1. Introduction
A question that has long been pondered by foresters, biometricians, and ecologists is whether harvested sites regenerate similarly to sites disturbed by natural agents [
1,
2,
3,
4], or if there are important post-disturbance structural and compositional differences that should be considered [
5,
6]. The rate of stem growth [
3], density of stems, and species mix in regenerating stands is related to different intermediate silvicultural treatments [
6]. Because of these and other disturbance factors, the potential net carbon sink [
3,
7,
8] and economic values that forests represent will vary by site. While prior research has assessed recovery of forest canopy cover following disturbance [
3,
9,
10], alternative metrics incorporating information on canopy height, tree density, and vertical and horizontal structure of the canopy hold the potential to enhance our understanding of forest resilience and recovery. Above ground biomass (AGB) provides a reliable metric related to these forest characteristics [
11,
12]. Individual stand-level estimates can be calculated from field inventory data alone (design-based), whereas landscape-scale spatial estimates would require a combination of plot-based inventory (PBI) and remotely sensed data such as satellite imagery and LiDAR [
13].
Standing biomass is the summation of biomass accumulation over time, plus any initial AGB remaining after the disturbance. Current standing biomass is our best indication of differences in stand conditions following disturbance and gives us an estimate of the absolute level of productivity if we know the level of standing biomass immediately following a disturbance. Here, we focus on developing methodology needed to provide temporally specific site level estimates of AGB across a forested landscape subjected to a variety of canopy disturbances over many years. A better understanding of site- and landscape-scale differences in AGB storage and development with respect to disturbance agents may facilitate forest management for a multitude of interests, ranging from recreation and timber production to long-term carbon sequestration and management for forest resiliency in a changing climate [
13,
14]. Because the approach described herein is novel and leverages a wide range of data sources and analytical methods, very few comparable studies exist with which to compare our results. Nonetheless, a range of research foundational to our approach is described herein.
The present research is closely related to our understanding of how forests (an important form of green infrastructure) relate to climate change, and our results may inform potential management decisions needed to address this issue. However, our present focus is on understanding potential differences in forest regeneration following various types of disturbance. We do not specifically explore interactions between climate change, natural and anthropogenic disturbance, or resiliency of forest ecosystems in the face of such changes. Instead, we refer readers to the growing body of work related to these important issues [
8,
9,
10,
15,
16,
17,
18,
19,
20].
Importantly, White et al. [
3] confirmed the utility of time-series Landsat spectral data in assessments of post-disturbance recovery from wildfire and harvest at the landscape level. Recent advances in the availability of moderately high-resolution satellite imagery coupled with the enhanced processing capabilities of super-computers or cloud platforms provides an opportunity to use broad-scale remote sensing approaches to detect forest canopy change and regeneration. Vogeler et al. [
21,
22] have detailed an approach utilizing the LandTrendr algorithm [
1,
23] on the Google Earth Engine (GEE) platform with 97.2% ± 1.9% validation accuracy for change vs. no change. This method maps forest canopy change (i.e., “change polygons”) at the landscape scale and estimates the timing and type of disturbances taking place between growing seasons (e.g., fast change). LandTrendr is based on the pixel-level trajectory of annual spectral reflectance values from forest canopies observed through Landsat time-series imagery collected during the peak growing seasons. The Minnesota Department of Natural Resources (MNDNR), Division of Forestry, Guideline Monitoring Program (GMP) has transitioned to using this method for harvest detection and site selection prior to field monitoring of the implementation of sustainable forest management practices. Although Vogeler et al. [
22] report high user’s accuracies for disturbance agent classifications (80.0%, 89.6%, 89.7%, 90.2%, 92.9%, and 95.6% accuracy for wind, other disturbances (e.g., insect, disease, drought, or unspecified), flood, fire, conversion, and harvest, respectively), the GMP is currently assessing the spatial, temporal, and classification accuracy of this GEE approach to change detection via an independent use case related to timber harvest monitoring in Minnesota, USA. A raster version of these fast change data, covering 44 years from 1974 to 2018 with a minimum mapping unit of one hectare, can be found on the Minnesota Geospatial Commons website [
24].
