Topology in ArcGIS

This topic applies to ArcGIS for Desktop Standard and ArcGIS for Desktop Advanced only.

In geodatabases, topology is the arrangement that defines how point, line, and polygon features share coincident geometry. For example, street centerlines and census blocks share common geometry, and adjacent soil polygons share their common boundaries.

Addressing topology is more than providing a data storage mechanism. In ArcGIS, topology includes all the following aspects:

  1. The geodatabase includes a topological data model using an open storage format for simple features (feature classes of points, lines, and polygons), topology rules, and topologically integrated coordinates among features with shared geometry. The data model includes the ability to define the integrity rules and topological behavior of the feature classes that participate in a topology.
  2. ArcGIS includes topology layers in ArcMap that are used to display topological relationships, errors, and exceptions. ArcMap also includes a set of tools for query, editing, validation, and error correction of topologies.
  3. ArcGIS includes geoprocessing tools for building, analyzing, managing, and validating topologies.
  4. ArcGIS includes advanced software logic to analyze and discover the topological elements in the feature classes of points, lines, and polygons.
  5. ArcMap includes an editing and data automation framework that is used to create, maintain, and validate topological integrity and perform shared feature editing.
  6. ArcGIS software logic is available in the ArcGIS for Desktop and ArcGIS for Server products that can navigate topological relationships, work with adjacency and connectivity, and assemble features from these elements. For example, identify the polygons that share a specific common edge; list the edges that connect at a certain node; navigate along connected edges from the current location; add a new line and burn it into the topological graph; split lines at intersections; and create resulting edges, faces, nodes, and so on.

Elements of a geodatabase topology

In a geodatabase, the following properties are defined for each topology:

Cluster processing

Creating topological relationships involves analyzing the coordinate locations of feature vertices among features in the same feature class as well as between the feature classes that participate in the topology. Those that fall within a specified distance of one another are assumed to represent the same location and are assigned a common coordinate value (in other words, they are colocated).

A cluster tolerance is used to integrate vertices. All vertices that are within the cluster tolerance may move slightly in the validation process. The default cluster tolerance is based on the precision defined for the dataset. The default cluster tolerance is 0.001 meters in real-world units. It is 10 times the distance of the x,y resolution (which defines the amount of numerical precision used to store coordinates).

The x,y tolerance is used to match coordinates that are coincident (within the tolerance of each other).

Two cluster tolerances: x,y tolerance and z-tolerance

In ArcGIS, a pair of cluster tolerances is used to integrate vertices:

  • An x,y tolerance to find vertices within the horizontal distance of one another
  • A z-tolerance to distinguish whether or not the z-heights or elevations of vertices are within the tolerance of one another and should be clustered

How coordinates are clustered (colocated)

The x,y tolerance should be small, so only vertices that are very close together (within the x,y tolerance of one another) are assigned the same coordinate location. When coordinates are within the tolerance, they are said to be coincident and are adjusted to share the same location.

In this way, the x,y tolerance also defines the distance a coordinate can move in x or y (or both) during clustering. Therefore, coordinates can be clustered if they are within the x,y tolerance in either the x- or the y-dimension. See the diagram below. Coordinates can move as much as represented by the diagonal line in the graph, which forms a triangle. If you remember your geometry and the Pythagorean Theorem, the maximum distance within which coordinates are clustered is equal to the SQRT of 2 times the x,y tolerance.


The Pythagorean Theorem states that in a right triangle, the square of the hypotenuse (the longest side) is equal to the sum of the squares of the other two sides (legs).

The X,Y Tolerance

The default x,y tolerance

The default x,y tolerance is set to 0.001 meters or its equivalent in the units of the dataset's coordinate system. For example, if your coordinate system is recorded in feet, the default value is 0.003281 feet (0.03937 inches). The default value is 10 times the default x,y resolution, and this is recommended for most cases. If coordinates are in latitude-longitude, the default x,y tolerance is 0.0000000556 degrees.

Algorithms used in validation and clustering

When a vertex of one feature in the topology is within the x,y tolerance of an edge of any other feature in the topology, the topology engine creates a new vertex on the edge to allow the features to be geometrically integrated in the clustering process.

