张琪,吴亚锋,徐建.基于遗传神经网络的除湿机故障诊断与寿命预测[J].装备环境工程,2017,14(1):78-83. ZHANG Qi,WU Ya-feng,XU Jian.Fault Diagnosis and Life Prediction of Genetic Neural Network-based Dehumidifier[J].Equipment Environmental Engineering,2017,14(1):78-83.
基于遗传神经网络的除湿机故障诊断与寿命预测
Fault Diagnosis and Life Prediction of Genetic Neural Network-based Dehumidifier
投稿时间:2016-06-16  修订日期:2017-01-15
DOI:10.7643/ issn.1672-9242.2017.01.018
中文关键词:  遗传算法  神经网络  除湿机  露点温度
英文关键词:genetic algorithm  neural network  dehumidifier  dew point temperature
基金项目:
作者单位
张琪 中国华阴兵器试验中心 环境模拟室,陕西 华阴 714200 
吴亚锋 西北工业大学 动力与能源学院,西安 710072 
徐建 中国华阴兵器试验中心 环境模拟室,陕西 华阴 714200 
AuthorInstitution
ZHANG Qi Department of Environment Simulation, Huayin Ordinance Test Centre, Huayin 714200, China 
WU Ya-feng School of Power and Energy, Northwestern Polytechnical University, Xi′an 710072, China 
XU Jian Department of Environment Simulation, Huayin Ordinance Test Centre, Huayin 714200, China 
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中文摘要:
      目的 识别除湿机的性能状态和预测吸附剂的剩余寿命。方法 针对除湿机故障过程缓变的特点,提出一种基于数据驱动的遗传神经网络模型。首先,为解决设备失效程度划分模糊的问题,由5个热力参数组成反映吸附剂劣化程度的特征向量,关联分析得到除湿机的5类故障模式。其次,利用遗传神经网络建立状态参数和故障模式的映射关系。最后,对表征设备吸附能力的主参数进行外推预测。结果 训练好的诊断网络可准确地识别出设备的劣化程度及其演变过程,预测网络的预测精度非常高。结论 该方法可有效地实现对除湿机的故障诊断与预测。
英文摘要:
      Objective To identify performance state of dehumidifier and predict residual life of adsorbent. Methods A data driving-based genetic neural network model was proposed in view of the slow variable failure process of dehumidifier. Firstly, to solve the issue fuzzy division of equipment failure degree, 5 failure patterns of the dehumidifier were obtained with correlation analysis according to characteristic vectors formed by 5 thermodynamic parameters which reflect adsorbent degradation. Secondly, the mapping relationship between state parameters and failure patterns was established with genetic neural network. Finally, principal parameters reflecting adsorption capacity of equipment were predicted by extrapolation. Results The diagnosis network could determine deterioration degree and evolution process of equipment accurately. It possessed very high accuracy in network prediction. Conclusion This method can effectively finish fault diagnosis and prediction of dehumidifier.
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