R/lsm_c_dcore_sd.R

Defines functions lsm_c_dcore_sd_calc lsm_c_dcore_sd

Documented in lsm_c_dcore_sd

#' DCORE_SD (class level)
#'
#' @description Standard deviation number of disjunct core areas (Core area metric)
#'
#' @param landscape A categorical raster object: SpatRaster; Raster* Layer, Stack, Brick; stars or a list of SpatRasters.
#' @param directions The number of directions in which patches should be
#' connected: 4 (rook's case) or 8 (queen's case).
#' @param consider_boundary Logical if cells that only neighbour the landscape
#' boundary should be considered as core
#' @param edge_depth Distance (in cells) a cell has the be away from the patch
#' edge to be considered as core cell
#'
#' @details
#' \deqn{DCORE_{SD} = sd(NCORE[patch_{ij}])}
#' where \eqn{NCORE[patch_{ij}]} is the number of core areas.
#'
#' DCORE_SD is an 'Core area metric'. It summarises each class as the standard deviation
#' of all patch areas belonging to class i. A cell is defined as core if the cell
#' has no neighbour with a different value than itself (rook's case). NCORE counts the disjunct
#' core areas, whereby a core area is a 'patch within the patch' containing only core cells.
#' The metric describes the differences among patches of the same class i in
#' the landscape.
#'
#' \subsection{Units}{None}
#' \subsection{Range}{DCORE_SD >= 0}
#' \subsection{Behaviour}{Equals DCORE_SD = 0 if all patches have the same number of disjunct
#' core areas. Increases, without limit, as the variation of number of disjunct core areas
#' increases.}
#'
#' @seealso
#' \code{\link{lsm_p_ncore}},
#' \code{\link{sd}}, \cr
#' \code{\link{lsm_c_dcore_mn}},
#' \code{\link{lsm_c_dcore_cv}}, \cr
#' \code{\link{lsm_l_dcore_mn}},
#' \code{\link{lsm_l_dcore_sd}},
#' \code{\link{lsm_l_dcore_cv}}
#'
#' @return tibble
#'
#' @examples
#' landscape <- terra::rast(landscapemetrics::landscape)
#' lsm_c_dcore_sd(landscape)
#'
#' @references
#' McGarigal K., SA Cushman, and E Ene. 2023. FRAGSTATS v4: Spatial Pattern Analysis
#' Program for Categorical Maps. Computer software program produced by the authors;
#' available at the following web site: https://www.fragstats.org
#'
#' @export
lsm_c_dcore_sd <- function(landscape, directions = 8, consider_boundary = FALSE, edge_depth = 1) {
    landscape <- landscape_as_list(landscape)

    result <- lapply(X = landscape,
                     FUN = lsm_c_dcore_sd_calc,
                     directions = directions,
                     consider_boundary = consider_boundary,
                     edge_depth = edge_depth)

    layer <- rep(seq_along(result),
                 vapply(result, nrow, FUN.VALUE = integer(1)))

    result <- do.call(rbind, result)

    tibble::add_column(result, layer, .before = TRUE)
}

lsm_c_dcore_sd_calc <- function(landscape, directions, consider_boundary, edge_depth, resolution, extras = NULL){

    dcore <- lsm_p_ncore_calc(landscape,
                              directions = directions,
                              consider_boundary = consider_boundary,
                              edge_depth = edge_depth,
                              resolution = resolution,
                              extras = extras)

    if (all(is.na(dcore$value))) {
        return(tibble::new_tibble(list(level = "class",
                              class = as.integer(NA),
                              id = as.integer(NA),
                              metric = "dcore_sd",
                              value = as.double(NA))))
    }

    dcore_sd <- stats::aggregate(x = dcore[, 5], by = dcore[, 2], FUN = stats::sd)

    return(tibble::new_tibble(list(
        level = rep("class", nrow(dcore_sd)),
        class = as.integer(dcore_sd$class),
        id = rep(as.integer(NA), nrow(dcore_sd)),
        metric = rep("dcore_sd", nrow(dcore_sd)),
        value = as.double(dcore_sd$value)
    )))
}
landscapeecology/landscapemetrics documentation built on April 7, 2024, 11:11 p.m.