When clustering feature vertices during topology validation, it is important to understand how the geometry of features is adjusted. All vertices of any feature class that participates in a topology can potentially be moved if they fall within the x,y tolerance of another vertex. Vertices with higher coordinate rank features will move less and exert more gravitational pull on lower ranked coordinates. Vertices of equal-ranked features will be geometrically averaged.

It is important to note that the x,y tolerance is not intended to be used to generalize geometry shapes. Instead, it's intended to integrate linework and boundaries during topological operations, which means to help discover features that are coincident and whose vertices are the same location. This will integrate (colocate) coordinates that fall within the x,y tolerance of one another. Because coordinates can move in both x and in y by as much as the cluster tolerance, many potential problems can be resolved by processing datasets with commands that use the cluster tolerance. These include handling of extremely small overshoots or undershoots, automatic sliver removal of duplicate segments, and coordinate thinning along boundary lines.

Maximum movement of vertices

The clustering process works by moving across the map, identifying clusters of coordinates that fall within the x,y tolerance of one another. ArcGIS uses this algorithm to discover, clean up, and manage coincident geometry between features. This means that the coordinates of the coincident geometric elements are colocated (snapped to the same location). This is fundamental to many GIS operations and concepts.

As a result of the clustering process, feature vertices can potentially move more than the cluster tolerance in two ways.

  1. The tolerance is used to calculate both a horizontal distance and a vertical distance to find coordinates with the tolerance. The maximum distance a coordinate could move to its new location during this operation is SQRT of 2 times the x,y tolerance.
  2. The clustering algorithm is iterative. So it is possible in some cases that once vertices are moved, they will fall within the cluster tolerance of other vertices and can shift more than the SQRT of 2 times the x,y tolerance. This is very slight and will only occur when there are vertices that fall very close to, but not quite within, the cluster tolerance of one another (for example, within 0.001 meters of one another). As coordinate vertices are moved slightly with each iteration, they can be clustered with other coordinates and then shift across the map more than the tolerance.

Useful tips

Here are some useful tips for cluster tolerances:

  1. Generally, you can use an x,y tolerance that is 10 times the x,y resolution and expect very good results.
  2. A typical x,y tolerance is orders of magnitude smaller than the true accuracy of your data capture. For example, while your feature coordinates may be accurate to 2 meters, the default x,y tolerance is 0.001 meters.
  3. To keep movement small, keep the x,y tolerance small. However, an x,y tolerance that is too small (such as 2 times x,y resolution or less) may not properly integrate the line work of coincident boundaries.
  4. Conversely, if your x,y tolerance is too large, feature coordinates may collapse on one another. This can compromise the accuracy of feature boundary representations.
  5. Your x,y tolerance should never approach your data capture accuracy (sometimes referred to as map accuracy standards). For example, at a map scale of 1:12,000, one inch equals 1,000 feet, and 1/50 of an inch still equals 20 feet on the ground—a data capture accuracy that would be hard to meet during digitizing and scan conversion. You'll want to keep the coordinate movement using the x,y tolerance well under these numbers. Remember, the default x,y tolerance in this case would be 0.003281 feet, which should work well in almost any situation.
  6. In topologies, you can set the coordinate accuracy rank of each feature class. You'll want to set the coordinate rank of your most accurate features (such as your surveyed features) to 1 and of less accurate features to 2, 3, and so on, in descending levels of accuracy. This will cause other feature coordinates with a higher rank number (and therefore, a lower coordinate accuracy) to be adjusted to the more accurate features with a lower rank number.
  7. Often, you will want to be able to control which feature classes are more likely to be moved in the clustering process. For example, when features in one feature class are known to have more reliable positions than another set of features, you may want the less reliable features to snap to the more reliable ones. Ranks are assigned to the feature classes in the topology to accommodate this common situation. Vertices of lower-ranking features within the cluster tolerance will be snapped to nearby vertices of higher-ranking features. Locations of vertices of features of equal rank that lie within the cluster tolerance will be geometrically averaged.

Topologies and feature datasets

A topology is built on a set of feature classes that are held within a common feature dataset. Each new topology is added to the feature dataset in which the feature classes and other data elements are held.

