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The track-based monitoring technique and the estimation of occupancy and detection rates Rick Southgate1 and Rachel Paltridge2 1 2 Envisage Environmental Services Desert Wildlife Services Outline • Track-based monitoring • Types of data • Occupancy and detection modelling PRESENCE • Asserting absence Bayesian approach • The way forward Track-based monitoring: motivation ~2000 Track plots + experienced trackers = meaningful data Track-based monitoring: motivation ~2000 Track plots + indigenous communities = meaningful work Track-based monitoring: motivation ~2000 2.1 M km2 of sand dunes Potential application enormous Track-based monitoring: motivation ~2006 structured program + national coordination Methodology Federal agencies Verification • DEEWR Training • DAFF Accreditation • DEWHA Data collation - NRM Analysis - IPA Feedback = positive broad-scale monitoring & community benefits State agencies Indigenous comm. NGOs Consultants Camel occurrence Track-based monitoring: 2013 Over 1500 plot locations Proponents: • KJ • CDNTS • CLC • NRAW SA • NRAL SA • Consultants •Envisage Env. Ser. •Desert Wildlife Ser. •Ecological Horizons Bilby occurrence IBRA7 regions Track-based monitoring: 2 ha plots Similar to BirdsAustralia 2 ha sample method Provide a snap-shot of spp. present/absent at a site (spp. >~100 g) Standarise effort & approach, repeatable • 200 x 100 m plot searched • 25-30 minute • Experienced observers Track-based monitoring - 2 ha plots Three components to site selection: • Spacing between sites to achieve independence (generally > 5 km) • Repeat visits to sites to address imperfect detection • Stratify sites on substrate & sub-bioregion Response variable - 2 ha plots • Id species based on track characteristics • Age of sign (1-2 day, 3-7, >7 days) - comparison of small: large animal sign • On-plot: on-road - comparison of transit v non-transit spp − Juvenile sign − Abundance of sign − Diggings, burrows, scats Site (occupancy) covariates - 2 ha plots • Potential management factors Fire age pattern, dist. to community & water • Threats Invasive predators, herbivores etc • Habitat Substrate, rainfall, veg composition, cover etc Detection covariates - 2 ha plots • Time of day (tracks crisp, sun angle, observer fatigue) • Light intensity (shadow strength: track visibility) • Track surface continuity (gait visibility) • Track surface quality (small v. large animals) Additive: => Ordinal detection score Species detection in relation to tracking conditions hopm 0.8 greyk 0.7 redk dectectability 0.6 cat 0.5 fox 0.4 dingo 0.3 camel 0.2 rabbit 0.1 0 4 5 6 7 8 ODS 9 10 11 12 2 ha tbm data by latitude latitude bilby dingo fox cat camel rabbit n 16 0.14 0.26 0.00 0.37 0.00 0.00 37 18 0.14 0.21 0.03 0.59 0.26 0.00 220 20 0.20 0.25 0.20 0.65 0.32 0.02 189 22 0.07 0.29 0.13 0.34 0.44 0.02 603 24 0.06 0.16 0.04 0.24 0.18 0.02 71 26 0.08 0.34 0.11 0.34 0.32 0.38 80 28 0.00 0.34 0.62 0.26 0.21 0.62 385 30 0.00 0.19 0.41 0.32 0.03 0.61 133 2 ha tbm data by bioregion bioregion bilby dingo fox cat camel rabbit n gsd 0.12 0.27 0.17 0.43 0.51 0.03 306 pilbara 0.00 0.50 0.07 0.25 0.30 0.00 44 lsd 0.03 0.24 0.12 0.26 0.37 0.01 271 gas 0.02 0.28 0.06 0.34 0.28 0.02 47 gid 0.10 0.23 0.00 0.35 0.35 0.00 69 Types of data Abundance of species at a site -> ordinal or continuous data Presence/absence of species at a site -> binary data: 0 or 1 Binary data from multiple sites -> propn of area occupied (f) provides a surrogate for sp. abundance - true for broad-scale surveys - true for cryptic, low density species. - occurrence less expensive than abund. Problems arise if a species is not detected perfectly • Non-detection may mean the sp. is not genuinely absent • Propn area occupied underestimated etc. Monitoring Observed state Detected Not detected Actual state Genuine presence True presence Genuine absence False absence False presence True absence Monitoring Observed state Detected Not detected Actual state Genuine presence True presence Genuine absence False absence False presence True absence Monitoring Observed state Detected Repeat surveys Not detected Actual state Genuine presence True presence Genuine absence False absence False presence True absence Incorrect ids not tolerated: Validate! If in doubt, leave out Data types and probability estimates Revisits to multiple sites -> detection history for each site eg.00101 -> naïve est. (which is of more value than f ) -> prob. of detection (p) -> prob. of occupancy (psi) an unbiased estimate of propn area occupied. Occupancy and detection modelling PRESENCE Developed by Darryl MacKenzie and colleagues use standard maximum likelihood based methods to obtain estimates logistic models to incorporate covariates strength covariables associating with detection eg. observer strength covariables associating with occupancy eg. bioregion Important parameters: Prob of occupancy (psi):prob. that a species is present at a site (constant across all sites) Prob of detection (p): prob. a species will be detected in a single survey at a particular site given a site is occupied -> used to determine sampling effort, assert absence, species status etc Detection: survey effort Survey effort (n*) to determine the status of a species at a site depend on: • the suitability of a habitat (psi’) • • n*= the reliability of a survey to detect a species (p) the probability of the occupancy required when the survey fails to detect the species (psi). Do we need 95% or 99% confidence? (log(psi/(1-psi))-log(psi'/(1-psi')))/log(1-p') where psi =posterior prob of presence at a site (confidence you need) p'= prior belief about detectability of species psi' = prior prob that the species is present Summary • Need to apply standarised techniques • Revisiting, resampling sites – funding agencies need to recognise importance • Data sharing – sort out data ownership, management and access agreements Thank you Acknowledgements • • • • • • KJ CDNTS Maralinga Tjarutja Council DENR AWNRMB ALNRMB