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Water Quality Monitoring Missing Data Filling Method Based on Improved OCS-FCM

机译:基于改进的OCS-FCM的水质监测漏报数据填充方法

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In order to improve the accuracy of filling missing data in water quality monitoring, an improved OCS-FCM (Fuzzy C-means clustering algorithm and Optimal Completion Strategy) method for filling missing data is proposed. The missing values of CODMn, DO, pH and TP measured by water quality monitoring stations in Hangzhou were filled in, and the comparative experiments were carried out in the case of single attribute and multiple attribute missing data set, as well as in the case of different missing rate. The results show that the improved OCS-FCM water quality monitoring missing data filling method with real-time updating membership matrix has better filling accuracy than the similar algorithm in the comparative experiment, especially in the case of high missing rate. In addition, the accuracy of filling missing values in multi-attribute datasets is significantly higher than that in single-attribute datasets. The improved OCS-FCM water quality monitoring missing data filling method has better filling effect to avoid large missing data rate and multi-attribute data sets.
机译:为了提高水质监测中缺失数据的填充精度,提出了一种改进的OCS-FCM(模糊C-均值聚类算法和最优完成策略)方法。 COD的缺失值 Mn 分别填写了杭州市水质监测站测得的DO,pH和TP,并在单属性和多属性缺失数据集以及缺失率不同的情况下进行了对比实验。结果表明,在比较实验中,改进的OCS-FCM实时监测隶属矩阵实时监测丢失数据填充方法比类似算法具有更好的填充精度,特别是在丢失率较高的情况下。此外,在多属性数据集中填充缺失值的准确性显着高于单属性数据集中。改进的OCS-FCM水质监测漏失数据填充方法具有更好的填充效果,避免了大的漏失数据率和多属性数据集。

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