Skip to main content
  • TELEMETRY CASE REPORT
  • Open access
  • Published:

Behaviour-time budget and functional habitat use of a free-ranging European badger(Meles meles)

Abstract

Background

The European badger (Meles meles) is involved in the maintenance of bovine tuberculosis infection and onward spread to cattle. However, little is known about how transmission occurs. One possible route could be through direct contact between infected badgers and cattle. It is also possible that indirect contact between cattle and infected badger excretory products such as faeces or urine may occur either on pasture or within and around farm buildings. A better understanding of behaviour patterns in wild badgers may help to develop biosecurity measures to minimise direct and indirect contact between badgers and cattle. However, monitoring the behaviour of free-ranging badgers can be logistically challenging and labour intensive due to their nocturnal and semi-fossorial nature. We trialled a GPS and tri-axial accelerometer-equipped collar on a free-ranging badger to assess its potential value to elucidate behaviour-time budgets and functional habitat use.

Results

During the recording period between 16:00 and 08:00 on a single night, resting was the most commonly identified behaviour (67.4%) followed by walking (20.9%), snuffling (9.5%) and trotting (2.3%). When examining accelerometer data associated with each GPS fix and habitat type (occurring 2 min 30 s before and after), walking was the most common behaviour in woodland (40.3%) and arable habitats (53.8%), while snuffling was the most common behaviour in pasture (61.9%). Several nocturnal resting periods were also observed. The total distance travelled was 2.28 km.

Conclusions

In the present report, we demonstrate proof of principle in the application of a combined GPS and accelerometer device to collect detailed quantitative data on wild badger behaviour. Behaviour-time budgets allow us to investigate how badgers allocate energy to different activities and how this might change with disease status. Such information could be useful in the development of measures to reduce opportunities for onward transmission of bovine tuberculosis from badgers to cattle.

Background

There is substantial interest in badger behaviour owing to their involvement in the transmission of Mycobacterium bovis (the causative agent of bovine tuberculosis (bTB)) to cattle [1]. Control of bTB in cattle is a major animal health issue in the UK with a cost of over £100 million in Great Britain during 2011 to 2012 and almost £23 million in Northern Ireland during 2010 to 2011 [2,3]. Although badgers rarely interact directly with cattle on pasture, indirect interactions - such as cattle investigating pasture contaminated with badger excrement - are thought to occur more frequently [4-8]. Badgers are also known to visit farm buildings and use cattle troughs [9,10]. Infected badgers may display behavioural differences, as disease status has been shown to correlate with both ranging and denning behaviour with infected individuals having larger home ranges [11] and spending a greater proportion of their time occupying outlier sets [12]. There are also accounts of chronically infected badgers becoming solitary and taking up residence in farm buildings [13]. Therefore, a greater understanding of the behaviour of free-ranging badgers, particularly within areas of potential direct or indirect overlap with cattle, would be important when devising biosecurity measures to reduce opportunities for disease transmission. The present study reports the use of GPS and tri-axial accelerometer devices on a free-ranging European badger. Our study provides proof of principle for the utility of this technology in the construction of detailed behaviour-time budgets for this nocturnal, semi-fossorial wild carnivore.

