@turf/distance-weight
TypeScript icon, indicating that this package has built-in type declarations

6.5.0 • Public • Published

@turf/distance-weight

pNormDistance

calcualte the Minkowski p-norm distance between two features.

Parameters

  • feature1 point feature
  • feature2 point feature
  • p p-norm 1=<p<=infinity 1: Manhattan distance 2: Euclidean distance

distanceWeight

Parameters

  • fc FeatureCollection<any> FeatureCollection.
  • options Object? option object.
    • options.threshold number If the distance between neighbor and target features is greater than threshold, the weight of that neighbor is 0. (optional, default 10000)
    • options.p number Minkowski p-norm distance parameter. 1: Manhattan distance. 2: Euclidean distance. 1=<p<=infinity. (optional, default 2)
    • options.binary boolean If true, weight=1 if d <= threshold otherwise weight=0. If false, weight=Math.pow(d, alpha). (optional, default false)
    • options.alpha number distance decay parameter. A big value means the weight decay quickly as distance increases. (optional, default -1)
    • options.standardization boolean row standardization. (optional, default false)

Examples

var bbox = [-65, 40, -63, 42];
var dataset = turf.randomPoint(100, { bbox: bbox });
var result = turf.distanceWeight(dataset);

Returns Array<Array<number>> distance weight matrix.


This module is part of the Turfjs project, an open source module collection dedicated to geographic algorithms. It is maintained in the Turfjs/turf repository, where you can create PRs and issues.

Installation

Install this module individually:

$ npm install @turf/distance-weight

Or install the Turf module that includes it as a function:

$ npm install @turf/turf

Readme

Keywords

Package Sidebar

Install

npm i @turf/distance-weight

Weekly Downloads

245,561

Version

6.5.0

License

MIT

Unpacked Size

15.1 kB

Total Files

7

Last publish

Collaborators

  • twelch
  • jamesmilneruk
  • rowanwins
  • tmcw
  • morganherlocker
  • tcql
  • mdfedderly