2021
DOI: 10.1049/mia2.12163
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The performance of in‐building measurement‐based path loss modelling using kriging

Abstract: An accuracy evaluation analysis of a novel in-building measurement-based path loss prediction narrowband model is presented here, comparing the performance of Krigingaided shadowing prediction against the most traditional assumption of slow fading as a random variable and a classical estimation derived from linear interpolation. Extensive radio measurements were employed using distinct samples to calibrate (tuning dataset) and validate (testing dataset) the model. Path loss predictions are made over the testin… Show more

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Cited by 10 publications
(19 citation statements)
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“…This percentage varies from 10% to 100% in order to validate the optimal quantity to consider in model tuning. This percentage is extracted according to the method validated in [10], which limits samples to classification zones defined by concentric circles every 5 m from the position of the transmitting antenna, and the corresponding a% is extracted from each classification zone. 3) Through the methodology described in Section II, the estimated path loss is calculated at each RL grid location.…”
Section: Resultsmentioning
confidence: 99%
See 2 more Smart Citations
“…This percentage varies from 10% to 100% in order to validate the optimal quantity to consider in model tuning. This percentage is extracted according to the method validated in [10], which limits samples to classification zones defined by concentric circles every 5 m from the position of the transmitting antenna, and the corresponding a% is extracted from each classification zone. 3) Through the methodology described in Section II, the estimated path loss is calculated at each RL grid location.…”
Section: Resultsmentioning
confidence: 99%
“…To quantify and describe the spatial variability Kriging preliminary employs the variogram as part of the variography process, afterward, Kriging interpolates the shadowing values at a random location 𝑥 & from 𝑦 to obtain unknown shadowing samples according to the variogram outcomes. Then, as a result of this postprocessing, a shadowing grid is generated for the target area, for a better understanding, this process is described in detail in [10]. Finally, the estimated path loss process is performed and is calculated as follows…”
Section: E Diago-mentioning
confidence: 99%
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“…where N(h) is the number of pairs of measured locations within the lag interval h selected to estimate the path loss at an unmeasured point with c0 3D coordinates, in other words, h is the size of a distance class into which pairs of locations N(h) are grouped. An extensive mathematical description of the variography and ordinary Kriging process is described in [14].…”
Section: Path Loss Predictionsmentioning
confidence: 99%
“…In addition, and towards decrease the quantity of required samples to train Kriging, the 20 -120 samples were extracted with a percentage varying from 10 -60 percent. The boundary of 60 percent was selected according to the findings reported in [14]. The datasets are selected according to the three cases described in Section III, e.g., for case 1 in Table II, if 60 percent is selected to extract samples, it is ensured that this percentage is randomly-extracted from each zone of the first case (illustrated in Fig.…”
Section: Path Loss Predictionsmentioning
confidence: 99%