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RESEARCH ARTICLE (Open Access)

Estimation of surface dead fine fuel moisture using automated fuel moisture sticks across a range of forests worldwide

Jane G. Cawson https://orcid.org/0000-0003-3702-9504 A H , Petter Nyman B , Christian Schunk C , Gary J. Sheridan https://orcid.org/0000-0003-1755-7334 B , Thomas J. Duff A , Kelsy Gibos D , William D. Bovill E , Marco Conedera F , Gianni B. Pezzatti F and Annette Menzel C G
+ Author Affiliations
- Author Affiliations

A School of Ecosystem and Forest Sciences, The University of Melbourne, Burnley Campus, 500 Yarra Boulevard, Richmond, Vic. 3121, Australia.

B School of Ecosystem and Forest Sciences, The University of Melbourne, Baldwin Spencer Building, Parkville, Vic. 3010, Australia.

C Ecoclimatology, Technical University of Munich, Hans-Carl-von-Carlowitz-Platz 2, 85354 Freising, Germany.

D Wildfire Management Branch, Alberta Agriculture and Forestry, 111-54 Street, Edson, Alberta T7E 1T2, Canada.

E School of Geography, The University of Melbourne, 221 Bouverie Street, Parkville, Vic. 3010, Australia.

F WSL Swiss Federal Institute for Forest, Snow and Landscape Research, Insubric Ecosystems Research Group, a Ramèl 18, 6593 Cadenazzo, Switzerland.

G Institute for Advanced Study, Technical University of Munich, Lichtenbergstrasse 2a, 85748 Garching, Germany.

H Corresponding author. Email: jane.cawson@unimelb.edu.au

International Journal of Wildland Fire 29(6) 548-559 https://doi.org/10.1071/WF19061
Submitted: 10 April 2019  Accepted: 13 January 2020   Published: 7 February 2020

Journal Compilation © IAWF 2020 Open Access CC BY-NC-ND

Abstract

Field measurements of surface dead fine fuel moisture content (FFMC) are integral to wildfire management, but conventional measurement techniques are limited. Automated fuel sticks offer a potential solution, providing a standardised, continuous and real-time measure of fuel moisture. As such, they are used as an analogue for surface dead fine fuel but their performance in this context has not been widely evaluated. We assessed the ability of automated fuel sticks to predict surface dead FFMC across a range of forest types. We combined concurrent moisture measurements of the fuel stick and surface dead fine fuel from 27 sites (570 samples), representing nine broad forest fuel categories. We found a moderate linear relationship between surface dead FFMC and fuel stick moisture for all data combined (R2 = 0.54), with fuel stick moisture averaging 3-fold lower than surface dead FFMC. Relationships were typically stronger for individual forest fuel categories (median R2 = 0.70; range = 0.55–0.87), suggesting the sticks require fuel-specific calibration for use as an analogue of surface dead fine fuel. Future research could identify fuel properties that will enable more generalised calibration functions.

Additional keywords: fire danger, fire risk, hazard stick, microclimate, response time, wildfire.

Introduction

Dead fine fuel moisture content (FFMC) is a primary driver of wildfire behaviour. Numerous studies demonstrate its influence on fuel ignitability (Dimitrakopoulos and Papaioannou 2001; Fernandes et al. 2008), fire spread (Rothermel 1972; Burrows 1999), smoke emissions (Chen et al. 2010), fuel consumption (Knapp et al. 2005; de Groot et al. 2009) and spotting (McArthur 1967; Cruz et al. 2012). As such, dead FFMC is a key component of fire danger rating indices worldwide (McArthur 1967; Bradshaw et al. 1983; Van Wagner 1987). The worst fire days coincide with very low dead FFMC when large quantities of fuel across landscapes are dry enough to ignite and sustain burning (e.g. Keeley et al. 2009; Sullivan and Matthews 2013). Conversely, under more moderate conditions, sheltered parts of landscapes (gullies and polar-facing slopes) that are able to maintain higher dead FFMC act as a barrier to the spread of fire (Holden and Jolly 2011; Caccamo et al. 2012; Nyman et al. 2018).