Increasing acquisitions of LiDAR, an advanced remote sensing technology able to accurately characterize forest structure, and recent advances in analytical capabilities have provided powerful means for assessing AGB in forested settings [
25,
26,
27,
28]. The LiDAR-based forest inventory still requires sample plot measurements on the ground, and multi-temporal LiDAR collections can provide the basis for development of growth and yield models [
28]. MNDNR initiated LiDAR acquisitions suitable for several natural resource applications in Minnesota in 2008. However, these initial statewide acquisitions were low point density and did not include a PBI component. High density LiDAR acquisitions paired with PBI for parts of Cass and Lake counties were initiated in 2017, enabling development of LiDAR-based inventory metrics for these areas, and providing LiDAR point cloud data for two points in time. These multi-temporal LiDAR datasets provide important baseline information across large landscapes and administrative areas. Implementation of the Minnesota LiDAR Plan has begun and, if successful, will result in acquisitions of high-density LiDAR statewide. This new statewide high-density LiDAR dataset paired with PBI fieldwork will enhance state forest inventories [
29,
30]. When combined with temporally referenced spectral indices, these data have the potential to provide important information related to forest composition, structure, growth, and productivity across substantial spatial extents (e.g., management units to ecological landscapes).
Here, we test the hypothesis that statewide low-density LiDAR acquired in Minnesota from 2008 to 2012 (circa 2010), paired with Landsat-derived spectral indices for growing seasons between 1974 and 2018 can be used in a modeling environment to create accurate estimates of standing biomass over time (past, present, and future) with ground truth referenced to AGB estimates derived from high-density LiDAR and PBI datasets acquired in 2017 and 2018 in Cass and Lake Counties. In doing so, we test the ability of satellite-derived spectral indices to supplement, augment, and correct for potential misinformation represented in older LiDAR acquisitions (resulting from ongoing disturbance and growth since time of acquisition). We also examine differential forest growth after canopy disturbance. Specifically, we test the null hypothesis that there is no significant difference in mean biomass accumulation over time among different disturbance agents on change polygons identified by Vogeler et al. [
21]. This work combines and builds on multiple lines of inquiry related to forest inventory [
3,
28,
31], remote sensing [
1,
3,
21,
22,
23], and forecasting [
28,
31,
32] methodology to illustrate a means of producing time series estimates of AGB for forested regions of the world where the necessary data resources exist.
3. Results
Total forest cover in the two areas of interest (AOI) was 397,317 ha, with a total of 41,245 ha (11.46%) disturbed at least once over the period of observation (1974–2018). Only the most recent disturbances at any site were included in the 41,245 ha figure. Change polygons varied in shape and size between 1 and 234 ha with the average being 5 ha (SD = 7.1 ha).
Figure 3 shows the relationship between time since disturbance and accumulated biophysical capacity for carbon dioxide uptake by the forest as captured by the tasseled cap greenness index over time [
39].
Models predicting AGB, given spectral indices observed since disturbance, and intermediate low-density LiDAR information where applicable, are shown in
Table 3. The amount of variance explained by each model and importance values (as percent increase in mean squared error when a predictor is removed) are also shown. The combined and agent-specific models could be reconstructed using each predictor containing an importance value in the column for a given model. These results are summarized for the modeling processes utilizing all sites, and using only sites disturbed prior to 2011.
Standing AGB for sites experiencing different disturbance agents is shown in
Table 4 and
Figure 4. In
Table 4, Time represents the average time since disturbance for observations corresponding to that agent of change. Time is related to the opportunity for regrowth of AGB following loss to fire, wind, harvest, or other factors. Further, differences in the average time since disturbance for various agents is an indication of the frequency with which these events tend to occur across the bio-regional landscape. An ANOVA for standing AGB using the full dataset indicated that there were significant differences in AGB predictions for different agents (
p-value < 2.2 × 10
−16) (
Figure 4). A pairwise
t-test (with Bonferroni adjustment) for the effect of inter-group variations showed that there were statistically significant differences (α = 0.05) between harvest and each other disturbance type, as well as between wind and conversion.
