONS
• However, we should also note the manners in which the neural network’s assessment process is implemented. Since this process is based on a “black box model”, an account of the associative processes cannot be exhaustively provided. A potential danger, in this regard, may lie, for example, in inappropriate levelling of the proposals produced – as a consequence of homogenisation of information. This situation may come consequence of homogenisation of information. This situation may come about where information in regard to the contexts of decision-making –where the choices are made – is insufficient. In other words, the phase of collection of information becomes vital.
• Thanks for your attention!