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Compressor performance modelling method based on support vector machine nonlinear regression algorithm

机译:基于支持向量机非线性回归算法的压缩机性能建模方法

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To overcome the difficulty of having only part of compressor characteristic maps including on-design operating point, and accurately calculate compressor thermodynamic performance under variable working conditions, this paper proposes a novel compressor performance modelling method based on support vector machine nonlinear regression algorithm. It is compared with the other three neural network algorithms (i.e. back propagation (BP), radial basis function (RBF) and Elman neural networks) from the perspective of interpolation and extrapolation accuracy as well as calculation time, to prove the validity of the proposed method. Application analyses indicate that the proposed method has better interpolation and extrapolation performance than the other three neural networks. In terms of flow characteristic map representation, the root mean square error (RMSE) of the extrapolation performance at higher and lower speed operating area by the proposed method is 0.89% and 2.57%, respectively. And the total RMSE by the proposed method is 2.72%, which is more accurate by 47% than the Elman algorithm. For efficiency characteristic map representation, the RMSE of the extrapolation performance at higher and lower speed operating area by the proposed method is 2.85% and 1.22%, respectively. And the total RMSE by the proposed method is 1.81%, which is more accurate by 35% than the BP algorithm. Moreover, the proposed method has better real-time performance compared with the other three neural network algorithms.
机译:为了克服只有压缩机特性地图的一部分包括开启设计工作点的难度,并且在可变工作条件下准确计算压缩机热力学性能,提出了一种基于支持向量机非线性回归算法的新型压缩机性能建模方法。与另一个三个神经网络算法(即回到传播(BP),径向基函数(RBF)和ELMAN神经网络)的比较以及计算时间来比较,以证明提出的有效性方法。应用分析表明,该方法具有比其他三个神经网络更好的内插和外推性能。在流量特征地图表示方面,通过所提出的方法在较高和较低的速度操作面积处的外推性能的根均方误差(RMSE)分别为0.89%和2.57%。所提出的方法的总RMSE是2.72%,比Elman算法更准确。对于效率特征图表示,通过所提出的方法在较高和较低速度的操作面积处的外推性能的RMSE分别为2.85%和1.22%。所提出的方法的总RMSE为1.81%,比BP算法更准确35%。此外,与其他三个神经网络算法相比,该方法具有更好的实时性能。

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