Nachhaltige Geschäftsmodelle durch digitale Zwillinge/Sustainable Business Models through Digital Twins

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Cover of Volume: wt Werkstattstechnik online Volume 114 (2024), Issue 06
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wt Werkstattstechnik online

Volume 114 (2024), Issue 06


Authors:
Publisher
VDI fachmedien, Düsseldorf
Copyright Year
2024
ISSN-Online
1436-4980
ISSN-Print
1436-4980

Chapter information


Open Access Full access

Volume 114 (2024), Issue 06

Nachhaltige Geschäftsmodelle durch digitale Zwillinge/Sustainable Business Models through Digital Twins


Authors:
ISSN-Print
1436-4980
ISSN-Online
1436-4980


Preview:

Manufacturing companies have always been confronted with an increasing number and complexity of requirements, which is reinforced by sustainability requirements from legislators, customers, and investors. It is important to consider these new requirements not as a burden, but as an opportunity to develop sustainable business models. This article presents a business model-oriented development approach for digital twins in industry.

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