Description
Product ID: | 9783030881801 |
Product Form: | Hardback |
Country of Manufacture: | GB |
Title: | Data-Driven Engineering Design |
Authors: | Author: Ang Liu, Yuchen Wang, Xingzhi Wang |
Page Count: | 197 |
Subjects: | Technical design, Technical design, Production and industrial engineering, Computer-aided design (CAD), Databases, Production engineering, Computer-aided design (CAD), Databases |
Description: | Select Guide Rating This book addresses the emerging paradigm of data-driven engineering design. In the big-data era, data is becoming a strategic asset for global manufacturers. This book shows how the power of data can be leveraged to drive the engineering design process, in particular, the early-stage design. Based on novel combinations of standing design methodology and the emerging data science, the book presents a collection of theoretically sound and practically viable design frameworks, which are intended to address a variety of critical design activities including conceptual design, complexity management, smart customization, smart product design, product service integration, and so forth. In addition, it includes a number of detailed case studies to showcase the application of data-driven engineering design. The book concludes with a set of promising research questions that warrant further investigation. Given its scope, the book will appeal to a broad readership, including postgraduate students, researchers, lecturers, and practitioners in the field of engineering design. This book addresses the emerging paradigm of data-driven engineering design. In the big-data era, data is becoming a strategic asset for global manufacturers. This book shows how the power of data can be leveraged to drive the engineering design process, in particular, the early-stage design. Based on novel combinations of standing design methodology and the emerging data science, the book presents a collection of theoretically sound and practically viable design frameworks, which are intended to address a variety of critical design activities including conceptual design, complexity management, smart customization, smart product design, product service integration, and so forth. In addition, it includes a number of detailed case studies to showcase the application of data-driven engineering design. The book concludes with a set of promising research questions that warrant further investigation. Given its scope, the book will appeal to a broad readership, including postgraduate students, researchers, lecturers, and practitioners in the field of engineering design. |
Imprint Name: | Springer Nature Switzerland AG |
Publisher Name: | Springer Nature Switzerland AG |
Country of Publication: | GB |
Publishing Date: | 2021-10-10 |