Abstract
Interventions of central, topdown planning are serious limitations to the possibility of modelling the dynamics of cities. An example is the city of Paris (France), which during the 19th century experienced large modifications supervised by a central authority, the ‘Haussmann period’. In this article, we report an empirical analysis of more than 200 years (1789–2010) of the evolution of the street network of Paris. We show that the usual network measures display a smooth behavior and that the most important quantitative signatures of central planning is the spatial reorganization of centrality and the modification of the block shape distribution. Such effects can only be obtained by structural modifications at a largescale level, with the creation of new roads not constrained by the existing geometry. The evolution of a city thus seems to result from the superimposition of continuous, local growth processes and punctual changes operating at large spatial scales.
Introduction
A city is a highly complex system where a large number of agents interact, leading to a dynamics seemingly difficult to understand. Many studies in history, geography, spatial economics, sociology, or physics discuss various facets of the evolution of the city^{1,2,3,4,5,6,7,8,9,10}. From a very general perspective, the large number and the diversity of agents operating simultaneously in a city suggest the intriguing possibility that cities are an emergent phenomenon ruled by selforganization^{2}. On the other hand, the existence of central planning interventions might minimize the importance of selforganization in the course of evolution of cities. Central planning –here understood as a topdown process controlled by a central authority – plays an important role in the city, leaving long standing traces, even if the time horizon of planners is limited and much smaller than the age of the city. One is thus confronted with the question of the possiblity of modelling a city and its expansion as a selforganized phenomenon. Indeed central planning could be thought of as an external perturbation, as if it were foreign to the selforganized development of a city. The recent digitization and georeferentiation of old maps will enable us to test quantitatively this effect, at least at the level of the structure of the road network. Such a transportation network is a crucial ingredient in cities as it allows individuals to work, transport and exchange goods, etc. and the evolution of this network reflects the evolution of the population and activity densities^{11,12}. These network aspects were first studied in the 1960s in quantitative geography^{13} and in the last decade, complex networks theory has provided significant contributions to the quantitative characterization of urban street patterns^{14,15,16,17,18,19,20,21,22,23}.
In this article, we will consider the case of the evolution of the street network of Paris over more than 200 years with a particular focus on the 19th century, period when Paris experienced large transformations under the guidance of Baron Haussmann^{24}. It would be difficult to describe the social, political and urbanistic importance and impact of Haussmann works in a few lines here and we refer the interested reader to the existing abundant literature on the subject (see^{25}, and^{24} and references therein). Essentially, until the middle of the 19th century, central Paris has a medieval structure composed of many small and crowded streets, creating congestion and, according to some contemporaries, probably health problems. In 1852, Napoleon III commissioned Haussmann to modernize Paris by building safer streets, large avenues connected to the new train stations, central or symbolic squares (such as the famous place de l'Etoile, place de la Nation and place du Panthéon), improving the traffic flow and, last but not least, the circulation of army troops. Haussmann also built modern housing with uniform building heights, new water supply and sewer systems, new bridges, etc (see Fig. 1 where we show how dramatic the impact of Haussmann transformations are). The case of Paris under Haussmann provides an interesting example where changes due to central planning are very important and where a naive modelling is bound to fail. We analyze here in detail the effect of these planned transformations on the street network. By introducing physical quantitative measures associated with this network, we are able to compare the effect of the Hausmann transformation of the city with its ‘natural’ evolution over other periods.
By digitizing historical maps (for details on the sources used to construct the maps, see the Methods section) into a Geographical Information System (GIS) environment, we reconstruct the detailed road system (including minor streets) at six different moments in time, t = 1, 2, …, 6, respectively corresponding to years: 1789, 1826, 1836, 1888, 1999, 2010. For each time, we constructed the associated primal graph G_{t} (see the Methods section and^{22,23}), i.e. the graph where the nodes represent street junctions and the links correspond to road segments. In particular, it is important to note that we have thus snapshots of the street network before Haussmann works (1789–1836) and after (1888–2010). This allows us to study quantitatively the effect of such central planning.
