2016 AIChE Annual Meeting
(682b) Using Resilience Principles for Prediction of Loss of Containment Events in Batch Operations
Authors
This paper presents a novel framework for incorporating both technical and social factors in an integrated approach - Process Resilience Analysis Framework and its four aspects: Early Detection, Error Tolerant Design, Plasticity and Recoverability. A combined framework for predictability, survivability and recoverability dynamic analysis is introduced with resilience metrics [4,5]. This work establishes and presents typical scenarios of Loss of Containment (LoC) events and resilience metrics for batch plant operations. The paper concludes with a discussion of the proposed integrated methodology for prediction of LoC events based on a mathematical model that explicitly accounts for process variations and safety constraints [6]. A detailed case study is utilized to illustrate the key ideas and a design optimization approach to obtain safer operational region at maximum average profit.
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