The problem

Suppose we have two shapefiles that should border seamlessly. Only, they don't. Is there a way to force them to stick to one another without gaps?

enter image description here

The specific case

I have two shapefiles: one for European regions -- REG, the other for the neighbouring countries -- NEI. Both shapefiles are taken from Eurostat repository and should fit together nicely; but there are small gaps. Also, I need to simplify the polygons, and then the gaps become really notable.

The best I can think of

I've tried several approaches but with no success. The only way to achieve the desired result that I see requires following steps:

  • create a line sf with just the border between my shapefiles;
  • from this line create a buffer polygon just big enough to cover all gaps;
  • join and dissolve this buffer to the shapefile for neighbours -- NEI;
  • clip off the expanded NEI with the REG shapefile.

Obviously, this is a rather clumsy workaround.

Is there a better way to go?

Reproducible example in this gist

A minimal example

# install dev version of ggplot2


# load data
source(file = url("https://gist.githubusercontent.com/ikashnitsky/4b92f6b9f4bcbd8b2190fb0796fd1ec0/raw/1e281b7bb8ec74c9c9989fe50a87b6021ddbad03/minimal-data.R"))

# test how good they fit together
ggplot() + 
        geom_sf(data = REG, color = "black", size = .2, fill = NA) +
        geom_sf(data = NEI, color = "red", size = .2, fill = NA)+
        coord_sf(datum = NA)+

ggsave("test-1.pdf", width = 12, height = 10)

# simplify
REGs <- REG %>% ms_simplify(keep = .5, keep_shapes = TRUE)
NEIs <- NEI %>% ms_simplify(keep = .5, keep_shapes = TRUE)

ggplot() + 
        geom_sf(data = REGs, color = "black", size = .2, fill = NA) +
        geom_sf(data = NEIs, color = "red", size = .2, fill = NA)+
        coord_sf(datum = NA)+

ggsave("test-2.pdf", width = 12, height = 10)
  • 1
    I suggest asking this question here: gis.stackexchange.com Also, I would see if mapshaper::ms_simplify() could help here. The function is designed to simplify polygons, and it has a snap argument that would avoid this from occurring when it's set to TRUE. Maybe that will do the trick?
    – Phil
    Jan 20, 2018 at 22:27
  • @Phil Thanks for your suggestion. It does not seem to work. I guess, the problem is that I artificially merge the two spatial objects, thus there are no common vertex even where they should be Jan 22, 2018 at 22:32
  • 2
    Can you try to reduce your example? It's a bit unwieldy - if you could reduce it to just one or two polygons from each dataset that illustrates the issue it will be easier for someone to work with. Also, please don't start your example with rm(list = ls(all = TRUE)). If someone runs that without looking carefully you could really mess them up. Jan 23, 2018 at 4:41
  • @andyteucher Thanks for your comment! Done. Jan 23, 2018 at 8:13
  • 1
    that’s a great solution, and pprepair looks like very good tool, but I think it’s out of scope for rmapshaper. rmapshaper simply wraps the mapshaper node.js library and I’d like to keep that scope. pprepair could be a great standalone package though (as @spacedman said). Jan 30, 2018 at 21:04

1 Answer 1


ms_simplify seems to work on your minimal example but you need first to group your 2 "shapefiles" into one "shapefile". If needed it would be easy to split them after the simplification of the boundaries.
(note : my version of rmapshaper returns an error when ms_simplify is used with an sf object. This is why I have transformed my tmp object in a sp object with as(tmp, "Spatial"))

NEI <- st_transform(NEI, st_crs(REG)$epsg)
tmp <- rbind(REG , NEI)
tmp <- ms_simplify(as(tmp, "Spatial"), keep = .1, keep_shapes = T)
ggplot() + geom_sf(data = st_as_sf(tmp)) + theme_bw()

enter image description here

  • 1
    This works, but only at very high levels of simplification. Already at "keep = 0.2" you start getting holes.
    – lbusett
    Jan 26, 2018 at 18:32
  • 1
    I'm sorry to confirm that this is not a solution Jan 29, 2018 at 8:52
  • 3
    I totally agree that this is at best a rough hack... This will probably be even worse on the real life example. But this solution might be useful in some circumstances. Maybe an option to explore is using Grass GIS from R and its v.clean command ?
    – Gilles
    Jan 29, 2018 at 13:02

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