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Training of Artificial Neural Network to Solve the Inverse Heat Conduction Problem

机译:解决逆导热问题的人工神经网络训练

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The accurate knowledge of Heat Transfer Coefficients (which shows the amount of heat exchanged between an object and its environment) is essential for the design of precise heat transfer operations. There are many numerical methods available (usually based on heuristics, like Genetic Algorithms, Particle Swarm Optimization, Fireworks Algorithm, etc.) for solving the Inverse Heat Conduction Problem, but these usually have a high computational demand. As an alternative, it is possible to design an Artificial Neural Network model efficiently predicting the shape of the HTC function based on the temperature signals recorded during real heat treatment processes. This paper presents a feed-forward network and examines various aspects (learning time, training loss, validation loss) of the model using three different hardware configurations (single CPU, single GPU, multiple GPUs).
机译:对传热系数的准确了解(表明物体与环境之间的热交换量)对于设计精确的传热操作至关重要。有许多可用的数值方法(通常基于启发式算法,例如遗传算法,粒子群优化,Fireworks算法等)用于求解反导热问题,但这些方法通常具有很高的计算需求。作为替代方案,可以设计一个人工神经网络模型,该模型可以根据在实际热处理过程中记录的温度信号有效地预测HTC功能的形状。本文介绍了一种前馈网络,并使用三种不同的硬件配置(单CPU,单个GPU,多个GPU)检查了模型的各个方面(学习时间,训练损失,验证损失)。

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