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Dynamic alarm prediction for critical alarms using a probabilistic model

Dynamic alarm prediction for critical alarms using a probabilistic model
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摘要 Alarm systems play important roles for the safe and efficient operation of modern industrial plants. Critical alarms are configured with a higher priority and are safety related among many other alarms. If critical alarms can be predicted in advance, the operator will have more time to prevent them from happening. In this paper,we present a dynamic alarm prediction algorithm, which is a probabilistic model that utilizes alarm data from distributed control system, to calculate the occurrence probability of critical alarms. It accounts for the local interdependences among the alarms using the n-gram model, which occur because of the nonlinear relationships between variables. Finally, the dynamic alarm prediction algorithm is applied to an industrial case study. Alarm systems play important roles for the safe and efficient operation of modern industrial plants. Critical alarms are configured with a higher priority and are safety related among many other alarms. If critical alarms can be predicted in advance, the operator will have more time to prevent them from happening. In this paper, we present a dynamic alarm prediction algorithm, which is a probabilistic model that utilizes alarm data from distributed control system, to calculate the occurrence probability of critical alarms. It accounts for the local inter- dependences among the alarms using the n-gram model, which occur because of the nonlinear relationships between variables. Finally, the dynamic alarm prediction algorithm is applied to an industrial case study.
出处 《Chinese Journal of Chemical Engineering》 SCIE EI CAS CSCD 2016年第7期881-885,共5页 中国化学工程学报(英文版)
基金 Supported by the National High Technology Research and Development Program of China(2013AA040701)
关键词 Dynamic alarm predictionAlarm managementThe n-gram modelAlarm sequence 报警系统 预测算法 概率模型 告警 N-gram模型 分布式控制系统 临界 工业厂房
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参考文献20

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