Alberto Salvatore Colletto’s research while affiliated with Polytechnic University of Turin and other places

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Publications (1)


FIGURE 2. Front-end module operations and structure of the ANN.
Length of training (Dtr) and test (Dte) databases (days).
On the Use of Artificial Neural Networks to Predict the Quality of Wi-Fi Links
  • Article
  • Full-text available

January 2023

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9 Reads

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6 Citations

IEEE Access

Alberto Salvatore Colletto

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Gabriele Formis

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Gianluca Cena

One of the aspects that mainly characterize wireless networks is their apparent unpredictability. Although several attempts were made in the past years to define for them deterministic medium access techniques, for instance by having data exchanges scheduled by an access point, as a matter of fact they remain a partial solution and are unable to ensure the same behavior as wired infrastructures, since interference may also come from devices outside the network, which obey different rules. A possible way to cope with disturbance on air, both internal and external to the network, is to obtain some knowledge about it by analyzing what happened in the recent past. This information, usually expressed in terms of suitable metrics, is then employed to optimize network operation, for example by prioritizing time-sensitive traffic when needed. In the simplest approaches such metrics coincide with statistical indices evaluated on transmission outcomes, like the failure rate. In this paper we analyze a more sophisticated solution that relies on machine learning, and in particular on artificial neural networks, to predict the behavior of a Wi-Fi link in terms of its frame delivery ratio. Results confirm that more accurate predictions than simpler methods (e.g., moving average) are possible, even when training is partially independent from the specific conditions experienced on the different channels.

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Citations (1)


... Unfortunately, this value can be only evaluated "a posteriori", since it refers in part to outcomes of future attempts, and hence it cannot be used to optimize network operation at runtime. Conversely, it represents a good choice as the target for offline training of ML-based prediction models, e.g., artificial neural networks (ANN) [15]. If FDR evaluation is required to be carried out at runtime, no samples x j in the future (for which j > i) can be used. ...

Reference:

On the Accuracy and Precision of Moving Averages to Estimate Wi-Fi Link Quality
On the Use of Artificial Neural Networks to Predict the Quality of Wi-Fi Links

IEEE Access