Research on Crossing Separation for Urban Delivery Drones at Same Altitude Based on Event Model

Urban logistics delivery drones face operational challenges between increasing flight density and low airspace utilization in segregated route systems. This study develops a safety-centric separation model for same-altitude crossing operations of delivery UAVs using Event methodology. We address collision risks through lateral/vertical overlap probabilities and longitudinal proximity rates while incorporating failure probabilities of Conflict Detection and Resolution (CDR) systems.

The crossing scenario involves two delivery drones on intersecting paths at angle $\omega$ with separation $S_c$ defined as the distance between the crossing point and trailing drone when the lead drone reaches the intersection. The collision risk $N_c$ is modeled as:

$$N_c = 2 \times Q \times P_y(S_y) \times P_z(0) \times \left(1 + \frac{2v\lambda_x}{2u\lambda_y}\right) \times \left(1 + \frac{2w\lambda_x}{2u\lambda_z}\right)$$

Where $Q$ is the longitudinal collision rate, $P_y$ and $P_z$ are lateral/vertical overlap probabilities, $u/v/w$ are relative velocities, and $\lambda_x/\lambda_y/\lambda_z$ represent delivery drone dimensions (length/wingspan/height). Core parameters derived from empirical delivery UAV data include:

Parameter Value Description
$\sigma_y^2$ 1.5753 m² Lateral error variance
$\sigma_z^2$ 1.3895 m² Vertical error variance
$E(0)$ 0.01 Longitudinal proximity rate
$V$ 12 m/s Cruise speed

Lateral overlap probability considers navigation errors in delivery drones:

$$P_y(S_y) = \frac{1}{2\pi(\sigma_{yA}^2 + \sigma_{yC}^2)} \int_{-q}^{q} \exp\left(-\frac{(s – S_y)^2}{2(\sigma_{yA}^2 + \sigma_{yC}^2)}\right) ds$$

Vertical overlap probability accounts for altitude deviations:

$$P_z(0) = \frac{1}{2\pi(\sigma_{zA}^2 + \sigma_{zC}^2)} \int_{-\lambda_z}^{\lambda_z} \exp\left(-\frac{l^2}{2(\sigma_{zA}^2 + \sigma_{zC}^2)}\right) dl$$

Delivery UAV CDR systems undergo event tree analysis for failure probability assessment:

Module Failure Probability Impact
ATC Processing $P_1$ (94%) Full separation
Maneuvering $P_2$ (3%) Partial loss
Flight Control $P_3$ (2%) Partial loss
Complete Failure $P_4$ (1%) Maximum loss

The comprehensive separation model incorporating CDR failures becomes:

$$N’_c = P_1P_2P_3N_c(S_c) + P_1P_2\bar{P_3}N_c(S_c – V_r t_3) + P_1\bar{P_2}\bar{P_3}N_c(S_c – V_r(t_2 + t_3)) + \bar{P_1}\bar{P_2}\bar{P_3}N_c(S_c – V_r(t_1 + t_2 + t_3))$$

For delivery drones with dimensions 2.5m × 2.5m × 0.6m at 60° crossing angle:

Safety Target Level (TLS) Basic Separation CDR-Adjusted Separation
1.5×10⁻⁸ 156 m 158 m
1×10⁻⁶ 153 m 155 m

Separation requirements increase with crossing angle, showing significant growth near 180° (head-on scenarios). This trend demonstrates how delivery UAV operational constraints intensify in opposing flow configurations:

$$S_c(\omega) = k \cdot \exp(\omega/90^\circ) \quad \text{for} \quad \omega > 90^\circ$$

Optimal delivery drone separation balances safety targets with urban airspace efficiency. The Event-based approach provides methodology for determining operationally viable crossing configurations while maintaining TLS compliance through CDR-aware modeling.

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