In Fig. 2(a), we display the map of Paris as it was in 1789 on top of the current map (2010). In order to use a single basis for comparison, we limited our study over time to the portion corresponding to 1789. We note here that the evolution of the outskirts and small villages in the surroundings has certainly an impact on the evolution of Paris and even if we focus here (mainly because of data availability reasons) on the structural modifications of the inner structure of Paris, a study at a larger scale will certainly be needed for capturing the whole picture of the evolution of this city. We then have 6 maps for different times and for the same area (of order 34 km^{2}). We also represent on Fig. 2(b), the new streets created during the Haussmann period which covers roughly the second half of the 19th century. Even if we observe some evolution outside of this portion, most of the Haussmann works are comprised within this portion.
Results
Simple measures
In the following we will study the structure of the graph G_{t} at different times t (see the Methods section for precise definitions), having in mind that our goal is to identify the most important quantitative signatures of central planning during the evolution of this road network.
First basic measures include the evolution of the number of nodes N, edges E and total length L_{tot} of the networks (restricted to the area corresponding to 1789). In Fig. 3 we show the results for these indicators which display a clear acceleration during the Haussmann period (1836–1888). The number of nodes increased from about 3000 in 1836 to about 6000 in 1888 and the total length increase from about 400 kms to almost 700 kms, all this in about 50 years. It is interesting to note that this node increase corresponds essentially to an important increase in the population. In particular, we note (see the Supplementary Information for more details) that the number of nodes N is proportional to the population P and that the corresponding increase rate is of order dN/dP ≈ 0.0021, similar to what was measured in a previous study about a completely different area^{23}. The rapid increase of nodes during the Haussmann period is thus largely due to demographic pressure. Now, if we want to exclude exogeneous effects and focus on the structure of networks, we can plot the various indicators such as the number of edges and the total length versus the number of nodes taken as a time clock. The results shown Fig. 3(d–f) display a smoother behavior. In particular, E is a linear function of N, demonstrating that the average degree is essentially constant 〈k〉 ≈ 3.0 since 1789. The total length versus N also displays a smooth behavior consistent with a perturbed lattice^{22}. Indeed, if the segment length ℓ_{1} is roughly constant and equal to where ρ = N/A is the density of nodes (A is the area considered here), we then obtain for the total length
A fit of the type is shown in Fig. 3(d) and the value of a measured gives an estimate of the area , in agreement with the actual value A = 33.6 km^{2} (for the 1789 portion). This agreement demonstrates that all the networks at different times are not far from a perturbed lattice.
We also plot the average route distance d_{R} defined as the average over all pairs of nodes of the shortest route between them (see Methods for more details). For a two dimensional spatial network, we expect this quantity to scale as and thus increases with N. The ratio is thus better suited to measure the efficiency of the network and we observe (Fig. 3(c,f)) that it decreases with time and N. This result simply demonstrate that if we neglect delays at junctions, it becomes easier to navigate in the network as it gets denser.
Typology of new links
We can have three different types of new links depending on the number of new nodes they connect. We denote by E_{i} (i = 1, 2, 3) the number of new links appearing at time t + 1 connecting i new nodes. For example E_{0} counts the new links appearing at time t + 1 connecting two nodes existing at time t. In order to categorize more precisely these new links, we use the betweenness centrality impact δ defined in^{23} and which measures how a new link (absent at time t and present at time t + 1) affects the average betweenness centrality (see Methods section for definitions of the betweenness centrality impact δ). In^{23}, the distribution of this quantity displays two peaks which corresponds to two types of links belonging to two distinct processes: densification and exploration^{23}. We first observe (see Figure 2 of SI) that in the first period, the majority of new links are of the E_{2} type and correspond to construction of new streets with new nodes. We see that the Haussmann transition period (1836–1888) is not particularly different from the other previous periods. In the modern period (after 1999), E_{0} becomes dominant and consistent with the idea of a mature street network where densification dominates the evolution of the urban tissue. Obviously, this is also an effect of limiting ourselves to the 1789 portion: in a wider area, many new roads were created and both densification and exploration coexist. We note here that the structure of the street network of central Paris remained remarkably stable from 1888 until now (and in this period also, densification was the main process in this area).
