Abstract

Industrial archived process data represent a convenient source of information for data-driven models, such as artificial neural network (ANN), that can be used for safety and efficiency improvement like early or even predictive fault detection and diagnosis (FDD). Nonetheless, most of the data used for model generation are representative of the process nominal states and therefore are not enough for classification problems intended to determine abnormal process conditions. This work proposes the use of techniques to augment the original real data standards, dismissing the need for experiments that could jeopardize process safety. It uses the Monte Carlo technique to artificially increase the number of model inputs coupled to the nearest neighbor search (NNS) by geometric distances to consistently classify the generated patterns in normal or faulty statuses. Finally, a radial basis function neural network is trained with the augmented data. The methodology was validated by a study case in which 3381 pulp and paper industrial data points were expanded to monitor the formation of particles in a recovery boiler. Only 5.8% of the original process data were examples of faulty conditions, but the new expanded and balanced data collection leveraged the classification performance of the neural network, allowing its future use for monitoring purpose.

Highlights

  • Even though modern process control systems in chemical industries are highly automatic, the automation of abnormal situation management is yet to be accomplished

  • The Monte Carlo simulation generated 160,000 new patterns, creating specific faulty situations that are either impossible or too expensive to be forced to happen in the real world and too complex to be theoretically modeled by first principle equations

  • Computational time was measured in an Intel® CoreTM i7-8550U processor (Intel, Santa Clara, CA, USA, 2017) running at 2 GHz in the Windows 10 operating system (Microsoft, Redmond, WA, USA,.2015)

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Summary

Introduction

Even though modern process control systems in chemical industries are highly automatic, the automation of abnormal situation management is yet to be accomplished. According to Venkatasubramanian [1], the UK loses 27 billion dollars per year due to abnormal situations, and Vásquez and co-workers [2] report that the economic losses of the petrochemical industry in the USA are up to 20 billion dollars per year. Continuous process monitoring in association with fault detection and diagnosis (FDD) tools might contribute greatly to achieve operational excellence by optimizing maintenance interventions and avoiding unplanned shutdowns and even preventing accidents. Several approaches have been developed over the years to cope with the FDD issues in industrial processes. The size and complexity of chemical process industries and the increasing amount of data available in this digital era endorse

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