The focus of this study is surface dead fine fuel, which we define as dead leaves, bark, twigs and dead grass less than 6 mm in diameter on the forest floor (as per Hines et al. 2010; Gould et al. 2011). Dead fine fuel is important to fire behaviour because it rapidly dries, ignites relatively easily and is consumed in the flaming front of the fire (Tolhurst and Cheney 1999; Keane 2015). The surface fuel layer is where wildfires typically ignite and where the spread of fire is typically sustained (Gould et al. 2011). Surface dead FFMC is sometimes considered separately for the upper litter layer (e.g. uppermost 5–10 mm) and full litter profile (e.g. Sneeuwjagt and Peet 1985; McCaw et al. 2012). The moisture content of the upper litter layer is more responsive to changes in atmospheric conditions (Slijepcevic et al. 2013) and has a large influence on ignitibility (Cawson and Duff 2019), rate of spread (Van Wagner 1987) and flame height (Gould et al. 2011). The average moisture content across the full litter profile is an important determinant of smouldering combustion, fuel availability and fuel consumption (Sneeuwjagt and Peet 1985; Van Wagner 1987; de Groot et al. 2009; Gould et al. 2011).

Surface dead FFMC varies both spatially and temporally as a function of microclimate and fuel properties. Microclimate (surface temperature, relative humidity, precipitation, wind and solar radiation) determines evaporative demand and the moisture vapour differential between the fuel and atmosphere and therefore the rate of moisture exchange (as reviewed by Viney 1991; Matthews 2014). The microclimate in turn depends on mesoscale weather, topographic position and forest cover (Schunk et al. 2013b; Cawson et al. 2017; Nyman et al. 2018). Fuel properties that influence its ability to uptake and loose moisture include fuel equilibrium moisture content and response time (Bradshaw et al. 1983). The equilibrium moisture content varies between fuel types as a function of fuel properties such as degree of decay and chemical composition (Van Wagner 1972; Anderson 1990b; Schunk et al. 2013a). Response time is how quickly the fuel dries under a set of environmental conditions. The response time of surface dead FFMC may vary with litter depth, litter composition, degree of decomposition and packing ratio (Simard 1968; Anderson 1990a).

Field measures of fuel moisture are needed by fire managers to assess fire danger (Bradshaw et al. 1983) and identify windows for prescribed burning (Tolhurst and Cheney 1999). Yet there are challenges with many of the current methods used to measure fuel moisture in the field. Measurement of fuel moisture by oven-drying is often considered the gold standard (Matthews 2010). However, this approach has limited value when continuous or real-time moisture information is needed or when monitoring needs to be done without personnel in the field. Another traditional method is the use of fuel analogues (i.e. hazard sticks or hazard bags) to track changes in moisture in a fixed location, which generates a moisture time series but requires manual measurement (Beck and Armitage 2004; Hardy and Hardy 2007). Alternatively, the Speedy Moisture Meter (Dexter and Williams 1976) or Wiltronics T-H Fine Fuel Moisture Meter (Chatto and Tolhurst 1997) can be used to obtain instantaneous measurements in any location but also require manual measurement. Soil moisture sensors have been trialled to continuously and automatically measure surface dead FFMC, but with mixed success (Condera et al. 2012; Wilson et al. 2014; Nyman et al. 2015; Schunk et al. 2016). This approach is under experimentation and cannot currently be used in operational fire management. Another increasingly popular approach is the use of automated fuel moisture sticks (Campbell Scientific CS506/26601), which collect and transmit moisture data, providing a real-time continuous measure that can be accessed remotely.

The practical advantages of automated fuel moisture sticks have led to their use in fire management for routine measurement of fuel moisture (National Wildfire Coordinating Group 2014) and in fuel moisture research (e.g. Resco de Dios et al. 2015; Cawson et al. 2017; Schunk et al. 2017; Burton et al. 2019). Despite growing adoption, there has been limited systematic analysis of the performance of automated fuel sticks as an analogue for dead surface fine fuel (exceptions include Schunk et al. 2014 over a limited geographic range). Variations in canopy cover and the characteristics of surface dead fine fuel between forest types are likely to result in different relationships between surface dead FFMC and fuel stick moisture content, which need to be accounted for if the fuel sticks are to provide an accurate representation of surface dead FFMC.

