| Literature DB >> 23483933 |
Vidya Athreya1, Morten Odden, John D C Linnell, Jagdish Krishnaswamy, Ullas Karanth.
Abstract
Protected areas are extremely important for the long term viability of biodiversity in a densely populated country like India where land is a scarce resource. However, protected areas cover only 5% of the land area in India and in the case of large carnivores that range widely, human use landscapes will function as important habitats required for gene flow to occur between protected areas. In this study, we used photographic capture recapture analysis to assess the density of large carnivores in a human-dominated agricultural landscape with density >300 people/km(2) in western Maharashtra, India. We found evidence of a wide suite of wild carnivores inhabiting a cropland landscape devoid of wilderness and wild herbivore prey. Furthermore, the large carnivores; leopard (Panthera pardus) and striped hyaena (Hyaena hyaena) occurred at relatively high density of 4.8±1.2 (sd) adults/100 km(2) and 5.03±1.3 (sd) adults/100 km(2) respectively. This situation has never been reported before where 10 large carnivores/100 km(2) are sharing space with dense human populations in a completely modified landscape. Human attacks by leopards were rare despite a potentially volatile situation considering that the leopard has been involved in serious conflict, including human deaths in adjoining areas. The results of our work push the frontiers of our understanding of the adaptability of both, humans and wildlife to each other's presence. The results also highlight the urgent need to shift from a PA centric to a landscape level conservation approach, where issues are more complex, and the potential for conflict is also very high. It also highlights the need for a serious rethink of conservation policy, law and practice where the current management focus is restricted to wildlife inside Protected Areas.Entities:
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Year: 2013 PMID: 23483933 PMCID: PMC3590292 DOI: 10.1371/journal.pone.0057872
Source DB: PubMed Journal: PLoS One ISSN: 1932-6203 Impact factor: 3.240
Figure 1Map of the study area which consisted of an irrigated valley around the town of Akole in the Ahmednagar District, Maharashtra, India.
Figure 2Map of the Ahmednagar district with the study area polygon and the nearest protected area of Kalsubai Harishchandragarh Wildlife Sanctuary.
The different species photographed over 30 days in November and December 2008 in the human-dominated landscape of Akole, the maximum number of each species in each trap pair summed over 37 traps, their status in the Schedules of the Indian Wildlife Protection Act and their IUCN status has been provided below.
| Species | Total number of photo-capturesin 37 traps | Indian Wildlife Act Schedule | IUCN red list status |
| Leopard ( | 81 | I | Near threatened |
| Rusty spotted cat ( | 10 | I | Vulnerable |
| Small Indian civet ( | 5 | II | Least concern |
| Indian fox ( | 1 | II | Least concern |
| Jungle cat ( | 20 | II | Least concern |
| Striped hyaena ( | 65 | III | Near threatened |
| Jackal ( | 3 | III | Least concern |
| Black naped hare ( | 8 | IV | Least concern |
| Human | 830 | ||
| Domestic cat | 147 | ||
| Domestic dog | 12 | ||
| Mongoose ( | 1 | IV | Least concern |
| Red wattled lapwing ( | 1 | Least concern |
The posterior summaries of the model parameters for n = 11 leopard individuals and n = 12 hyaena individuals.
| Leopard | Posterior mean | Posterior SD | 95% Lower HPD level | 95% Upper HPD level |
| σ (5 Km) | 0.3191 | 0.0892 | 0.1861 | 0.5044 |
| Lam0 | 0.0522 | 0.0137 | 0.0249 | 0.076 |
| B | 0.035 | 4.0457 | −8.0832 | 6.1183 |
| Psi | 0.6364 | 0.1625 | 0.3389 | 0.9478 |
| N super | 77.227 | 19.4256 | 43 | 117 |
| Density |
|
| 2.6948 | 7.3324 |
| Hyaena | ||||
| σ (5 Km) | 0.5756 | 0.2394 | 0.2194 | 1.0546 |
| Lam0 | 0.026 | 0.0086 | 0.0117 | 0.0424 |
| B | 5.158 | 2.4752 | 0.6309 | 10.0645 |
| Psi | 0.6553 | 0.1749 | 0.3616 | 0.9834 |
| N super | 80.374 | 20.8174 | 46 | 120 |
| Density |
|
| 2.8828 | 7.5204 |
The derived parameters are Lam0 which is the intercept of expected encounter frequency, σ is the “range parameter” of the species, B is the regression coefficient which measures the behavioural response, Psi is the ratio of the number of animals present within the space S to the maximum allowable number, Nsuper is the number of activity centres located in S, Density is Nsuper divided by S.
Summary of photographic capture recapture sampling carried out in the human-dominated agricultural study site of Akole in December 2008.
| ½ MMDM radius around individualtraps (leopard) | ½ MMDM radius around individual traps (hyaena) | |
| Total number of effective traps | 37 pairs | 37 pairs |
| Sampling occasions (number of days traps were set) | 30 days | 30 days |
| Trapping occasions | 15 | 15 |
| Sampling effort (number of days x sampling occasions) | 1110 | 1110 |
| Estimated buffer width (1/2 MMDM around each trap) | 1.76 km | 1.85 km |
| Number of captures and recaptures n | 34 | 22 |
| Number of individuals captured (Mt+1) | 11 | 12 |
| Estimated number of leopards using model Mh and using thejack knife estimator | 12±1.46 | 18±6.48 |
| Estimated number of leopards using 95% CI | 12–19 | 14–45 |
| Minimum convex area around camera traps | 136 km2 | 136 km2 |
| Effective Area sampled | 187.54 km2 | 193.44 km2 |
| Estimated leopard density ( |
|
|
MMDM = Mean Maximum Distance Moved, i.e. the average maximum distance between locations of recaptured individuals.
Capture probabilities for leopards and hyaenas based on different models.
| Model | M(o) | M(h) | M(b) | M(bh) | M(t) | M(th) | M(tb) | M(tbh) |
|
| 1 | 0.87 | 0.42 | 0.69 | 0 | 0.43 | 0.4 | 0.71 |
|
| 1 | 0.85 | 0.43 | 0.71 | 0 | 0.46 | 0.38 | 0.71 |
The different models are Mo (null model where every individual has the same capture probability), Mt (capture probability varies with the sampling occasion), Mb (capture probability differs between individuals who have been photographed before and those that have been not), the others are combinations of the above. The CAPTURE program uses a discriminant function to provide the best model based on a discriminant function.