AbstractThere have been growing uses of semantic networks in the past decade, such as leveraging large-scale pre-trained graph knowledge databases for various natural language processing (NLP) tasks in engineering design research. Therefore, the paper provides a survey of the research that has employed semantic networks in the engineering design research community. The survey reveals that engineering design researchers have primarily relied on WordNet, ConceptNet, and other common-sense semantic network databases trained on non-engineering data sources to develop methods or tools for engineering design. Meanwhile, there are emerging efforts to mine large scale technical publication and patent databases to construct engineering-contextualize...
Artificial intelligence, AI, is having a strong hype in research and in industry. The main factor fo...
Significant expenditure and effort is devoted to the never ending search for reduced product develop...
Purpose: The purpose of this study is to characterize, analyze, and demonstrate machine-understandab...
This is the author accepted manuscript. The final version is available from the American Society of ...
Abstract In the past two decades, there has been increasing use of semantic networks ...
This is the author accepted manuscript. The final version is available from Elsevier via the DOI in ...
Data-Driven Design is an emerging area with the advent of big-data tools. Massive information stored...
The rise of big data and machine learning in engineering has brought a high hope that designers can ...
ABSTRACT Significant expenditure and effort is devoted to the never ending search for reduced produc...
In this paper we describe some applications of Semantic Web technologies for the engineering design ...
This paper describes a knowledge management system based on semantic Web technologies developed espe...
Data, information and knowledge are strongly involved in Engineering Design (ED) process. Despite th...
Significant expenditure and effort is devoted to the never ending search for reduced product develop...
Abstract To objectively and quantitatively study transcribed protocols of design conversations, we ...
The Engineering Design field is growing fast and so is growing the number of sub-fields that are bri...
Artificial intelligence, AI, is having a strong hype in research and in industry. The main factor fo...
Significant expenditure and effort is devoted to the never ending search for reduced product develop...
Purpose: The purpose of this study is to characterize, analyze, and demonstrate machine-understandab...
This is the author accepted manuscript. The final version is available from the American Society of ...
Abstract In the past two decades, there has been increasing use of semantic networks ...
This is the author accepted manuscript. The final version is available from Elsevier via the DOI in ...
Data-Driven Design is an emerging area with the advent of big-data tools. Massive information stored...
The rise of big data and machine learning in engineering has brought a high hope that designers can ...
ABSTRACT Significant expenditure and effort is devoted to the never ending search for reduced produc...
In this paper we describe some applications of Semantic Web technologies for the engineering design ...
This paper describes a knowledge management system based on semantic Web technologies developed espe...
Data, information and knowledge are strongly involved in Engineering Design (ED) process. Despite th...
Significant expenditure and effort is devoted to the never ending search for reduced product develop...
Abstract To objectively and quantitatively study transcribed protocols of design conversations, we ...
The Engineering Design field is growing fast and so is growing the number of sub-fields that are bri...
Artificial intelligence, AI, is having a strong hype in research and in industry. The main factor fo...
Significant expenditure and effort is devoted to the never ending search for reduced product develop...
Purpose: The purpose of this study is to characterize, analyze, and demonstrate machine-understandab...