Our aim was to evaluate automated fuel moisture sticks (Campbell Scientific CS505/10824, CS506/26601) as a method for estimating surface dead FFMC across a range of forest types worldwide. Specifically, we asked:

  1. How accurately do the automated fuel moisture sticks estimate surface dead FFMC?

  2. Does the relationship between the moisture of the automated fuel stick and surface dead FFMC vary by forest type?

We use the results of our study to evaluate the efficacy of automated fuel moisture sticks in wildfire management and to make recommendations for their future use.


Methods

We compiled a large dataset of concurrent automated fuel stick moisture observations and gravimetric surface dead FFMC measurements from 27 sites. These data were originally collected as part of separate fire research projects. The data were analysed using linear regression to determine relationships between fuel stick moisture and surface dead FFMC.

Site description

This study used data collected from three broad geographic regions: western Canada, central Europe and south-eastern Australia (Fig. 1). Some of the data have been published previously (Schunk et al. 2014; Bovill et al. 2015; Cawson et al. 2017; Schunk et al. 2017), but other datasets are unpublished or presented in theses (Gibos 2010). The dataset encompassed 27 sites across wide-ranging forest types typical of the different geographic regions, including boreal forest, lowland and alpine coniferous forests, deciduous broadleaf forest and temperate eucalypt forest. Data from the 27 sites were grouped into nine forest fuel categories based on geographic location, tree species, forest structure, type of dead surface fine fuel (needles, leaves or grass) and its depth (Table 1). The groupings resulted in one forest fuel category in western Canada (five sites), five forest fuel categories in central Europe (six sites) and three forest fuel categories in south-eastern Australia (16 sites).


Fig. 1.  Location of sites. (a) Worldwide map showing geographic regions and regional maps of (b) central Europe, (c) south-eastern Australia and (d) western Canada. For regional maps the site locations are marked with a red dot and labelled according to the forest fuel category. If the geographic distance between sites is too small to depict at the map’s resolution, the number of sites is shown in parentheses.
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Table 1.  Summary descriptors and statistics for each forest fuel category
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Representative photographs of each forest fuel category illustrate the differences in surface fuel (Fig. 2). The categories are:

  • Lodgepole pine – evergreen forest dominated by Pinus contorta in Canada with dead surface fuel comprising a shallow layer of pine needles

  • Scots pine (needles) – evergreen lowland forest dominated by P. sylvestris in central Europe with dead surface fuel comprising a shallow layer of pine needles

  • Scots pine (grass) – evergreen lowland forest dominated by P. sylvestris in central Europe with dead surface fuel comprising dead grass

  • Open conifer – evergreen woodland and alpine forest dominated by either P. mugo, P. sylvestris or Picea abies in central Europe with dead surface fuel comprising dead grass

  • European beech – deciduous lowland forest dominated by Fagus sylvatica in central Europe with dead surface fuel comprising a shallow layer of leaves

  • Sweet chestnut – deciduous forest dominated by Castanea sativa in central Europe with dead surface fuel comprising a deep layer of leaves

  • Dry eucalypt – evergreen open forest dominated by a variety of Eucalyptus species in south-eastern Australia with dead surface fuel comprising a moderately deep layer of leaves

  • Wet eucalypt – evergreen tall open forest dominated by a variety of Eucalyptus species in south-eastern Australia with dead surface fuel comprising a deep layer of leaves

  • Eucalypt woodland – evergreen woodland dominated by a variety of Eucalyptus species in south-eastern Australia with dead surface fuel comprising a shallow and patchy layer of leaves


