NOTICE: Due to a lapse in annual appropriations, most of this website is not being updated. Learn more.
Form submissions will still be accepted but will not receive responses at this time. Sections of this site for programs using non-appropriated funds (such as NVLAP) or those that are excepted from the shutdown (such as CHIPS and NVD) will continue to be updated.
An official website of the United States government
Here’s how you know
Official websites use .gov
A .gov website belongs to an official government organization in the United States.
Secure .gov websites use HTTPS
A lock (
) or https:// means you’ve safely connected to the .gov website. Share sensitive information only on official, secure websites.
Developing a decision support system for improving sustainability performance of manufacturing processes
Published
Author(s)
Seungjun Shin, Duck B. Kim, Guodong Shao, Alexander Brodsky, David J. Lechevalier
Abstract
It is difficult to formulate and solve optimization problems for sustainability performance in manufacturing. The main reasons for this are: 1) optimization problems are typically complex and involve manufacturing and sustainability aspects, 2) these problems require diversity of manufacturing data, 3) optimization modeling and solving tasks require specialized expertise and programming skills, 4) the use of a different optimization application requires re-modeling of optimization problems even for the same problem, and 5) these optimization models are not decomposed nor reusable. This paper presents the development of a Decision Support System (DSS) that enables manufacturers to formulate optimization problems at multiple manufacturing levels, to represent various manufacturing data, to create compatible and reusable models and to derive easily optimal solutions for improving sustainability performance. We have implemented a DSS prototype system and applied this system to two case studies. The case studies demonstrate how to allocate resources at the production level and how to select process parameters at the unit- process level to achieve minimal energy consumption. The research of this paper will help reduce time and effort for enhancing sustainability performance without heavily relying on optimization expertise.
Shin, S.
, Kim, D.
, Shao, G.
, Brodsky, A.
and Lechevalier, D.
(2015),
Developing a decision support system for improving sustainability performance of manufacturing processes, Journal of Intelligent Manufacturing, [online], https://doi.org/10.1007/s10845-015-1059-z
(Accessed October 7, 2025)