Abstract
Aluminum alloys are among the most widely used materials in demanding industries such as aerospace, automotive or food packaging and, therefore, it is essential to predict the behavior and properties of each component. Tools based on artificial intelligence can be used to face this complex problem. In this work, a computer-aided tool is developed to predict relevant mechanical properties of aluminum alloys—Young’s modulus, yield stress, ultimate tensile strength and elongation at break. These predictions are based on the alloy chemical composition and tempers, and are employed to estimate the bilinear approximation of the stress-strain curve, very useful as a decision tool that helps in the selection of materials. The system is based on the use of artificial neural networks supported by a big data collection about technological characteristics of thousands of commercial materials. Thus, the volume of data exceeds 5 k entries. Once the relevant data have been retrieved, filtered and organized, an artificial neural network is defined and, after the training, the system is able to make predictions about the material properties with an average confidence greater than 95 % . Finally, the trained network is employed to show how it can be used to support decisions about engineering applications.
Subject
General Materials Science,Metals and Alloys
Reference95 articles.
1. Aluminium alloys in aerospace;Danylenko;Alum. Int. Today,2018
2. Current State of the World and Domestic Aluminium Production and Consumption;Galevsky,2018
3. Sustainable aluminium recycling of end-of-life products: A joining techniques perspective
4. Mechanical Behaviour of Aluminium Alloys;Branco,2018
5. How aluminum changed the world: A metallurgical revolution through technological and cultural perspectives
Cited by
24 articles.
订阅此论文施引文献
订阅此论文施引文献,注册后可以免费订阅5篇论文的施引文献,订阅后可以查看论文全部施引文献