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Large-scale plant-wide process modeling and hierarchical monitoring: A distributed Bayesian network approach

机译:大型植物范围的过程建模和分层监测:分布式贝叶斯网络方法

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摘要

In this work, a systematic distributed Bayesian network approach is proposed for modeling and monitoring large-scale plant-wide processes. First, to deal with the large-scale process modeling issue, the entire plant-wide process is decomposed into blocks and Bayesian networks are constructed for different blocks. Subsequently, distributed Bayesian network blocks are fused into a global Bayesian network with a proper designed algorithm. For fault detection, a missing data approach is proposed for state estimation, based on which the 72 and Q statistics are constructed. Finally, a Bayesian decision fusion mechanism is established for hierarchical monitoring of variables, unit blocks and the global industrial plant, For fault isolation, a Bayesian contribution index is further developed and the corresponding isolation scheme is proposed. Simulation results on the plant-wide Tennessee Eastman process show that the distributed Bayesian network approach can be feasible for modeling large-scale process. Furthermore, the proposed hierarchical monitoring scheme provides informative multi-level reference results for further diagnosis and isolation. (C) 2017 Elsevier Ltd. All rights reserved.
机译:在这项工作中,提出了一种系统化的分布式贝叶斯网络方法,用于大规模工厂范围内的过程建模和监控。首先,为了解决大规模过程建模问题,将整个工厂范围内的过程分解为块,并针对不同的块构建贝叶斯网络。然后,通过适当的算法将分布式贝叶斯网络块融合成一个全局贝叶斯网络。对于故障检测,提出了一种缺失数据的状态估计方法,并在此基础上构造了72和Q统计量。最后,建立了一种贝叶斯决策融合机制,用于变量、单元块和全局工业设备的分层监测,对于故障隔离,进一步发展了贝叶斯贡献指数,并提出了相应的隔离方案。对全厂田纳西-伊斯曼过程的仿真结果表明,分布式贝叶斯网络方法对大规模过程建模是可行的。此外,所提出的分层监测方案为进一步诊断和隔离提供了信息丰富的多层次参考结果。(C) 2017爱思唯尔有限公司版权所有。

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