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Ekbåge, Daniel
Publications (7 of 7) Show all publications
Ekbåge, D., Nilsson, L., Håkansson, H. & Lin, P.-I. (2020). Multiple linear regression modelling of pulp and handsheet properties based on fiber morphology measurements and process data. BioResources, 15(1), 654-676
Open this publication in new window or tab >>Multiple linear regression modelling of pulp and handsheet properties based on fiber morphology measurements and process data
2020 (English)In: BioResources, E-ISSN 1930-2126, Vol. 15, no 1, p. 654-676Article in journal (Refereed) Published
Abstract [en]

A multiple regression model was evaluated to predict pulp and handsheet properties including z-directional tensile strength (z-strength) and Scott bond values. One hypothesis that was central for the model evaluation was that the crill content, as measured with ultraviolet and infrared lights, would improve the statistical models. A chemi-thermomechanical pulp (CTMP) mill designed with two parallel primary refining lines and a reject refiner was the basis for this study, and all process data and pulp samples were gathered from the specific process. Pulp was extracted from the process for an extended period from a position after the latency chest (primary refined pulp) and from the pulp-stream exiting the mill to the board machine (accept pulp). The crill content was positively correlated to the z-strength of the accept pulp, explaining 55% of the variance with a linear regression model with the drill content as the sole predictor. The estimation model of the z-strength of accept pulp was based on a combination of the crill content, freeness, fibril perimeter for longer fibers, and mean kink angle, and resulted in an R-2 of 0.79. When applying cross-validation to determine the predictive model performance, the highest R-2 obtained was 0.67. This latter model included the crill content, fibril perimeter, and mean kink angle as predictors.

Place, publisher, year, edition, pages
North Carolina State University, 2020
Keywords
CTMP, Fiber morphology, Multiple regression modelling, Handsheet, Z-strength, Scott bond, Crill
National Category
Chemical Engineering
Research subject
Chemical Engineering; Public Health Science
Identifiers
urn:nbn:se:kau:diva-77086 (URN)000511129100050 ()2-s2.0-85088375956 (Scopus ID)
Funder
Stora Enso
Available from: 2020-02-27 Created: 2020-02-27 Last updated: 2026-02-12Bibliographically approved
Ekbåge, D. (2020). Process modelling in pulp and paper manufacture: Application studies with aspects of energy efficiency and product quality. (Doctoral dissertation). Karlstads universitet
Open this publication in new window or tab >>Process modelling in pulp and paper manufacture: Application studies with aspects of energy efficiency and product quality
2020 (English)Doctoral thesis, comprehensive summary (Other academic)
Abstract [en]

The manufacture of pulp and paper is an energy intensive process configured of several unit processes that shape a network of flows of wood chips, chemical pulp, mechanical pulp, board and other important components. Improved energy efficiency supports sustainability of the process and the products. With the purpose of monitoring and controlling, information from multiple process and quality variables is continuously collected in the process data system. The data may contain information about underlying patterns and variability, and using statistical and multivariate data analysis can create valuable insights into how reduced variations and predictions of certain properties can be accomplished.

This thesis investigates the application of mathematical models for processes and products. These models can be used to increase the knowledge of the process characteristics and for quality predictions, to support process optimization and improved product quality.

Based on process data from a board machine including the stock preparation process, an evaporation system and a CTMP plant, process models have been developed with the aims of quality predictions, improved energy efficiency and reduced process variability. 

Abstract [en]

The manufacture of pulp and paper is an energy intensive process configured of several unit processes that shape a network of flows of wood chips, chemical pulp, mechanical pulp, board and other important components. Improved energy efficiency supports sustainability of the process and the products. With the purpose of monitoring and controlling, information from multiple process and quality variables is continuously collected in the process data system. The data may contain information about underlying patterns and variability, and using statistical and multivariate data analysis can create valuable insights into how reduced variations and predictions of certain properties can be accomplished.

This thesis investigates the application of mathematical models for processes and products. These models can be used to increase the knowledge of the process characteristics and for quality predictions, to support process optimization and improved product quality.

Based on process data from a board machine including the stock preparation process, an evaporation system and a CTMP plant, process models have been developed with the aims of quality predictions, improved energy efficiency and reduced process variability. 