Methods

A population of wild badgers has been the subject of an intensive long-term ecological and epidemiological study at Woodchester Park, Gloucestershire, South-West England. The study area consists of a mosaic of largely deciduous woodland and pasture (see [14] for detailed composition). During routine capture-mark-recapture exercises [15] in January 2012, an adult female European badger (Meles meles) with a body mass of 9.0 kg was captured in a steel mesh live-trap and transferred to an examination facility where it was anaesthetised by intramuscular administration of two parts butorphanol tartrate (Torbugesic®;, Wyeth, Ontario, Canada), two parts ketamine hydrochloride (Ketaset®;, Wyeth, Ontario, Canada) and one part medetomidine (Domitor®;, Orion Corporation, Espoo, Finland) [16]. Samples of faeces, urine, and tracheal and oesophageal aspirate were collected for mycobacterial culture [17], and a sample of jugular blood was taken for gamma interferon (IFN γ) [18] testing and STAT-PAK serological assay (BrockTB STAT-PAK®;; Chembio Diagnostic Systems, New York, USA) [19]. A leather collar was fitted to the badger with a GPS(i-gotU GT-120; Mobile Action Technology, Inc., Taiwan) configured to record a fix once every 5 min and a tri-axial accelerometer (X8M-3; Gulf Coast Data Concepts, LLC, Waveland, USA; recording range: ± 2 g) set to record acceleration (and therefore behaviour) at 50 Hz. In addition, the system temperature of the accelerometer was recorded once every 15 min. Both devices were scheduled to record daily between 16:00 and 08:00 in order to target out-of-sett activity. The devices were attached securely to a leather collar using tesa®; tape (No. 4651; tesa AG, Hamburg, Germany). The y-axis of the accelerometer corresponded with ‘surge’ motion (front-back acceleration), the x-axis with ‘sway’ (left-right acceleration) and the z-axis with ‘heave’ (up-down acceleration). Following recovery from anaesthesia, the animal was released at the point of capture. After a period of approximately 1 week, traps were baited and reset to recapture the animal, after which the collar was removed and data were downloaded. Data from the first night post-release were disregarded as they are likely to have been most influenced by the trapping event. The battery of the accelerometer depleted during the third night. Thus, data described are of the complete second night starting approximately 25 h after release. Accelerometer data were processed using the software and decision tree from a previous validation study on a captive badger [20]. In brief, static acceleration was derived by taking a 2-s running mean of the raw acceleration data. Dynamic acceleration was obtained by subtracting the static acceleration from the raw acceleration [21]. Vectorial dynamic body acceleration (VeDBA) was calculated as the vectorial sum of dynamic acceleration in the three axes [22]. The mean absolute dynamic acceleration, mean static acceleration, and normalised maximum amplitude by discrete Fourier transform were then extracted within a 2-s sliding window. Behaviour was classified as: resting if there was low mean absolute dynamic acceleration in each axis (less than or equal to 0.03 g); snuffling (the primary mode of foraging) if there was an increase in mean static acceleration in the surge axis indicating that the badger had its nose pointing towards the ground (greater than or equal to 0.345 g); and, depending on amplitude in the heave axis, walking (less than 0.664 g) or trotting (greater than or equal to 0.664 g) [20]. Classification values are reported as percentage (by dividing the number of data points classified as a given behaviour by the total number of points) and time engaged (by dividing the number of data points by the sampling frequency) in each behaviour. GPS traces were visualised using R version 3.1.3 [23]. Capture and examination of badgers at Woodchester Park is carried out under licence from Natural England and the UK Home Office and with the approval of the APHA Animal Welfare Ethical Review Body.

Results

The collared badger was negative on M. bovis culture, IFN γ and STAT-PAK tests at all captures up to and including the date of collar attachment. Thus, the subject was considered to be bTB negative. The mean (± SD) ambient temperature during the recording period was 4.0°C ± 1.0°C (obtained from a local weather station situated approximately 4.7 km from the study area). There were occasional bouts of activity from 16:00 until approximately 18:00, but resting was the most common behaviour (92.6%; collar temperature (mean ± SD): 37.2°C ± 1.7°C). The badger then became more active and briefly exited the sett at about 19:00 as trotting behaviour was observed (activity between 18:55 and 19:05: 6 min 1 s (60.9%) walking, 1 min 2 s (10.6%) trotting, 2 min 34 s (26.0%) snuffling, and 14 s (2.5%) resting) and the collar temperature dropped to 14.0°C, although no GPS fix was obtained at this point. Shortly thereafter, the badger returned to the sett and again resting was the most common behaviour with brief periods of activity (behavioural classification between 19:20 and 22:55: 26 min 18 s (13.1%) walking, 2 s (0.0%) trotting, 5 min 28 s (2.7%) snuffling, and 2 h 49 min 18 s (84.2%) resting; collar temperature: 34.9°C ± 3.1°C). At approximately 23:00, activity levels increased and the first GPS fix was obtained at 23:21:08. During the recording period, three distinct trips were made from setts (blue, orange, and purple tracks in Figure 1 and Additional file 1). For a detailed account of the out-of-sett behaviours associated with each GPS fix and nocturnal resting periods between each trip, see Table 1. The final GPS fix was obtained at 02:10:27. From 03:00 until the remainder of the recording period at 08:00, the badger appeared to settle and resting was the most classified behaviour (83.4%). The total distance travelled, calculated from all GPS fixes, was 2.28 km. After linking the habitat types associated with each GPS fix, walking was the most common locomotory gait in all habitats (woodland: 40.3%, pasture: 19.8%, and arable: 53.8%). Snuffling was the most common behaviour in pasture (61.9%) suggesting that it was an important foraging habitat (Table 2). Out of the total recording period, resting was the most classified behaviour (67.4%), followed by walking (20.9%), snuffling (9.5%) and trotting (2.3%). Although trotting was the least classified behaviour, it accounted for a substantial proportion (17.5%) of the overall instantaneous VeDBA (Table 3). This VeDBA value may be a slight underestimate as particularly vigorous activity occasionally exceeded the maximum recording range of the accelerometer.

