ATIN: Attention-embedded time-aware imputation networks for production data anomaly detection

IF 0.9 4区 计算机科学 Q4 COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE
Xi Zhang, Hu Chen, Rui Li, Zhaolei Fei, Fan Min
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引用次数: 0

Abstract

Effective identification of anomalous data from production time series in the oilfield affects future analysis and forecasting. Such time series is often characterized by irregular time intervals due to uneven manual sampling, and missing values caused by incomplete measurements. Therefore, the identification task becomes more challenging. In this paper, an Attention-Embedded Time-Aware Imputation Network (ATIN) with two sub-networks is proposed for this task. First, Time-Aware Imputation LSTM (TI-LSTM) is designed for modeling irregular time intervals and incomplete measurements. It decays the long-term memory component as the producing well conditions may be varied during the water cut stage. Second, Attention-Embedding LSTM (ATEM) is designed to improve the effectiveness of anomaly detection. It focuses on the correlation between the last and historical measurements in a given sequence. Comparison experiments with several state-of-the-art methods, including mTAN, GRU-D, T-LSTM, ATTAIN, and BRITS are conducted. Results show that the proposed ATIN performs better in accuracy, F1-score, and area under curve (AUC).
ATIN:用于生产数据异常检测的注意力嵌入式时间感知输入网络
油田生产时间序列异常数据的有效识别影响着今后的分析和预测。这种时间序列的特点往往是由于人工采样不均匀造成的不规则时间间隔,以及由于测量不完整造成的缺失值。因此,识别任务变得更具挑战性。本文提出了一种具有两个子网络的嵌入式注意时间感知插值网络(ATIN)。首先,针对不规则时间间隔和不完全测量,设计了时间感知插值LSTM (TI-LSTM)模型。在含水阶段,由于生产井条件的变化,会使长期记忆分量衰减。其次,设计了关注嵌入LSTM (ATEM),提高了异常检测的有效性。它关注的是给定序列中最后一次测量和历史测量之间的相关性。与几种最先进的方法,包括mTAN, GRU-D, T-LSTM, ATTAIN和BRITS进行了比较实验。结果表明,所提出的ATIN在准确率、f1评分和曲线下面积(AUC)方面都有较好的表现。
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来源期刊
Intelligent Data Analysis
Intelligent Data Analysis 工程技术-计算机:人工智能
CiteScore
2.20
自引率
5.90%
发文量
85
审稿时长
3.3 months
期刊介绍: Intelligent Data Analysis provides a forum for the examination of issues related to the research and applications of Artificial Intelligence techniques in data analysis across a variety of disciplines. These techniques include (but are not limited to): all areas of data visualization, data pre-processing (fusion, editing, transformation, filtering, sampling), data engineering, database mining techniques, tools and applications, use of domain knowledge in data analysis, big data applications, evolutionary algorithms, machine learning, neural nets, fuzzy logic, statistical pattern recognition, knowledge filtering, and post-processing. In particular, papers are preferred that discuss development of new AI related data analysis architectures, methodologies, and techniques and their applications to various domains.
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