Vegetation Quality Assessment: a sampling-based, loss-gain accounting framework for native, disturbed and reclaimed vegetation

Author:

Boyle Bradley L.1,Franklin Warn2,Burton Alison2,Gullison Raymond E.3

Affiliation:

1. University of Arizona

2. Teck Coal Limited

3. University of British Columbia

Abstract

Abstract Governments and society increasingly are demanding that industrial projects result in a net positive impact (NPI) on biodiversity. Impacts are commonly measured in terms of losses and gains of area and quality of vegetation, where quality refers to how closely a site matches the condition of native vegetation in its undisturbed state. Existing vegetation quality frameworks share a number of limitations, including little or no replication, uncertain scope of inference, vulnerability to bias, and inability to measure error. Here we present the Vegetation Quality Assessment (VQA) framework, a sampling-based extension of Quality Hectares that measures vegetation quality in terms of overlap between the probability distributions of ecological indicators at a project site and in undisturbed (benchmark) vegetation of the same kind. Distribution overlap incorporates natural variation at the landscape scale and provides an intuitive measure of quality that varies between 0 and 1. Indicators are measured using a stratified-random sampling design that minimizes bias and supports inference at the scale of the project landscape. Confidence limits of quality and quality hectares are determined by bootstrapping; power and minimum sample sizes are estimated by Monte Carlo simulation. Multiple assessments track losses and gains of quality hectares and enable accurate accounting of progress to NPI. The VQA framework can be implemented using a variety of vegetation sampling methods, allowing existing vegetation databases to be leveraged as sources of data. We conclude by demonstrating the application of VQA at several mining operations in the Elk Valley of southeastern British Columbia, Canada.

Publisher

Research Square Platform LLC

Reference55 articles.

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2. BC Ministry of the Environment (2010) Field Manual for Describing Terrestrial Ecosystems, 2nd Editio. B.C. Ministry of Forests and Range, B.C. Ministry of Environment

3. BC Ministry of the Environment (2016) BC Flora checklist 2016. https://www.for.gov.bc.ca/hre/becweb/resources/codes-standards/standards-species.html. Accessed 18 Jul 2016

4. Berger VW, Zhou Y (2014) Kolmogorov–Smirnov Test: Overview. In: Wiley StatsRef: Statistics Reference Online. John Wiley & Sons, Ltd

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