MOMDPs: A Solution for Modelling Adaptive Management Problems

Authors

  • Iadine Chades CSIRO Ecosystem Sciences
  • Josie Carwardine CSIRO Ecosystem Sciences
  • Tara Martin CSIRO Ecosystem Sciences
  • Samuel Nicol University of Alaska Fairbanks
  • Regis Sabbadin INRA
  • Olivier Buffet INRIA / Universite de Lorraine

DOI:

https://doi.org/10.1609/aaai.v26i1.8171

Keywords:

Adaptive Management, POMDP, MOMDP, hmMDP

Abstract

In conservation biology and natural resource management, adaptive management is an iterative process of improving management by reducing uncertainty via monitoring. Adaptive management is the principal tool for conserving endangered species under global change, yet adaptive management problems suffer from a poor suite of solution methods. The common approach used to solve an adaptive management problem is to assume the system state is known and the system dynamics can be one of a set of pre-defined models. The solution method used is unsatisfactory, employing value iteration on a discretized belief MDP which restricts the study to very small problems. We show how to overcome this limitation by modelling an adaptive management problem as a restricted Mixed Observability MDP called hidden model MDP (hmMDP). We demonstrate how to simplify the value function, the backup operator and the belief update computation. We show that, although a simplified case of POMDPs, hm-MDPs are PSPACE-complete in the finite-horizon case. We illustrate the use of this model to manage a population of the threatened Gouldian finch, a bird species endemic to Northern Australia. Our simple modelling approach is an important step towards efficient algorithms for solving adaptive management problems.

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Published

2021-09-20

How to Cite

Chades, I., Carwardine, J., Martin, T., Nicol, S., Sabbadin, R., & Buffet, O. (2021). MOMDPs: A Solution for Modelling Adaptive Management Problems. Proceedings of the AAAI Conference on Artificial Intelligence, 26(1), 267-273. https://doi.org/10.1609/aaai.v26i1.8171

Issue

Section

AAAI Technical Track: Computational Sustainability