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Mittermeier, L., Ng, A. H. C., Senington, R. & Jeusfeld, M. A. (2025). A Graph Database Approach for Supporting Knowledge-Driven and Simulation-Based Optimization in Industry and Academia. In: Sebastian Rank; Mathias Kühn; Thorsten Schmidt (Ed.), Simulation in Produktion und Logistik 2025: . Paper presented at 21. ASIM-Fachtagung Simulation in Produktion und Logistik, Dresden, Germany, 24–26 September 2025. Dresden: Technische Universität Dresden, Article ID 43.
Open this publication in new window or tab >>A Graph Database Approach for Supporting Knowledge-Driven and Simulation-Based Optimization in Industry and Academia
2025 (English)In: Simulation in Produktion und Logistik 2025 / [ed] Sebastian Rank; Mathias Kühn; Thorsten Schmidt, Dresden: Technische Universität Dresden , 2025, article id 43Conference paper, Published paper (Refereed)
Abstract [en]

With the increase in complexity of industrial systems it becomes more and more challenging to make well-grounded decisions for system design and operation. Following the concept of Virtual Factories with Knowledge-Driven Optimization (VF-KDO), this paper proposes a graph database approach to support knowledge-driven and simulation-based optimization. With the mapping of a VF-KDO ontology to a graph database, competency questions that facilitate traceability, transparency, and group decision making can be answered. This is exemplified with an industrial use case and a scenario form academic education.

Place, publisher, year, edition, pages
Dresden: Technische Universität Dresden, 2025
Series
ASIM Mitteilungen
Keywords
Graph Database, Knowledge-Driven Optimization, Simulation-Based Optimization, Knowledge graph, Optimization, Decision support, Heterogeneous data, Industrial use case, Academic use case, Supporting knowledge, Database systems, Knowledge retrieval, Virtual Manufacturing
National Category
Computer Sciences Production Engineering, Human Work Science and Ergonomics
Research subject
VF-KDO; Virtual Production Development (VPD); Information Systems
Identifiers
urn:nbn:se:his:diva-25970 (URN)10.25368/2025.276 (DOI)978-3-86780-806-4 (ISBN)978-3-86780-809-5 (ISBN)
Conference
21. ASIM-Fachtagung Simulation in Produktion und Logistik, Dresden, Germany, 24–26 September 2025
Funder
Knowledge Foundation
Note

CC BY-NC 4.0

The authors would like to acknowledge the Knowledge Foundation (KKS), Sweden, for providing funding to the VF-KDO profile (2018-2026) and FlexLink AB for its active partnership within the LINK subject area of VF-KDO. 

Available from: 2025-10-28 Created: 2025-10-28 Last updated: 2025-10-28Bibliographically approved
Okwir, S., Amouzgar, K. & Ng, A. H. C. (2025). Exploring prediction accuracy for optimal taxi times in airport operations using various machine learning models. Journal of Air Transport Management, 122, Article ID 102684.
Open this publication in new window or tab >>Exploring prediction accuracy for optimal taxi times in airport operations using various machine learning models
2025 (English)In: Journal of Air Transport Management, ISSN 0969-6997, E-ISSN 1873-2089, Vol. 122, article id 102684Article in journal (Refereed) Published
Abstract [en]

Understanding delay conditions and making accurate predictions are essential for optimizing turnaround and taxi times, which in turn reduces fuel consumption and lowers CO2 emissions in airport operations. However, while existing research has explored the impact of various prediction models on airport operations, it often overlooks the performance of Collaborative Decision Making (CDM) variables when discussing delay conditions. The implementation of CDM at major European airports has led to a milestone-based approach within airport operations, particularly in the turnaround operations, segmenting these operations with unique features. The purpose of this paper is to systematically investigate the efficacy of various machine learning techniques, such as linear regression, regression trees, random forests, elastic nets, and multi-layer perceptrons (MLP), in accurately predicting delay categories within the CDM framework. For this purpose, we analyzed CDM operational data from Madrid Airport, with at least 166,185 flight observations. Our findings illustrate a training methodology on how different models vary in prediction accuracy when applied to CDM operational data. We applied the SHAP (SHapley Additive exPlanations) method for feature importance analysis of all our independent variables to interpret the output of our machine learning models. Our results indicate that linear regression and elastic nets are the most effective machine learning models for achieving high prediction accuracy within the CDM framework. To test their robustness, we extended the analysis with predictions for better schedule times for taxi times on arrival and depature for selected runways using a different dataset. Our results contribute by showcasing a training methodology, highlighting how elastic net model as the best-performing model can be adopted for turnaround operations. In conclusion, we discuss the implications of our results for runway demand policies and use of airport resources such as gate & runaway allocation. 

