Data from: Assessing restoration success by predicting time to recovery – but by which metric?
Data files
Nov 13, 2019 version files 171.05 KB
Abstract
1. Restoration of degraded ecosystems may take decades or even centuries. Accordingly, information about the current direction and speed of recovery provided by methods for predicting time to recovery may give important feedback to restoration schemes. While predictions of time to recovery have so far been based mostly upon change in species richness and other univariate predictors, the novel ordination-regression based approach (ORBA) affords a multivariate approach based upon species compositional change.
2. We used species composition data from four alpine spoil heaps in western Norway, recorded at three time points, to predict time to recovery using ORBA. This approach uses distances between restored plots and reference plots along a successional gradient, represented by a vector in ordination space, to model linear or asymptotic relationships of compositional change as a function of time. Results from ORBA were compared with results from models of more generic univariate attributes, i.e. total cover, species richness and properties of the physical environment as functions of time.
3. ORBA predictions of time to species compositional recovery varied from less than 60 years with linear models to 115–212 years with asymptotic models. The long estimated time to recovery suggests that the restoration schemes adopted for these spoil heaps are likely to be suboptimal.
4. Much shorter time to recovery was predicted from some of the more generic univariate attributes, i.e. species richness and total cover, than from species composition. Given the current rates of recovery, most spoil heaps will reach reference levels for total cover and species richness within 50 years while predictions indicate that 67–111 years are needed to restore levels of soil organic matter and pH.
5. Synthesis and applications. Species composition and soil conditions provide information of generally higher relevance for evaluation of ecosystem recovery processes than the most commonly used metric to assess restoration success, species richness. Species richness is decoupled from species compositional recovery, and likely to be a generally poor measure of restoration success. We therefore encourage further improvement of methods like the ordination-regression based approach that use species compositional data to predict time to recovery.09-Oct-2019
Methods
The data was collected in four alpine sites in western Norway, comprising spoil heaps and their undisturbed surroundings (253 plots with 239 recorded taxa). Spoil heap data was collected at three different time periods, 1991 or 1994, 2008 and 2015, whereas data from the surroundings was collected in 2008 and 2015. The plotnr_site gives the plot number of plots at a site. The yr_pseudo and the block columns keep track of of the sampling structure of the plots (plots in blocks, and repeated sampling of plots). The SucAge colum, gives the time in years since disturbance for spoil heap plots at the time we collected the data.