AICEJan 2, 2013

Similarity Measuring Approuch for Engineering Materials Selection

arXiv:1301.0176v113 citations
Originality Synthesis-oriented
AI Analysis

This work addresses the slow and arduous process of materials selection for engineers, though it appears incremental as it builds on existing data mining approaches in materials informatics.

The paper tackles the challenge of efficiently exploring large, multidimensional feature spaces in engineering materials design by proposing a similarity-based selection model for composite materials constraints, which yields results sustainable for effective decision-making in advanced engineering materials applications.

Advanced engineering materials design involves the exploration of massive multidimensional feature spaces, the correlation of materials properties and the processing parameters derived from disparate sources. The search for alternative materials or processing property strategies, whether through analytical, experimental or simulation approaches, has been a slow and arduous task, punctuated by infrequent and often expected discoveries. A few systematic efforts have been made to analyze the trends in data as a basis for classifications and predictions. This is particularly due to the lack of large amounts of organized data and more importantly the challenging of shifting through them in a timely and efficient manner. The application of recent advances in Data Mining on materials informatics is the state of art of computational and experimental approaches for materials discovery. In this paper similarity based engineering materials selection model is proposed and implemented to select engineering materials based on the composite materials constraints. The result reviewed from this model is sustainable for effective decision making in advanced engineering materials design applications.

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