Fig. 2.  Photographs depicting surface fine fuel in the nine forest fuel categories. (a) Lodgepole pine, (b) Scots pine (needles), (c) Scots pine (grass), (d) open conifer, (e) European beech, (f) sweet chestnut, (g) dry eucalypt, (h) wet eucalypt and (i) eucalypt woodland. Red scale bar = 5 cm.
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Fuel moisture sampling

The fuel moisture dataset comprised concurrent measurements of gravimetric surface dead FFMC and automated fuel stick moisture. We used Campbell Scientific automated fuel moisture sensors (CS505/10824 and CS506/26601), which use time domain reflectometry with a reported operating range of 0% to 70% (Campbell Scientific 1998). It was beyond the scope of the current study to quantify the precision of the stick sensor, but previous research shows strong agreement (R2 = 0.981) between the electronic measurements and real gravimetric stick moisture (Schunk et al. 2014). These fuel sticks are designed to emulate 10-h fuel (diameter 1.3 cm; length 50.8 cm). The sticks were mounted 30 cm above the forest floor using a mounting kit (except at eight eucalypt sites where they were mounted at 50 cm because of local project requirements). At a subset of sites, three fuel sticks were installed but for the purposes of this study only the mean values from those three fuel sticks are analysed.

To measure surface dead FFMC, surface fuel samples were collected into sealed containers from multiple locations within 20 m of the fuel sticks. The full litter profile was sampled down to the duff (or mineral soil where there was no duff); dead grass was sampled in the Scots pine (grass) and open conifer sites as it was the predominant dead surface fine fuel. Sample sizes varied between sites, depending on litter depth and study design, but typically exceeded 10 g in wet weight. Sampling was done at different times throughout the day and year to quantify a range of moisture conditions. The number of gravimetric subsamples taken at each site per sampling event varied from 3 to 15 depending on the design of the individual project. We only report the means for each sampling event as often the samples were bulked before drying. Samples were oven-dried at 105°C for at least 24 h until the sample achieved a constant weight. The moisture content was calculated as percent of oven dry weight. Gravimetric fuel moisture measurements were matched to the fuel stick measurements that had been recorded at the same time.

Data analysis

We used linear regression to quantify the strength of relationships between fuel stick moisture and surface dead FFMC with all the data pooled and for each forest fuel category individually. We excluded concurrent measurements where the fuel stick moisture was >70% because the recommended operating range of the fuel stick is 0–70%. We performed an analysis of covariance (ANCOVA) to test for the effect of forest fuel category on the regression between fuel stick moisture and surface dead FFMC. The analysis was first done for the full range of gravimetric moisture values, which sometimes exceeded 200%. Next, the analysis was repeated for a subset of the data where gravimetric moisture was below 35% to evaluate the moisture sticks at the lower end of the fuel moisture spectrum when fires are more likely to occur. All analyses were performed using the R statistical programming language, version 3.6.1 (R Core Team 2019).


Results

The linear regression between surface dead FFMC and fuel stick moisture for the full dataset had a R2 of 0.54 and a root mean squared error (RMSE) of 46 (Fig. 3; Table 2). In most cases the surface dead FFMC was much higher than fuel stick moisture – on average by a factor of 3 (Table 1), except at low moisture contents when surface dead FFMC was sometimes lower than fuel stick moisture. The magnitude of the discrepancy between fuel stick moisture and surface dead FFMC varied depending on forest fuel category, from a factor of 1.6 (Scots pine needles) to a factor of 5.7 (European beech). We performed a separate regression analysis for surface dead FFMC <35%. At this lower end of the fuel moisture spectrum, the model was weaker (R2 = 0.18) than for the full range of data. The RMSE was 7, which is large given the narrow range of the data. The slope of the regression was lower and close to 1 for the model fitted to dead FFMC <35%.