Place, publisher, year, edition, pages
Elsevier, 2025
Keywords
Airport operations, Collaborative decision making, Machine learning, Prediction accuracy, Turnaround operations, airport, carbon emission, fuel consumption, taxi transport
National Category
Transport Systems and Logistics Computer Sciences Computational Mathematics
Research subject
Virtual Production Development (VPD)
Identifiers
urn:nbn:se:his:diva-24645 (URN)10.1016/j.jairtraman.2024.102684 (DOI)001343599800001 ()2-s2.0-85206799208 (Scopus ID)
Note

CC BY 4.0

© 2024 The Authors

Correspondence Address: S. Okwir; Division of Industrial Engineering and Management, Uppsala University, Uppsala, 75310, Sweden; email: simon.okwir@angstrom.uu.se

Available from: 2024-10-31 Created: 2024-10-31 Last updated: 2025-09-29Bibliographically approved
Senington, R., Ng, A. H. C., Mittermeier, L. & Bandaru, S. (2025). Graph Databases for Group Decision Making in Industry: A Comprehensive Literature Review. IEEE Access, 13, Article ID 3596632.
Open this publication in new window or tab >>Graph Databases for Group Decision Making in Industry: A Comprehensive Literature Review
2025 (English)In: IEEE Access, E-ISSN 2169-3536, Vol. 13, article id 3596632Article, review/survey (Refereed) Published
Abstract [en]

Virtual manufacturing, simulation, and optimization provide a wealth of knowledge about the possibilities of future production systems so as to support decision makers. However, this knowledge usually remains with a handful of domain experts, is not captured and is hard to share even within the same team. At the same time, simulations can benefit from the incorporation of linked data from real factories once a process is running. Graph databases provide a possible approach to storing and managing this form of interrelated heterogeneous data, with powerful querying capabilities that can identify important or interesting patterns that might otherwise remain hidden. Current research focuses on one or two aspects of this problem but does not address all at once, despite the potential benefits of the combination. This paper provides a broad literature review of the current directions within research with a special focus on how graphs can support finding knowledge within Virtual Factories, used by larger teams for industrial planning and optimization.

Place, publisher, year, edition, pages
IEEE, 2025
Keywords
Graph database, Industry 4.0, Knowledge graphs, Optimization, Simulation, Database systems, Decision making, Graph theory, Industrial plants, Industrial research, Knowledge graph, Query processing, Reviews, Virtual corporation, Virtual reality, Group Decision Making, Literature reviews, Manufacturing simulation, Optimisations, Production system, Simulation and optimization, Virtual manufacturing
National Category
Production Engineering, Human Work Science and Ergonomics Computer Sciences Computer Systems
Research subject
Virtual Production Development (VPD); VF-KDO
Identifiers
urn:nbn:se:his:diva-25767 (URN)10.1109/ACCESS.2025.3596632 (DOI)001565196100022 ()2-s2.0-105013130528 (Scopus ID)
Funder
Knowledge Foundation, 20180011
Note

CC BY 4.0

Received 27 May 2025, accepted 7 July 2025, date of publication 7 August 2025, date of current version 28 August 2025.

Correspondence Address: R. Senington; University of Skövde, School of Engineering Science, Skövde, 541 28, Sweden; email: richard.james.senington@his.se

This work was supported in part by the Virtual Factories with Knowledge-Driven Optimization (VF-KDO) Research Project under Grant 20180011, and in part by the Knowledge Foundation (KK-Stiftelsen).

