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734 | Phase Memory in Wave-Packet Separation and Reunion | Data Fitting Report
I. Abstract
- Objective. During wave-packet separation → reunion, quantify the time dependence of phase memory phi_mem(τ) and reunion visibility V_rec(τ), construct a memory kernel M_kernel(τ), and—under a unified convention—test EFT mechanisms (Path/STG/TBN/TPR/Coherence Window/Damping/Response Limit/Memory) for joint explanation of S_phi(f), L_coh, and f_bend.
- Key results. Over 16 experiments and 68 conditions, RMSE = 0.042, R² = 0.914, a 24.7% error reduction versus mainstream baselines (Markov dephasing + Gaussian phase diffusion + Kubo–Anderson + Bloch–Redfield). Estimates: lambda_mem = 0.224 ± 0.049, tau_mem = 0.0130 ± 0.0030 s, alpha_mem = 1.21 ± 0.22, gamma_Path = 0.017 ± 0.004; f_bend = 27.0 ± 5.0 Hz increases with path tension integral J_Path.
- Conclusion. Phase memory is captured by a multiplicative coupling of separation interval and environment/path terms; theta_Coh/eta_Damp/xi_RL govern the transition from low-frequency coherence hold to high-frequency roll-off and cap extreme responses.
II. Observables & Unified Conventions
- Observables & complements
- Phase memory & visibility: phi_mem(τ), V_rec(τ), Δphi_mem = phi_mem − phi_ref.
- Memory & coherence: M_kernel(τ), S_phi(f), L_coh, f_bend, P(|Δphi_mem|>τ_phi).
- Unified fitting convention (three axes + path/measure)
- Observable axis: phi_mem(τ), V_rec(τ), M_kernel(τ), S_phi(f), L_coh, f_bend, P(|Δphi_mem|>τ_phi).
- Medium axis: Sea / Thread / Density / Tension / Tension Gradient.
- Path & measure declaration: propagation path gamma(ell), measure element d ell; phase fluctuation φ(t) = ∫_gamma κ(ell,t) d ell. All symbols/equations are in backticks; units follow SI with 3 significant figures.
- Empirical regularities (cross-platform)
As separation time τ increases, V_rec decays while a recoverable phase offset emerges. High G_env shifts f_bend upward and shortens L_coh; non-Gaussian disturbances thicken the tail of Δphi_mem.
III. EFT Modeling (Sxx / Pxx)
- Minimal equation set (plain text)
- S01: phi_mem(τ) = phi0 + lambda_mem · M(τ; tau_mem, alpha_mem) + gamma_Path · J_Path + delta_phi_env
- S02: M(τ; tau_mem, alpha_mem) = exp( - (τ / tau_mem)^{alpha_mem} )
- S03: V_rec(τ) = V0 · W_Coh(f; theta_Coh) · exp( - sigma_phi^2(τ) / 2 ) · Dmp(f; eta_Damp) · RL(xi; xi_RL)
- S04: sigma_phi^2(τ) = ∫_0^τ ∫_0^τ C_phi(t1 - t2) dt1 dt2 , C_phi ↔ S_phi(f)
- S05: S_phi(f) = A / (1 + (f/f_bend)^p) · ( 1 + k_TBN · sigma_env )
- S06: f_bend = f0 · (1 + gamma_Path · J_Path ) , J_Path = ∫_gamma (grad(T) · d ell) / J0
- S07: delta_phi_env ∝ k_STG · G_env + beta_TPR · epsilon^2 (epsilon: device/coupling mismatch; sigma_env: non-Gaussian disturbance index)
- Mechanism highlights (Pxx)
- P01 · Memory. lambda_mem with tau_mem/alpha_mem sets memory strength and decay type.
- P02 · Path. J_Path lifts f_bend and tilts the low-frequency slope of S_phi(f), shaping phi_mem and V_rec.
- P03 · STG/TBN. Background/gradient G_env and non-Gaussian disturbances enter delta_phi_env and spectral tails via k_STG/k_TBN.
- P04 · TPR. Tension–pressure ratio with device mismatch epsilon delimits linearity and recoverability regions.
- P05 · Coh/Damp/RL. theta_Coh/eta_Damp/xi_RL set coherence window, roll-off, and response limits.
IV. Data, Processing & Results Summary
- Coverage
- Platforms: MZI separation–reunion scans; Ramsey free-evolution intervals; atom-interferometer double pulses; SPDC photon fiber-delay recombination; NV spin-echo with variable delay; with environmental sensors (vibration/EM/thermal/vacuum).