Fig. 3.  Scatterplots comparing surface dead fine fuel moisture content (FFMC) with fuel stick moisture for (a) the full data range and (b) data below the fibre saturation point of ~35%. Colours and symbols for the data points represent different forest fuel categories. The solid black line is a linear regression of all data and the dashed line is the 1 : 1 line. The hollow blue triangle is an outlier in the sweet chestnut data that is displayed in the scatterplots but removed from the regression modelling.
F3


Table 2.  Summary of correlation coefficients and linear models fitted to datasets for individual forest fuel categories. n is the number of samples used to derive the models for each forest fuel category. Standard error of parameter estimates are given in parentheses. Significance of F-tests are as indicated: n.s. P > 0.05; *P ≤ 0.05; **P ≤ 0.01; ***P ≤ 0.001; ****P ≤ 0.0001. There is no regression for wet eucalypt when surface dead FFMC <35% because the sample size was too small. FFMC, fine fuel moisture content
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Linear regressions between fuel stick moisture and surface dead FFMC for individual forest fuel categories generally had higher R2 values than the regression for the full dataset (Table 2; Fig. 4; Fig. A1). The R2 ranged from 0.55 (sweet chestnut and eucalypt woodland) to 0.87 (Scots pine needles), with a median of 0.70. The median RMSE was 52, which is slightly higher than the RMSE for the regression for the full dataset. Regression models fitted to surface dead FFMC <35% were generally weaker, with a median R2 of 0.59 (Table 2; Fig. 4; Fig. A2). Exceptions were European beech and eucalypt woodland, which both had stronger models within this range (R2 of 0.92 and 0.78 respectively). The model for sweet chestnut was non-significant and there was insufficient data to derive a model for wet eucalypt.


Fig. 4.  Linear relationships between surface dead fine fuel moisture content (FFMC) and fuel stick moisture for (a) the full data range and (b) data where fine FMC is <35%. Colours and symbols on the lines represent different forest fuel categories.
F4

Results from the ANCOVA showed there was a statistically significant effect of forest fuel category on the relationship between fuel stick moisture and surface dead FFMC. For the dataset spanning the full range of moisture values, both the treatment effect (forest fuel category; F = 90.11, P < 0.001) and the interaction effect (forest fuel category × stick moisture; F = 12.73, P < 0.001) were statistically significant, meaning there was a significant difference between both the intercepts and slopes of the regressions. Slopes ranged from 3.18 to 6.90 and intercepts ranged from −70.43 to 14.49. Similarly, for the dataset with surface dead FFMC <35%, both the treatment effect (forest fuel category; F = 28.13, P < 0.001) and the interaction effect (forest fuel category × stick moisture; F = 6.54, P < 0.001) were statistically significant. For these regressions, slopes ranged from 1.3 to 4.2 and intercepts ranged from −72.7 to −2.2.


Discussion

Automated fuel sticks provided a reasonable estimate of surface dead FFMC in most cases, but only after forest fuel-specific calibration. They are best utilised as a coarse indicator of when surface dead FFMC reaches a threshold where it is likely to be ignitable, rather than as a precise estimator of moisture content. They provide a continuous, automated measure of fuel moisture that can be transmitted from remote locations, so they reduce the labour-intensiveness of obtaining field-based moisture information. Precision may be improved with future work.

Accuracy of automated fuel moistures sticks in estimating surface dead FFMC

Typically, surface dead FFMC was higher than fuel stick moisture content, except under dry conditions (moisture content <20%) in some forest fuel categories with a shallow litter bed. Resco de Dios et al. (2015) report a similar relationship between fuel stick moisture and profile dead FFMC in eucalypt woodland. This result may seem counterintuitive given the smaller diameter of the fine fuel particles (<6 mm) relative to the fuel sticks (1.3 cm). Fine fuels have a higher surface-area-to-volume ratio than fuel sticks, potentially enabling more rapid moisture exchange with the atmosphere and therefore more rapid dry-down (Fosberg et al. 1970). However, the location of surface fine fuel in a (sometimes deep) litter bed likely reduces the atmospheric exposure of most individual fuel particles, thus slowing the response time of the surface fine fuel relative to the fuel stick that is installed above the surface (Keane 2015). Additionally, surface fuels that are in contact with moist soil or duff may be less responsive to changes in atmospheric conditions (Hatton et al. 1988).

