Clustering - query clusters

This sample demonstrates how to query features represented by aggregate point clusters. Clustering is a method of reducing points in a FeatureLayer, CSVLayer, GeoJSONLayer, WFSLayer, or OGCFeatureLayer by grouping them based on their spatial proximity to one another. Typically, clusters are proportionally sized based on the number of features within each cluster. See the Intro to clustering sample if you are unfamiliar with clustering.

Querying clustered features allows you to do the following:

  1. Query and display statistics describing the clustered features in the popup.
  2. Query the extent of the features and display it in the view.
  3. Query all features and calculate the convex hull.

To query a cluster's features, you must provide the ObjectID of the graphic representing the cluster to the Query.aggregateIds property and pass the parameters to the desired query method on the clustered layer's layer view.

Query cluster features
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          const query = layerView.createQuery();
          query.aggregateIds = [graphic.getObjectId()];
          const { features } = await layerView.queryFeatures(query);

Query cluster statistics

To query statistics for the features included in a cluster, reference the ObjectID of the cluster graphic in Query.aggregateIds, then specify the query outStatistics. Since the clustered layer has a UniqueValueRenderer, we'll use groupByFieldsForStatistics to group the statistics by the field used to categorize the features in the renderer.

cluster statistics
Calculate cluster statistics
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          const query = layerView.createQuery();

          query.aggregateIds = [graphic.getObjectId()];

          query.groupByFieldsForStatistics = ["fuel1"];
          query.outFields = ["capacity_mw", "fuel1"];
          query.orderByFields = ["num_features desc"];
          query.outStatistics = [
            {
              onStatisticField: "capacity_mw",
              outStatisticFieldName: "capacity_total",
              statisticType: "sum"
            },
            {
              onStatisticField: "1",
              outStatisticFieldName: "num_features",
              statisticType: "count"
            },
            {
              onStatisticField: "capacity_mw",
              outStatisticFieldName: "capacity_max",
              statisticType: "max"
            }
          ];

          const { features } = await layerView.queryFeatures(query);
          const stats = features.map((feature) => feature.attributes);

Query cluster extent

You may want to display the extent of clustered features to the user. To do this, reference the cluster graphic's ObjectID in Query.aggregateIds, and call the queryExtent method on the layer view.

cluster query extent
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async function displayClusterExtent(graphic){
  const query = layerView.createQuery();
  query.aggregateIds = [ graphic.getObjectId() ];

  const { extent } = await layerView.queryExtent(query);
  const extentGraphic = {
    geometry: extent,
    symbol: {
      type: "simple-fill",
      outline: {
        width: 1.5,
        color: [ 75, 75, 75, 1 ]
      },
      style: "none",
      color: [ 0, 0, 0, 0.1 ]
    }
  };
  view.graphics.add(extentGraphic);
}

The cluster popup already displays the cluster extent by default when the browse features action is clicked.

Display cluster convex hull

Perhaps it's better to show the convex hull of the clustered features rather than the extent since it more accurately represents the distribution of the points. The geometryEngine allows you to do that. Query for all the features in the cluster, get their geometries, then pass them to the convexHull method of geometryEngine.

cluster convex hull
Display cluster convex hull
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        async function displayConvexHull(graphic) {
          processParams(graphic, layerView);

          const query = layerView.createQuery();
          query.aggregateIds = [graphic.getObjectId()];
          const { features } = await layerView.queryFeatures(query);
          const geometries = features.map((feature) => feature.geometry);
          const [convexHull] = geometryEngine.convexHull(geometries, true);

          convexHullGraphic = new Graphic({
            geometry: convexHull,
            symbol: {
              type: "simple-fill",
              outline: {
                width: 1.5,
                color: [75, 75, 75, 1]
              },
              style: "none",
              color: [0, 0, 0, 0.1]
            }
          });
          view.graphics.add(convexHullGraphic);
        }
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FeatureReductionCluster

Read the API Reference for more information.

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