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Prediction of thermo-physiological properties of plated knits by different neural network architectures

机译:通过不同的神经网络架构预测平板针织物的热生理特性

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Thermo-physiological properties of polyester-cotton plated knits have been predicted using two different network architectures (NA1 & NA2). NA1 consists of four individual networks working in tandem with common set of inputs and NA2 consists of one network giving four outputs. It is found that network architecture NA1 is able to predict the thermo-physiological properties of plated fabrics better as compared to NA2 network architecture. Sensitivity analysis is performed to judge the sensitivity or the importance of each input parameter in determining thermo-physiological properties of plated fabrics. The most sensitive parameter in prediction of thermal resistance is total yarn linear density, filament fineness for thermal absorptivity, loop length for air permeability and moisture vapour transmission rate.
机译:已经使用两种不同的网络架构(NA1和NA2)预测了聚酯棉镀层针织物的热生理特性。 NA1由四个独立的网络组成并与一组公共输入协同工作,而NA2由一个网络提供四个输出。发现与NA2网络体系结构相比,网络体系结构NA1能够更好地预测镀覆织物的热生理特性。进行灵敏度分析以判断每个输入参数在确定镀膜织物的热生理特性时的灵敏度或重要性。预测热阻时最敏感的参数是总纱线线密度,长丝细度(用于热吸收率),线圈长度(用于透气率)和湿气透过率。

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