Comparing Prediction and Measurement of the Quality Index in Sand, Permanent Mould and Investment Castings Poured in A1Si7Mg03 (A356)

Canadian Institute of Mining, Metallurgy and Petroleum
F. Chiesa B. Duchesne G. Morin
Organization:
Canadian Institute of Mining, Metallurgy and Petroleum
Pages:
16
File Size:
1356 KB
Publication Date:
Jan 1, 2006

Abstract

The Quality index is a useful tool allowing to assess the metallurgical quality of aluminium AlSiMg foundry alloys (A356/357). Its value is calculated from the ultimate tensile strength and elongation; it increases with the metallurgical quality of the casting, i.e. with finer dendrites, lower microporosity and inclusion count and lower iron content. This Quality index does not depend on the degree of temper applied during the heat treatment (aging time and temperature). After defining the Quality index, it will be explained how it can be predicted from the knowledge of the local solidification conditions obtained from modelling. The paper will then present four case studies of castings for which the prediction of the Quality index by modelling was made. These case studies from different authors will involve the three most common casting processes used for producing high integrity aluminium castings, namely: sand casting, permanent mould casting and investment casting (lost wax). In all cases, the accuracy of the prediction will be assessed by comparing the predicted Quality index distributions to the experimental values based on the published measured values of the local tensile properties.
Citation

APA: F. Chiesa B. Duchesne G. Morin  (2006)  Comparing Prediction and Measurement of the Quality Index in Sand, Permanent Mould and Investment Castings Poured in A1Si7Mg03 (A356)

MLA: F. Chiesa B. Duchesne G. Morin Comparing Prediction and Measurement of the Quality Index in Sand, Permanent Mould and Investment Castings Poured in A1Si7Mg03 (A356). Canadian Institute of Mining, Metallurgy and Petroleum, 2006.

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