When you create the topology, you can specify any subset of the feature classes from the feature dataset to participate in the topology according to the following conventions:

Coordinate ranks

The coordinate accuracy ranks you specify for feature classes in a geodatabase topology control the movement of feature vertices during validation. The rank helps control how vertices are moved when they fall within the cluster tolerance of one another. Vertices within the cluster tolerance of one another are assumed to have the same location and are colocated (the same coordinate values are assigned for the coordinates that fall within the cluster tolerance).

When different feature classes have a different coordinate accuracy, such as when one was collected by survey or differential Global Positioning System (GPS) and another was digitized from a less accurate source, coordinate ranks can allow you to ensure that reliably placed vertices are the anchor locations toward which less reliable vertices are moved.

Typically, the less accurate coordinate is moved to the location of the more accurate coordinate, or a new location is computed as a weighted average distance between the coordinates in the cluster. In these cases, the weighted average distance is based on the accuracy ranks of the clustered coordinates.

The location of equally ranked vertices are geometrically averaged when they are within the cluster tolerance of each other.

Be sure to assign ranks in the proper order. The features with the highest accuracy get a rank of 1, less accurate features get a rank of 2, and so on.

Z-cluster tolerance and ranks

Feature classes that model terrain or buildings three dimensionally have a z-value representing elevation for each vertex. Just as you control how features are snapped horizontally with x,y cluster tolerance and ranks, if a topology has feature classes that model elevation, you can control how coincident vertices are snapped vertically with the z cluster tolerance and ranks.

The z cluster tolerance defines the minimum difference in elevation, or z-value, between coincident vertices. Vertices with z-values that are within the z cluster tolerance are snapped together during the Validate Topology process.

If you're modeling city buildings, two buildings may be adjacent to one another and appear to share a common edge in the x,y domain. If elevation values for building corners were collected using photogrammetry, you should be concerned about maintaining the relative height of each building structure during the topology validation process. By setting the z cluster tolerance to a value of zero, you can prevent z-values from clustering when you validate topology.

If you're modeling terrain, you may have datasets collected with different x,y and z accuracies. In this case, you may want to set a z cluster tolerance greater than zero to allow snapping. To avoid z-values collected with a high level of accuracy snapping to z-values of lower accuracy, you can assign each feature class a rank. Lower ranked features' z-values snap to the elevation of higher ranked vertices if they fall within the cluster tolerance. Z-values of vertices belonging to feature classes of the same rank are averaged if they fall within the cluster tolerance.

The validate topology process averages and snaps z-values in such a way that each z-value adjusts by a total amount that is not more than the z cluster tolerance. This causes z-values of vertices with the same x,y to average or snap into groups.

For example, if the z cluster tolerance is 5, z-values of these six coincident vertices average into two groups, 11.25 and 3.5:


Before validate

After validate

z0 (rank = 1)



z1 (rank = 1)



z2 (rank = 1)



z3 (rank = 1)



z4 (rank = 1)



z5 (rank = 1)



Example of clustering of z-values

In the following example, the coincident vertices have different ranks, and the cluster tolerance is 5. Z-values average and snap into three groups, 22.5, 7.5, and 1.25:


Before validate

After validate

z0 (rank = 1)



z1 (rank = 1)



z2 (rank = 1)



z3 (rank = 2)



z4 (rank = 2)



z5 (rank = 2)



Example of clustering of z-values

Z cluster tolerance values can range from zero to the extent of the z domain (maximum z-value–minimum z-value).

Ranks are a relative measure of accuracy. The difference in rank of two feature classes is irrelevant, so ranking them 1 and 2 is the same as ranking them 1 and 3 or 1 and 10.

Topology rules

Topology rules define the permissible spatial relationships between features. The rules you define for a topology control the relationships between features within a feature class, between features in different feature classes, or between subtypes of features. For a list of available topology rules, see Geodatabase topology rules and topology error fixes.

For example, the rule Must not overlap is used to manage the integrity of features in the same feature class. If two features overlap, the overlapping geometries are displayed in red (such as shown by the overlapping red area in the adjacent polygons and the linear segment of the two lines below).

Must not overlap rule for polygons and lines. The red areas shows errors discovered during validation.

Topology rules can also be defined between subtypes of feature classes. For example, suppose you have two subtypes of street line features—normal streets (those that connect to other streets at both nodes) and cul-de-sac streets (those that dead-end at one node). A topology rule can require street features to be connected to other street features at both ends, except in the case of streets belonging to the cul-de-sac subtype.

