ISO/TS 5667-25:2022

International Standard   Current Edition · Approved on 23 February 2022

Water quality — Sampling — Part 25: Guideline on the validation of the storage time of water samples

ISO/TS 5667-25:2022 Files

English 50 Pages
Current Edition
BHD 85.44

ISO/TS 5667-25:2022 Scope

The purpose of this document is to describe test plans and different operating methodologies of these test plans to define and verify the acceptable length of stability of a substance in a sample under specified conditions of preservation (temperature, matrix, light, addition of a stabilizer, where appropriate, type of preservation etc.) before starting analytical protocols (chemicals and physico-chemicals analysis). Biological and microbiological methods are excluded.

It is necessary to have an analytical method with performances that have already been characterized (repeatability, intermediate precision, trueness, accuracy and uncertainty) in order to perform the stability study and implement its test plans.

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