Some of the disparity between surface dead FFMC and fuel stick moisture may be related to sampling issues rather than to real differences in moisture content. The data used for the regression analysis (Figs 3, 4) were collected for a range of different purposes and thus sampling protocols differed between forest fuel categories and were not necessarily optimal for the purposes of the current study. One potential issue was the lack of spatial replication in fuel stick measurements; for most sites only one fuel stick was used. It is possible that the microclimate in the fuel stick locations (e.g. solar radiation and precipitation throughfall) were not representative of average site conditions. The amount of error introduced from this lack of replication likely varies by forest type depending on the spatial variability of the microclimate within that forest type. Similarly, the disparity between surface dead FFMC and fuel stick moisture may differ between forest fuel categories because of the varying number of fine fuel samples taken at each visit to a site (ranging from 3 to 15) or the total number of days when the fuels were sampled (ranging from 37 to 104). Within-site variability in surface dead FFMC was not quantified in this study.

Effects of forest fuel category

The relationship between fuel stick moisture and surface dead FFMC was reasonably strong for the full dataset (R2 = 0.54), but typically strengthened when the analyses were performed within forest fuel categories (median R2 = 0.70). Other studies report regression functions of similar strength; for example, R2 = 0.74 in wet eucalypt forest (Burton et al. 2019) and R2 = 0.63 in eucalypt woodland (Resco de Dios et al. 2015). Differences in the regression functions between forest fuel categories likely reflect differences in both fuel properties and forest structure. Fuel properties such as fuel particle type, particle thickness, packing ratio, state of decomposition and litter bed depth contribute to differences in the diffusivity, response time and saturation water content of the fuel (Simard 1968; Anderson 1990a). Forest structural properties such as canopy cover, tree height, tree density and understorey density influence the microclimate (i.e. in-forest temperature, relative humidity and wind) (Walsh et al. 2017; Nyman et al. 2018) and types of drying and wetting processes that the fuel stick and fuel bed are exposed to. Some fuel and forest structural properties may change seasonally, potentially weakening the regression functions (e.g. for sweet chestnut).

With so many different factors potentially contributing to differences in the regression functions, it is difficult to identify individual factors that explain the trends across the full dataset. For example, past research has shown that dead grass absorbs more water than needles (Simard 1968), but also has a faster response time (Anderson 1990a). This might explain the high slope of the regression function for the open conifer forest fuel category (grass-dominated) relative to the other fuel categories. However, the same explanation cannot be used to explain the results for Scots pine (grass), which had a slope equal to Scots pine (needles). A much larger dataset is needed to quantitatively determine which fuel and forest structural properties are having the greatest influence. In the absence of this knowledge, our results clearly demonstrate that calibrations for forest fuel categories are needed to improve the strength of the relationships between fuel stick moisture and surface dead FFMC.

Implications for fire management

Automated fuel sticks will be useful to fire managers as a method for estimating surface dead FFMC provided forest fuel-specific calibrations are derived. They should be used in conjunction with other methods because they are not highly accurate as an analogue for surface dead fine fuels, particularly at lower moisture contents. In the context of fire management, they could be used to track fuel moisture over time in a range of landscape positions without the need for regular site visits, providing an indication of topographical differences in moisture and drying rates following precipitation. Many of the moisture models used by fire managers do not adequately capture the effects of terrain or variations in canopy cover (Matthews 2014), so the fuel sticks will be valuable in this regard. The fuel sticks can be used to indicate when surface dead fine fuel is approaching a dry state in different parts of the landscape. At the drier end of the moisture spectrum, they should be supplemented by manual sampling using devices such as the Wiltronics T-H Fine Fuel Moisture Meter (Chatto and Tolhurst 1997) and moisture models that can reliably predict under dry conditions (Slijepcevic et al. 2015).