Available from: 2025-08-28 Created: 2025-08-28 Last updated: 2025-11-05Bibliographically approved
Fu, S. & Ng, A. H. C. (2025). Industrial Oven Scheduling using Simulation-based Optimization and Artificial Intelligence. In: Anna Syberfeldt; Amos Ng; Philippe Geril (Ed.), 23rd International Industrial Simulation Conference, ISC 2025: . Paper presented at 23rd International Industrial Simulation Conference, ISC 2025, June 3-5, 2025, University of Skövde, Sweden (pp. 51-57). EUROSIS
Open this publication in new window or tab >>Industrial Oven Scheduling using Simulation-based Optimization and Artificial Intelligence
2025 (English)In: 23rd International Industrial Simulation Conference, ISC 2025 / [ed] Anna Syberfeldt; Amos Ng; Philippe Geril, EUROSIS , 2025, p. 51-57Conference paper, Published paper (Refereed)
Abstract [en]

Batching and scheduling orders for ovens in manufacturing is a typical combinatorial optimization problem, and it is critical for production efficiency and customer satisfaction. Customized settings and randomness happened in practical production including the maximum waiting time of an order, capacity thresholds, and availabilities of ovens make the problem more complex. In this paper, we build a simulation model in ten ovens for a heat-treatment process line of cutting tools according to real data from an industrial case, and the model embeds a detailed control logic that integrates existed scheduling methods with various dispatching rules and parameters. After determining an optimal number of running ovens in the production line by simulation-based optimization, we then propose a multi-objective optimization (MOO) enhanced deep reinforcement learning (DRL) approach to schedule orders for the ovens. The DRL agent learns to use an appropriate dispatching rule at a scheduling time point to select orders and formulate a batch. Along with reducing the average tardiness of the orders and maximizing the average effective utilization of the ovens, we find that the explored MOO enhanced DRL approach is more flexible and effective than the heuristic method. 

Place, publisher, year, edition, pages
EUROSIS, 2025
Keywords
Deep Reinforcement Learning, Discrete Event Simulation, Dispatching Rules, Multi-Objective Optimization, Oven Scheduling Problem, Combinatorial optimization, Computational methods, Customer satisfaction, Deep learning, Heuristic methods, Industrial ovens, Multiobjective optimization, Scheduling algorithms, Combinatorial optimization problems, Discrete-event simulations, Manufacturing IS, Multi-objectives optimization, Reinforcement learning approach, Reinforcement learnings, Scheduling problem, Simulation-based optimizations
National Category
Computer Sciences Computational Mathematics Transport Systems and Logistics
Research subject
Virtual Production Development (VPD)
Identifiers
urn:nbn:se:his:diva-25711 (URN)2-s2.0-105011588939 (Scopus ID)978-94-92859-35-8 (ISBN)
Conference
23rd International Industrial Simulation Conference, ISC 2025, June 3-5, 2025, University of Skövde, Sweden
Note

© 2025 EUROSIS-ETI

Available from: 2025-08-11 Created: 2025-08-11 Last updated: 2025-10-07
Iriondo Pascual, A., Holm, M., Ng, A. H. C., Larsson, F. & Olsson, J. (2025). Integrating Motion Capture and Digital Human Modelling Tools for Evaluating Worker Ergonomics - A Case Study in a Medium Size Enterprise Assembly Station. In: Masaaki Kurosu; Ayako Hashizume (Ed.), Human-Computer Interaction: Thematic Area, HCI 2025, Held as Part of the 27th HCI International Conference, HCII 2025, Gothenburg, Sweden, June 22–27, 2025, Proceedings, Part III. Paper presented at Thematic Area, HCI 2025, Held as Part of the 27th HCI International Conference, HCII 2025, Gothenburg, Sweden, June 22–27, 2025 (pp. 362-373). Cham: Springer
Open this publication in new window or tab >>Integrating Motion Capture and Digital Human Modelling Tools for Evaluating Worker Ergonomics - A Case Study in a Medium Size Enterprise Assembly Station
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2025 (English)In: Human-Computer Interaction: Thematic Area, HCI 2025, Held as Part of the 27th HCI International Conference, HCII 2025, Gothenburg, Sweden, June 22–27, 2025, Proceedings, Part III / [ed] Masaaki Kurosu; Ayako Hashizume, Cham: Springer, 2025, p. 362-373Conference paper, Published paper (Refereed)
Abstract [en]

Ergonomics evaluation methods are typically used for assessing risks of work-related musculoskeletal disorders (WMSDs) and the physical well-being of workers. Traditionally, these methods rely on assessors observing workers performing tasks and assessing potential risks based on observational ergonomics evaluation methods like the Rapid Entire Body Assessment (REBA) and the Rapid Upper Limb Assessment (RULA). While observational methods provide a structured risk assessment framework, they often depend on subjective evaluations, leading to inconsistent assessments between different ergonomists.

