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Intelligent fault diagnosis of air conditioning system in electric bus

机译:电动公交车空调系统智能故障诊断

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Air conditioning (AC) system becomes the second largest energy consumption part of electric bus, which will greatly affect recharge mileage and driving performance. It is very important to set up effective and reliable diagnostic model for AC system in electric bus. In this paper, various types of feature parameters are extracted and analyzed for related soft-fault firstly; and then new fault prediction model of BP neural network is established with improved particle swarm algorithm. There are three steps of prediction data modeling to determine the type and trend of AC system failure soft-fault quickly: characteristic parameters extraction; data preprocessing; the best particles calculation. However, the neural network model of the soft-fault diagnosis in high-dimensional complex problems is easy to fall into the local extreme point, named as “dimension disaster”. Thus, the improved support vector machine (SVM) model is proposed to deal with the high-dimensional problems. Penalty parameter C and Gaussian kernel function parameters of SVM, which are optimized by improved particle swarm algorithm in this paper, will influence the predicted results greatly. From soft-fault diagnosis results of different prediction models, we can see that the fault diagnosis model of optimized SVM based on improved particle swarm algorithm spends less training time and has higher predictive accuracy with optimized SVM parameters through the improved particle swarm algorithm.
机译:空调(AC)系统成为电动总线的第二大能消耗部分,这将极大地影响充值的里程和驾驶性能。在电动总线中为交流系统设置有效和可靠的诊断模型非常重要。在本文中,首先提取和分析各种类型的特征参数和分析相关的软故障;然后建立了BP神经网络的新故障预测模型,采用改进的粒子群算法建立。预测数据建模有三个步骤,以便快速确定AC系统故障软故障的类型和趋势:特征参数提取;数据预处理;最佳粒子计算。但是,高维复杂问题的软故障诊断的神经网络模型容易落入局部极端点,命名为“维度灾难”。因此,提出了改进的支持向量机(SVM)模型来处理高维问题。 SVM的惩罚参数C和高斯内核功能参数,通过改进的粒子群算法优化,将大大影响预测结果。从不同预测模型的软故障诊断结果,我们可以看出,基于改进的粒子群算法的优化SVM故障诊断模型花费较少的训练时间,并通过改进的粒子群算法具有优化的SVM参数更高的预测精度。

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