Login / Signup

The Impact of Rate Adaptation Algorithms on Wi-Fi-Based Factory Automation Systems.

Tommaso FedulloFederico TramarinStefano Vitturi
Published in: Sensors (Basel, Switzerland) (2020)
Factory automation systems based on the IEEE 802.11 Wi-Fi standard may benefit from its Multi-Rate Support (MRS) feature, which allows for dynamically selecting the most suitable transmission rate for the targeted application context. The MRS is implemented by means of rate adaptation algorithms (RAAs), which has already demonstrated to be effective to improve both timeliness and reliability, which are typically strict requirements of industrial real-time communication systems. Indeed, some of such algorithms have been specifically conceived for reliable real-time communications. However, the computational complexity of such algorithms has not been effectively investigated yet. In this paper, we address such an issue, particularly focusing on the execution times of some specific rate adaptation algorithms, as well as on their impact on the automation tasks. In this respect, after a formal description of the algorithms, we present the outcomes of an extensive experimental session, which includes practical measurements and realistic simulations. The obtained results are encouraging, since the measured execution times indicate that rate adaptation algorithms can be profitably adopted by industrial automation systems, allowing for improving their reliability and timeliness without impacting on the overall performance.
Keyphrases
  • machine learning
  • deep learning
  • heavy metals
  • wastewater treatment
  • type diabetes
  • risk assessment
  • mass spectrometry
  • adipose tissue
  • metabolic syndrome
  • molecular dynamics
  • high intensity
  • glycemic control