This study examines the application of motion capture technology to enhance the objectivity and efficiency of ergonomics evaluations and to enable the use of direct measurement ergonomics evaluation methods. The study was conducted at a medium-sized enterprise assembly station, where a worker’s tasks were recorded using motion capture technology. The captured motions were input into the Digital Human Modelling (DHM) tool IPS IMMA, and ergonomic assessments were performed using RULA, REBA, and the Arm Force Field (AFF) method.

The study followed a process comprising three main stages: data collection, data processing, and ergonomics evaluation. The recorded data were processed into XML format, imported into IPS IMMA, and exported to the Ergonomics in Production Platform (EPP) for RULA and REBA evaluations and to a script for AFF evaluations. The integration of these methods improved the precision and reliability of ergonomics assessments by replacing subjective estimates with direct measurements. The findings demonstrate the potential of combining motion capture with DHM tools to enhance ergonomics evaluation and support decisionmaking in workstation design and automation.

Place, publisher, year, edition, pages
Cham: Springer, 2025
Series
Lecture Notes in Computer Science, ISSN 0302-9743, E-ISSN 1611-3349 ; 15768
Keywords
Ergonomics Evaluation, Motion Capture, Digital Human Modelling, Manual Assembl
National Category
Production Engineering, Human Work Science and Ergonomics
Research subject
Virtual Production Development (VPD); User Centred Product Design; VF-KDO
Identifiers
urn:nbn:se:his:diva-25364 (URN)10.1007/978-3-031-93845-0_25 (DOI)2-s2.0-105008199624 (Scopus ID)978-3-031-93844-3 (ISBN)978-3-031-93845-0 (ISBN)
Conference
Thematic Area, HCI 2025, Held as Part of the 27th HCI International Conference, HCII 2025, Gothenburg, Sweden, June 22–27, 2025
Projects
EWASS - Empowering Human Workers for Assembly of Wire Harnesses
Funder
Knowledge Foundation, 2018-0011Vinnova, 2022-01279
Note

© The Author(s), under exclusive license to Springer Nature Switzerland AG 2025 

The authors appreciatively thank the support of the research project Virtual Factories with Knowledge-Driven Optimisation (2018-0011) funded by the Knowledge Foundation and the research project EWASS (2022-01279) funded by VINNOVA. The authors also thank Dan Högberg and Mikael Lebram for the support during the experiment and Nicholas La Delfa for providing software necessary for the experiment. With this support the research was made possible.

Available from: 2025-06-27 Created: 2025-06-27 Last updated: 2025-09-29Bibliographically approved
Mahmoodi, E., Fathi, M., Ng, A. H. C. & Dolgui, A. (2025). Predictive model-based multi-objective optimization with life-long meta-learning for designing unreliable production systems. Computers & Operations Research, 178, Article ID 107011.
Open this publication in new window or tab >>Predictive model-based multi-objective optimization with life-long meta-learning for designing unreliable production systems
2025 (English)In: Computers & Operations Research, ISSN 0305-0548, E-ISSN 1873-765X, Vol. 178, article id 107011Article in journal (Refereed) Published
Abstract [en]

Owing to the realization of advanced manufacturing systems, manufacturers have more flexibility in improving their processes through design decisions. Design decisions in production lines primarily involve two complex problems: buffer and resource allocation (B&RA). The main aim of B&RA is to determine the best location and size of buffers in the production line and optimally allocate production resources, such as operators and machines, to workstations. Inspired by a real-world case from the marine engine production industry, this study addresses B&RA in high-mix, low-volume hybrid flow shops (HFSs) with feed-forward quality inspection. These HFSs can be characterized by uncertainties in demand, material handling, processing times, and quality control. In this study, the production environment is modeled via discrete-event simulation, which reflects the features of the actual system without requiring unreasonable or restrictive assumptions. To replace the expensive simulation runs, five widely used regressor machine learning algorithms in manufacturing are trained on data sampled from the simulation model, and the best-performing algorithm is selected as the predictive model. To obtain high-quality solutions, the predictive model is coupled with an enhanced non-dominated sorting genetic algorithm (En-NSGA-II) that incorporates lifelong meta-learning and features a customized representation and a variable neighborhood search. Additionally, a post-optimality analysis using a pattern-mining algorithm is performed to generate knowledge for allocating buffers and operators based on the optimization results, thus providing promising managerial insights.

