(1) Bescherer.F, "Product cost
analysis during prdevelopment.", Philosophiae Doctor Thesis, Science in Technology, School of Science and Technology, Department of Industrial Engineering and Management Aalto University, (Espoo, Finland) on the 29th of Oct. 2010.
(2) Blocher .E. Stout.D. & Cokins.G , Cost Management : A Strategic Emphasis, 5th Edition, McGraw Hill/Irwin, New York, 2010.
(3) Jang Yen.C, "The Study of the Cost Tables Information through the View of Target Management - The Cases of Supplier Negotiation and Manufacture Process Improvement.", Master Thesis, Science in Industrial Engineering and Enterprise Information, Tunghai University, China 2008.
(4) Kshirsagar A.& Rathod.M," Artificial Neural Network", Proceedings published by International Journal of Computer Applications MPGI National Multi Conference 2012, (MPGINMC-2012) 7-8 Apr. 2012.
(5) Ozcan.B & Fıglalı.A, "Artificial neural networks for the cost estimation of stamping dies.", Neural Computer & Application, Springer-Verlag London, Jan, 2014.
(6) Rimašauska, M & Bargelis, A., "Development of Intellient
24
Model for Estimating Manufacturing Cost in Sheet Metalworking.", 7th International DAAAM Baltic Conference Industrial Engineering, Tallinn, Estonia, 22-24, Apr.2010.
(7) Roxas, C., et.al.," An Artificial Neural Network
Approach to Structural Cost Estimation of Building Projects in the Philippines ش , Presented at the DLSU Research Congress 2014 De La Salle University, Manila ، Philippines Mar. 6-8, 2014.
(8) Shafiee.A, Alvanchi.A. & Biglary.S, A neural Network Based Model for Cost Estimation of Industrial Building at the Project’s Definition Phase, 5th International/ 11th Construction Specialty Conference, Vancouver, British Columbia , 8-10 June 2015.
(9) Tanaka, M., Gerharadt.D & Liker.J, Target Cost Management : The Ladder to Global Survival and Success, Taylor and Francis Group, LLC, United States of America, 2011.
(10) Tanaka, M., et al., Contemporary Cost Management, Chapman & Hall, London, 1993.
(11) Verlinden.B, et.al., "Cost estimation for sheet metal parts using multiple regression and artificial neural networks: A case study.", Int. J. Production Economics, Elsevier Science Publishers, No. 111, 2008.