Flaminio Squazzoni and Riccardo Boero (2002)
Economic Performance, Inter-Firm Relations and Local Institutional Engineering in a Computational Prototype of Industrial Districts
Journal of Artificial Societies and Social Simulation
vol. 5, no. 1
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Received: 3-Sep-2001 Accepted: 6-Jan-2002 Published: 31-Jan-2002
Figure 1. The evolution of the technology and market environment: τ is the number of the cycles of simulation. T1, T2 and T3 are the three available technological regimes over time. The coloured areas define all the possible technological positions of firms in respect to the technology standard evolution, and all the related levels of performance which firms can achieve over time. Obviously, technological evolution is conceived as an irreversible process. |
Figure 2. Firms and technological leaning: phase of technology absorption, phase of organisational change, and phase of technology saturation |
Figure 3. Matrix of Technological and Technical Production Cost |
Figure 4. The structure of the information flow |
Figure 5. Matrix of Technological and Technical Change |
Figure 6. Matrix of Information and Research Cost |
Figure 7. Technological Information Flow Supported by the Institutional Action |
Figure 8. Technological discovery and amplification of options for insider firms with Institution 2 |
Figure 9. Final firms matching market requests over time. On the left, all the experimental settings based on the "market-like district", while on the right, all the experimental settings based on the "partnership district". Top-down: at the first level, the outcome of the first two experimental settings ("market-like district" and "partnership district"); at the second level, the experimental setting with "Institution 1" on the previous ones; at the third level, the experimental setting with "Institution 2" on the first settings |
Figure 10. The number of stable production chains over time. On the left, all the experimental settings based on the "market-like district", while on the right, all the experimental settings based on the "partnership district". Top-down: at the first level, the outcome of the first two experimental settings; at the second level, the outcome of the experimental setting with "Institution 1"; at the third level, the experimental setting with "Institution 2" |
Figure 11. Dynamics of the "aggregate" profit emerging by the production chains, measured in terms of "time compression value". "Institution 1 on market-like district" (on the left) and "Institution 1 on partnership district" (on the right) experimental setting |
Figure 12. Comparison between the average of resources between insider and outsider firms over time (Top-down: Institution 1 and 2; on the left, "market-like district", on the right, "partnership district"). The value of 1 shows an homogeneous distribution of the average of resources between insider and outsider firms |
Figure 13. Analysis of parameters. "M 3 and M 4 a" are Institution 1 and 2 on the "market-like district". "M3 and 4 b" are Institution 1 and 2 on the "partnership district" |
2 We can taxonomically assume that the difference between an industrial district and a more general industrial cluster, or a network of geographically agglomerating firms, is that the self-organising dynamics of the first one are based on long-term interactions and vertical and horizontal complex connections amongst spatially located firms, working into the same space of the segmentation of the market, and give rising to an high integrated production system. This is the reason why we speak about an industrial district, rather than about a more generic kind of industrial cluster. Another statement is that our prototype refers to a traditional picture of industrial district, to say a network of firms working into traditional industrial sectors (for example, not a high-technology production cluster) and within an environment not characterised by the proximity of universities or scientific research institutions devoted to R&D activities (for example, the famous case of Silicon Valley).
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