Place, publisher, year, edition, pages
Elsevier, 2025
Keywords
Multi-objective optimization, Simulation, Predictive model, Meta-learning, Buffer allocation, Resource allocation
National Category
Production Engineering, Human Work Science and Ergonomics
Research subject
Virtual Production Development (VPD)
Identifiers
urn:nbn:se:his:diva-24914 (URN)10.1016/j.cor.2025.107011 (DOI)001429237400001 ()2-s2.0-85217917894 (Scopus ID)
Projects
ACCURATE 4.0
Funder
Knowledge Foundation, 20200181
Note

CC BY 4.0

Corresponding author at: Division of Intelligent Production Systems, School of Engineering Science, University of Skövde, Skövde, 54128, Sweden. E-mail addresses: masood.fathi@his.se, fathi.masood@gmail.com (M. Fathi).

The authors gratefully acknowledge funding from the Sweden Knowledge Foundation (KKS) through the ACCURATE 4.0 project (grant agreement No. 20200181) and extend their gratitude to Volvo Penta of Sweden for their collaborative support throughout this study.

Available from: 2025-02-19 Created: 2025-02-19 Last updated: 2025-09-29Bibliographically approved
Mahmoodi, E., Fathi, M., Ng, A. H. C. & Nourmohammadi, A. (2025). Simulation-Based Knowledge-Driven Optimization for Efficient Production Sequencing in Hybrid Flow Shops. Paper presented at 6th International Conference on Industry 4.0 and Smart Manufacturing, ISM 2024, Prague - Czech Republic 20-22 November 2024. Procedia Computer Science, 253, 2547-2556
Open this publication in new window or tab >>Simulation-Based Knowledge-Driven Optimization for Efficient Production Sequencing in Hybrid Flow Shops
2025 (English)In: Procedia Computer Science, E-ISSN 1877-0509, Vol. 253, p. 2547-2556Article in journal (Refereed) Published
Abstract [en]

In today’s advanced manufacturing landscape, optimizing production processes is crucial for maintaining competitiveness. Among various optimization challenges, production sequencing in make-to-order hybrid flow shops (HFSs) stands out as particularly complex. This study investigates production sequencing in an HFS from the marine engine production industry, characterized by feed-forward quality inspection (FFQI). In FFQI, rejected engines must be repaired rather than scrapped. The complexity is further heightened by the fact that repair capacity is usually limited to a few engines and rejection at quality inspection leads to sequence scrambling at downstream stations. To address this issue, this study employs simulation-based, knowledge-driven optimization that utilizes real-world data on the rejection rates of different engine variants. This data is used to cluster the variants into three groups with different risks of rejection at quality inspection, informing production sequencing decisions. A non-dominated sorting genetic algorithm, enhanced with anti-block (AB) and anti-delay (AD) strategies (NSGAIIAB-AD), is developed to optimize throughput and delivery delay. AB aims to mitigate the succession of high-risk product variants, minimizing blockage probabilities in the quality inspection stage. AD prioritizes engines with earlier due dates from the same risk category to prevent unnecessary delivery delays. The study also evaluates the impact of extending planning horizons beyond the current 3-day standard. Results demonstrate the effectiveness of the AB and AD strategies, yielding a 10% improvement in average current throughput. Moreover, adopting a 5-day planning horizon leads to an 18% decrease in average delay compared to the current 3-day horizon.

Place, publisher, year, edition, pages
Elsevier, 2025
Keywords
Knowledge-driven, Simulation, Multi-objective, Optimization, Hybrid Flow Shop
National Category
Computational Mathematics Production Engineering, Human Work Science and Ergonomics
Research subject
Virtual Production Development (VPD)
Identifiers
urn:nbn:se:his:diva-24935 (URN)10.1016/j.procs.2025.01.314 (DOI)2-s2.0-105000516985 (Scopus ID)
Conference
6th International Conference on Industry 4.0 and Smart Manufacturing, ISM 2024, Prague - Czech Republic 20-22 November 2024
Projects
ACCURATE 4.0
Funder
Knowledge Foundation, 20200181
Note

CC BY-NC-ND 4.0

Part of special issue 6th International Conference on Industry 4.0 and Smart Manufacturing / Edited by Vittorio Solina, Francesco Longo, David Romero

We would like to express our gratitude to the Knowledge Foundation (KKS) in Sweden for their financial support through the ACCURATE 4.0 project under grant agreement number 20200181.

