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Electromechanical equipment state forecasting based on genetic algorithm - support vector regression

机译:基于遗传算法-支持向量机的机电设备状态预测。

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摘要

Prediction of electromechanical equipments state nonlinear and non-stationary condition effectively is significant to forecast the lifetime of electromechanical equipments. In order to forecast electromechanical equipments state exactly, support vector regression optimized by genetic algorithm is proposed to forecast electromechanical equipments state. In the model, genetic algorithm is employed to choose the training parameters of support vector machine, and the SVR forecasting model of electromechanical equipments state with good forecasting ability is obtained. The proposed forecasting model is applied to the state forecasting for industrial smokes and gas turbine. The experimental results demonstrate that the proposed GA-SVR model provides better prediction capability. Therefore, the method is considered as a promising alternative method for forecasting electromechanical equipments state.
机译:机电设备状态非线性和非平稳状态的有效预测对于预测机电设备的使用寿命具有重要意义。为了准确地预测机电设备的状态,提出了用遗传算法优化的支持向量回归来预测机电设备的状态。该模型采用遗传算法选择支持向量机的训练参数,得到具有良好预测能力的机电设备状态的SVR预测模型。所提出的预测模型应用于工业烟气和燃气轮机的状态预测。实验结果表明,提出的GA-SVR模型具有较好的预测能力。因此,该方法被认为是用于预测机电设备状态的有希望的替代方法。

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