I have a large query that attempts to match up centroids with the polygons that they fit inside. While I do constrain by Z values of the blocks and the polygons, it still does a lot of point-in-poly calculations and takes a long time to run.
For some background:
- The table that contains the centroids has 2.5M rows
- All of the spatial data in the table is in quite a small area of the world, the bounding box of the entire thing is only 7643 x 2351 metres
- Of those rows, 660K fit match the Z critera
- The table that contains the polygons has 10K rows
- All of the spatial data in the table is in an even smaller area of the world
- Of those rows, 2366 match the name criteria
- Running the query without any indexes takes 11 hours and returns 91K matches
The query is something like this:
select blocks.Id, blocks.WGS84Centroid, polygons.Shape from blocks inner join polygons on blocks.ZCentre >= (polygons.ZCentre - (polygons.ZLength/2)) and blocks.ZCentre <= (polygons.ZCentre + (polygons.ZLength/2)) and polygons.Shape.STIntersects(blocks.WGS84Centroid) = 1 inner join name on polygons.nameId = name.ID where name.Name = 'blah'
So, in an effort to speed up this query, I added a spatial index on
blocks.WGS84Centroid, and one on
The query analyser also suggested a non-clustered index on blocks.ZCentre, including blocks.Id and blocks.WGS84Centroid.
After all that, here's the query plan:
And the filter cost:
However, after adding those 3 indexes the query still takes just as long to run.
What can I do now?