Figure 1
figure 1

GPS tracks and behaviour of a free-ranging adult female European badger ( Meles meles ). GPS traces of three distinct trips from setts by the badger. Accelerometer derived behavioural information is also displayed (classified 2 min 30 s before and after the GPS fix time). The badger was considered to be inside a sett if: resting behaviour was classified, there were no GPS fixes, and there was an increase in collar temperature. See Additional file 1 for an animated version with location and associated behavioural information for each GPS fix in turn.

Table 1 Behavioural classifications associated with GPS fixes and nocturnal resting periods
Table 2 Summary of functional habitat use for a free-ranging European badger ( Meles meles )
Table 3 Overall behaviour-time budget and VeDBA of four behaviours in a free-ranging European badger ( Meles meles )

Discussion

Methods previously used to study the behaviour and movement patterns of wild badgers include direct observation and radio telemetry [24,25], camera surveillance [9], the spool-and-line technique [26,27] and magnetic localisation [28,29]. GPS and proximity logger devices have also previously been deployed on free-ranging European badgers [5,7,30]. Recently, badgers have been used in captive scenarios to validate the use of accelerometers in the classification of animal behaviour [20,31-33]. The use of tri-axial accelerometers has also been reported on free-ranging badgers, although they were used to either gain a coarser measurement of overall activity (smoothed with a 10-min running mean) [34] or to identify basic postural changes during rest [35] rather than the classification of discrete behaviours. Future work to calibrate VeDBA with rate of oxygen consumption (\(\dot {\mathrm {V}}\textit {O}_{2}\)) by respirometry would allow specific energetic costs to be assigned to behaviours in high resolution. VeDBA (for example, Table 3) can be used as a proxy for energy expenditure owing to the linear relationship of dynamic body acceleration with \(\dot {\mathrm {V}}\textit {O}_{2}\) [22,36,37].

When examining functional habitat use in the present study, GPS fixes were designated to a habitat type and the associated accelerometer classified behaviours were collated (similar to [38], although our implementation differs). An improvement on this method would be to incorporate dead reckoning (see [39]) to recreate the exact travel path so that all accelerometer data could be associated with a habitat type, not just those temporally linked with GPS fixes which may be sporadic under certain conditions such as tree cover or dense vegetation. We must emphasise that the present study relied on the classification thresholds defined in McClune et al. (2014) [20], which were derived from a single individual with an accuracy of 99.4% for resting, 78.7% for trotting, 77.5% for snuffling and 77.4% for walking. Parallel direct tracking (and observation as far as possible) or video footage recorded using camera traps could be used to expand upon training data sets and further assess the accuracy of these methods with respect to inter-individual variation and terrain. Classification improvements may be made by experimenting with additional algorithms such as hidden Markov models (for example, [40]). Even on the second night post-release, it is possible that the badger’s behaviour was influenced by the trapping event due to lost foraging time. Nevertheless, the present study demonstrates proof of principle in the application of combined GPS and accelerometer devices to collect detailed data on the behaviour of free-ranging European badgers, and results agree with previous work, suggesting that woodland is a preferred habitat but pasture is also an important foraging area [41]. Additional behaviours that may be identifiable in badgers by accelerometry include squat-marking and defecation during latrine use from static, postural changes [42,43]. Specific foraging events could also be investigated in more detail (for example, [44,45]) as badgers are known to display a pronounced upward flick of the head when predating earthworms [46].