Use your features' spatial relationships and behavior to define topology rules

Spatial relationships express specifically how features share coincident geometry along with the rules for the behavior of their spatial representations. For example, some common spatial relationships and rules include the following:

  • Parcels cannot overlap. Adjacent parcels have shared boundaries.
  • Stream lines cannot overlap and must connect to one another at their endpoints.
  • Adjacent counties have shared edges. Counties must completely cover and nest within states.
  • Adjacent Census Blocks have shared edges. Census Blocks must not overlap, and Census Blocks must completely cover and nest within Block Groups.
  • Road centerlines must connect at their endpoints.
  • Road centerlines and Census Blocks share coincident geometry (edges and nodes).

Each of these situations defines a potential case for using topology rules to maintain data integrity.

Topology validation, errors, and exceptions

Once you've created a new topology or made edits to a feature that participates in a topology, the next step is to validate the topology. Validating the topology involves the following four processes:

  1. Cracking and clustering of feature vertices to find coincident features that share the same locations (have common coordinates)
  2. Inserting common coordinate vertices into coincident features that share geometry
  3. Running a set of integrity checks to identify any violations of the rules that have been defined for the topology
  4. Creating an error log of potential topological errors in your feature dataset

As you edit or change your data, ArcGIS will track changed areas and flag them as dirty. Validate will only be run against the dirty areas in your topology. If no edits or updates have been made since the previous validate, there is nothing to check.

Errors and exceptions

Violations of topology rules are initially stored as errors in the topology. Error features record where topological errors were discovered during validation. Certain errors may be acceptable, in which case the error features can be marked as exceptions. Errors and exceptions are stored as features in the topology layer and allow you to render and manage the cases in which features need not adhere to the topology rules.

Topology errors marked as exceptions during editing

You can create a report of the errors and exceptions for the feature classes in your topology. You can use the report of the number of error features as a measure of the data quality of a topological dataset. The Error Inspector in ArcMap lets you select different types of errors and zoom to individual errors. You can correct topology errors by editing the features that violate the topology's rules. After you validate the edits, the error is deleted from the topology.

The editing tools allow you to select a topology error and choose from a number of fixes that have been predefined for that error type. You can also use the tool to get more information about the rule that has been violated or mark the error as an exception.

Geodatabase topologies are flexible enough to handle exceptions to the topology rules. You can also mark errors as exceptions. Exceptions are thereafter ignored, although you can return them to error status if you decide that they are actually errors and that the features should be modified to comply with the topology rules.

Exceptions are a normal part of the data creation and update process. For example, a street database for a city might have a rule that centerlines must connect at both ends to other centerlines. This rule would normally ensure that street segments are correctly snapped to other street segments when they are edited. However, at the boundaries of the city, you might not have street data. Here, the external ends of streets might not snap to other centerlines. These cases could be marked as exceptions, and you would still be able to use the rule to find cases where streets were incorrectly digitized or edited.

Dirty areas and validation

A key goal of geodatabase topologies is to optimize the time spent on processing and validating the feature data that participates in a topology before it can be used. Generally speaking:

Dirty areas are areas that have been edited, updated, or affected by the addition or deletion of features. Dirty areas allow the topology to limit the area that must be checked for topology errors during topology validation. Dirty areas track the places where new features have been added or existing features modified. This allows selected parts, rather than the whole extent of the topology, to be validated.

Dirty areas are managed for you by ArcGIS

Dirty areas are created by ArcGIS when a feature that participates in a topology is created or deleted, a feature's geometry is modified, a feature's subtype is changed, versions are reconciled, the topology properties are modified, or the geodatabase topology rules are changed.

Version reconciliation acts like other edits and updates to a feature class—the changed areas are flagged as dirty.

Schema changes, such as adding a new topology rule, imply that the whole topology must be revalidated (in other words, the whole dataset is flagged as dirty).

Information stored in a geodatabase topology

The following information is stored as part of a geodatabase topology:

Example of a dirty area and an error in a topology

Errors that you flag as exceptions are also recorded in the error feature tables. An Exceptions column flags errors that you identify as exceptions. In other words, an exception is an error with the exceptions column check on. Errors and exceptions are tracked as you update and maintain the feature dataset and topology through time.