Collaborative Design Supporting System for Manufacturing Systems
スポンサーリンク
概要
- 論文の詳細を見る
Global competition forces industrial companies to reduce cost and time to develop new manufacturing systems. To achieve this goal, collaborative design projects will be more popular among different companies or divisions. The design knowledge, however, is usually not well organized or archived in a digital form. This paper proposes a design agent system to navigate engineers in the design process of manufacturing systems. The design agents digitally model design processes itself, parameters for each design activity, engineering tools and rational logic rules. The design agents communicate with each other to help manufacturing system designers on distributed sites in the collaborative design processes online. In this paper, the structure, roles, and functions of the design agents are discussed. The proposed design agent system is implemented using JAVA programming language.
- 一般社団法人日本機械学会の論文
- 2002-06-15
著者
-
NAKANO Masaru
Toyota Central Research and Development Laboratories
-
Nakano Masaru
Toyota Central R & D Laboratories
-
Nakano Masaru
Toyota Central R & D Labs. Inc.
-
Arai Eiji
Osaka University
-
Sato Shuichi
Toyota Central R & D Labs. Inc.
関連論文
- Single Simulation Buffer Optimization
- Time Shifting Bottlenecks in Manufacturing(Advanced Manufacturing,Session: MP2-D)
- Holistic Manufacturing System Analysis(Advanced Manufacturing,Session: MP2-D)
- 3A1 SINGLE SIMULATION BUFFER OPTIMIZATION(Technical session 3A : Sophisticated scheduling 1)
- Constraint Management in Manufacturing Systems(Advanced Production Scheduling)
- Confidence Intervals from a Single Simulation Using the Delta Method(Advanced Production Scheduling)
- Collaborative Design Supporting System for Manufacturing Systems
- NAVIGATION OF COLLABORATIVE MANUFACTURING SYSTEM DESIGN BASED ON DPIO-MODEL
- 2-A-5 SINGLE SIMULATION CONFIDENCE INTERVALS USING THE DELTA METHOD
- 2-A-4 DETECTING SHIFTING BOTTLENECKS
- Efficient Root Cause Detection in Complex Embedded Systems with Abstract Model-based Diagnosis