Applying structured decision making for large-scale wildlife management programmes : Project Janszoon as a case study : a thesis presented in partial fulfilment for the degree of Doctor of Philosophy in Conservation Biology at Massey University, Palmerston North, New Zealand

dc.confidentialEmbargo : No
dc.contributor.advisorCastro, Isabel
dc.contributor.authorKenup, Caio
dc.date.accessioned2025-12-03T21:10:20Z
dc.date.issued2024-11-30
dc.description.abstractManaging threatened populations is challenging due to the delicate balance between urgency and uncertainty. While swift action is often needed to prevent further decline or extinction, significant uncertainty frequently surrounds the effectiveness of various management strategies and the future trajectory of populations. This uncertainty complicates the identification of the most effective course of action, especially when resources are limited. Structured decision making (SDM) is an approach that supports informed decision making in the face of uncertainty in conservation projects. The primary aim of this thesis is to develop a decision making framework for Project Janszoon’s bird translocations, guiding management and monitoring decisions to maximise establishment and persistence probabilities for the kākā (Nestor meridionalis) and pāteke (Anas chlorotis). This framework can serve as a blueprint for implementing SDM and adaptive management (AM), promoting their broader use in conservation initiatives within New Zealand and beyond. In Chapter 2, I discuss expert elicitation techniques for generating predictions from expert knowledge while accounting for epistemic uncertainty. Numerical improvements in handling elicited data are proposed, focusing on aggregating and transforming expert-provided values while maintaining their associated uncertainty. Preserving this uncertainty is critical to avoid generating overconfident predictions from expert judgment. In Chapter 3, I explore which uncertainties are worth reducing and to what degree. Value of information (VOI) analysis offers a way to understand how reducing uncertainty affects decision making and conservation outcomes. A key insight from this chapter is that while monitoring is valuable for reducing uncertainty, such reductions do not always improve conservation outcomes. Beyond a certain point, further reductions in uncertainty do not alter decision making. Practitioners must estimate the optimal level of monitoring for each conservation challenge. In Chapter 4, I outline a passive adaptive management framework to reduce uncertainty as management actions are implemented and monitored. The framework’s extendable nature makes it adaptable to other management problems. The tools and concepts presented here are valuable assets for effective decision making for managed populations under uncertainty.
dc.identifier.urihttps://mro.massey.ac.nz/handle/10179/73904
dc.publisherMassey University
dc.rights© The Author
dc.subjectEndangered species
dc.subjectMonitoring
dc.subjectNew Zealand
dc.subjectBird populations
dc.subjectDecision making
dc.subjectBirds
dc.subjectConservation
dc.subjectConservation projects (Natural resources)
dc.subjectCase studies
dc.subject.anzsrc410407 Wildlife and habitat management
dc.titleApplying structured decision making for large-scale wildlife management programmes : Project Janszoon as a case study : a thesis presented in partial fulfilment for the degree of Doctor of Philosophy in Conservation Biology at Massey University, Palmerston North, New Zealand
thesis.degree.disciplineConservation Biology
thesis.degree.nameDoctor of Philosophy (Ph.D.)
thesis.description.doctoral-citation-abridgedDr Caio Kenup investigated how to improve conservation decisions when urgent action is needed but uncertainty is high. Focusing on bird translocations for Project Janszoon, he developed a framework to guide management and monitoring for kākā and pāteke. His work demonstrated how structured decision making and adaptive management can better support threatened species recovery.
thesis.description.doctoral-citation-longConservation managers must often act quickly to protect threatened species, despite uncertainty about which actions will work best. Dr Caio Kenup developed a structured decision-making framework to guide Project Janszoon’s kākā and pāteke translocations and improve their chances of establishing self-sustaining populations. He examined expert elicitation methods, ways to judge which uncertainties matter most, and how monitoring can support learning without unnecessary effort. He also designed an adaptive management approach to refine decisions as new information emerges. His research provided practical tools to strengthen conservation planning for species facing uncertain futures.
thesis.description.name-pronounciationCaio Kenup KAI-oh KEH-nup

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