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Historical maps from modern images: using remote sensing to model and map century-long vegetation change in a fire-prone region

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posted on 2025-04-02, 04:46 authored by Katrina Callister, PA Griffioen, SC Avitabile, Angie HaslemAngie Haslem, LT Kelly, SA Kenny, DG Nimmo, LM Farnsworth, RS Taylor, SJ Watson, Andrew BennettAndrew Bennett, Michael ClarkeMichael Clarke
Understanding the age structure of vegetation is important for effective land management, especially in fire-prone landscapes where the effects of fire can persist for decades and centuries. In many parts of the world, such information is limited due to an inability to map disturbance histories before the availability of satellite images (∼1972). Here, we describe a method for creating a spatial model of the age structure of canopy species that established pre-1972. We built predictive neural network models based on remotely sensed data and ecological field survey data. These models determined the relationship between sites of known fire age and remotely sensed data. The predictive model was applied across a 104,000 km2 study region in semi-arid Australia to create a spatial model of vegetation age structure, which is primarily the result of stand-replacing fires which occurred before 1972. An assessment of the predictive capacity of the model using independent validation data showed a significant correlation (rs = 0.64) between predicted and known age at test sites. Application of the model provides valuable insights into the distribution of vegetation age-classes and fire history in the study region. This is a relatively straightforward method which uses widely available data sources that can be applied in other regions to predict age-class distribution beyond the limits imposed by satellite imagery.

Funding

This study is part of a larger research project, the Mallee Fire and Biodiversity Project, which received funding and support from: Parks Victoria (http://parkweb.vic.gov.au), Department of Environment, Land, Water & Planning (Vic) (http://www.delwp.vic.gov.au), Mallee Catchment Management Authority (http://www.malleecma.vic.gov.au), NSW National Parks and Wildlife Service (http://www.nationalparks.nsw.gov.au), Department of Environment and Climate Change (NSW) (http://www.environment.nsw.gov.au), Lower Murray Darling Catchment Management Authority (http://murray.lls.nsw.gov.au/home), Department for Environment and Heritage (SA) (http://www.environment.sa.gov.au/Home), Land and Water Australia (http://lwa.gov.au), Natural Heritage Trust (http://www.nationaltrust.org.au/natural-heritage), Birdlife Australia (Gluepot Reserve) (http://www.birdlife.org.au), Australian Wildlife Conservancy (Scotia Sanctuary) (http://www.australianwildlife.org), Murray Mallee Partnership. The funders had no role in study design, data collection and analysis, decision to publish, or preparation of the manuscript.

History

Publication Date

2016-03-30

Journal

PLoS One

Volume

11

Issue

3

Article Number

e0150808

Pagination

18p.

Publisher

PLOS One

ISSN

1932-6203

Rights Statement

© 2016 Callister et al. This is an open access article distributed under the terms of the Creative Commons Attribution License, which permits unrestricted use, distribution, and reproduction in any medium, provided the original author and source are credited.

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