Araştırma Makalesi
BibTex RIS Kaynak Göster
Yıl 2021, Cilt: 7 Sayı: 3, 75 - 82, 30.09.2021
https://doi.org/10.19072/ijet.938251

Öz

Kaynakça

  • Sata, A., & Ravi, B. (2019). Foundry data analytics to identify critical parameters affecting quality of investment castings. ASCE-ASME Journal of Risk and Uncertainty in Engineering Systems, Part B: Mechanical Engineering. 5(1): 011010.
  • Sata, A., & Ravi, B. (2017). Bayesian inference-based investment-casting defect analysis system for industrial application. The International Journal of Advanced Manufacturing Technology, 90(9), 3301-3315.
  • Kumar, M., Husain, M., Upreti, N., & Gupta, D. (2010). Genetic algorithm: Review and application. International Journal of Information Technology and Knowledge Management. Volume 2, No. 2, pp. 451-454.
  • Tranmer, M., & Elliot, M. (2008). Multiple linear regression. The Cathie Marsh Centre for Census and Survey Research (CCSR), 5(5), 1-5.
  • Yen, Y. S., Chan, Y. K., Chao, H. C., & Park, J. H. (2008). A genetic algorithm for energy-efficient based multicast routing on MANETs. Computer Communications, 31(10), 2632-2641.
  • Manjunath Patel, G. C., Krishna, P., & Parappagoudar, M. B. (2016). Modelling and multi-objective optimization of squeeze casting process using regression analysis and genetic algorithm. Australian Journal of Mechanical Engineering, 14(3), 182-198.
  • Santos, C. A., Spim, J. A., & Garcia, A. (2003). Mathematical modeling and optimization strategies (genetic algorithm and knowledge base) applied to the continuous casting of steel. Engineering applications of artificial intelligence, 16(5-6), 511-527.
  • Anijdan, S. M., Bahrami, A., Hosseini, H. M., & Shafyei, A. (2006). Using genetic algorithm and artificial neural network analyses to design an Al–Si casting alloy of minimum porosity. Materials & design, 27(7), 605-609.
  • Dučić, N., Ćojbašić, Ž., Manasijević, S., Radiša, R., Slavković, R., & Milićević, I. (2017). Optimization of the gating system for sand casting using genetic algorithm. International Journal of Metalcasting, 11(2), 255-265.
  • Vijian, P., & Arunachalam, V. P. (2007). Modelling and multi objective optimization of LM24 aluminium alloy squeeze cast process parameters using genetic algorithm. Journal of materials processing technology, 186(1-3), 82-86.
  • Patel, G. C. M., Krishna, P., Vundavilli, P. R., & Parappagoudar, M. B. (2016). Multi-objective optimization of squeeze casting process using genetic algorithm and particle swarm optimization. Archives of Foundry Engineering, 16. International Journal of Swarm Intelligence Research (IJSIR), 7.1: 55-74.
  • Tsoukalas, V. D. (2008). Optimization of porosity formation in AlSi9Cu3 pressure die castings using genetic algorithm analysis. Materials & Design, 29(10), 2027-2033.
  • Lagdive, P. B., & Inamdar, K. H. (2013). Optimization of riser in casting using genetic algorithm. International Archive of Applied Sciences and Technology, 4(2), 21-26.
  • Santos, C. A., Cheung, N., Garcia, A., & Spim, J. A. (2005). Application of a solidification mathematical model and a genetic algorithm in the optimization of strand thermal profile along the continuous casting of steel. Materials and Manufacturing Processes, 20(3), 421-434.
  • GC, M. P., Krishna, P., Parappagoudar, M. B., & Vundavilli, P. R. (2016). Multi-objective optimization of squeeze casting process using evolutionary algorithms. International Journal of Swarm Intelligence Research (IJSIR), 7(1), 55-74.
  • Pattnaik, S., Karunakar, D. B., & Jha, P. K. (2012). Developments in investment casting process-a review. Journal of Materials Processing Technology, 212(11), 2332-2348.

Quality Improvement in Investment Castings Using Genetic Algorithm

Yıl 2021, Cilt: 7 Sayı: 3, 75 - 82, 30.09.2021
https://doi.org/10.19072/ijet.938251

Öz

Investment casting is well-known for its distinguished characteristics such as manufacturing small industrial components of ferrous as well as nonferrous alloys used in aerospace, automobile, bio-medical, chemical, defense, etc. with closed tolerances at relatively low cost. These industrial components need to be defect free as well as must possess desired mechanical properties. This quality metrics (defect free castings with desired mechanical properties) is mainly driven by process parameters associated with different sub-processes of investment casting including wax pattern making, shell making, dewaxing, melting & pouring, and chemical composition of alloys. It is always challenging to identify such parameters affecting quality of investment castings. In this work, an application of Genetic Algorithm has been extended to identify critical parameters and their specific set of values affecting quality of investment castings. This technique is found be very useful in performing data analytics.

