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Constructing a heat source parameter estimation model for heat conduction finite element analysis using deep convolutional neural network

Houichi Kitano, Yoshiki Mikami

2022Materials Today Communications12 citationsDOIOpen Access PDF

Abstract

Heat conduction finite element analysis (FEA) is an important technique for estimating the temperature history of processes with local heat input, such as welding and additive manufacturing. This study proposes a framework to find appropriate heat source parameters without depending on the analyst’s skill. The heat source parameter estimation model consists of pre-trained deep convolutional and fully connected neural networks. The model determines appropriate heat source parameters such as the heat input, base metal shapes and temperature history. The model was constructed using a database created by heat conduction FEA. We demonstrated that heat source parameters were determined accurately for both known and unknown conditions.

Topics & Concepts

Thermal conductionFinite element methodMaterials scienceConvolutional neural networkSource modelHeat equationEstimation theoryComputer scienceThermodynamicsAlgorithmArtificial intelligenceMathematical analysisPhysicsMathematicsComposite materialTheoretical computer scienceWelding Techniques and Residual StressesAdditive Manufacturing Materials and ProcessesAdvanced machining processes and optimization
Constructing a heat source parameter estimation model for heat conduction finite element analysis using deep convolutional neural network | Litcius