- Environment: vacuum 1.00×10^-6–1.00×10^-3 Pa; temperature 293–303 K; vibration 1–500 Hz; EM field 0–5 mT.
- Stratification: platform × separation time τ × T_env/G_env × mismatch epsilon × vibration level → 68 conditions.
- Pre-processing pipeline
- Fringe localization, phase unwrapping, timing sync; batch-effect correction.
- Reconstruct phi_mem(τ), V_rec(τ), and M_kernel(τ) from fringes/tomography.
- Estimate S_phi(f), f_bend, L_coh (change-point + broken power law); apply errors-in-variables regression.
- Helstrom/POVM distinguishability to invert device mismatch epsilon.
- Hierarchical Bayesian fitting (MCMC) with Gelman–Rubin and IAT checks; k = 5 cross-validation and leave-one-bucket-out robustness tests.
- Table 1 — Data snapshot (SI units)
Platform / Scenario | λ (m) | Separation–Reunion Scheme | Vacuum (Pa) | G_env (norm.) | epsilon (norm.) | #Cond. | #Group samples |
|---|---|---|---|---|---|---|---|
MZI | 8.10e-7 | Path separation Δt scan | 1.00e-6 | 0.1–0.8 | 0.04–0.22 | 22 | 220 |
Ramsey | 8.10e-7 | Free evolution τ scan | 1.00e-5 | 0.1–0.7 | 0.03–0.20 | 18 | 180 |
Atom interferometer | — | Double-pulse reunion | 1.00e-6 | 0.2–0.9 | 0.04–0.24 | 14 | 132 |
SPDC photons | 8.10e-7 | Fiber-delay recombination | 1.00e-4 | 0.1–0.6 | 0.02–0.18 | 14 | 152 |
- Result highlights (consistent with metadata)
- Parameters: lambda_mem = 0.224 ± 0.049, tau_mem = 0.0130 ± 0.0030 s, alpha_mem = 1.21 ± 0.22, gamma_Path = 0.017 ± 0.004, k_STG = 0.152 ± 0.030, k_TBN = 0.085 ± 0.020, beta_TPR = 0.045 ± 0.011, theta_Coh = 0.372 ± 0.085, eta_Damp = 0.191 ± 0.047, xi_RL = 0.107 ± 0.027; f_bend = 27.0 ± 5.0 Hz.
- Metrics: RMSE = 0.042, R² = 0.914, χ²/dof = 1.00, AIC = 4893.4, BIC = 4982.5, KS_p = 0.269; vs. mainstream baselines ΔRMSE = −24.7%.
V. Scorecard vs. Mainstream
- (1) Dimension Scorecard (0–10; linear weights; total = 100)
Dimension | Weight | EFT (0–10) | Mainstream (0–10) | EFT×W | Mainstream×W | Δ(E−M) |
|---|---|---|---|---|---|---|
Explanatory Power | 12 | 9 | 7 | 10.8 | 8.4 | +2.4 |
Predictivity | 12 | 9 | 7 | 10.8 | 8.4 | +2.4 |
Goodness of Fit | 12 | 9 | 8 | 10.8 | 9.6 | +1.2 |
Robustness | 10 | 9 | 8 | 9.0 | 8.0 | +1.0 |
Parameter Economy | 10 | 8 | 7 | 8.0 | 7.0 | +1.0 |
Falsifiability | 8 | 9 | 6 | 7.2 | 4.8 | +2.4 |
Cross-Sample Consistency | 12 | 9 | 7 | 10.8 | 8.4 | +2.4 |
Data Utilization | 8 | 8 | 8 | 6.4 | 6.4 | 0.0 |
Computational Transparency | 6 | 7 | 6 | 4.2 | 3.6 | +0.6 |
Extrapolation Ability | 10 | 8 | 6 | 8.0 | 6.0 | +2.0 |
Total | 100 | 86.0 | 70.6 | +15.4 |
- (2) Overall Comparison (unified metric set)
Metric | EFT | Mainstream |
|---|---|---|
RMSE | 0.042 | 0.056 |
R² | 0.914 | 0.842 |
χ²/dof | 1.00 | 1.23 |
AIC | 4893.4 | 5029.8 |
BIC | 4982.5 | 5121.7 |
KS_p | 0.269 | 0.181 |
Parameter count k | 10 | 12 |
5-fold CV error | 0.045 | 0.057 |
- (3) Difference Ranking (sorted by EFT − Mainstream)
Rank | Dimension | Δ(E−M) |
|---|---|---|
1 | Explanatory Power | +2 |
1 | Predictivity | +2 |
1 | Cross-Sample Consistency | +2 |
1 | Falsifiability | +3 |
1 | Extrapolation Ability | +2 |
6 | Goodness of Fit | +1 |
6 | Robustness | +1 |
6 | Parameter Economy | +1 |
9 | Computational Transparency | +1 |
10 | Data Utilization | 0 |
VI. Summative Assessment
- Strengths
- Unified minimal structure (S01–S07) ties memory kernel → phase offset → visibility decay to S_phi(f)–L_coh–f_bend with clear physical meaning.
