SUPPORTING DECISION MAKING WITH AN ARIZ-BASED MODEL FOR SMART MANUFACTURING

Main Article Content

Fong Thai Koay
Choo Jun Tan
Sin Yin Teh
Ping Chow Teoh
Heng Chin Low

Abstract

Smart manufacturing has transformed the way decisions are made. By accelerating the delivery of data to the various decision points, more rapid decision-making processes can be realized. A generic Decision Support System (DSS) utilizes an efficient technique, which integrates the algorithm for inventive problem solving (ARIZ) and supervised machine learning into a model for supporting various automated decision making processes. The proposed model is to examine the theoretical framework of ARIZ by devising an ARIZ-based DSS model. It incorporates supervised ML algorithms to assist decision making processes. Three case studies from the manufacturing sector are evaluated. The results indicate the capability of the proposed DSS in achieving a high accuracy rate and, at the same time reducing the time and resources required for decision making. Our study has simplified the data processing and extraction processes through an automated ARIZ-based DSS model; therefore enabling a non-technical user the opportunity to harvest the vast knowledge from the collected data for efficient decision making.

Downloads

Download data is not yet available.

Article Details

How to Cite
Koay, F. T., Tan, C. J., Teh, S. Y., Teoh, P. C., & Low, H. C. (2023). SUPPORTING DECISION MAKING WITH AN ARIZ-BASED MODEL FOR SMART MANUFACTURING. Malaysian Journal of Computer Science, 36(1), 53–78. https://doi.org/10.22452/mjcs.vol36no1.4
Section
Articles