Inverse design of aircraft cabin environment by coupling artificial neural network and genetic algorithm

T. Zhang, X. You
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引用次数: 15

Abstract

An inverse design method is proposed to achieve the pre-set control objectives of the aircraft cabin environment. The method combines the artificial neural network and the genetic algorithm, and the training and testing data of the artificial neural network is obtained by computational fluid dynamics analysis. Both of the thermal comfort and energy consumption are considered in the inverse design. The artificial neural network is used to identify the relationship between the thermal comfort and the air supply parameters (inlet velocity magnitude and angle, inlet air temperature). The genetic algorithm coupled with the well-trained artificial neural network is used to design the aircraft cabin environment. Numerical results show that the Bayesian regularization algorithm is proved to have better generalization capability than the other training algorithms for the artificial neural network. The increase of training data quantity improves the generalization capability of the artificial neural network, while it spends more simulation time. A computational fluid dynamics database with 60 datasets is shown to be suitable to the present inverse design, and the testing error of the artificial neural network is below 8.2%. Several groups of optimal air supply parameters are found with different trade-offs between the thermal comfort and energy consumption. The best solution of thermal comfort, i.e., the percentage of zone with |PMV| >0.5 in all cabin control domains, is less than 7.8%.
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基于人工神经网络和遗传算法的飞机客舱环境反设计
提出了一种实现飞机座舱环境预定控制目标的逆设计方法。该方法将人工神经网络与遗传算法相结合,并通过计算流体力学分析获得人工神经网络的训练和测试数据。在逆向设计中同时考虑了热舒适性和能耗。利用人工神经网络识别了热舒适与送风参数(进气速度大小和角度、进气温度)之间的关系。将遗传算法与训练良好的人工神经网络相结合,对飞机客舱环境进行设计。数值结果表明,贝叶斯正则化算法比其他人工神经网络训练算法具有更好的泛化能力。训练数据量的增加提高了人工神经网络的泛化能力,但却耗费了更多的仿真时间。结果表明,一个包含60个数据集的计算流体力学数据库适合于当前的反设计,人工神经网络的测试误差在8.2%以下。在热舒适和能耗之间进行了不同的权衡,找到了几组最优送风参数。热舒适的最佳解决方案,即在所有舱室控制域中,PMV >0.5的区域百分比小于7.8%。
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来源期刊
HVAC&R Research
HVAC&R Research 工程技术-工程:机械
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审稿时长
3 months
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