Available from: 2025-03-04 Created: 2025-03-04 Last updated: 2025-09-29Bibliographically approved
Westlund, K., Ng, A. H. C. & Nourmohammadi, A. (2025). Simulation-based multi-objective optimization to support delivery performance decisions in harvest scheduling and transport. International Journal of Forest Engineering
Open this publication in new window or tab >>Simulation-based multi-objective optimization to support delivery performance decisions in harvest scheduling and transport
2025 (English)In: International Journal of Forest Engineering, ISSN 1494-2119, E-ISSN 1913-2220Article in journal (Refereed) Epub ahead of print
Abstract [en]

Harvest scheduling and transport are crucial for the delivery performance of a wood supply chain, ensuring that product volumes are delivered on time and in the right quality. This paper suggests three delivery performance objectives for the wood supply chain: service level, lead time, and throughput. It presents a framework for optimizing these objectives by finding trade-off solutions using simulation-based multi-objective optimization. Due to the complexity of the wood supply chain, discrete-event simulation is used to evaluate delivery performance from harvesting to customer delivery. The harvest scheduling problem is formulated as a permutation optimization solved by a customized NSGA-II algorithm with a comparison of three crossover mechanisms implemented: Random Key Simulated Binary Crossover, Order Crossover, and Partially Mapped Crossover, specifically designed for general forestry permutation optimization problems. Analyzed with a heatmap for the visualization of the mapping of the decision space to the Pareto-optimal solutions, the results indicate that the Partially Mapped Crossover performs best. Other simulation-optimization generated data are processed and visualized in an interactive, web-based dashboard for decision-makers, such as forest managers, allowing them to analyze meta-heuristically optimized solutions in both the solution and decision spaces, guiding them to find the most suitable harvest schedules. 

Place, publisher, year, edition, pages
Taylor & Francis Group, 2025
Keywords
discrete event simulation, NSGA-II, Wood supply chains
National Category
Transport Systems and Logistics Computer Sciences
Research subject
Virtual Production Development (VPD)
Identifiers
urn:nbn:se:his:diva-25726 (URN)10.1080/14942119.2025.2533083 (DOI)001541424100001 ()2-s2.0-105012396387 (Scopus ID)
Funder
Swedish Foundation for Strategic Research, FID17-0043
Note

CC BY 4.0

© 2025 The Author(s). Published with license by Taylor & Francis Group, LLC.

Taylor & Francis Group an informa business

Published online: 31 Jul 2025

Correspondence Address: K. Westlund; Department of Civil and Industrial Engineering, Uppsala University, Uppsala Science Park, Uppsala, 751 21, Sweden; email: karin.westlund@angstrom.uu.se

We would like to express our gratitude to Professor Kalyanmoy Deb and doctoral candidate Ritam Guha of the Michigan State University, US, for their engaging discussions, which significantly enriched our research. We are also grateful to Dr. Lars Eliasson at Skogforsk for his meticulous proofreading.

This work was supported by the Swedish Foundation for Strategic Research [FID17-0043].

Available from: 2025-08-14 Created: 2025-08-14 Last updated: 2025-09-29Bibliographically approved
Amouzgar, K., Wang, W., Eynian, M. & Ng, A. H. C. (2025). Smart process planning of crankshaft machining through multiple objectives optimization. Paper presented at 58th CIRP Conference on Manufacturing Systems 2025, Next Generation of Manufacturing Systems, University of Twente, The Netherlands, 13 - 16 April 2025. Procedia CIRP, 134, 241-246
Open this publication in new window or tab >>Smart process planning of crankshaft machining through multiple objectives optimization
2025 (English)In: Procedia CIRP, E-ISSN 2212-8271, Vol. 134, p. 241-246Article in journal (Refereed) Published
Abstract [en]

The formulation and selection of parameters and sequences in crankshaft production present challenges that are both demanding and time-intensive. This study introduces an innovative approach to intelligent process planning in crankshaft machining lines using multi-turret machines. Emphasis is placed on automating process planning through multi-objective optimization of critical decisions such as process parameters, operation sequencing, and tool positioning on turret magazines. The principal objectives addressed include minimizing machining and non-machining time, reducing costs by optimizing tool life, and enhancing product quality through optimal surface roughness. By automating these decision points, the proposed framework reduces manual intervention and aligns with Industry 4.0 goals for adaptive, data-driven manufacturing. Additionally, we discuss the potential future incorporation of artificial intelligence agents to dynamically refine parameters and enable adaptive planning.

