loading page

A Machine Learning-Based Approach to Support the Bottom-Up Design of Simple Emergent Behaviors in Systems-of-Systems
  • +3
  • Valdemar Vicente Graciano Neto,
  • Kanan Silva,
  • Arlindo Rodrigues Galvão Filho,
  • Aparna Kumari,
  • Flávio Eduardo Aoki Horita,
  • Mohamad Kassab
Valdemar Vicente Graciano Neto
Universidade Federal de Goias Instituto de Informatica
Author Profile
Kanan Silva
Universidade Federal do ABC

Corresponding Author:[email protected]

Author Profile
Arlindo Rodrigues Galvão Filho
Universidade Federal de Goias Instituto de Informatica
Author Profile
Aparna Kumari
Nirma University
Author Profile
Flávio Eduardo Aoki Horita
Universidade Federal do ABC
Author Profile
Mohamad Kassab
The Pennsylvania State University
Author Profile

Abstract

Systems-of-Systems (SoS) are composed of multiple independent systems called constituents that, together, achieve a set of goals by means of emergent behaviors. Those behaviors can be deliberately planned as a combination of the individual functionalities (herein named as features) provided by the constituents. Currently, SoS engineers heavily rely on their own creativity and prior experience to combine the features and design the behaviors. However, the limitation of human perception in complex scenarios can lead to engineering sub-optimized SoS arrangements, potentially causing waste of the resources, sub-optimal services and reduction in quality. To handle the aforementioned issues, this article presents a machine learning-based mechanism for inferring/suggesting emergent behaviors that could be designed over a given set of constituents. An initial dataset was elaborated from a systematic mapping to feed the mechanism and a web-application was developed as a means for experts to evaluate this mechanism. Results revealed that the algorithm developed is capable of predicting feasible emergent behaviors for different sets of constituents and the system can be useful in the sense of aiding SoS engineers and experts in the bottom-up design of these behaviors.
28 Sep 2023Submitted to Journal of Software: Evolution and Process
28 Sep 2023Submission Checks Completed
28 Sep 2023Assigned to Editor
08 Nov 2023Reviewer(s) Assigned