Determination of ordering acceptance using decision support system on metal casting industry in sub-district of Ceper Klaten


  • Ahmad Muhsin Universitas Pembangunan Nasional "Veteran" Yogyakarta
  • Muafi Muafi Faculty of Economy Universitas Islam Indonesia Yogyakarta
  • Fuad Hasyim Faculty of Economy Universitas Islam Indonesia Yogyakarta
  • Rizqi Adhyka Kusumawati Faculty of Economy Universitas Islam Indonesia Yogyakarta

Abstract views 9476 times


metal casting, order, DSS, SDLC


The largest center of metal casting industry in Indonesia is located in sub-district of Ceper, Klaten, Central Java. The companies of this region open orders for manufacturing engine spare parts and any other engineering needs. The research aims to provide a media accelerating the process of estimation and decision making on product ordering acceptance in the form of Decision Suppprt System (DSS). The method used in this research was System Development Life Cycle (SDLC) encompassing system analysis, system design, and system implementation. The contrive of application used basic programming language with visual Studio Community 2017 software and Microsoft Access basic database software. The testing result of Decission Support System on consumer ordering acceptance using alpha test method and black box test showed that the application program is proper to use and in accordance to the needs of corporate managers to take decision on ordering acceptance.


Allen, W. et al. (2017).How Decision Support Systems Can Bene fi t from a Theory of Change Approach.Environmental Management. 59(Jun). pp. 956–965. doi: 10.1007/s00267-017-0839-y.

Andersch, A. et al. (2013).Status and opportunities associated with product costing strategies in wood component manufacturing. Forest Science. 59(6). pp. 623–636. doi: 10.5849/forsci.11-138.

Bal, M. et al. (2014) .Performance Evaluation of the Machine Learning Algorithms Used in Inference Mechanism of a Medical Decision Support System. The Scientific World Journal; Cairo, 2014. pp. 1–15. doi: 10.1155/2014/137896.

Carlos Soares, Fernando Batista, Ricardo, R. (2017).A Simplified Method to Enhance the Allen, W. et al. (2017) .How Decision Support Systems Can Bene fi t from a Theory of Change Approach. Environmental Management. 59(Jun). pp. 956–965. doi: 10.1007/s00267-017-0839-y.

Carlos Soares, Fernando Batista, Ricardo, R. (2017).A Simplified Method to Enhance the Analysis for new Information Systems in Corporate Environments. CISTI Proceedings, 1. pp. 619–623.

Cem Ozturk, O. and Karabatı, S. (2017) .A decision support framework for evaluating revenue performance in sequential purchase contexts. European Journal of Operational Research. 263(3). pp. 922–934. doi: 10.1016/j.ejor.2017.06.029.

Cheng, J. H. and Liu, S. F. (2017).A study of innovative product marketing strategies for technological SMEs.Journal of Interdisciplinary Mathematics.20(1). pp. 319–337. doi: 10.1080/09720502.2016.1258837.

Cohen, S., Dori, D. and De Haan, U. (2010).A Software System Development Life Cycle Model for Improved Stakeholders Communication and Collaboration. International Journal of Computers Communications & Control. 5(1). p. 20. doi: 10.15837/ijccc.2010.1.2462.

Cross Lisa (2004).Benefiting from Costing & Pricing Tools. Grapbic Arts Monthly ; Newton. 76(July). pp. 32–34.

Davizón, Y. A. et al. (2014).Demand Management Based on Model Predictive Control Techniques.Mathematical Problems in Engineering.2014(March). p. 11. doi:

Drury, C. (2004) .Management and Cost Accounting. London: Thomson Learning.

Ferratt, T. W., Prasad, J. and Dunne, E. J. (2018).Fast and Slow Processes Underlying Theories of Information Technology Use. Journal of the Association for Information Systems.19(1). pp. 1–22. doi: 10.17705/1jais.00477.

Guiltinan, J. (2011).Progress and challenges in product line pricing. Journal of Product Innovation Management. 28(5). pp. 744–756. doi: 10.1111/j.1540-5885.2011.00837.x.

Ievtushenko, O. and Hodge, G. L. (2012).Review of Cost Estimation Techniques and Their Strategic Importance in the New Product Development Process of Textile Products. Research Journal of Textile and Apparel. 16(1). pp. 103–124. doi: 10.1108/RJTA-16-01-2012-B012.

Industrial, J. O. F. and Optimization, M. (2018) .A loss-averse two-product ordering model with information updating in two-echelon inventory system Yanju Zhou and Zhen Shen. 14(2). pp. 687–705. doi: 10.3934/jimo.2017069.

Jeyakumar, K. and Robert, T. P. (2010).Quantity for new products under free renewal warranty policy. International Journal for Quality Research. 4(1).pp. 51–58. Available at:

Keil, T. (2017) .Supply-Side Network Effects and the Development of Information Technology Standards. MIS Quartely. 41(4). pp. 1207–1226.

Kirche, E. T., Kadipasaoglu, S. N. and Khumawala, B. M. (2005).Maximizing supply chain profits with effective order management: Integration of Activity-Based Costing and Theory of Constraints with mixed-integer modelling. International Journal of Production Research. 43(7). pp. 1297–1311. doi: 10.1080/00207540412331299648.

Leva, K., Statsytyt and Viktoria (2017) .Comparative Analysis Of Investment Decision Models.Vilnius. 9(2). pp. 197–2082018.

Lo, M.-C. (2007).Decisio Support System for The Integrated Inventory Model with General Distribution Demand. Information Technology Journal. Asian Network for Scientific Information, 6(7), pp. 1069–1074.

Mahdjoubi, L., Hao Koh, J. and Moobela, C. (2014).Effects of interactive real-time simulations and humanoid avatars on consumers responses in online house products marketing. Computer-Aided Civil and Infrastructure Engineering. 29(1). pp. 31–46. doi: 10.1111/j.1467-8667.2012.00775.x.

Muhsin, A. et al. (2018) .Hospital performance improvement through the hospital information system design. International Journal of Civil Engineering and Technology.9(1).pp. 918–928.

Napitupulu, I. H., Mahyuni, S. R. I. and Sibarani, J. L. (2016).The impact of internal control effectiveness to the quality of management accounting information system : The Survey On State-Owned Enterprises (SOEs). Journal of Theoretical & Applied Information Technology. 88(2). p. 358. Available at:

Rau, J. G. (2018).Know Who You Are Before Going Too Far: Self-Assessment, Early Market Research Should Be Among Your Initial Steps. Inventors’ Digest.pp. 12–13.

Saha, C. et al. (2016).A decision support system for real-time order management in a heterogeneous production environment.Expert Systems with Applications.60. pp. 16–26. doi: 10.1016/j.eswa.2016.04.035.

Setyono, A. and Aeni, S. N. (2018).Development of decision support system for ordering goods using fuzzy Tsukamoto.International Journal of Electrical and Computer Engineering.81(2). pp. 1182–1193. doi: 10.11591/ijece.v8i2.pp1182-1193.

Sitko, J. (2008) .Problems of materials management in the casting industry. archives of found ryengineering. 8(3). pp. 217–220. Available at:




How to Cite

Muhsin, A., Muafi, M., Hasyim, F., & Kusumawati, R. A. (2019). Determination of ordering acceptance using decision support system on metal casting industry in sub-district of Ceper Klaten. International Journal of Health Science and Technology, 1(2), 42–50.