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Dynamic Process Safety Assessment Using Adaptive Bayesian Network with Loss Function

Md. Tanjin Amin, Faisal Khan

2022Industrial & Engineering Chemistry Research34 citationsDOI

Abstract

Fault detection and diagnosis (FDD) is crucial for dynamic process safety analysis. Integrated with failure prediction models, it enables us to realize how a deviation in process variable(s) can affect system safety (measured as risk). This work aims to overcome the challenges of nonlinear, non-Gaussian, and multimodal behavior of the processing systems to detect abnormal process operations, predict dynamic operational risk, and diagnose root cause of the abnormal situation. A methodology is proposed here by integrating different techniques. The artificial neural network (ANN) is used to identify process modes, while the Bayesian network (BN) is used for fault detection. How a fault will lead to a process failure is modeled using the event tree (ET), whereas time-dependent losses associated with the failure scenarios are assessed using the inverted normal loss function (INLF). A probability adaption mechanism is used to estimate the conditional probabilities in each time slice. The complexity of estimating conditional probabilities is handled using the copula theory. The proposed framework is validated using numerical, simulated, and industrial datasets. The results suggest that the developed framework can provide greater flexibility and wider applications.

Topics & Concepts

Computer scienceFault tree analysisBayesian networkFlexibility (engineering)Artificial neural networkEvent tree analysisGaussian processEvent treeData miningProcess (computing)Reliability engineeringConditional probabilityMachine learningGaussianEngineeringMathematicsStatisticsPhysicsOperating systemQuantum mechanicsFault Detection and Control SystemsAdvanced Statistical Process MonitoringRisk and Safety Analysis
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