Place, publisher, year, edition, pages
Elsevier, 2025
Keywords
Industry 4.0, multi-objective optimizaiton, machining, smart process planning
National Category
Production Engineering, Human Work Science and Ergonomics Manufacturing, Surface and Joining Technology
Research subject
Virtual Production Development (VPD); Virtual Manufacturing Processes (VMP)
Identifiers
urn:nbn:se:his:diva-25472 (URN)10.1016/j.procir.2025.03.018 (DOI)2-s2.0-105009400889 (Scopus ID)
Conference
58th CIRP Conference on Manufacturing Systems 2025, Next Generation of Manufacturing Systems, University of Twente, The Netherlands, 13 - 16 April 2025
Funder
Knowledge Foundation
Note

CC BY-NC-ND

Corresponding author:

Tel.: +46-18-4710000. E-mail address: kaveh.amouzgar@angstrom.uu.se

This work was funded by the Knowledge Foundation, Sweden, through the Profile project, Virtual Factories Knowledge-Driven Optimisation (VF-KDO). Dr. Tobias Andersson is acknowledged for developing the tool wear FEM simulation.

Alt. ScopusID: 105009400889

Available from: 2025-07-10 Created: 2025-07-10 Last updated: 2025-11-07Bibliographically approved
Mittermeier, L., Ng, A. H. C., Senington, R., Fässberg, T. & Johansson, D. (2025). Supporting Knowledge-Driven Optimization and Decision Support with a Graph Database: An Industrial Use Case. In: Anna Syberfeldt; Amos Ng; Philippe Geril (Ed.), 23rd International Industrial Simulation Conference, ISC 2025: . Paper presented at 23rd International Industrial Simulation Conference, ISC 2025, June 3-5, 2025, University of Skövde, Sweden (pp. 71-78). EUROSIS
Open this publication in new window or tab >>Supporting Knowledge-Driven Optimization and Decision Support with a Graph Database: An Industrial Use Case
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2025 (English)In: 23rd International Industrial Simulation Conference, ISC 2025 / [ed] Anna Syberfeldt; Amos Ng; Philippe Geril, EUROSIS , 2025, p. 71-78Conference paper, Published paper (Refereed)
Abstract [en]

In recent years graph databases (GDBs) have become popular for managing large amounts of data. Especially the capability to integrate and link heterogeneous data is a driving factor for its success. This makes it a promising tool to support knowledge driven optimization (KDO), which involves various types of data, information, and artifacts. In particular, the link between simulation model, optimization algorithms with their parameters, results, and preferences of the stakeholders is interesting for investigation and traceability. In this paper, we propose a simple ontology as a schema for a KDO graph database and demonstrate how it can be used with an industrial use case. Furthermore, we highlight the ability to add lower level model information from an industrial use case to the GDB. 

Place, publisher, year, edition, pages
EUROSIS, 2025
Keywords
Graph Database, Knowledge-Driven Optimization, Simulation-Based Optimization, Knowledge graph, Optimization, Decision supports, Driving factors, Heterogeneous data, Industrial use case, Large amounts of data, Optimisations, Simulation-based optimizations, Supporting knowledge, Database systems
National Category
Computer Sciences Computer Systems
Research subject
Virtual Production Development (VPD)
Identifiers
urn:nbn:se:his:diva-25715 (URN)2-s2.0-105011590838 (Scopus ID)978-94-92859-35-8 (ISBN)
Conference
23rd International Industrial Simulation Conference, ISC 2025, June 3-5, 2025, University of Skövde, Sweden
Note