Kaynakça

  • Sata, A., & Ravi, B. (2019). Foundry data analytics to identify critical parameters affecting quality of investment castings. ASCE-ASME Journal of Risk and Uncertainty in Engineering Systems, Part B: Mechanical Engineering. 5(1): 011010.
  • Sata, A., & Ravi, B. (2017). Bayesian inference-based investment-casting defect analysis system for industrial application. The International Journal of Advanced Manufacturing Technology, 90(9), 3301-3315.
  • Kumar, M., Husain, M., Upreti, N., & Gupta, D. (2010). Genetic algorithm: Review and application. International Journal of Information Technology and Knowledge Management. Volume 2, No. 2, pp. 451-454.
  • Tranmer, M., & Elliot, M. (2008). Multiple linear regression. The Cathie Marsh Centre for Census and Survey Research (CCSR), 5(5), 1-5.
  • Yen, Y. S., Chan, Y. K., Chao, H. C., & Park, J. H. (2008). A genetic algorithm for energy-efficient based multicast routing on MANETs. Computer Communications, 31(10), 2632-2641.
  • Manjunath Patel, G. C., Krishna, P., & Parappagoudar, M. B. (2016). Modelling and multi-objective optimization of squeeze casting process using regression analysis and genetic algorithm. Australian Journal of Mechanical Engineering, 14(3), 182-198.
  • Santos, C. A., Spim, J. A., & Garcia, A. (2003). Mathematical modeling and optimization strategies (genetic algorithm and knowledge base) applied to the continuous casting of steel. Engineering applications of artificial intelligence, 16(5-6), 511-527.
  • Anijdan, S. M., Bahrami, A., Hosseini, H. M., & Shafyei, A. (2006). Using genetic algorithm and artificial neural network analyses to design an Al–Si casting alloy of minimum porosity. Materials & design, 27(7), 605-609.
  • Dučić, N., Ćojbašić, Ž., Manasijević, S., Radiša, R., Slavković, R., & Milićević, I. (2017). Optimization of the gating system for sand casting using genetic algorithm. International Journal of Metalcasting, 11(2), 255-265.
  • Vijian, P., & Arunachalam, V. P. (2007). Modelling and multi objective optimization of LM24 aluminium alloy squeeze cast process parameters using genetic algorithm. Journal of materials processing technology, 186(1-3), 82-86.
  • Patel, G. C. M., Krishna, P., Vundavilli, P. R., & Parappagoudar, M. B. (2016). Multi-objective optimization of squeeze casting process using genetic algorithm and particle swarm optimization. Archives of Foundry Engineering, 16. International Journal of Swarm Intelligence Research (IJSIR), 7.1: 55-74.
  • Tsoukalas, V. D. (2008). Optimization of porosity formation in AlSi9Cu3 pressure die castings using genetic algorithm analysis. Materials & Design, 29(10), 2027-2033.
  • Lagdive, P. B., & Inamdar, K. H. (2013). Optimization of riser in casting using genetic algorithm. International Archive of Applied Sciences and Technology, 4(2), 21-26.
  • Santos, C. A., Cheung, N., Garcia, A., & Spim, J. A. (2005). Application of a solidification mathematical model and a genetic algorithm in the optimization of strand thermal profile along the continuous casting of steel. Materials and Manufacturing Processes, 20(3), 421-434.
  • GC, M. P., Krishna, P., Parappagoudar, M. B., & Vundavilli, P. R. (2016). Multi-objective optimization of squeeze casting process using evolutionary algorithms. International Journal of Swarm Intelligence Research (IJSIR), 7(1), 55-74.
  • Pattnaik, S., Karunakar, D. B., & Jha, P. K. (2012). Developments in investment casting process-a review. Journal of Materials Processing Technology, 212(11), 2332-2348.
Toplam 16 adet kaynakça vardır.

Ayrıntılar

Birincil Dil İngilizce
Konular Mühendislik
Bölüm Makaleler
Yazarlar

Hussam Abbas 0000-0003-3698-3179

Amit Sata Bu kişi benim 0000-0002-0945-3095

Yayımlanma Tarihi 30 Eylül 2021
Kabul Tarihi 2 Kasım 2021
Yayımlandığı Sayı Yıl 2021 Cilt: 7 Sayı: 3

Kaynak Göster

APA Abbas, H., & Sata, A. (2021). Quality Improvement in Investment Castings Using Genetic Algorithm. International Journal of Engineering Technologies IJET, 7(3), 75-82. https://doi.org/10.19072/ijet.938251
AMA Abbas H, Sata A. Quality Improvement in Investment Castings Using Genetic Algorithm. IJET. Eylül 2021;7(3):75-82. doi:10.19072/ijet.938251
Chicago Abbas, Hussam, ve Amit Sata. “Quality Improvement in Investment Castings Using Genetic Algorithm”. International Journal of Engineering Technologies IJET 7, sy. 3 (Eylül 2021): 75-82. https://doi.org/10.19072/ijet.938251.
EndNote Abbas H, Sata A (01 Eylül 2021) Quality Improvement in Investment Castings Using Genetic Algorithm. International Journal of Engineering Technologies IJET 7 3 75–82.
IEEE H. Abbas ve A. Sata, “Quality Improvement in Investment Castings Using Genetic Algorithm”, IJET, c. 7, sy. 3, ss. 75–82, 2021, doi: 10.19072/ijet.938251.
ISNAD Abbas, Hussam - Sata, Amit. “Quality Improvement in Investment Castings Using Genetic Algorithm”. International Journal of Engineering Technologies IJET 7/3 (Eylül 2021), 75-82. https://doi.org/10.19072/ijet.938251.
JAMA Abbas H, Sata A. Quality Improvement in Investment Castings Using Genetic Algorithm. IJET. 2021;7:75–82.
MLA Abbas, Hussam ve Amit Sata. “Quality Improvement in Investment Castings Using Genetic Algorithm”. International Journal of Engineering Technologies IJET, c. 7, sy. 3, 2021, ss. 75-82, doi:10.19072/ijet.938251.
Vancouver Abbas H, Sata A. Quality Improvement in Investment Castings Using Genetic Algorithm. IJET. 2021;7(3):75-82.

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