The Computer Integrated
Manufacturing Laboratory is a constituent laboratory of the
Institute for Systems Research
at the University of Maryland.
Design Classification and
Hybrid Variant-Generative Process Planning
This material is based upon work supported by the National
Science Foundation under Grant Number 9713718.
Any opinions, findings, and conclusions or recommendations
expressed in this material are those of the authors and do not
necessarily reflect the views of the National Science Foundation.
Principal Investigators:
- Dana S. Nau
Dept. of Computer Science and Institute for Systems Research
University of Maryland
College Park, MD 20742
- Jeffrey W. Herrmann
Dept. of Mechanical Engineering and Institute for Systems Research
University of Maryland
College Park, MD 20742
-
William C. Regli
Drexel University
Department of Mathematics and Computer Science
3141 Chestnut Street
Philadelphia, PA 19104
Project Summary:
Developing successful generative process planners for
complex machined parts is a difficult challenge. Although
researchers have developed generative techniques for
process selection, they have been less successful
developing generative techniques for selecting the fixtures
needed to complete the process plan. To address this
problem, we are developing a new hybrid approach to
process planning.
We believe that, in most cases, a generative planner is a
better approach for creating a preliminary process plan. A
variant approach is a very useful technique, however, for
completing the process plan and adding the necessary
details (like fixturing).
This research is developing a new hybrid approach that uses a
successful generative process planning approach and adds
a variant fixture planning approach. The fixture planning
approach must identify designs and process plans that
have fixtures that can hold the new design. We have
developed an approach for defining a usefulness measure
that explicitly reflects fixture usefulness. A specific
example shows how one can use this approach to measure
the usefulness of setups.
See also the web page describing our
Design for Production research.
On-line papers based on this work:
- A. Elinson, J.W. Herrmann, I. Minis, D. Nau, G. Singh,
"Toward hybrid variant/generative process planning,"
Design for Manufacturing Symposium, ASME Design
Engineering Technical Conference, Sacramento,
California, September 14-17, 1997.
- S. Balasubramanian, A. Elinson, J.W. Herrmann, and D. Nau,
Fixture-based usefulness measures
for hybrid process planning, 1998 ASME Design for Manufacturing
Conference, Atlanta, Georgia, September 13-16, 1998.
(Note this is a PDF file.)
- S. Balasubramanian, A. Elinson, J.W. Herrmann, and D. Nau,
Measuring
the Usefulness of Fixtures for Hybrid Process Planning,
1999 NSF Grantee's Conference, January, 1999.
- Sundar Balasubramanian and Jeffrey W. Herrmann,
Using Neural Networks to Generate Design Similarity Measures,
Technical Report 99-38, Institute for Systems Research,
University of Maryland, College Park, 1999.
- Jeffrey W. Herrmann and Mandar Chincholkar,
Reducing
Manufacturing Cycle Time during Product Design,
Technical Report 99-54, Institute for Systems Research,
University of Maryland, College Park, 1999.
- D.S. Nau, J.W. Herrmann, and W.C. Regli,
Design Classification and
Hybrid Variant-Generative Process Planning,
2000 NSF Design and Manufacturing Research Conference,
Vancouver, Canada, January, 2000. (PDF file)
- Herrmann, J.W., S. Balasubramanian, and G. Singh,
Defining specialized design similarity
measures,
International Journal of Production Research,
Volume 38, Number 15, pages 3603-3621, 2000.
- Herrmann, J.W., and M.M. Chincholkar,
Reducing Throughput Time during Product Design
Journal of Manufacturing Systems,
Volume 20, Number 6, pages 416-428, 2001/2002.
Last updated on September 5, 2002, by Jeffrey W. Herrmann.