Conclusions

In the present study, we demonstrate the utility of a combined GPS and accelerometer device to collect detailed quantitative data on wild badger behaviour. The badger spent the largest proportion of time resting, followed by walking, snuffling and trotting. Behaviour also appeared to vary depending on habitat type, with walking the most common behaviour associated with GPS fixes in both woodland and arable areas, compared to snuffling on pasture. Over extended deployments, such behaviour-time and habitat use information may be of value to quantify putative bTB-induced behavioural alterations in badgers. A greater understanding of badger behaviour on and around farms, particularly in areas of potential direct or indirect overlap with livestock, could be important in the development of biosecurity measures to reduce opportunities for disease transmission.

Abbreviations

g :

Gravitational acceleration (1 g = 9.80665 m/s2)

bTB:

bovine tuberculosis

IFN γ :

Gamma interferon

VeDBA:

Vectorial dynamic body acceleration

\(\dot {\mathrm {V}}\textit {O}_{2}\) :

Rate of oxygen consumption

References

  1. Gortázar C, Delahay RJ, McDonald RA, Boadella M, Wilson GJ, Gavier-Widen D, et al. The status of tuberculosis in European wild mammals. Mammal Rev. 2012; 42(3):193–206. doi:10.1111/j.1365-2907.2011.00191.x.

    Article  Google Scholar 

  2. Department for Environment Food and Rural Affairs. Bovine Tuberculosis Evidence Plan. 2013. https://www.gov.uk/government/uploads/system/uploads/attachment_data/file/221077/pb13909-evidenceplan-bovine-tuberculosis.pdf.

  3. NIAO. Agriculture and Rural Development Committee: Review of Bovine Tuberculosis. 2012. http://www.niassembly.gov.uk/Documents/Agriculture-and-Rural-Development/Reviews/Bovine-Tuberculosis/ Written-Submissions/NI-Audit-Office.pdf.

  4. Benham PFJ, Broom DM. Interactions between cattle and badgers at pasture with reference to bovine tuberculosis transmission. Brit Vet J. 1989; 145(3):226–41.

    Article  CAS  Google Scholar 

  5. Böhm M, Hutchings MR, White PCL. Contact networks in a wildlife-livestock host community: identifying high-risk individuals in the transmission of bovine TB among badgers and cattle. PloS ONE. 2009; 4(4):5016. doi:10.1371/journal.pone.0005016.

    Article  Google Scholar 

  6. Drewe JA, O’Connor HM, Weber N, McDonald RA, Delahay RJ. Patterns of direct and indirect contact between cattle and badgers naturally infected with tuberculosis. Epidemiol Infect. 2013; 141(7):1467–75. doi:10.1017/S0950268813000691.

    Article  CAS  PubMed  Google Scholar 

  7. Mullen EM, MacWhite T, Maher PK, Kelly DJ, Marples NM, Good M. Foraging Eurasian badgers Meles meles and the presence of cattle in pastures. Do badgers avoid cattle?Appl Anim Behav Sci. 2013; 144:130–7.

    Article  Google Scholar 

  8. Scantlebury M, Hutchings MR, Allcroft DJ, Harris S. Risk of disease from wildlife reservoirs: badgers, cattle, and bovine tuberculosis. J Dairy Sci. 2004; 87(2):330–9. doi:10.3168/jds.S0022-0302(04)73172-0.

    Article  CAS  PubMed  Google Scholar 

  9. Garnett BT, Delahay RJ, Roper TJ. Use of cattle farm resources by badgers (Meles meles) and risk of bovine tuberculosis (Mycobacterium bovis) transmission to cattle. Proc R Soc Lond B: Biol Sci. 2002; 269(1499):1487–91. doi:10.1098/rspb.2002.2072.

    Article  CAS  Google Scholar 

  10. Tolhurst BA, Delahay RJ, Walker NJ, Ward AI, Roper TJ. Behaviour of badgers (Meles meles) in farm buildings: Opportunities for the transmission of Mycobacterium bovis to cattle?Appl Anim Behav Sci. 2009; 117(1-2):103–13. doi:10.1016/j.applanim.2008.10.009.

    Article  Google Scholar 

  11. Garnett BT, Delahay RJ, Roper TJ. Ranging behaviour of European badgers (Meles meles) in relation to bovine tuberculosis (Mycobacterium bovis) infection. Appl Anim Behav Sci. 2005; 94(3-4):331–40. doi:10.1016/j.applanim.2005.02.013.

