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Using GIS to Generate Spatially Balanced Random Survey Designs for Natural Resource Applications

Author

Listed:
  • David M. Theobald

    (Colorado State University, Natural Resource Ecology Lab, and Department of Natural Resource Recreation and Tourism)

  • Don L. Stevens Jr.

    (Oregon State University, Department of Statistics)

  • Denis White

    (US Environmental Protection Agency, Western Ecology Division)

  • N. Scott Urquhart

    (Colorado State University, Department of Statistics)

  • Anthony R. Olsen

    (US Environmental Protection Agency, Western Ecology Division)

  • John B. Norman

    (Colorado State University, Natural Resource Ecology Lab)

Abstract

Sampling of a population is frequently required to understand trends and patterns in natural resource management because financial and time constraints preclude a complete census. A rigorous probability-based survey design specifies where to sample so that inferences from the sample apply to the entire population. Probability survey designs should be used in natural resource and environmental management situations because they provide the mathematical foundation for statistical inference. Development of long-term monitoring designs demand survey designs that achieve statistical rigor and are efficient but remain flexible to inevitable logistical or practical constraints during field data collection. Here we describe an approach to probability-based survey design, called the Reversed Randomized Quadrant-Recursive Raster, based on the concept of spatially balanced sampling and implemented in a geographic information system. This provides environmental managers a practical tool to generate flexible and efficient survey designs for natural resource applications. Factors commonly used to modify sampling intensity, such as categories, gradients, or accessibility, can be readily incorporated into the spatially balanced sample design.

Suggested Citation

  • David M. Theobald & Don L. Stevens Jr. & Denis White & N. Scott Urquhart & Anthony R. Olsen & John B. Norman, 2007. "Using GIS to Generate Spatially Balanced Random Survey Designs for Natural Resource Applications," Environmental Management, Springer, vol. 40(1), pages 134-146, July.
  • Handle: RePEc:spr:envman:v:40:y:2007:i:1:d:10.1007_s00267-005-0199-x
    DOI: 10.1007/s00267-005-0199-x
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