Expert system training technique to evaluate welder’s job stability
Автор: Lukyanov Vitaliy Fedorovich, Kuzmenko Igor Vladimirovich
Журнал: Вестник Донского государственного технического университета @vestnik-donstu
Рубрика: Технические науки
Статья в выпуске: 4 (79) т.14, 2014 года.
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The design and training scheme for the artificial neural network is considered. An expert system of evaluating a craftsman’s motor skills stability while working on the welder simulator is based on this technique. It is assumed that the weld joint quality depends directly on the welding behavior stability. While the stability of the manual arc and mechanized welding depends on the welder’s motor skills. It is proposed to use an expert system to determine the stability criterion of the welding process. A step by step design of the artificial neural network architecture considering the specific weld formation is described. It is shown that the application of artificial neural networks based on the expert system allows evaluating the welder’s job stability. A training technique which shortens the time and reduces the number of experiments without loss of the data adequacy and the expert system training quality is described. When creating a database, the experimental results presented as "Quality domain" that connects the welder’s motor actions and the fillet joints defects are used.
Artificial neural networks, artificial neural network training, weld defects, expert system, welding process stability, analytical methods, weld joint
Короткий адрес: https://sciup.org/14250097
IDR: 14250097 | DOI: 10.12737/6899