ISO 8210:2021

International Standard   Current Edition · Approved on 14 July 2021

Equipment for harvesting — Combine harvesters — Test procedure and performance assessment

ISO 8210:2021 Files

English 20 Pages
Current Edition
OMR 65.13

ISO 8210:2021 Scope

This document specifies a test procedure for the measurement and testing of combine harvesters. It applies to either self-propelled or trailed type, either directly cutting the crop or picking it up from a windrow, for use in several crops.

This document specifies the terminology and methods to be used for measuring important characteristics of combine harvesters. It includes both functional and capacity tests, in other words, those conducted over an extended period when ease of operation, ease of adjustment, rate of work and general operating characteristics can be assessed, and those carried out on specific occasions for the determination of grain loss and capacity characteristics.

It applies to all types of combine harvesters.

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