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Improvement of the Training and Normalization Method of Artificial Neural Network in the Prediction of Indoor Environment

机译:室内环境预测中人工神经网络训练和归一化方法的改进

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摘要

When designing the indoor environment based on computational fluid dynamics (CFD),the artificial neural network (ANN) playing a role of surrogate model of CFD is involved to reduce the computational cost.To improve the performance of ANN,the training and normalization method of ANN are studied.An MD-82 aircraft cabin is used to test the proposed method,and different environmental parameters are used to evaluate the cabin environment.The results of different training methods are compared,and the parallel combination of genetic algorithm and particle swarm optimization shows better prediction accuracy than other training methods.A local logarithm normalization method is proposed to improve the success rate of ANN prediction.The success rate is increased by 2.5~11.0% when the proposed local logarithm normalization method is adopted instead of local linear normalization one.
机译:在基于计算流体力学(CFD)设计室内环境时,要使用人工神经网络(CNN)来代替CFD以降低计算成本。为提高ANN的性能,需要对CFD的训练和归一化方法研究了人工神经网络,用MD-82飞机机舱进行了测试,并用不同的环境参数对机舱环境进行了评估,比较了不同训练方法的结果,并结合了遗传算法和粒子群算法的并行组合。提出了一种比对数训练方法更好的预测精度。提出一种局部对数归一化方法,提高神经网络预测的成功率。采用局部对数归一化方法代替局部线性归一化方法,成功率提高了2.5〜11.0%。 。

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