“Smart Models” - a framework for adaptive multi- scale modelling
نویسندگان
چکیده
The business environment facing the ECPI (European Chemical & Process Industry) is changing at an ever-increasing rate, bringing with it new challenges to process engineers which the current generation of CAPE tools are illequipped to help them address. This paper puts forward a view of some of the challenges and offers some thoughts on a potential way forward.
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