GSO ISO/IEC 29341-31-1:2023

Gulf Standard   Current Edition
· Approved on 03 May 2023 ·

Information technology — UPnP Device Architecture — Part 31-1: Energy management device control protocol — Energy management service

GSO ISO/IEC 29341-31-1:2023 Files

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GSO ISO/IEC 29341-31-1:2023 Scope

ISO/IEC 29341-31-1:2017 is compliant with the UPnP Device Architecture version 1.0. It defines a service type named EnergyManagement service. It is scoped to any UPnP Device that needs to convey energy management functionality available for the UPnP Device and its services.

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