Future research needs

There are several areas where research could be prioritised to further develop our ability to use fuel moisture sticks in wildfire management. First, there could be more work done to explore the utility of the fuel sticks to estimate dead FFMC across a range of fuel strata, including the uppermost litter layer and suspended dead fuel, which influence different components of fire behaviour (Gould et al. 2011). Fuel stick moisture may be more strongly related to the moisture content within these fuel strata compared with the full litter profile (as shown by Resco de Dios et al. 2015; Burton et al. 2019). Further research could also evaluate the fuel moisture sticks against widely used fuel moisture models. This analysis could be used to identify the moisture conditions for which the fuel sticks are most appropriate to use and when the models are a more reliable source of information. Finally, research effort could be directed towards the development of a generalised model linking fuel stick moisture to surface dead FFMC. Such models could include factors that contribute to fuel-specific effects (e.g. type of fuel particle, litter bed depth, decomposition) and forest-specific effects (e.g. leaf area index), eliminating the need for calibration functions for each forest fuel category. There may be opportunities to develop machine-learning routines to improve the accuracy of these generalised models over time. Despite the large dataset used in this study, it was too small to develop these more generalised models. Data would be needed from a larger number of sites and across a broader range of moisture conditions, particularly very dry conditions.


Conclusions

Our results indicate that typically the fuel stick underestimates surface dead FFMC, but the relationship can be modelled with reasonable accuracy for most dead surface fuels using forest fuel-specific linear calibration functions. The variation explained by those forest fuel-specific linear regressions ranges from 55% to 87%. Similarities in the regression functions for some forest fuel categories may be attributed to similarities in forest structure or surface fine fuel properties, including litter bed depth, packing density and degree of decay. Overall, our results demonstrate that automated fuel sticks can be used as an analogue for surface dead fine fuels for fuel moisture research, model development and fire management purposes, such as monitoring wildfire risk across landscapes and providing guidance about prescribed burning windows, but only if there are fuel-specific calibrations and if they are used together with other methods. Further research is needed to refine the calibration functions to improve precision and potentially devise a generalised model incorporating fuel properties across different forest types.


Conflicts of interest

The authors declare no conflicts of interest.



Acknowledgements

The collaboration was supported by the Australia–Germany Joint Research Cooperation Scheme (DAAD) with funds from the Federal Ministry of Education and Research (BMBF). The research draws on data from multiple projects. In Australia the work was funded by the Department of Environment, Land, Water and Planning (DELWP) through the integrated Forest Ecosystem Research program. Fieldwork in Australia was carried out with support from Craig Baillie and Philip Noske. In central Europe funding was received from the Bavarian State Ministry for Nutrition, Agriculture and Forestry through projects KLIP 8 and ST 288, from the European Union through the Alpine Space ALP FFIRS project (no.15-2-3-IT) and the KLIMAGRAD II project, funded by the Bavarian State Ministry of the Environment and Consumer Protection. In Switzerland data were collected in the frame of the FireLessII system calibration project, partially financed by the Forest Service of the Canton of Ticino (grant no. 741-2009.3072).


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Appendix


Fig. A1.  Scatterplots comparing fuel stick moisture with surface dead fine fuel moisture content (FFMC) for each forest fuel category for the full data range. (a) Lodgepole pine, (b) Scots pine (needles), (c) Scots pine (grass), (d) open conifer; (e) European beech, (f) sweet chestnut, (g) dry eucalypt, (h) wet eucalypt and (i) eucalypt woodland. The solid black lines are linear regressions and the dashed lines denote the 95% confidence interval for the predicted mean. Data points used in the regressions are grey dots; the black dot for sweet chestnut is an outlier excluded from the regression analysis.
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Fig. A2.  Scatterplots comparing fuel stick moisture with surface dead fine fuel moisture content (FFMC) for each forest fuel category when surface dead FFMC data < 35%. (a) Lodgepole pine, (b) Scots pine (needles), (c) Scots pine (grass), (d) open conifer; (e) European beech, (f) sweet chestnut, (g) dry eucalypt, (h) wet eucalypt and (i) eucalypt woodland. The solid black lines are linear regressions and the dashed lines denote the 95% confidence interval for the predicted mean. Data points used in the regressions are grey dots. There was no regression for wet eucalypt because the sample size (n = 2) was too small.
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