Background: Although habitat use reflects a dynamic process, most studies assess habitat use statically as if an animal's successively recorded locations reflected a point rather than a movement process. By relying on the activity time between successive locations instead of the local density of individual locations, movement-based methods can substantially improve the biological relevance of utilization distribution (UD) estimates (i.e. the relative frequencies with which an animal uses the various areas of its home range, HR). One such method rests on Brownian bridges (BBs). Its theoretical foundation (purely and constantly diffusive movements) is paradoxically inconsistent with both HR settlement and habitat selection. An alternative involves movement-based kernel density estimation (MKDE) through location interpolation, which may be applied to various movement behaviours but lacks a sound theoretical basis. Methodology/Principal Findings: I introduce the concept of a biased random (advective-diffusive) bridge (BRB) and show that the MKDE method is a practical means to estimate UDs based on simplified (isotropically diffusive) BRBs. The equation governing BRBs is constrained by the maximum delay between successive relocations warranting constant within-bridge advection (allowed to vary between bridges) but remains otherwise similar to the BB equation. Despite its theoretical inconsistencies, the BB method can therefore be applied to animals that regularly reorientate within their HRs and adapt their movements to the habitats crossed, provided that they were relocated with a high enough frequency. Conclusions/Significance: Biased random walks can approximate various movement types at short times from a given relocation. Their simplified form constitutes an effective trade-off between too simple, unrealistic movement models, such as Brownian motion, and more sophisticated and realistic ones, such as biased correlated random walks (BCRWs), which are too complex to yield functional bridges. Relying on simplified BRBs proves to be the most reliable and easily usable way to estimate UDs from serially correlated relocations and raw activity information.
机构:
Univ Nacl Comahue, Lab ECOTONO, RA-8400 San Carlos De Bariloche, Rio Negro, ArgentinaUniv Glasgow, Div Environm & Evolutionary Biol, Glasgow G12 8QQ, Lanark, Scotland
机构:
Univ Montana, Montana Cooperat Wildlife Res Unit, Missoula, MT 59812 USAUniv Glasgow, Div Environm & Evolutionary Biol, Glasgow G12 8QQ, Lanark, Scotland
Mitchell, Michael
;
Matthiopoulos, Jason
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机构:
Univ St Andrews, Scottish Oceans Inst, Sea Mammal Res Unit, St Andrews KY16 8LB, Fife, Scotland
Univ St Andrews, Ctr Res Environm & Ecol Modelling, The Observatory, St Andrews KY16 9LZ, Fife, ScotlandUniv Glasgow, Div Environm & Evolutionary Biol, Glasgow G12 8QQ, Lanark, Scotland
机构:
Univ Nacl Comahue, Lab ECOTONO, RA-8400 San Carlos De Bariloche, Rio Negro, ArgentinaUniv Glasgow, Div Environm & Evolutionary Biol, Glasgow G12 8QQ, Lanark, Scotland
机构:
Univ Montana, Montana Cooperat Wildlife Res Unit, Missoula, MT 59812 USAUniv Glasgow, Div Environm & Evolutionary Biol, Glasgow G12 8QQ, Lanark, Scotland
Mitchell, Michael
;
Matthiopoulos, Jason
论文数: 0引用数: 0
h-index: 0
机构:
Univ St Andrews, Scottish Oceans Inst, Sea Mammal Res Unit, St Andrews KY16 8LB, Fife, Scotland
Univ St Andrews, Ctr Res Environm & Ecol Modelling, The Observatory, St Andrews KY16 9LZ, Fife, ScotlandUniv Glasgow, Div Environm & Evolutionary Biol, Glasgow G12 8QQ, Lanark, Scotland