Potential of ecological modelling and smart-drainage development for mitigating adverse effects of future global change-type droughts for the Estonian forest sector
Artikel-Kategorie: Research paper
Online veröffentlicht: 11. März 2021
Seitenbereich: 98 - 106
Eingereicht: 01. Sept. 2020
Akzeptiert: 19. Okt. 2020
DOI: https://doi.org/10.2478/fsmu-2020-0017
Schlüsselwörter
© 2020 Jan-Peter George et al., published by Sciendo
This work is licensed under the Creative Commons Attribution 4.0 International License.
Drought is currently one of the most intensively discussed topics in forest sciences and ecology, since the devastating 2018 global change-type drought has shown how vulnerable European forests are against unprecedented water-shortage and excessively high temperatures (Buras
The very first step in deciding where a smart-drainage system (SDS) will be needed is to assess locations where droughts are likely to cause harm and damage to forest stands in the near and far future. Consequently, forest operational areas and stands which are currently exposed to drainage and which are characterized by high vulnerability against drought can be selected in advance for initial research and case studies.
The risk or vulnerability of forest stands against drought stress is, however, a function with many different variables. The future probability or frequency of drought will most strongly determine the vulnerability of a stand, but is unfortunately also the most uncertain quantity to predict. Projecting drought occurrence in the future is a difficult task due to the fact that stochasticity plays a significant role (Hao
Data from the Copernicus European Drought Observatory (EDO) provides evidence that large parts of Estonia, as many other northern European countries, have already been suffering from the most recent extreme and severe soil moisture deficit in 2018 and even in the following year, although the area subjected to moisture deficit was smaller in 2019 (Figure 1). According to Toreti
Figure 1
Soil moisture anomaly in Estonia in 2017–2019.
Soil moisture anomaly (SMA) in three consecutive years for the months June (upper panel), July (mid panel), and August (lower panel) for Estonia as obtained from the European Drought Observatory (EDO) under

Besides drought frequency and severity, species composition, stand density, forest management, and soil type also largely determine the vulnerability of forest stands against drought stress (e.g. Choat
Altogether, already available datasets with high spatial and temporal resolution can be utilized for identifying stands and forest operational areas which will be more vulnerable to drought than others and which are currently exposed to drainage. Such datasets can, for example, include high resolution climate data as already provided for temperature and precipitation at the national and European level (e.g. Haylock
The vulnerability scoring of stands can either be solely based on climate (present/future), vegetation, and soil information or, alternatively, on the growth response of stands where relative growth change after droughts is retrospectively analysed. Such approaches would require reliable and accurate assessment of growth measures, such as above-ground biomass and can, for instance, incorporate spatially and temporally high-resolution remote sensing data, such as airborne laser scanning (Simonson
Once target areas with high drought vulnerability are identified, they can be intersected with spatial information on current drainage in order to localize stands in which installation of smart-drainage systems as complementation to the already existing system will be reasonable. The term
Smart-drainage systems comprise currently manual, semi-automatic, and fully automatic control systems (Fouss
We proposed here a multi-disciplinary and applied research concept which could help mitigate negative climate change consequences for the Estonian forest sector in the very near future, in particular, adverse effects caused by global change-type droughts. The concept will make use of various data resources which are partly already available at national level with very high spatial and temporal resolution such as airborne LiDAR data, temperature and precipitation maps, soil data, national forest inventory data, tree-ring networks, and forest management information (Figure 2). However, we are also aware of some drawbacks and problems that need to be addressed in advance. As such, the use of growth or productivity proxies derived from LiDAR data as a response variable for drought vulnerability assessment is highly dependent on the achieved accuracy. Since annual or short-term periodical changes (e.g. 3–5-year intervals) in growth will be required for modelling, standard errors need to be in a reasonable range in order to overcome critical signal-to-noise ratios. Therefore, sufficient validation data are needed and probably also alternative response variables which can be assessed with higher accuracy and fewer model assumptions. The available datasets have different spatial and temporal resolution; thus, resampling will be necessary in order to include them in one and the same model. Especially, LiDAR data for Estonia and soil data from the Estonian soil map come at much higher spatial resolution compared to most of the other data, and resampling could result in the loss of important information and introduce bias. Finally, financial considerations and cost-efficiency for installation of smart-drainage systems need to be considered, since implementing such systems will require considerable investments. Therefore, sensitivity analyses of the current and future forest growth and yield models by including different hypothetical drought scenarios need to be carried out in order to justify the proposed mitigation strategy. By proposing the integrated smart-drainage system concept for forestry we strongly encourage other colleagues from related disciplines to contribute with their knowledge, data or simply remarks to design SDS implementations for mitigation of global change-type droughts in the forest sector.
Figure 2
Project workflow with proposed and already available datasets that could be included.
A possible project workflow with already available datasets is demonstrated in the figure below: Temporal and spatial resolution of the datasets are described in detail in the “Explanation” panel. However, the different resolutions will make rescaling and resampling necessary. Once datasets are compiled and rescaled, the vulnerability assessment can be performed. Option 1 would offer a simple and less laborious possibility to assess vulnerability over a huge area without the need for statistical modelling, but it would also be less accurate and solely based on arbitrarily chosen thresholds. In contrast, option 2 is more laborious, more accurate, and would specifically allow for forecasting vulnerability into the future, when high-resolution future climate data is available on a gridded base. Projections (i.e. forecasts) can be compared between optimistic and pessimistic climatic scenarios, such as given in the representative concentration pathways RCP2.6 and RCP8.5. Both of these scenarios make different assumptions about future emission trajectories and comparing vulnerabilities under consideration of one or the other scenario will be a valuable task when combined with a cost-benefit analysis and projected yield loss. However, the accuracy of results obtained by applying option 2 will strongly depend on the response variable which will be used for modelling. While airborne laser scan (LiDAR) is able to provide massive data on tree height in a relatively short time, estimates for biomass or volume still need to be modelled under consideration of species-specific and location-specific allometric functions. Since modelling needs to be performed on relative growth measures (e.g. biomass change from one year to the next) rather than with absolute values, the accuracy of the obtained response variable will be crucial in order to overcome signal-to-noise ratios caused by measurement and/or transformation errors. Finally, when vulnerable areas are identified they can be intersected with the current drainage information obtained from GIS-based information systems. This will help rapidly identify stands and management areas in which transformation of the current drainage system into a smart-drainage system can be realized. As a general note: since installation and maintenance of such smart-drainage systems will be costly, we presume that productive stands or those with high conservation priority should be preferred for case studies in order to achieve economic feasibility of such a system modification.
