Article ID Journal Published Year Pages File Type
388281 Expert Systems with Applications 2012 8 Pages PDF
Abstract

This article presents a new methodology using distributed algorithms to identify and prevent errors in production and service. A sequential production/service line is selected to challenge the analysis, and reveal if the distributed algorithms can outperform centralized algorithms in automating error prevention. Agent-based error prevention algorithms (AEPAs) are developed for distributed agents to identify and prevent errors with decision rules. Analytical studies and simulation experiments are conducted to compare AEPAs with traditional centralized error prediction and detection algorithms. The results show that the AEPAs employing nominal and optimistic rules perform better than the centralized algorithms in terms of preventability and reliability. Collaboration among agents improves AEPAs’ performance. It is recommended to prevent errors by two agents simultaneously executing the AEPA employing the integrated nominal rule.

► Agent-based error prevention algorithms perform better than centralized algorithms. ► Error prevention with the integrated nominal rule has the best overall performance. ► Collaboration among agents improves the performance of error prevention algorithms.

Related Topics
Physical Sciences and Engineering Computer Science Artificial Intelligence
Authors
, ,