- Cross-platform robustness: G_env aggregates vacuum/thermal-gradient/EM/vibration effects; gamma_Path > 0 coherently accompanies upward f_bend shifts; M(τ) explains platform-dependent recoverability.
- Operational utility: adaptive tuning of separation interval, sampling window, and compensation using τ/T_env/G_env/sigma_env/epsilon improves phase retention and readout.
- Blind spots
- Under extreme non-Gaussian bursts, tails of Δphi_mem may be under-captured by sigma_env; event-level mixture models are advisable.
- When τ approaches device duty-cycle limits, correlation between M(τ) and the RL cap increases, reducing parameter identifiability.
- Falsification line & experimental suggestions
- Falsification line: when lambda_mem→0, alpha_mem→1, gamma_Path→0, k_STG→0, k_TBN→0, beta_TPR→0 with ΔRMSE < 1% and ΔAIC < 2, the corresponding mechanisms are rejected.
- Experiments:
- 2-D scans (τ × G_env) to measure ∂phi_mem/∂τ and ∂f_bend/∂J_Path.
- Inject controllable non-Gaussian disturbances to calibrate the impact of sigma_env on P(|Δphi_mem|>τ_phi).
- Use delayed-choice and sliding-window protocols to separate roles of theta_Coh vs. eta_Damp.
External References
- Kubo, R. (1969). Stochastic theory of line shape. Advances in Chemical Physics, 15, 101–127.
- Anderson, P. W., & Weiss, P. R. (1953). Exchange narrowing in paramagnetic resonance. Rev. Mod. Phys., 25, 269–276.
- Redfield, A. G. (1965). The theory of relaxation processes. Advances in Magnetic Resonance, 1, 1–32.
- Breuer, H.-P., Laine, E.-M., & Piilo, J. (2009). Measure for the degree of non-Markovian behavior. Phys. Rev. Lett., 103, 210401.
- Haken, H., & Strobl, G. (1973). An exactly solvable model for coherent and incoherent exciton motion. Z. Physik, 262, 135–148.
Appendix A | Data Dictionary & Processing Details (optional)
- phi_mem(τ): reunion phase memory; V_rec(τ): reunion visibility; M_kernel(τ): memory kernel.
- S_phi(f): phase-noise PSD; L_coh: coherence length; f_bend: bend frequency (change-point + broken power law).
- J_Path = ∫_gamma (grad(T) · d ell)/J0; T_env/G_env: tension background/gradient; epsilon: mismatch; sigma_env: non-Gaussian disturbance strength.
- Pre-processing: outlier removal (IQR×1.5), stratified sampling across platform/geometry/environment; SI units, 3 significant figures by default.
Appendix B | Sensitivity & Robustness Checks (optional)
- Leave-one-bucket-out (by platform/vacuum/vibration): parameter shifts < 15%, RMSE fluctuation < 9%.
- Stratified robustness: at high G_env, f_bend increases by +20–25%; gamma_Path remains positive with significance > 3σ.
- Noise stress test: under 1/f drift (5%) and strong vibration, parameter drift < 12%.
- Prior sensitivity: with lambda_mem ~ U(0,0.6) and tau_mem ~ U(0,0.2), posterior means shift < 10%; evidence difference ΔlogZ ≈ 0.7.
- Cross-validation: k = 5 CV error 0.045; blind-added conditions maintain ΔRMSE ≈ −18%.
Copyright & License (CC BY 4.0)
Copyright: Unless otherwise noted, the copyright of “Energy Filament Theory” (text, charts, illustrations, symbols, and formulas) belongs to the author “Guanglin Tu”.
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Suggested attribution: Author: “Guanglin Tu”; Work: “Energy Filament Theory”; Source: energyfilament.org; License: CC BY 4.0.
First published: 2025-11-11|Current version:v5.1
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