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MISSING VALUE IMPUTATION TECHNIQUE TO FACILITATE PROGNOSTIC ANALYSIS OF TIME-SERIES SENSOR DATA

机译:误差值插补技术有助于时间序列传感器数据的预测分析

摘要

First, the system obtains time-series sensor data. Next, the system identifies missing values in the time-series sensor data, and fills in the missing values through interpolation. The system then divides the time-series sensor data into a training set and an estimation set. Next, the system trains an inferential model on the training set, and uses the inferential model to replace interpolated values in the estimation set with inferential estimates. If there exist interpolated values in the training set, the system switches the training and estimation sets. The system trains a new inferential model on the new training set, and uses the new inferential model to replace interpolated values in the new estimation set with inferential estimates. The system then switches back the training and estimation sets. Finally, the system combines the training and estimation sets to produce preprocessed time-series sensor data, wherein missing values are filled in with imputed values.
机译:首先,系统获取时序传感器数据。接下来,系统识别时间序列传感器数据中的缺失值,并通过内插法填充缺失值。然后,系统将时间序列传感器数据分为训练集和估计集。接下来,系统在训练集上训练推论模型,并使用推论模型将推论集合中的插值替换为推论估计。如果训练集中存在插值,则系统会切换训练和估计集。系统在新的训练集上训练新的推论模型,并使用新的推论模型用推论估计值替换新估计值集中的插值。然后,系统切换回训练和估计集。最终,系统将训练和估计集组合在一起以生成预处理的时间序列传感器数据,其中缺失值将用推算值填充。

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