    Article  Google Scholar 

  12. Weber N, Bearhop S, Dall SRX, Delahay RJ, McDonald RA, Carter SP. Denning behaviour of the European badger (Meles meles) correlates with bovine tuberculosis infection status. Behav Ecol Sociobiology. 2012; 67(3):471–9. doi:10.1007/s00265-012-1467-4.

    Article  Google Scholar 

  13. Cheeseman CL, Mallinson PJ. Behaviour of badgers (Meles meles) infected with bovine tuberculosis. J Zool. 1981; 194(2):284–9. doi:10.1111/j.1469-7998.1981.tb05780.x.

    Article  Google Scholar 

  14. Delahay RJ, Carter SP, Forrester GJ, Mitchell A, Cheeseman CL. Habitat correlates of group size, bodyweight and reproductive performance in a high-density Eurasian badger (Meles meles) population. J Zool. 2006; 270(3):437–47. doi:10.1111/j.1469-7998.2006.00165.x.

    Article  Google Scholar 

  15. Delahay RJ, Walker N, Smith GS, Wilkinson D, Clifton-Hadley RS, Cheeseman CL, Tomlinson AJ, Chambers MA. Long-term temporal trends and estimated transmission rates for Mycobacterium bovis infection in an undisturbed high-density badger (Meles meles) population. Epidemiol Infect. 2013; 141(7):1445–56. doi:10.1017/S0950268813000721.

    Article  CAS  PubMed  Google Scholar 

  16. de Leeuw ANS, Forrester GJ, Spyvee PD, Brash MGI, Delahay RJ. Experimental comparison of ketamine with a combination of ketamine, butorphanol and medetomidine for general anaesthesia of the Eurasian badger (Meles meles L.)Vet J. 2004; 167(2):186–93. doi:10.1016/S1090-0233(03)00113-8.

    Article  CAS  PubMed  Google Scholar 

  17. Clifton-Hadley RS, Wilesmith JW, Stuart FA. Mycobacterium bovis in the European badger (Meles meles): epidemiological findings in tuberculous badgers from a naturally infected population. Epidemiol Infect. 1993; 111(1):9–19.

    Article  PubMed Central  CAS  PubMed  Google Scholar 

  18. Dalley D, Davé D, Lesellier S, Palmer S, Crawshaw T, Hewinson RG, et al. Development and evaluation of a gamma-interferon assay for tuberculosis in badgers (Meles meles). Tuberculosis. 2008; 88(3):235–43. doi:10.1016/j.tube.2007.11.001.

    Article  CAS  PubMed  Google Scholar 

  19. Greenwald R, Esfandiari J, Lesellier S, Houghton R, Pollock J, Aagaard C, et al. Improved serodetection of Mycobacterium bovis infection in badgers (Meles meles) using multiantigen test formats. Diagn Microbiol Infect Dis. 2003; 46(3):197–203. doi:10.1016/S0732-8893(03)00046-4.

    Article  CAS  PubMed  Google Scholar 

  20. McClune DW, Marks NJ, Wilson RP, Houghton JDR, Montgomery IW, McGowan NE, et al. Tri-axial accelerometers quantify behaviour in the Eurasian badger (Meles meles): towards an automated interpretation of field data. Anim Biotelemetry. 2014; 2(5). doi:10.1186/2050-3385-2-5.

  21. Shepard ELC, Wilson RP, Halsey LG, Quintana F, Gómez Laich A, Gleiss AC, et al. Derivation of body motion via appropriate smoothing of acceleration data. Aquatic Biol. 2008; 4:235–41. doi:10.3354/ab00104.

    Article  Google Scholar 

  22. Qasem L, Cardew A, Wilson A, Griffiths I, Halsey LG, Shepard ELC, et al. Tri-axial dynamic acceleration as a proxy for animal energy expenditure; should we be summing values or calculating the vector?PloS ONE. 2012; 7(2):31187. doi:10.1371/journal.pone.0031187.

    Article  Google Scholar 

  23. R Core Team. R: A Language and Environment for Statistical Computing. Vienna, Austria: R Foundation for Statistical Computing; 2015. http://www.R-project.org/.

    Google Scholar 

  24. Kruuk H. Spatial organization and territorial behaviour of the European badger Meles meles. J Zool. 1978; 184(1):1–19. doi:10.1111/j.1469-7998.1978.tb03262.x.

