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Resampling Validation of Sample Plans (RVSP)

Published by Agricultural Research Service | Department of Agriculture | Metadata Last Checked: January 22, 2026 | Last Modified: 2024-02-15
Reliable and cost-effective sampling methods are critical to the development of monitoring systems for pest management and can enhance research activities that address issues in population ecology and population dynamics. Validation and evaluation of these plans are central to development and implementation in the field. Sampling plans are often developed from a restricted range of observations from a small area, but are then used over a wide area representing a novel array of environmental and agronomic conditions. Sets of tools for sample plan evaluation originally released in 1997, these Monte Carlo simulations can be used to evaluate sampling models during the developmental phase; however, they may not be adequate for testing model validity and performance under field conditions. This is primarily due to the assumption of an underlying statistical distribution (e.g., negative-binomial, normal) which may not adequately represent the actual distributions of insects in all instances. Here we present a method in which actual field data is resampled to evaluate sample plan performance. We originally developed DOS-based computer software for this purpose. The full functionality of this original program is available as an Excel Add-in in RVSP V.2 compatible with current and past versions of Excel. Resources in this dataset:Resource Title: Resampling Validation of Sample Plans (RVSP). File Name: Web Page, url: https://www.ars.usda.gov/research/software/download/?softwareid=129&modecode=20-20-05-05

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