Semi-supervised online soft sensor maintenance experiences in the chemical industry. (July 2018)
- Record Type:
- Journal Article
- Title:
- Semi-supervised online soft sensor maintenance experiences in the chemical industry. (July 2018)
- Main Title:
- Semi-supervised online soft sensor maintenance experiences in the chemical industry
- Authors:
- Lu, Bo
Chiang, Leo - Abstract:
- Highlights: Proposed two key performance indicators (KPIs) to monitor soft sensors for possible extrapolation or performance degradation. Proposed updating the mean and variance of inputs and output to the PLS model while maintaining the same inner latent relationship to improve soft sensor performance. Proposed a soft sensor maintenance method using the two KPIs to selectively perform mean and variance update to prolong soft sensor lifespan while minimizing model refitting. The proposed maintenance strategy was tested using real industrial process data in several scenarios and demonstrated to be a robust mechanism to prolong soft sensor lifespans. Abstract: With the increasing availability of spectral, vibrational, thermal and other sensors, the challenge of "Big Data" in chemical processing industry is not only to analyze the data offline, but also to make use of the data online to improve process operation. To this end, accurate and reliable measurements or estimations of product quality are critical in today's demanding manufacturing environments. Data-driven soft sensors based on Projection to Latent Structure (PLS) methods are often used to model key quality variables using measureable inputs. However, most processes do not operate around a true steady state due to changes in equipment, feedstock, sensor and operating strategy. Therefore, soft sensor models need to be updated periodically. Current model maintenance approaches such as moving window update, recursiveHighlights: Proposed two key performance indicators (KPIs) to monitor soft sensors for possible extrapolation or performance degradation. Proposed updating the mean and variance of inputs and output to the PLS model while maintaining the same inner latent relationship to improve soft sensor performance. Proposed a soft sensor maintenance method using the two KPIs to selectively perform mean and variance update to prolong soft sensor lifespan while minimizing model refitting. The proposed maintenance strategy was tested using real industrial process data in several scenarios and demonstrated to be a robust mechanism to prolong soft sensor lifespans. Abstract: With the increasing availability of spectral, vibrational, thermal and other sensors, the challenge of "Big Data" in chemical processing industry is not only to analyze the data offline, but also to make use of the data online to improve process operation. To this end, accurate and reliable measurements or estimations of product quality are critical in today's demanding manufacturing environments. Data-driven soft sensors based on Projection to Latent Structure (PLS) methods are often used to model key quality variables using measureable inputs. However, most processes do not operate around a true steady state due to changes in equipment, feedstock, sensor and operating strategy. Therefore, soft sensor models need to be updated periodically. Current model maintenance approaches such as moving window update, recursive update in industry center around rebuilding the model using more recent process data. This approach is not robust enough in scenarios where process data is contaminated with outliers, downtime and other non-steady state transients. In this study, an alternative model update approach is developed. First, we adapted two key performance indicators (KPIs) for assessing the performance of the current soft sensor model. The Hotelling's T 2 based KPI is a predictive KPI that monitors for model extrapolations against future process data; the prediction residual based KPI then detects long term prediction degradation trends using a filtered prediction error. Second, we developed an update strategy using the robust mean and variance estimators of the inputs and outputs. Through case studies using industrial process data, this update method was demonstrated to be effective in improving prediction performance without rebuilding the PLS model from scratch. Lastly, the model update mechanism can be combined with both KPIs indicators. Through simulation of online behavior using industrial data, we showed that this update strategy effectively improved the prediction performance of the PLS soft sensor. In cases where the initial model was suboptimal, the update strategy also allowed for timely identification of underlying problems and alerted engineers of the need to rebuild the model. … (more)
- Is Part Of:
- Journal of process control. Volume 67(2018)
- Journal:
- Journal of process control
- Issue:
- Volume 67(2018)
- Issue Display:
- Volume 67, Issue 2018 (2018)
- Year:
- 2018
- Volume:
- 67
- Issue:
- 2018
- Issue Sort Value:
- 2018-0067-2018-0000
- Page Start:
- 23
- Page End:
- 34
- Publication Date:
- 2018-07
- Subjects:
- Soft sensor -- Model maintenance -- Multivariate statistics -- Inferential sensors -- Online models -- Process monitoring -- Adaptive sensors
Process control -- Periodicals
Fabrication -- Contrôle -- Périodiques
Process control
Periodicals
Electronic journals
660.281 - Journal URLs:
- http://www.sciencedirect.com/science/journal/09591524 ↗
http://www.elsevier.com/journals ↗ - DOI:
- 10.1016/j.jprocont.2017.03.013 ↗
- Languages:
- English
- ISSNs:
- 0959-1524
- Deposit Type:
- Legaldeposit
- View Content:
- Available online (eLD content is only available in our Reading Rooms) ↗
- Physical Locations:
- British Library DSC - 5042.645000
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British Library HMNTS - ELD Digital store - Ingest File:
- 17109.xml