官术网_书友最值得收藏!

Running the Central Feature tool

The Central Feature tool identifies the most centrally located feature from a point, line, or polygon feature class. It sums the distances from each feature to every other feature. The one with the shortest distance is the central feature.

This tool creates an output feature class containing a single feature that represents the most centrally located feature. For example, if you have a feature class of burglaries, the Central Feature tool will identify the crime location that is the central most location from the group and it will create a new feature class with a single point feature that represents this location.

Let's take a look at the following steps to learn to run the Central Feature tool:

  1. If necessary, open ArcToolbox and find the Spatial Statistics Tools toolbox. Open the toolbox and expand the Measuring Geographic Distributions toolset. Double-click on Central Feature to display the tool, as shown in the following screenshot:
  1. Select Denver Burglary as the Input Feature Class, C:\GeospatialTraining\SpatialStats\Data\crime.gdb\Burglary_CentralFeature as the Output Feature Class, and EUCLIDEAN_DISTANCE as the Distance Method. Euclidean distance is a straight-line distance between two points. The other distance method is Manhattan distance, which is the distance between two points, measured along axes at right angles and it is calculated by summing the difference between the x and y coordinates.
  2. There are three optional parameters for the Central Feature tool, which are Weight Field (optional), Self Potential Weight Field (optional), and Case Field (optional). We won't use any of these optional parameters for this analysis, but they do warrant an explanation:
    • Weight Field (optional): This parameter is a numeric field used to weight distances in the origin-destination matrix. For example, if you had a dataset containing real estate sales information, each point might contain a sales price. The sales price could be used to weight the output of the Central Feature tool.
    • Self Potential Weight Field (optional): This is a field representing self-potential or the distance or weight between a feature and itself.
    • Case Field (optional): This parameter is a field used to group features for separate central feature computations. This field can be an integer, data, or string.
  1. Click on the OK button.
  2. The most centrally located burglary will be displayed as shown in the following screenshot. The output is a single point feature:

Most centrally located burglary

主站蜘蛛池模板: 铜川市| 峨眉山市| 延吉市| 崇仁县| 招远市| 凌云县| 宜州市| 淳安县| 清涧县| 崇义县| 密云县| 江门市| 娱乐| 全椒县| 山阴县| 牟定县| 毕节市| 新河县| 新余市| 青海省| 建昌县| 兴国县| 宜阳县| 永昌县| 都昌县| 寻乌县| 许昌市| 蒙城县| 固镇县| 菏泽市| 赣榆县| 富裕县| 额济纳旗| 芦溪县| 桦南县| 绥棱县| 若羌县| 永仁县| 隆昌县| 上蔡县| 绥滨县|