Curve Fitting and Peak Separation Techniques for Low-Slow-Small Surveying UAV Detection in 5G-A Networks

The proliferation of surveying drones and UAVs has revolutionized industries from infrastructure inspection to precision agriculture. These surveying UAVs operate as quintessential low-slow-small (LSS) targets – characterized by altitudes below 200m, velocities under 55m/s, and radar cross-sections (RCS) smaller than 0.1m². Traditional detection methods struggle in urban environments where ground clutter and terrain occlusion mask these surveying drones. Current approaches like radar, electro-optical, and acoustic systems face scalability limitations. This study introduces a curve fitting-based peak separation technique leveraging 5G-A integrated sensing and communication (ISAC) base stations, capitalizing on their dense low-altitude coverage to detect surveying UAVs in cluttered environments.

Echo Characteristics in 5G-A Low-Altitude Scenarios

5G-A ISAC base stations operating at 3.74GHz with 100MHz bandwidth exhibit distinct clutter properties compared to conventional radar. Key parameters include:

Parameter Value
Carrier Frequency 3.74 GHz
Signal Bandwidth 100 MHz
Pulse Repetition Interval 5 ms
Sampling Rate 122.88 MHz

Ground clutter in 5G-A systems demonstrates narrow spectral width centered at zero-Doppler with smooth Gaussian-like distribution, expressed as:

$$C(f) = A \exp\left(-\frac{(f – f_0)^2}{2\sigma_f^2}\right)$$

where $A$ is clutter amplitude, $f_0$ is Doppler center (≈0 Hz), and $\sigma_f$ is spectral width (typically 5-10Hz). This contrasts sharply with conventional radar clutter showing wider spectra (20-50Hz) and irregular fluctuations at zero-Doppler. The smoothness enables precise spectral decomposition for surveying drone detection.

Curve Fitting and Peak Separation Technique

The detection framework processes range-Doppler (RD) maps through four stages:

1. Peak Detection via Smoothing Derivative Method

For each range bin $r_i$, the Doppler spectrum $S_i(f)$ undergoes 5-point moving average smoothing:

$$S_{\text{smooth}}[k] = \frac{1}{5} \sum_{j=-2}^{2} S_i[k+j]$$

Peak candidates satisfy the first-derivative zero-crossing condition:

$$\frac{dS_{\text{smooth}}}{df} \bigg|_{f=f_p} = 0 \quad \text{and} \quad \frac{d^2S_{\text{smooth}}}{df^2} \bigg|_{f=f_p} < 0$$

2. Peak Filtering with 2D CA-CFAR

Candidate peaks are validated against adaptive threshold $T_{\text{CA}}$ computed from reference cells (4 cells) and guard cells (2 cells):

$$T_{\text{CA}} = \alpha \cdot \frac{1}{N} \sum_{j \in \Omega} S_i[f_j]$$

where $\alpha$ scales for $P_{fa} = 10^{-3}$, and $\Omega$ denotes reference regions. Noise peaks below $T_{\text{CA}}$ are discarded.

3. Lorentzian Peak Decomposition

Valid peaks are modeled as Lorentzian functions:

$$L(f; h,f_p,w) = h \exp\left(-\frac{(f – f_p)^2}{w^2}\right)$$

Parameters are initialized using Caruana’s algorithm:

Parameter Estimation
Peak height $h$ $\exp\left(a – \frac{b^2}{4c}\right)$
Peak center $f_p$ $-\frac{b}{2c}$
Peak width $w$ $\frac{2.35482}{\sqrt{-2c}}$

where $a,b,c$ are quadratic coefficients from fitting $\ln(S_i(f))$. Final parameters are optimized via Levenberg-Marquardt algorithm minimizing residual:

$$\min_{h,f_p,w} \sum_k \left| S_i(f_k) – \sum_m L_m(f_k) \right|^2$$

4. Target Declaration

Surveying UAVs are detected when non-zero Doppler peaks satisfy:

$$|f_p| > f_{\text{min}} \quad \text{and} \quad \frac{h}{h_{\text{clutter}}} > \gamma$$

where $f_{\text{min}} = 2$Hz (0.06m/s velocity resolution) and $\gamma = 3$dB SNR threshold.

Field Experiments and Performance Analysis

Experimental validation used DJI Mavic 3 Pro surveying UAVs under three scenarios:

Scenario Altitude Velocity Range
A (Target present) 1.5m 0.6m/s 36.6m
B (Clutter only)
C (Target present) 2.0m 0.3m/s 36.6m

The algorithm achieved detection probabilities ($P_d$) of 0.83 and 0.73 for Scenarios A and C respectively, outperforming conventional techniques:

Detection Method $P_d$ (Scenario A) Improvement
Proposed Technique 0.83 Baseline
MTI + 2D-CA-CFAR 0.70 +18.6%
2D-CA-CFAR 0.49 +69.4%

Critical performance factors include:

  • Peak separation accuracy: 94.2% correct component identification
  • Velocity estimation error: < 0.05m/s RMS
  • Processing latency: 28ms per frame (256 Doppler bins)

Conclusion and Future Directions

The curve fitting-based peak separation technique enables reliable surveying UAV detection in 5G-A networks by exploiting unique low-altitude clutter characteristics. By decomposing Doppler spectra into Lorentzian components, the method achieves 69.4% higher $P_d$ than conventional CA-CFAR in cluttered environments. Future work will investigate deep learning-enhanced peak modeling and multi-node fusion for swarm detection. Integration with 5G-A base stations provides a scalable framework for nationwide surveying drone monitoring, addressing critical security challenges in the low-altitude economy.

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