Decision support systems can either directly support a product designer or support an agent operating within a multi-agent system (MAS). Stochastic based decision support systems require an underlying belief model that encodes domain knowledge. The underlying supporting belief model has traditionally been a probability distribution function (PDF) which uses pointwise probabilities for all possible outcomes. This can present a challenge during the knowledge elicitation process. To overcome this, it is proposed to test the performance of a credal set belief model. Credal sets (sometimes also referred to as p-boxes) use interval probabilities rather than pointwise probabilities and therefore are more easier to elicit from domain experts. ...
System reliability assessment is a critical task for design engineers. Identifying the least reliabl...
The level of uncertainty in advanced system design is assessed by comparing the results of expert ju...
Many industrial organizations invest heavily in modeling and simulation (M&S) to support the design ...
A novel Bayesian design support tool is empirically investigated for its potential to support the ea...
Due to the fluid nature of the early stages of the design process, it is difficult to obtain determi...
From the decision-based design perspective, decision making is the critical element of the design pr...
Expert systems often employ a weight on rules to capture conditional probabilities. For example, in ...
This paper focuses on coping with system quality in the early phases of design where there is lack o...
Presented at the 4th AIAA Aviation Technology, Integration, and Operations (ATIO) Forum, Chicago, IL...
Dynamic computer based support tools for the conceptual design phase have provided a long-standing c...
Quality by design in pharmaceutical manufacturing hinges on computational methods and tools that are...
The problem of modeling uncertainty and inexact reasoning in rule-based expert systems is challengin...
The elicitation of uncertainty is a topic of interest in a range of disciplines. The conversion of e...
The risk assessment in many engineering applications is hampered by a lack of hard data. Under these...
Research articleIn most synthesis evaluation systems and decision-making systems, data are represent...
System reliability assessment is a critical task for design engineers. Identifying the least reliabl...
The level of uncertainty in advanced system design is assessed by comparing the results of expert ju...
Many industrial organizations invest heavily in modeling and simulation (M&S) to support the design ...
A novel Bayesian design support tool is empirically investigated for its potential to support the ea...
Due to the fluid nature of the early stages of the design process, it is difficult to obtain determi...
From the decision-based design perspective, decision making is the critical element of the design pr...
Expert systems often employ a weight on rules to capture conditional probabilities. For example, in ...
This paper focuses on coping with system quality in the early phases of design where there is lack o...
Presented at the 4th AIAA Aviation Technology, Integration, and Operations (ATIO) Forum, Chicago, IL...
Dynamic computer based support tools for the conceptual design phase have provided a long-standing c...
Quality by design in pharmaceutical manufacturing hinges on computational methods and tools that are...
The problem of modeling uncertainty and inexact reasoning in rule-based expert systems is challengin...
The elicitation of uncertainty is a topic of interest in a range of disciplines. The conversion of e...
The risk assessment in many engineering applications is hampered by a lack of hard data. Under these...
Research articleIn most synthesis evaluation systems and decision-making systems, data are represent...
System reliability assessment is a critical task for design engineers. Identifying the least reliabl...
The level of uncertainty in advanced system design is assessed by comparing the results of expert ju...
Many industrial organizations invest heavily in modeling and simulation (M&S) to support the design ...