Through application of modelling and simulation techniques a range of models were developed in several case studies. These techniques included both mechanistic and statistical models and were demonstrated using Pinch to study energy recovery in the evaporation plant, time series and multiple linear regression modelling for predictions in the CTMP process, flowsheet modelling of stock preparation dynamics and neural networks for board quality predictions. The process models that were developed in the case studies demonstrated how these methods can be applied to predict important properties, study systematic variations and improve the energy efficiency by describing the opportunities and limitations associated with these techniques.

Place, publisher, year, edition, pages
Karlstads universitet, 2020
Series
Karlstad University Studies, ISSN 1403-8099 ; 2020:19
Keywords
CTMP, freeness, process modelling, board machine, multiple effect evaporator
National Category
Chemical Engineering
Research subject
Environmental and Energy Systems
Identifiers
urn:nbn:se:kau:diva-77369 (URN)978-91-7867-113-7 (ISBN)978-91-7867-118-2 (ISBN)
Public defence
2020-09-04, 1B 364, Frödingsalen, Universitetsgatan 2, Karlstad, 10:15 (Swedish)
Opponent
Supervisors
Available from: 2020-08-14 Created: 2020-05-04 Last updated: 2026-02-12Bibliographically approved
Ekbåge, D., Nilsson, L. & Håkansson, H. (2019). Time series analysis of refining conditions and estimated pulp properties in a chemi-thermomechanical pulp process. BioResources, 14(3), 5451-5466
Open this publication in new window or tab >>Time series analysis of refining conditions and estimated pulp properties in a chemi-thermomechanical pulp process
2019 (English)In: BioResources, E-ISSN 1930-2126, Vol. 14, no 3, p. 5451-5466Article in journal (Refereed) Published
Abstract [en]

Frequently sampled process data from a conical disc refiner and infrequently sampled pulp data from a full scale chemi-thermomechanical pulp (CTMP) mill were evaluated to study autocovariance with aspects of potential dynamic modelling applicability. Two trial measurements with an online pulp analyzer at decreased sampling intervals were performed. For variability analysis, time-series containing up to one day of operational data were used. At the chip refiner, the clearest significant autocovariance was identified for the specific electricity consumption, based on the longer sequences. Most of the estimated pulp properties indicated low or non-significant autocovariance, limiting applicability of a specific dynamic model. A mill trial was conducted to investigate the impact from an increase in the conical disc gap on the specific electricity consumption and the resulting freeness. The response time from the gap change in the refiner to measured change in freeness was estimated at 19 min, which was approximately the hydraulic residence time in the latency chest. The relevance of this study lies in applicability of mill-data-driven modelling to capture the dynamics of a specific refining process. Through mill trials the sampling speed of pulp properties was more than doubled to gain insights into short term systematic variations by applying time-series-analysis.

Place, publisher, year, edition, pages
North Carolina State University, 2019
Keywords
Chemi-thermomechanical pulp (CTMP); Freeness; Dynamic modelling; conical disc refiner; Specific electricity consumption; Energy efficiency; Autocovariance
National Category
Paper, Pulp and Fiber Technology
Research subject
Environmental and Energy Systems
Identifiers
urn:nbn:se:kau:diva-65734 (URN)000473204700036 ()
Funder
Knowledge Foundation
Note

Artikeln ingick som manuskript i Ekbåges licentiatuppsats (2018) Process modelling based on data from an evaporation and a CTMP process

DOI 10.15376/biores.14.3.5451-5466

Available from: 2018-01-29 Created: 2018-01-29 Last updated: 2026-02-12Bibliographically approved
Ekbåge, D. (2018). Process modelling based on data from an evaporation and a CTMP process: Analysis of energy efficiency and process variability. (Licentiate dissertation). Karlstad: Karlstads universitet
Open this publication in new window or tab >>Process modelling based on data from an evaporation and a CTMP process: Analysis of energy efficiency and process variability
2018 (English)Licentiate thesis, comprehensive summary (Other academic)
Abstract [en]

The manufacture of pulp and paper is an energy intensive process configured of several unit processes that shape a network of flows of wood chips, chemical pulp, mechanical pulp, paperboard, steam and other important components. Improved energy efficiency supports sustainability of the process and the products. With the purpose of monitoring and controlling, information from multiple process and quality variables is continuously collected in the process data system. This data may be of time-varying nature and the variability might potentially span from seasonal to time-wise shorter variations and there are in some cases a need for predicting certain properties.

