Reinforcement Learning in Optimizing Forest Management

dc.contributorAalto-yliopistofi
dc.contributorAalto Universityen
dc.contributor.authorMalo, Pekkaen_US
dc.contributor.authorTahvonen, Ollien_US
dc.contributor.authorSuominen, Anttien_US
dc.contributor.authorBack, Philippen_US
dc.contributor.authorViitasaari, Laurien_US
dc.contributor.departmentDepartment of Information and Service Managementen
dc.contributor.organizationUniversity of Helsinkien_US
dc.contributor.organizationDepartment of Information and Service Managementen_US
dc.contributor.organizationUppsala Universityen_US
dc.date.accessioned2021-04-21T06:57:55Z
dc.date.available2021-04-21T06:57:55Z
dc.date.issued2021-10en_US
dc.description.abstractWe solve a stochastic high-dimensional optimal harvesting problem by using reinforcement learning algorithms developed for agents who learn an optimal policy in a sequential decision process through repeated experience. This approach produces optimal solutions without discretization of state and control variables. Our stand-level model includes mixed species, tree size structure, optimal harvest timing, choice between rotation and continuous cover forestry, stochasticity in stand growth, and stochasticity in the occurrence of natural disasters. The optimal solution or policy maps the system state to the set of actions, i.e., clear-cutting, thinning, or no harvest decisions as well as the intensity of thinning over tree species and size classes. The algorithm repeats the solutions for deterministic problems computed earlier with timeconsuming methods. Optimal policy describes harvesting choices from any initial state and reveals how the initial thinning versus clear-cutting choice depends on the economic and ecological factors. Stochasticity in stand growth increases the diversity of species composition. Despite the high variability in natural regeneration, the optimal policy closely satisfies the certainty equivalence principle. The effect of natural disasters is similar to an increase in the interest rate, but in contrast to earlier results, this tends to change the management regime from rotation forestry to continuous cover management.en
dc.description.versionPeer revieweden
dc.format.extent17
dc.format.mimetypeapplication/pdfen_US
dc.identifier.citationMalo, P, Tahvonen, O, Suominen, A, Back, P & Viitasaari, L 2021, 'Reinforcement Learning in Optimizing Forest Management', Canadian Journal of Forest Research, vol. 51, no. 10, pp. 1393-1409. https://doi.org/10.1139/cjfr-2020-0447en
dc.identifier.doi10.1139/cjfr-2020-0447en_US
dc.identifier.issn0045-5067
dc.identifier.issn1208-6037
dc.identifier.otherPURE UUID: 2b94b57e-417a-4cbf-84fb-2bfe820e1165en_US
dc.identifier.otherPURE ITEMURL: https://research.aalto.fi/en/publications/2b94b57e-417a-4cbf-84fb-2bfe820e1165en_US
dc.identifier.otherPURE FILEURL: https://research.aalto.fi/files/76173907/cjfr_2020_0447_2.pdf
dc.identifier.urihttps://aaltodoc.aalto.fi/handle/123456789/107005
dc.identifier.urnURN:NBN:fi:aalto-202104216310
dc.language.isoenen
dc.publisherNational Research Council Canada
dc.relation.ispartofseriesCanadian Journal of Forest Researchen
dc.relation.ispartofseriesVolume 51, issue 10, pp. 1393-1409en
dc.rightsopenAccessen
dc.titleReinforcement Learning in Optimizing Forest Managementen
dc.typeA1 Alkuperäisartikkeli tieteellisessä aikakauslehdessäfi
dc.type.versionpublishedVersion

Files

Original bundle

Now showing 1 - 1 of 1
Loading...
Thumbnail Image
Name:
cjfr_2020_0447_2.pdf
Size:
2.46 MB
Format:
Adobe Portable Document Format