We then plot the distribution of this quantity δ for the different transition periods and the result is shown in Fig. 4. These figures show that for all periods most new links belong to the densification process with a small peak of exploration in the period 1836–1888. In welldeveloped, mature systems, it is expected that densification is the dominant growth mechanism. Here also, we see that the Haussmann period is not significantly different from previous periods.
Evolution of the spatial distribution of centrality
The betweenness centrality (BC) g_{v}(i) of a node i is defined in the Methods section and essentially measures the fraction of times a given node is used in the shortest paths connecting any pair of nodes in the network and is thus a measure of the contribution of a link in the organisation of flows in the network^{26}. In our case where we consider a limited portion of a spatial network, two important effects need to be taken into consideration. First, as we consider a portion, only paths within this portion are taken into account in the calculation of the BC and this usually does not reflect the reality of the actual origindestination matrix. In particular, flows with the exterior of the portion and surrounding villages are not taken into account. As a result, the BC will be able to detect important routes and nodes in the internal structure of the network but will miss largescale communication roads such as a northsouth or a EastWest road connecting the portion with the surroundings of Paris. In^{23}, the scale of the network was large enough so that the BC could recover important central roads such as Roman streets. The BC in the present case has then to be used as a structural probe of the network, enabling us to track the important modifications. The second point concerns the spatial distribution of the BC which will be important in the following. For a lattice the most central nodes (see the discussion in^{22} for example) are close to the barycenter of the nodes: spatial centrality and betweenness centrality are then usually strongly correlated. In^{16} and^{17} it is shown that the most central points display interesting spatial structures which still need to be understood, but which represent an important signature of the networks' topology.
We first consider the time evolution of the node betweenness centrality (with similar results for the edge BC). In the SI (see figure 3 of SI), we show the distribution of the node BC at different times. Apart from the fact that the average BC varies, we see that the tail of the distribution remains constant in time, showing that the statistics of very central nodes is not modified. From this point of view, the evolution of the road network follows a smooth behavior, even in the Haussmann period.
So far, most of the measures indicate that the evolution of the street network follows simple densification and exploration rules and is very similar to other areas studied^{23}. At this point, it appears that Haussmann works didn't change radically the structure of the city. However, we can suspect that Haussmann's impact is very important on congestion and traffic and should therefore be seen on the spatial distribution of centrality. In the figure 5, we show the maps of Paris at different times and we indicate the most central nodes (such that their centrality g_{v}(i) is larger than max g_{v}/α with α = 10 see the SI, for a discussion on the effect of the value of α). We can clearly see here that the spatial distribution of the BC is not stable, displays large variations and is not uniformly distributed over the Paris area (we represented here the node centrality and similar results are obtained for the edge centrality, see the SI for plots for the edge centrality and more details). In particular, we see that between 1836 and 1888, the Haussmann works had a dramatical impact on the spatial structure of the centrality, especially near the heart of Paris. Central roads usually persist in time^{23,27}, but in our case, the Haussmann reorganization was acting precisely at this level by redistributing the shortest paths which had certainly an impact on congestion inside the city. After Haussmann we observe a large stability of the network until nowadays.
It is interesting to note that these maps also provide details about the evolution of the road network of Paris during other periods which seems to reflect what happened in reality and which we can relate to specific local interventions. For example, in the period 1789–1826 between the French Revolution and the Napoleonic empire, the maps shown in Fig. 5 display large variations with redistribution of central nodes which probably reflects the fact that many religious and aristocratic domains and properties were sold and divided in order to create new houses and new roads, improving congestion inside Paris. During the period 1826–1836 which corresponds roughly to the beginning of the the July Monarchy, the maps in Fig. 5 suggests an important reorganization on the east side of Paris. This seems to correspond very well to the creation during that period of a new channel in this area (the channel ‘Saint Martin’) which triggered many transformations in the eastern part of the network.
