Prediction of Recycle Method using Relevance Vector Machine

Click here for a simple search.
[feed] Atom [feed] RSS 1.0 [feed] RSS 2.0

M. M., Noor and M. M., Rahman and K., Kadirgama and M. A., Maleque (2011) Prediction of Recycle Method using Relevance Vector Machine. Advanced Materials Research, 264-26 . pp. 1557-1562. ISSN 1022-6680

[img] PDF
Restricted to Repository staff only


Official URL:


Life cycle engineering is the engineering and design of products and processes to minimize the cost and environmental impact for the life cycle phases of a product. Relevance Vector Machine method (RVM) is used to determine recycling strategy (reuse, service, remanufacture, recycle with disassembly, recycle without disassembly and disposal). Seven parameters (wear – out life, technology cycle, level of integration, number of parts, reason for redesign and design cycle) were considered as the input for the RVM model. Three electronic equipments were selected to be examined such as vacuum cleaner, washing machine, television. All the results verify previous literature study. The prediction model predicts the end of life (EOL) strategies quite closely with real industry practices.

Item Type:Article
Additional Information:Prof. Dr. Md Mustafizur Rahman (M. M. Rahman) Dr. Kumaran Kadirgama (K. Kadirgama) Muhamad Mat Noor (M. M. Noor)
Uncontrolled Keywords:Life cycle engineering; Vector machine method; Recycling strategy; Design cycle
Subjects:T Technology > TJ Mechanical engineering and machinery
Divisions:Faculty of Mechanical Engineering
ID Code:2221
Deposited By: Pn. Hazlinda Abd Rahman
Deposited On:12 Mar 2012 14:12
Last Modified:25 Jan 2018 14:47

Repository Staff Only: item control page








An Institutional Repository is an online focus for collecting, preserving, and disseminating any University publication in the digital form for the intellectual sharing.
The UMP Institutional Repository (UMP IR) provides access of University publication such as journal article, conference paper, research paper, thesis and dissertations.

Any Enquiries

Please email or call Knowledge Management staff:-

Pn. Noorul Farina (09-424 5605) OR
Cik Ratna Wilis Haryati (09-424 5612)

Any correspondence concerning this specific repository should be sent to