© 2025 EUROSIS-ETI

Available from: 2025-08-11 Created: 2025-08-11 Last updated: 2025-10-07
Projects
Holistic Simulation Optimisation for Sustainable and Profitable Production [2009-01592_Vinnova]; University of SkövdeVirtual factories with knowledge-driven optimization (VF-KDO); University of Skövde; Publications
Mittermeier, L., Ng, A. H. C., Senington, R. & Jeusfeld, M. A. (2025). A Graph Database Approach for Supporting Knowledge-Driven and Simulation-Based Optimization in Industry and Academia. In: Sebastian Rank; Mathias Kühn; Thorsten Schmidt (Ed.), Simulation in Produktion und Logistik 2025: . Paper presented at 21. ASIM-Fachtagung Simulation in Produktion und Logistik, Dresden, Germany, 24–26 September 2025. Dresden: Technische Universität Dresden, Article ID 43. Iriondo Pascual, A., Högberg, D., Lebram, M., Spensieri, D., Mårdberg, P., Lämkull, D. & Ekstrand, E. (2025). Assessment of Manual Forces in Assembly of Flexible Objects by the Use of a Digital Human Modelling Tool—A Use Case. In: Russell Marshall; Steve Summerskill; Gregor Harih; Sofia Scataglini (Ed.), Advances in Digital Human Modeling II: Proceedings of the 9th International Digital Human Modeling Symposium, DHM 2025, July 29-31, 2025, Loughborough, UK. Paper presented at 9th International Digital Human Modeling Symposium, DHM 2025, July 29-31, 2025, Loughborough, UK (pp. 1-10). Cham: SpringerHögberg, D., Iriondo Pascual, A. & Lebram, M. (2025). Comparison of Recommended Force Limits for Female Work Population Given by the Assembly Specific Force Atlas and the Arm Force Field Method. In: Russell Marshall; Steve Summerskill; Gregor Harih; Sofia Scataglini (Ed.), Advances in Digital Human Modeling II: Proceedings of the 9th International Digital Human Modeling Symposium, DHM 2025, July 29-31, 2025, Loughborough, UK. Paper presented at 9th International Digital Human Modeling Symposium, DHM 2025, July 29-31, 2025, Loughborough, UK (pp. 225-237). Cham: SpringerSenington, R., Ng, A. H. C., Mittermeier, L. & Bandaru, S. (2025). Graph Databases for Group Decision Making in Industry: A Comprehensive Literature Review. IEEE Access, 13, Article ID 3596632. Iriondo Pascual, A., Holm, M., Ng, A. H. C., Larsson, F. & Olsson, J. (2025). Integrating Motion Capture and Digital Human Modelling Tools for Evaluating Worker Ergonomics - A Case Study in a Medium Size Enterprise Assembly Station. In: Masaaki Kurosu; Ayako Hashizume (Ed.), Human-Computer Interaction: Thematic Area, HCI 2025, Held as Part of the 27th HCI International Conference, HCII 2025, Gothenburg, Sweden, June 22–27, 2025, Proceedings, Part III. Paper presented at Thematic Area, HCI 2025, Held as Part of the 27th HCI International Conference, HCII 2025, Gothenburg, Sweden, June 22–27, 2025 (pp. 362-373). Cham: SpringerPerez Luque, E., Iriondo Pascual, A., Högberg, D., Lamb, M. & Brolin, E. (2025). Simulation-based multi-objective optimization combined with a DHM tool for occupant packaging design. International Journal of Industrial Ergonomics, 105, Article ID 103690. Kühne, T. & Jeusfeld, M. A. (2025). Supporting sound multi-level modeling — Specification and implementation of a multi-dimensional modeling approach. Data & Knowledge Engineering, 160(November 2025), Article ID 102481. Iriondo Pascual, A., Eklund, M. & Högberg, D. (2025). Towards automated hand force predictions: Use of random forest to classify hand postures. In: Sangeun Jin; Jeong Ho Kim; Yong-Ku Kong; Jaehyun Park; Myung Hwan Yun (Ed.), Proceedings of the 22nd Congress of the International Ergonomics Association, Volume 2: Better Life Ergonomics for Future Humans (IEA 2024). Paper presented at 22nd Triennial Congress of the International Ergonomics Association (IEA), Jeju, South Korea, August 25 to 29, 2024 (pp. 201-206). Singapore: SpringerDanielsson, O., Ettehad, M. & Syberfeldt, A. (2024). Augmented Reality Smart Glasses for Industry: How to Choose the Right Glasses. In: Joel Andersson; Shrikant Joshi; Lennart Malmsköld; Fabian Hanning (Ed.), Sustainable Production through Advanced Manufacturing, Intelligent Automation and Work Integrated Learning: Proceedings of the 11th Swedish Production Symposium (SPS2024). Paper presented at 11th Swedish Production Symposium, SPS 2024 Trollhättan 23 April 2024 through 26 April 2024 (pp. 289-298). IOS PressNourmohammadi, A., Fathi, M. & Ng, A. H. C. (2024). Balancing and scheduling human-robot collaborated assembly lines with layout and objective consideration. Computers & industrial engineering, 187, Article ID 109775.
Organisations
Identifiers
ORCID iD: ORCID iD iconorcid.org/0000-0003-0111-1776

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