In order to analyse the spatial redistribution effect more quantitatively, we compute various quantities inside a disk of radius r centered on the barycenter of all nodes (which stays approximately at the same location in time). We first study the number of nodes N(r) (Fig. 6), its variation δN(r) between t and t + 1 and the number of central nodes (such that g_{v}(i) > max g_{v}/10). We see that the largest variation of the number of nodes (see Fig. 6b) is indeed in the Haussmann period 1836–1888, especially for distance r > 1,500 meters. More interesting, is the variation of the most central nodes (Fig. 6d). In particular, we observe that during the preHaussmann period, even if in the period 1789–1826 there was an improvement of centrality concentration, there is an accumulation of central nodes both at short distances (r < 2,500 meters) and at long distances (r > 2,500 meters) in the following period (1826–1836). As a result, visually clear in Fig. 5, there is a large concentration of centrality in the center of Paris until 1836 at least. The natural consequence of this concentration is that the center of Paris was very probably very congested at that time. In this respect, what happens under the Haussmann supervision is natural as he acts on the spatial organization of centrality. We see indeed that in 1888, the most central nodes form a more reticulated structure excluding concentration of centrality. A structure which remained stable until now. Interestingly, we note that Haussmann's new roads and avenues represent approximately 6% of the total length only (compared to nowadays network), which is a small fraction, considered that it has a very important impact on the centrality spatial organization.
This reorganization of centrality was undertaken with creation of new roads and avenues destroying parts of the original pattern (see Fig. 1 and Fig. 2(b)) resulting in the modification of the geometrical structure of blocks (defined here as the faces of the planar street network). The effect of Haussmann modifications on the geometrical structure of blocks can be quantitatively measured by the distribution of the shape factor ϕ (see Methods) shown in Fig. 7. We see that before the Haussmann modifications, the distribution of ϕ is stable and is essentially centered around ϕ = 0.5 which corresponds to rectangles. From 1888, the distribution is however much flatter showing a larger diversity of shapes. In particular, we see that for small values of ϕ < 0.25 there is an important increase of P(ϕ) demonstrating an abundance of elongated shapes (triangles and rectangles mostly) created by Haussmann's works. These effects can be confirmed by observing the angle distribution of roads shown on Fig. 8 where we represent on a polar plot r(θ) = P(θ) with P(θ) the probability that a road segment makes an angle θ with the horizontal line. Before Haussmann's modifications, the distribution has two clear peaks corresponding to perpendicular streets and in 1888 we indeed observe a more uniform distribution with a large proportion of various angles such as diagonals.
Discussion
In this paper, we have studied the evolution of the street network of the city of Paris. This case is particularly interesting as Paris experienced large modifications in the 19th century (the Haussmann period) allowing us to try to quantity the effect of central planning. Our results for central Paris reveal that most indicators follow a smooth evolution, dominated by a densification process, despite the important perturbation that happened during Haussmann. In our results, the important quantitative signature of central planning is the spatial reorganization of the most central nodes, in contrast with other regions where selforganization dominated and which didn't experience such a largescale structure modification. This structural reorganization was obtained by the creation at a large scale of new roads and avenues (and the destruction of older roads) which do not follow the constraints of the existing geometry. These new roads do not follow the densification/exploration process but appear at various angles and intersect with many other existing roads.
While the natural, selforganized evolution of roads seems in general to be local in space, the Haussmann modifications happen during a relatively short time and at a large spatial scale by connecting important nodes which are far away in the network. Following the Haussmann interventions, the natural processes take over on the modified substrate. It is unclear at this stage if Haussmann modifications were optimal and more importantly, if they were at a certain point inevitable and would have happened anyway (due to the high level of congestion for example). More work, with more data on a larger spatial scale are probably needed to study these important questions.
Methods
Temporal network data
We denote by G_{t} ≡ G(V_{t}, E_{t}) the obtained primal graph at time t, where V_{t} and E_{t} are respectively the set of nodes and links at time t. The number of nodes at time t is then N(t) = V_{t} and the number of links is E(t) = E_{t}. Using common definitions, we thus have V_{t} = V_{t}_{−1} ∪ ΔV_{t} and E_{t} = E_{t}_{−1} ∪ ΔE_{t}, where ΔV_{t} and ΔE_{t} are respectively the new street junctions and the new streets added in time ]t − 1, t] to the network existing at time t − 1.
The networks for 1789, 1826, 1836, 1888 are extracted from the following maps:

1789: Map of the city of Paris with its new enclosure. Geometrically based on the ‘meridienne de l'Observatoire’ and surveyed by Edmé Verniquet. Achieved in 1791.