    Article  Google Scholar 

  25. Roper TJ, Ostler JR, Schmid TK, Christian SF. Sett use in European badgers Meles Meles. Behaviour. 2001; 138(2):173–87. doi:10.1163/15685390151074366.

    Article  Google Scholar 

  26. Hawkins CE, Macdonald DW. A spool-and-line method for investigating the movements of badgers, Meles meles. Mammalia. 1992; 56:322–5.

    Article  Google Scholar 

  27. Brown J, Harris S, Cheeseman CL. The development of field techniques for studying potential modes of transmission of bovine tuberculosis from badgers to cattle In: Hayden TJ, editor. The Badger. Dublin: Royal Irish Academy: 1993. p. 139–153.

    Google Scholar 

  28. Markham A, Trigoni N, Macdonald DW, Ellwood SA. Underground localization in 3-D using magneto-inductive tracking. IEEE Sensors J. 2012; 12(6):1809–16. doi:10.1109/JSEN.2011.2178064.

    Article  Google Scholar 

  29. Noonan MJ, Markham A, Newman C, Trigoni N, Buesching CD, Ellwood SA, et al. A new magneto-inductive tracking technique to uncover subterranean activity: What do animals do underground?Methods Ecol Evol. 2015.

  30. Brendel C, Helder R, Chevallier D, Zaytoon J, Georges J-Y, Handrich Y. Testing a Global Positioning System on free-ranging badgers Meles meles. Mammal Notes. 2012; 4:1–5.

    Google Scholar 

  31. Gao L, Campbell HA, Bidder OR, Hunter J. A Web-based semantic tagging and activity recognition system for species’ accelerometry data. Ecol Inform. 2013; 13:47–56. doi:10.1016/j.ecoinf.2012.09.003.

    Article  Google Scholar 

  32. Campbell HA, Gao L, Bidder OR, Hunter J, Franklin CE. Creating a behavioural classification module for acceleration data: Using a captive surrogate for difficult to observe species.J Experimental Biol. 2013:089805. doi:10.1242/jeb.089805.

  33. Bidder OR, Campbell HA, Gómez-Laich A, Urgé P, Walker J, Cai Y, et al. Love thy neighbour: automatic animal behavioural classification of acceleration data using the K-Nearest neighbour algorithm. PLoS ONE. 2014; 9(2):88609. doi:10.1371/journal.pone.0088609.

    Article  Google Scholar 

  34. Noonan MJ, Markham A, Newman C, Trigoni N, Buesching CD, Ellwood SA, et al. Climate and the individual: inter-annual variation in the autumnal activity of the European badger (Meles meles). PLoS ONE. 2014; 9(1):83156. doi:10.1371/journal.pone.0083156.

    Article  Google Scholar 

  35. Shepard ELC, Wilson RP, Quintana F, Gómez Laich A, Liebsch N, Albareda DA, et al. Identification of animal movement patterns using tri-axial accelerometry. Endangered Species Res. 2008; 10:47–60. doi:10.3354/esr00084.

    Article  Google Scholar 

  36. Wilson RP, White CR, Quintana F, Halsey LG, Liebsch N, Martin GR, et al. Moving towards acceleration for estimates of activity-specific metabolic rate in free-living animals: the case of the cormorant. J Anim Ecol. 2006; 75(5):1081–90. doi:10.1111/j.1365-2656.2006.01127.x.

    Article  PubMed  Google Scholar 

  37. Halsey LG, Shepard ELC, Quintana F, Gomez Laich A, Green JA, Wilson RP. The relationship between oxygen consumption and body acceleration in a range of species. Comp Biochem Physiol. Part A, Mol Integr Physiol. 2009; 152(2):197–202. doi:10.1016/j.cbpa.2008.09.021.

    Article  CAS  Google Scholar 

  38. Berger A, Dettki H, Urbano F. Deciphering animals’ behaviour: joining GPS and activity data In: Urbano F, Cagnacci F, editors. Spatial Database for GPS Wildlife Tracking Data: a Practical Guide to Creating a Data Management System with PostgreSQL/PostGIS and R. Cham: Springer: 2014. p. 231–244. Chap. 12. doi:10.1007/978-3-319-03743-1.

    Google Scholar 

  39. Wilson RP, Shepard ELC, Liebsch N. Prying into the intimate details of animal lives: use of a daily diary on animals. Endangered Species Res. 2008; 4:123–37. doi:10.3354/esr00064.