Non-significant comparisons included conversion and fire, conversion and flood, and fire and flood (
Table 5). Statistics for estimates of productivity between 5 and 15 years after disturbance are shown in
Table 6. A pairwise t-test (with Bonferroni adjustment) of between group differences in biomass accumulation over time showed that there was a statistically significant difference (α = 0.05) between harvest and fire, between harvest and flood, and between harvest and wind. Significant differences in biomass productivity over time also existed between fire and other, flood and other, wind and other, and between wind and flood (
Table 7).
4. Discussion
Substantial research over many years has provided a firm basis for our understanding of forest growth and yield [
48,
49,
50,
51,
52,
53,
54,
55,
56,
57,
58,
59,
60]. Although a full review of this research is beyond the scope of the current manuscript, it is important to note that our expectations related to development of AGB following disturbance are rooted in this body of literature.
Building on results from previous research comparing post-disturbance recovery from wildfire and harvest [
3], we find clear differences in standing AGB and stand regeneration over time for different disturbance agents. Standing biomass and biomass accumulation rates indicate different things related to disturbance severity and recovery from disturbance. For example, wind and harvest disturbances often have more initial AGB relative to fire and flood. This may be an indication that prevailing disturbance intensity from wind and harvest are either less than that for fire and flood, or are more variable, with some sites retaining substantial AGB or established seedlings following disturbance. Indeed, groups of outliers observed for accumulated greenness associated with these disturbances (
Figure 2) may be explained by the presence of advance regeneration retained after variable levels of disturbance. While White et al. [
3] found higher variability in regrowth of forest canopy after wildfire compared to harvest, little research exists for comparison of differences in AGB development following the range of disturbances analyzed here.
Our comparison of differences in standing biomass among disturbance agents yielded clear and significant results. This observation is an indicator that something different is happening on sites experiencing different types of disturbance in the years following the event and corresponds closely to the conclusions of White et al. [
3]. Such differences are expected to be cumulative over time, and to become more apparent as time goes on. Senf and Seidl [
10] use Landsat time series to assess forest canopy disturbance and recovery across Europe, but do not directly address the issue of AGB development. However, mirroring the conclusions of White et al. [
3], Senf and Seidl [
10] point to fire disturbance as a factor leading to slower canopy recovery. Research using tree ring analysis to examine carbon storage, sequestration, and biodiversity on a longer timescale [
17] also found that the highest rates of carbon sequestration occurred on more recently disturbed plots. Our results agree with these findings and suggest that sustainable timber harvest at levels below the regional annual increment, and adjusted for natural disturbance, may contribute to greater forest resiliency. AGB productivity following harvest is significantly different from (greater than) that observed for wind, flood, and fire disturbance agents. Collectively, these observations may have significant and substantial meaning for efforts to sequester carbon from the atmosphere via forest management.
Biomass accumulation (an indicator of productivity) is the response of trees remaining or growing onto a site following a disturbance. Established research leads to the expectation that, initially, this response will be quite strong, but will moderate as competition effects come into play following establishment of a cohort, e.g., saturation of the newly available growing space. Initial AGB remaining after a disturbance will influence the path this development takes. Indeed, the general trend of reduced biomass accumulation with time since disturbance is both clearly apparent and expected in our results [
16,
17]. Harvest appears to result in the largest and most consistent productivity response to disturbance, with harvested sites experiencing roughly six times the rate of biomass accumulation seen for sites subjected to stand replacing fire or flood (years 5–15 post disturbance), and a nearly 20% increase in productivity when compared to sites subjected to wind-caused canopy loss.
Essentially, our results indicate that harvest not only resets the accumulation rate of biomass (productivity) to a higher level than other disturbance types but often leads to the accumulation of larger biomass loads (standing biomass) with time. These observations may be explained by intentional silvicultural strategies employed in conjunction with timber harvest (e.g., seed tree retention, artificial regeneration/planting, site preparation, and selection of high-quality sites with potential for rapid natural regeneration) or represent a response to the large increase in available growing space and minimal disturbance of the ground layer frequently resulting from these disturbances. When combined with the potential for mid-term storage of carbon in timber products used for construction (housing, commercial, and other structures) [
61,
62,
63] or carbon offsets associated with biomass energy production [
64], this higher level of biomass production means that forest management for timber and other uses can be a helpful tool for carbon sequestration in the effort to mitigate anthropogenic climate change.
