Determination of Optimal Aggregate Blending with Linear Programming in Concrete Production

Canadian Institute of Mining, Metallurgy and Petroleum
D. Adiguzel
Organization:
Canadian Institute of Mining, Metallurgy and Petroleum
Pages:
8
File Size:
66 KB
Publication Date:
Aug 1, 2013

Abstract

In this research, providing the sustainability of production quality was aimed for a quarry which is located in Istanbul western part of Turkey and producing concrete aggregates with different types of rock. First, research field was divided in 3 different areas in accordance with the geological differences and parameters that control their product quality, limit values of standards and effect levels were determined. Concrete aggregate conformity tests which are stated in international standards were applied on samples which were taken from these 3 different areas and physical, geometric and chemical properties of each rock type were revealed. The properties of the 3 different types of rock which were produced in the quary were determined and the binary blends were composed. Blending studies were conducted with linear programming technique. In the linear programming model, the cost of aggregate production was aimed to be minimal. The limit values that meet literature and national standards for usability of aggregates in concrete were defined as constraints in the linear programming model and evaluated with objective functions, thus the most suitable aggregate blends were composed. In conclusion, to provide the sustainability of product quality, the most appropriate product blends were composed for the research field and the usability of this model for those quarries were revealed.
Citation

APA: D. Adiguzel  (2013)  Determination of Optimal Aggregate Blending with Linear Programming in Concrete Production

MLA: D. Adiguzel Determination of Optimal Aggregate Blending with Linear Programming in Concrete Production. Canadian Institute of Mining, Metallurgy and Petroleum, 2013.

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