Self-adaptive business processes: a hybrid approach for the resolution of adaptation needs

Author(s):  
Jamila Oukharijane ◽  
Mohamed Amine Chaabâne ◽  
Imen Ben Said ◽  
Eric Andonoff ◽  
Rafik Bouaziz
Author(s):  
Jamila Oukharijane ◽  
Mohamed Amine Chaâbane ◽  
Imen Ben Said ◽  
Eric Andonoff ◽  
Rafik Bouaziz

2015 ◽  
Vol 78 ◽  
pp. 374-385 ◽  
Author(s):  
Jianzhou Wang ◽  
Jianming Hu ◽  
Kailiang Ma ◽  
Yixin Zhang

2019 ◽  
Vol 5 (2) ◽  
pp. 6
Author(s):  
Lennart Hammerström ◽  
Giebe Carsten

In this essay, we develop a decision model for the economic impact of Industry 4.0 technologies/IIoT devices on established business processes by testing two hypotheses concerning a decision model based on production functions. New methods to aid in the design and modelling of production systems that are able to rapidly reconfigure and that are self-adaptive in response to disruption (both by humans and for automated systems) are required (Sanderson, Chaplin, - Ratchev, 2019).Mass customization, shorter product lifecycles, smaller production batches and higher production variability lead to the requirement for manufacturing systems to be rapidly reconfigurable and self-adaptive in response to disruption, We propose to recover and apply available and established techniques to evaluate and assess the rationale of technologies before they are implemented to improve the decision process. We consider the investment into IIoT devices from a microeconomic perspective as a long-run problem for companies and therefore consider those problems to be reviewed with adequate methodologies to build a consistent decision model. Investing into a factor (such as an IIoT device) is only economically reasonable as long as this factor produces a benefit, otherwise the investment infringes upon economic feasibility (Fandel 2005).


Algorithms ◽  
2020 ◽  
Vol 13 (10) ◽  
pp. 244
Author(s):  
Zeeshan Tariq ◽  
Naveed Khan ◽  
Darryl Charles ◽  
Sally McClean ◽  
Ian McChesney ◽  
...  

Real-world business processes are dynamic, with event logs that are generally unstructured and contain heterogeneous business classes. Process mining techniques derive useful knowledge from such logs but translating them into simplified and logical segments is crucial. Complexity is increased when dealing with business processes with a large number of events with no outcome labels. Techniques such as trace clustering and event clustering, tend to simplify the complex business logs but the resulting clusters are generally not understandable to the business users as the business aspects of the process are not considered while clustering the process log. In this paper, we provided a multi-stage hierarchical framework for business-logic driven clustering of highly variable process logs with extensively large number of events. Firstly, we introduced a term contrail processes for describing the characteristics of such complex real-world business processes and their logs presenting contrail-like models. Secondly, we proposed an algorithm Novel Hierarchical Clustering (NoHiC) to discover business-logic driven clusters from these contrail processes. For clustering, the raw event log is initially decomposed into high-level business classes, and later feature engineering is performed exclusively based on the business-context features, to support the discovery of meaningful business clusters. We used a hybrid approach which combines rule-based mining technique with a novel form of agglomerative hierarchical clustering for the experiments. A case-study of a CRM process of the UK’s renowned telecommunication firm is presented and the quality of the proposed framework is verified through several measures, such as cluster segregation, classification accuracy, and fitness of the log. We compared NoHiC technique with two trace clustering techniques using two real world process logs. The discovered clusters through NoHiC are found to have improved fitness as compared to the other techniques, and they also hold valuable information about the business context of the process log.


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