1826: Road map of Paris surveyed by Charles Picquet, geographer for the King and the duke of Orléans.

1836: Cadastre of Paris, Philibert Vasserot. Map constructed according blocks and classified according to old districts. 24 Atlas, 1810–1836.

1888: Atlas of the 20 districts of Paris, surveyed by M. Alphand and L. Fauve, under the administration of the prefect E. Poubelle, Paris, 1888.
All these maps were digitized at the LaDéHiS under the supervision of Maurizio Gribaudi, in the framework of a research on the social and architectural transformations of parisian neighborhoods between the 18th and 19th centuries. The network (and the block structure of figure 1) extracted from the Vasserot cadastre was initiated by AnneLaure Bethe for the program Alpage^{28}.
The networks of 1999 and 2010 are coming from the french Geographical National Institute (IGN) on the basis of modern surveys.
Average route distance
For a network, the shortest path between two nodes is defined as the path with the minimum number of links connecting the two nodes. For spatial networks, it makes more sense to weight the links with their length: to each edge e we thus associate a weight d_{e} defined as the euclidean length of e. We can then compute the length of a path P
The shortest weighted path is then the one with the minimum total length. The average shortest weighted path is also called the average route distance d_{R}. It indicates on average how many kilometers you have to walk from one point to the other in this spatial network. For a two dimensional network, it is expected^{22} that it scales as
for a network of size N. In order to compare networks with different numbers of nodes N, it is then natural to compare the rescaled average route distance .
Betweenness centrality, impact
The nature of the growth process can be quantitatively characterised by looking at the centrality of streets. Among the various centrality indices available for spatial networks we use here the betweenness centrality (BC)^{15,17,26}, which is one of the measures of centrality commonly adopted to quantify the importance of a node or a link in a graph. Given the graph G_{t} ≡ G(V_{t}, E_{t}) at time t, the BC of a link e is defined as:
where σ_{ij} is the number of shortest paths from node i to node j, while σ_{ij}(e) is the number of such shortest paths which contain the link e. The quantity g(e) essentially measures the number of times a link is used in the shortest paths connecting any pair of nodes in the network and is thus a measure of the contribution of a link in the organisation of flows in the network. The BC of a node is defined in a similar way
where σ_{st}(i) denotes here the number of shortest path from node s to t going through the node i.
In order to evaluate the impact of a new link on the overall distribution of the betweenness centrality we use the betweenness centrality impact defined in^{23}. In the graph at time t, we first compute the average betweenness centrality of all the links of G_{t} as:
where g(e) is the betweenness centrality of the edge e in the graph G_{t}. Then, for each link e* ∈ ΔE_{t}, i.e. for each newly added link in the time window ]t − 1, t] we consider the new graph obtained by removing the link e* from G_{t} and we denote this graph as G_{t}\{e*}. We compute again the average edge betweenness centrality, this time for the graph G_{t}\{e*}. Finally, the impact δ(e*) of edge e* on the betweenness centrality of the network at time t is defined as
The BC impact is thus the relative variation of the graph average betweenness due to the removal of the link e*.
Form factor
The shape or form factor ϕ of blocks is defined as the ratio of the area of the block and the area of the circumscribed circle of diameter D (see^{16,22})
The more anisotropic the block and the smaller the factor ϕ.
Change history
12 November 2013
A correction has been published and is appended to both the HTML and PDF versions of this paper. The error has not been fixed in the paper.
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Acknowledgements
M.B. acknowledges funding from the EU Commission through project EUNOIA (FP7DG. Connect318367). H.B. acknowledges funding from the European Research Council under the European Union's Seventh Framework Programme (FP/20072013)/ERC Grant Agreement n.321186  ReaDi ReactionDiffusion Equations, Propagation and Modelling.
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M.B., P.B., H.B., M.G. have equally contributed to the design of the experiment, to the analysis and interpretation of the results and to the preparation of the manuscript.
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Barthelemy, M., Bordin, P., Berestycki, H. et al. Selforganization versus topdown planning in the evolution of a city. Sci Rep 3, 2153 (2013). https://doi.org/10.1038/srep02153
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DOI: https://doi.org/10.1038/srep02153
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