摘要
为有效保障高速公路服务区污水处理系统的健康运行,结合污水处理系统的构成和系统运行特征,设计了一种用于评估污水处理系统健康状态的双层支持向量机(support vector machine, SVM)模型,并将健康状态分为健康、亚健康、故障和异常4个等级。首先,分析提升泵、进水泵、自吸泵等6个子系统的运行特征,使用随机函数和欠采样处理构建特征向量集。其次,采用SVM构建下层各子系统健康状态评估模型,并使用ThunderSVM算法来提高模型训练速度。再次,融合下层各子系统健康状态评估的结果,构建上层SVM系统评估模型,得到整个污水处理系统的健康状态。最后,依据青兰高速山西段服务区污水处理系统进行验证。结果表明,所提出的双层SVM模型相较树类模型和单层SVM模型不仅可评估整个污水处理系统的健康状态,还可评估各子系统的健康状态,且模型训练速度和判断精度均有提升。
In order to effectively ensure the healthy operation of the sewage treatment system in the expressway service area,a doublelayer support vector machine(SVM)model was designed to evaluate the health status of sewage treatment system based on the constitution and operation characteristics of sewage treatment system,and the health status was classified into four levels including health,subhealth,failure and anomaly.Firstly,the operating characteristics of six subsystems,such as lift pump,intake pump and self-priming pump were analyzed,and feature vector sets were constructed by using random functions and undersampling processing.Secondly,the SVM was used to build the health status evaluation model of each sub-system in the lower layer,and the ThunderSVM algorithm was used to improve the training speed of the model.Thirdly,the results of the health status assessment of the sub-systems in the lower layer were combined to construct the upper layer SVM system evaluation model to obtain the health status of the entire sewage treatment system.Finally,the sewage treatment system in the service area of the Shanxi section of Qinglan expressway was verified.The results show that compared with tree model and single-layer SVM model,the proposed two-layer SVM model can not only evaluate the health status of the whole sewage treatment system,but also evaluate the health status of each subsystem,and the training speed and judgment accuracy of the model are improved.
作者
刘文辉
贺晓宇
罗二娟
岳丛俊
赵建东
LIU Wen-hui;HE Xiao-yu;LUO Er-juan;YUE Cong-jun;ZHAO Jian-dong(Shanxi Transportation New Technology Development Co.,Ltd.,Taiyuan 030012,China;School of Traffic and Transportation,Beijing Jiaotong University,Beijing 100044,China)
出处
《科学技术与工程》
北大核心
2022年第29期13090-13095,共6页
Science Technology and Engineering
基金
国家自然科学基金(71871011)
山西交控集团科技项目(20-JKKJ-47)。
关键词
系统健康状态
双层支持向量机模型
服务区污水处理系统
数据特征
system health status
double-layer support vector machine model
service area sewage treatment system
data features