Cyber-Physical Cold-Chain Risk Dataset
收藏Zenodo2026-01-25 更新2026-05-29 收录
下载链接:
https://zenodo.org/doi/10.5281/zenodo.18365189
下载链接
链接失效反馈官方服务:
资源简介:
This dataset contains high-resolution operational records collected from a cyber-physical cold-chain logistics monitoring environment spanning October 2023 to October 2025. The data represent real-world refrigerated transportation workflows where physical degradation processes, logistics operations, and cyber–network conditions jointly influence shipment integrity and compliance. Measurements are recorded at an 8-minute temporal resolution, enabling fine-grained analysis of short-term dynamics and long-term degradation trends.
The dataset integrates physical sensing data, logistics context indicators, and network and integrity telemetry within a unified time-aligned structure. Each record corresponds to a rolling observation window associated with a specific logistics client and shipment segment. The dataset reflects realistic characteristics observed in operational cold-chain systems, including non-IID client behavior, class imbalance, rare extreme events, and episodic cyber anomalies, which are common challenges in distributed industrial environments.
Data Scope and Structure
Temporal coverage: 2023-10-01 to 2025-10-31
Sampling interval: 8 minutes
Observation window: 64 minutes (rolling)
Clients: Multiple independent logistics clients with heterogeneous data volumes
Shipments: Time-varying shipment identifiers per client and day
Each row represents the state of a shipment monitoring window and includes identification metadata, physical measurements, derived degradation indicators, cyber-network statistics, and outcome labels.
Feature Categories
1. Identification and Time Metadata
Client identifier
Shipment identifier
Window start and end timestamps
Window duration (minutes)
2. Physical State Measurements
Product temperature (°C)
Ambient temperature (°C)
Relative humidity (%)
Cooling system activity ratio
Power supply status
Door open ratio
Vibration intensity (RMS)
3. Thermal Degradation and Dynamics
Temperature change rate
Maximum temperature excursion
Excursion duration
Temperature exposure area (AUC)
Thermal recovery time
Rolling temperature variance
Humidity change rate
4. Logistics and Operational Context
Product category
Target temperature bounds
Remaining travel time
Distance to destination
Stop frequency
Container utilization ratio
Handling event count
5. Network Quality and Communication Performance
Packet loss rate
Uplink latency
Latency jitter
Message interval mean
Message interval variance
Out-of-order packet ratio
6. Data Integrity and Consistency Indicators
Checksum error ratio
Time synchronization offset
Sensor cross-consistency score
Physical feasibility flag
GPS feasibility flag
7. Rolling Window Descriptors
Mean, minimum, maximum, and standard deviation of temperature
Temperature trend slope
Labels and Outcome Variables
The dataset provides multiple labels to support both predictive modeling and diagnostic analysis:
Spoilage risk score: A continuous value in the range [0, 1] representing shipment degradation risk
Attack state: Categorical indicator of operational and cyber anomaly conditions
Compliance status: Discrete compliance outcome (Compliant, Near-Violation, Violation)
提供机构:
Zenodo创建时间:
2026-01-25