By applying models based on process data there is a potential to increase the knowledge of the process characteristics, investigate the applicability of predictive models and identify optimization opportunities. Based on data from an evaporation and a CTMP plant, process models have been developed with the aim of improving the energy efficiency and studying process variability.  

Place, publisher, year, edition, pages
Karlstad: Karlstads universitet, 2018. p. 56
Series
Karlstad University Studies, ISSN 1403-8099 ; 2018:7
Keywords
CTMP, process modelling, evaporation, energy efficiency
National Category
Chemical Engineering
Research subject
Environmental and Energy Systems
Identifiers
urn:nbn:se:kau:diva-65785 (URN)978-91-7063-836-7 (ISBN)978-91-7063-931-9 (ISBN)
Presentation
2018-03-21, Fryxellsalen, Karlstad, 10:15 (Swedish)
Opponent
Supervisors
Note

Artikel 3 ingick i licentiatuppsatsen som manuskript med titeln: "Time series analysis of refining conditions and estimated pulp properties in a CTMP-process with aspect of potential dynamic modelling applicability"

Available from: 2018-04-12 Created: 2018-02-02 Last updated: 2026-02-12Bibliographically approved
Ekbåge, D., Nilsson, L. & Håkansson, H. (2017). Trial measurements in a CTMP-process to perform time-series analysis of refining conditions and estimated pulp properties. In: : . Paper presented at 10th Fundamental Mechanical Pulp Research Seminar.
Open this publication in new window or tab >>Trial measurements in a CTMP-process to perform time-series analysis of refining conditions and estimated pulp properties
2017 (English)Conference paper, Oral presentation with published abstract (Other academic)
National Category
Paper, Pulp and Fiber Technology
Identifiers
urn:nbn:se:kau:diva-65786 (URN)
Conference
10th Fundamental Mechanical Pulp Research Seminar
Available from: 2018-01-29 Created: 2018-01-29 Last updated: 2026-02-12Bibliographically approved
Ekbåge, D. & Nilsson, L. (2016). Potential energy improvements in a multiple-effect evaporation system: Case studies of heat recovery. Nordic Pulp & Paper Research Journal, 31(4), 583-591
Open this publication in new window or tab >>Potential energy improvements in a multiple-effect evaporation system: Case studies of heat recovery
2016 (English)In: Nordic Pulp & Paper Research Journal, ISSN 0283-2631, E-ISSN 2000-0669, Vol. 31, no 4, p. 583-591Article in journal (Refereed) Published
Abstract [en]

The primary objective of this study was to quantify the amount of excess energy that is present in the evaporation system of an integrated pulp and paper-board mill and to analyze a number of energy recovery cases. These focus on improving the energy efficiency in the evaporation plant and are mainly based on the process data of performance tests from the full-scale production site. A computer script was developed in order to analyze the process streams and can be used to construct the Grand Composite Curve (GCC) of the evaporation system. In addition, the study identified seasonal variations in the potential excess of energy (higher in warmer weather and lower, or even non-existent, in colder) and suggestions are made as to how this energy may be used in a thermodynamically optimal way. In the case studies, the thermodynamically optimal method of recovering heat involved a combination of sensible heat and flash evaporation, indicating the maximum reduction in steam consumption. For the case of only utilizing sensible heat outside the evaporator system to pre-heat one of the liquor flows, the results indicated a lower reduction in steam but also a lower capital cost.

Place, publisher, year, edition, pages
Mittuniversitetet, 2016
Keywords
Black liquor, Evaporation, Multiple effect evaporator, Energy efficiency, Heat recovery, Kraft mill, Paper mill
National Category
Chemical Engineering
Research subject
Chemical Engineering
Identifiers
urn:nbn:se:kau:diva-62602 (URN)000389905200006 ()
Available from: 2017-08-09 Created: 2017-08-09 Last updated: 2026-02-12Bibliographically approved
Ekbåge, D.Performance of neural networks and feature selection algorithms on board strength predictions.
Open this publication in new window or tab >>Performance of neural networks and feature selection algorithms on board strength predictions
(English)Manuscript (preprint) (Other academic)
National Category
Chemical Engineering
Identifiers
urn:nbn:se:kau:diva-77372 (URN)
Available from: 2020-03-30 Created: 2020-03-30 Last updated: 2026-02-12Bibliographically approved
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