    Article  Google Scholar 

  40. Lim D, Park C, Kim N. H, Kim S-H, Yu YS. Fall-detection algorithm using 3-axis acceleration: combination with simple threshold and hidden Markov model. J Appl Math. 2014; 2014:1–8. doi:10.1155/2014/896030.

    Article  Google Scholar 

  41. Kruuk H. Foraging and spatial organisation of the European badger, Meles meles L.Behav Ecol Sociobiol. 1978; 4(1):75–89. doi:10.1007/BF00302562.

    Article  Google Scholar 

  42. Kruuk H, Gorman M, Leitch A. Scent-marking with the subcaudal gland by the European badger, Meles meles L.Anim Behav. 1984; 32(3):899–907.

    Article  Google Scholar 

  43. Stewart PD, MacDonald DW, Newman C, Tattersall FH. Behavioural mechanisms of information transmission and reception by badgers, Meles meles, at latrines. Anim Behav. 2002; 63(5):999–1007. doi:10.1006/anbe.2001.1990.

    Article  Google Scholar 

  44. Carroll G, Slip D, Jonsen I, Harcourt R. Supervised accelerometry analysis can identify prey capture by penguins at sea. J Exp Biol. 2014; 217(24):4295–4302.

    Article  PubMed  Google Scholar 

  45. Viviant M, Monestiez P, Guinet C. Can we predict foraging success in a marine predator from dive patterns only? Validation with prey capture attempt data. PloS ONE. 2014; 9(3):88503. doi:10.1371/journal.pone.0088503.

    Article  Google Scholar 

  46. Macdonald D. W. The red fox, Vulpes vulpes, as a predator upon earthworms, Lumbricus terrestris. Zeitschrift für Tierpsychologie. 1980; 52(2):171–200.

    Article  Google Scholar 

Download references

Acknowledgements

We are grateful to staff at the APHA’s National Wildlife Management Centre, Woodchester Park, for assistance with fieldwork and trapping, and to APHA at Weybridge and Fera, York, for TB diagnostics. We are also indebted to all the farmers and landowners in the Woodchester Park study area for their co-operation. The long-term study was funded by Defra. Katie Barbour made helpful comments on the paper. David W. McClune was supported by a PhD studentship from the Department of Employment and Learning (Northern Ireland).

Author information

Authors and Affiliations

Authors

Corresponding authors

Correspondence to Nikki J Marks or David M Scantlebury.

Additional information

Competing interests

The authors declare that they have no competing interests.

Authors’ contributions

DWM performed the experiments and analysed the data. DWM, NJM, RJD, WIM, and DMS wrote the paper. All authors read and approved the final manuscript.

Additional file

Additional file 1

Functional habitat use of a free-ranging European badger ( Meles meles ). An animation showing the time and location of each GPS fix. Information on distance travelled, speed, habitat type, and approximate points of sett entry are displayed. The corresponding accelerometer derived behaviours (2 min 30 s before and after each GPS fix time) are also shown.

Rights and permissions

Open Access  This article is licensed under a Creative Commons Attribution 4.0 International License, which permits use, sharing, adaptation, distribution and reproduction in any medium or format, as long as you give appropriate credit to the original author(s) and the source, provide a link to the Creative Commons licence, and indicate if changes were made.

The images or other third party material in this article are included in the article’s Creative Commons licence, unless indicated otherwise in a credit line to the material. If material is not included in the article’s Creative Commons licence and your intended use is not permitted by statutory regulation or exceeds the permitted use, you will need to obtain permission directly from the copyright holder.

To view a copy of this licence, visit https://creativecommons.org/licenses/by/4.0/.

The Creative Commons Public Domain Dedication waiver (https://creativecommons.org/publicdomain/zero/1.0/) applies to the data made available in this article, unless otherwise stated in a credit line to the data.

Reprints and permissions

About this article

Check for updates. Verify currency and authenticity via CrossMark

Cite this article

McClune, D.W., Marks, N.J., Delahay, R.J. et al. Behaviour-time budget and functional habitat use of a free-ranging European badger(Meles meles). Anim Biotelemetry 3, 7 (2015). https://doi.org/10.1186/s40317-015-0025-z

Download citation

  • Received:

  • Accepted:

  • Published:

  • DOI: https://doi.org/10.1186/s40317-015-0025-z

Keywords