Publications by authors named "Bradley J Panckhurst"

We recorded the time series of location data from stationary, single-frequency (L1) GPS positioning systems at a variety of geographic locations. The empirical autocorrelation function of these data shows significant temporal correlations. The Gaussian white noise model, widely used in sensor-fusion algorithms, does not account for the observed autocorrelations and has an artificially large variance.

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We provide algorithms for inferring GPS (Global Positioning System) location and for quantifying the uncertainty of this estimate in real time. The algorithms are tested on GPS data from locations in the Southern Hemisphere at four significantly different latitudes. In order to rank the algorithms, we use the so-called log-score rule.

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Synopsis of recent research by authors named "Bradley J Panckhurst"

  • - Bradley J Panckhurst's recent research focuses on enhancing GPS data analysis, particularly in relation to noise modeling and real-time position estimation, published in the journal Sensors (Basel).
  • - His 2020 study on the "Comparison of Enhanced Noise Model Performance Based on Analysis of Civilian GPS Data" identifies that traditional Gaussian white noise models underestimate variance due to significant temporal correlations observed in the autocorrelation functions of GPS data.
  • - In another 2020 article, "Improving Real-Time Position Estimation Using Correlated Noise Models," Panckhurst developed algorithms that assess and enhance the accuracy of GPS location estimates while quantifying uncertainty, evaluating their performance across diverse Southern Hemisphere locations.