Skip to content
#

distance-correlations

Here are 4 public repositories matching this topic...

Raw RINEX validation of distance-structured correlations in GNSS atomic clocks. Detects exponential decay signatures (λ≈1-4 km) in 539 stations using SPP with broadcast ephemerides, eliminating processing artifact hypothesis. Shows E-W>N-S anisotropy, CMB alignment, orbital coupling. TEP-GNSS Paper 3.

  • Updated Dec 30, 2025
  • Python

Multi-center analysis of 62.7M GNSS clock measurements revealing distance-structured correlations with exponential decay (λ = 3,330-4,549 km), consistent with screened scalar field predictions from the Temporal Equivalence Principle

  • Updated Dec 30, 2025
  • Python

25-year analysis of 165.2M GNSS clock measurements revealing persistent velocity-dependent correlations, orbital coupling (r=-0.888), 18.6-year lunar nutation detection, and CMB frame alignment, confirming decadal stability of TEP signatures

  • Updated Dec 30, 2025
  • Python

Independent optical test of the Temporal Equivalence Principle using 11 years of LAGEOS satellite laser ranging data, revealing distance-structured correlations and spectral signatures consistent with conformal scalar field coupling

  • Updated Dec 30, 2025
  • Python

Improve this page

Add a description, image, and links to the distance-correlations topic page so that developers can more easily learn about it.

Curate this topic

Add this topic to your repo

To associate your repository with the distance-correlations topic, visit your repo's landing page and select "manage topics."

Learn more