Because our estimates of initial AGB are modelled, results should be taken as a general understanding of regrowth following disturbance, not as an absolute truth. However, our independent test for 54 harvests monitored by GMP explained 90.09% of variance, indicating good correspondence of the model to observations. It is also understood that LiDAR data serve as a snapshot in time and do not represent true conditions before or after the data are collected. This depreciation of information relevance is clearly mitigated to a large degree using Landsat spectral indices available over long time periods. Error involved with estimates of initial and standing AGB presented here results from imprecise minimum mapping units for disturbance (1 ha) and inherent variability in the severity of discrete disturbance events. This model related error inflates the expected variance for our estimates of biomass accumulation, thereby complicating interpretation of the results. Another source of variability in our initial AGB estimates comes from the estimate of disturbance dates derived from change detection. Inaccuracies of 1–3 years are common in the change detection dates and influence our estimates of initial AGB following disturbance. Further, error associated with disturbance agent classification also increases our uncertainty regarding initial AGB. Nonetheless, clear differences exist in forest regeneration rate and character between sites disturbed by different agents of change. These differences result in varying rates of biomass accumulation over time and differences in standing stocks of biomass on sites affected by various agents of change. These differences are thought to be related to disturbance severity, species level responses, canopy structure development, community compositions, and carbon sequestration and storage potentials resulting from distinct disturbance types.
We have also shown that older low-density LiDAR data can serve as a good predictor in models producing AGB estimates for forested regions of interest. The information provided by these low-density LiDAR-derived products can be effectively leveraged with the addition of widely available spectral indices derived from satellite sensors, and more current high-density LiDAR paired with PBI within portions of the region of interest. The combination of different platforms and vintages of remotely sensed data products can serve to inform and model landscape-scale changes over time and continues to enhance the utility of older geospatial datasets, further extending their return on investment. These observations may also benefit canopy change detection efforts used for monitoring of timber harvest and other disturbances.
5. Conclusions
We have tested the hypothesis that older low-density LiDAR, paired with Landsat-derived spectral indices available over a long time-period can be used in a modeling environment to create accurate estimates of standing biomass. Comparison of our modelling results against ground truth referenced to AGB estimates derived from high-density LiDAR and PBI datasets yielded good correlation between modelled estimates and observed values (R-squared ~0.85). In testing our primary hypothesis, we have shown that satellite-derived spectral indices are able to supplement, augment, and correct for potential misinformation present in older LiDAR acquisitions quite effectively.
Low-density LiDAR data provide important information related to existing levels of AGB in a forested setting. This observation is especially relevant when canopy height data are paired with indices of wetness and greenness derived from satellite imagery over time. In combination, low-density LiDAR and spectral indices can be used to accurately predict current AGB, as determined from high density LiDAR and PBI reference data. High-density LiDAR data provide a range of useful information for development of predictive models of AGB across a broader region and serve as important benchmarks for monitoring over time.
We also examined differential forest growth after canopy disturbance and have rejected the null hypothesis that there is no significant difference in standing biomass or mean biomass accumulation over time among different disturbance agents. Over time, the response to disturbance by various agents of change results in clear differences in AGB. Results presented here indicate profound differences in recruitment and forest development following various events resulting in canopy change. This research provides quantifiable clarity, adding to our understanding that forest management via timber harvest can be used as an effective tool to increase AGB productivity.
Periodic re-measurement with high and low-density LiDAR would further contribute to our understanding of differences in forest regrowth following disturbance by providing a more solid baseline (e.g., multiple observations over time) related to changes in AGB and tightening resulting confidence intervals for the kinds of models used here. However, high quality LiDAR data are expensive to collect over large areas, so additional analysis of the benefits of using methods described here to model landscape-scale AGB over time should be completed. Such analyses would inform the needed re-measurement interval, help target areas of interest where they are most relevant to improving model accuracy, and provide quantifiable information related to return on investment for such data acquisition. This research also identifies some areas of uncertainty stemming from the change detection methods used, and further research into this important field of study is merited. The combination of multi-temporal LiDAR-derived and satellite-based spectral indices may provide another avenue for improving canopy change detection methods and our understanding of forest recovery following disturbance.