Anomaly Detection for Time Series with Difference Rate Sample Entropy and Generative Adversarial Networks

The spontaneous combustion of residual coals in the mined-out area tends to cause an explosion, which is one kind of severe thermodynamic compound disaster of coal mines and leads to serious losses to people's lives and production safety. The prediction and early warning of coal mine thermodyna...

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Main Authors: Keke Gao, Wenbin Feng, Xia Zhao, Chongchong Yu, Weijun Su, Yuqing Niu, Lu Han
Format: Article
Language:English
Published: Wiley 2021-01-01
Series:Complexity
Online Access:http://dx.doi.org/10.1155/2021/5854096
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author Keke Gao
Wenbin Feng
Xia Zhao
Chongchong Yu
Weijun Su
Yuqing Niu
Lu Han
author_facet Keke Gao
Wenbin Feng
Xia Zhao
Chongchong Yu
Weijun Su
Yuqing Niu
Lu Han
author_sort Keke Gao
collection DOAJ
description The spontaneous combustion of residual coals in the mined-out area tends to cause an explosion, which is one kind of severe thermodynamic compound disaster of coal mines and leads to serious losses to people's lives and production safety. The prediction and early warning of coal mine thermodynamic disasters are mainly determined by the changes of the index gas concentration pattern in coal mine mined-out areas collected continuously. The time series anomaly pattern detection method is mainly used to reach the state change of gas concentration pattern. The change of gas concentration follows a certain rule as time changes. A great change in the gas concentration indicates the possibility of coal spontaneous combustion and other disasters. To emphasize the features of collected maker gas and overcome the low anomaly detection accuracy caused by the inadequate learning of the normal mode, this paper adopted a method of anomaly detection for time series with difference rate sample entropy and generative adversarial networks. Because the difference rate entropy feature of abnormal data was much larger than that of normal mode, this paper improved the calculation method of the abnormal score by giving different weights to the detection points to enhance the detection rate. To verify the effectiveness of the proposed method, this paper employed simulation models of the mined-out area and adopted coal samples from Dafosi Coal Mine to carry out experiments. Preliminary testing was performed using monitoring data from a coal mine. The experiment compared the entropy results of different time series with the detection results of generative adversarial networks and automatic encoders and showed that the method proposed in this paper had relatively high detection accuracy.
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institution Kabale University
issn 1099-0526
language English
publishDate 2021-01-01
publisher Wiley
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spelling doaj-art-5abe1d76b42447f582c2fece0e17a8aa2025-02-03T06:06:53ZengWileyComplexity1099-05262021-01-01202110.1155/2021/5854096Anomaly Detection for Time Series with Difference Rate Sample Entropy and Generative Adversarial NetworksKeke Gao0Wenbin Feng1Xia Zhao2Chongchong Yu3Weijun Su4Yuqing Niu5Lu Han6State Key Laboratory of Coal Mine Safety TechnologyState Key Laboratory of Coal Mine Safety TechnologySchool of Artificial IntelligenceSchool of Artificial IntelligenceSchool of Artificial IntelligenceSchool of Artificial IntelligenceSchool of Artificial IntelligenceThe spontaneous combustion of residual coals in the mined-out area tends to cause an explosion, which is one kind of severe thermodynamic compound disaster of coal mines and leads to serious losses to people's lives and production safety. The prediction and early warning of coal mine thermodynamic disasters are mainly determined by the changes of the index gas concentration pattern in coal mine mined-out areas collected continuously. The time series anomaly pattern detection method is mainly used to reach the state change of gas concentration pattern. The change of gas concentration follows a certain rule as time changes. A great change in the gas concentration indicates the possibility of coal spontaneous combustion and other disasters. To emphasize the features of collected maker gas and overcome the low anomaly detection accuracy caused by the inadequate learning of the normal mode, this paper adopted a method of anomaly detection for time series with difference rate sample entropy and generative adversarial networks. Because the difference rate entropy feature of abnormal data was much larger than that of normal mode, this paper improved the calculation method of the abnormal score by giving different weights to the detection points to enhance the detection rate. To verify the effectiveness of the proposed method, this paper employed simulation models of the mined-out area and adopted coal samples from Dafosi Coal Mine to carry out experiments. Preliminary testing was performed using monitoring data from a coal mine. The experiment compared the entropy results of different time series with the detection results of generative adversarial networks and automatic encoders and showed that the method proposed in this paper had relatively high detection accuracy.http://dx.doi.org/10.1155/2021/5854096
spellingShingle Keke Gao
Wenbin Feng
Xia Zhao
Chongchong Yu
Weijun Su
Yuqing Niu
Lu Han
Anomaly Detection for Time Series with Difference Rate Sample Entropy and Generative Adversarial Networks
Complexity
title Anomaly Detection for Time Series with Difference Rate Sample Entropy and Generative Adversarial Networks
title_full Anomaly Detection for Time Series with Difference Rate Sample Entropy and Generative Adversarial Networks
title_fullStr Anomaly Detection for Time Series with Difference Rate Sample Entropy and Generative Adversarial Networks
title_full_unstemmed Anomaly Detection for Time Series with Difference Rate Sample Entropy and Generative Adversarial Networks
title_short Anomaly Detection for Time Series with Difference Rate Sample Entropy and Generative Adversarial Networks
title_sort anomaly detection for time series with difference rate sample entropy and generative adversarial networks
url http://dx.doi.org/10.1155/2021/5854096
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AT wenbinfeng anomalydetectionfortimeserieswithdifferenceratesampleentropyandgenerativeadversarialnetworks
AT xiazhao anomalydetectionfortimeserieswithdifferenceratesampleentropyandgenerativeadversarialnetworks
AT chongchongyu anomalydetectionfortimeserieswithdifferenceratesampleentropyandgenerativeadversarialnetworks
AT weijunsu anomalydetectionfortimeserieswithdifferenceratesampleentropyandgenerativeadversarialnetworks
AT yuqingniu anomalydetectionfortimeserieswithdifferenceratesampleentropyandgenerativeadversarialnetworks
AT luhan anomalydetectionfortimeserieswithdifferenceratesampleentropyandgenerativeadversarialnetworks