New Evolutions in Trnsys – a Selection of Version 16 Features
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چکیده
Throughout its thirty year history, the transient energy simulation package TRNSYS has been under continual enhancement by an international group of developers and users. This paper briefly describes a subset of the features that were added to the simulation package with the release of its 16 version in November, 2004.
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تاریخ انتشار 2004