Published July 18, 2023 | Version v2
Dataset Open

Outdoor NB-IoT and 5G coverage and channel information data in urban environments

  • 1. Sapienza University of Rome
  • 2. Karlstad University
  • 3. University of Oslo
  • 4. Rohde&Schwarz

Description

This dataset includes data for NB-IoT and 5G networks as collected in two cities: Oslo, Norway (NB-IoT only) and Rome, Italy (both NB-IoT and 5G).

Data were collected using the Rohde & Schwarz TSMA6 mobile network scanner. 7 measurement campaigns are provided for Oslo, and 6 for Rome. Additional data collected in Rome are provided in the following large-scale dataset, focusing on the two major mobile network operators: https://ieee-dataport.org/documents/large-scale-dataset-4g-nb-iot-and-5g-non-standalone-network-measurements 

The present dataset contains the following data for NB-IoT:

  • Raw data for each campaign, stored in two .csv files. For a generic campaign <X>, the files are:
    • NB-IoT_coverage_C<X>.csv including a geo-tagged data entry in each row. Each entry provides information on a Narrowband Physical Cell Identifier (NPCI), with data related to the time stamp the NPCI was detected, GPS information, network (NPCI, Operator, Country Code, eNodeB-ID) and RF signal (RSSI, SINR, RSRP and RSRQ values);
    •  NB-IoT_RefSig_cir_C<X>.csv, also including a geo-tagged data entry in each row. Each entry provides information on a NPCI, with data related to the time stamp the NPCI was detected, GPS information, network (NPCI, Operator ID, Country Code, eNodeB-ID) and Channel Impulse Response (CIR) statistics, including the maximum delay.
  • Processed data, stored in a Matlab workspace (.mat) file for each city:  data are grouped in data points, identified by <Latitude, longitude> pairs. Each data point provides RF and CIR maximum delay measurements for each <NPCI, Operator ID, eNodeB-ID> unique combination detected at the coordinates of the data point.
  • Estimated positions of eNodeBs, stored in a csv file for each city;
  • A matlab script and a function to extract and generate processed data from the raw data for each city.

The dataset contains the following data for 5G:

  • Raw data for each campaign, stored in two .xslx files. For a generic campaign <X>, the files are:
    • 5G_coverage_C<X>.xslx including a geo-tagged data entry in each row. Each entry provides information on a Physical Cell Identifier (PCI), with data related to the time stamp the PCI was detected, GPS information, network (PCI, Beamforming Index, Operator, Country Code) and RF data (SSB-RSSI, SSS-SINR, SSS-RSRP and SSS-RSRQ values, and similar information for the PBCH signal);
    •  5G_RefSig_cir_C<X>.csv, also including a geo-tagged data entry in each row. Each entry provides information on a PCI, with data related to the time stamp the PCI was detected, GPS information, network (PCI, Beamforming Index, Operator ID, Country Code) and Channel Impulse Response (CIR) statistics, including the maximum delay.
  • Processed data, stored in a Matlab workspace (.mat) file:  data are grouped in data points, identified by <Latitude, longitude> pairs. Each data point provides RF and CIR maximum delay measurements for each <PCI, Beamforming Index, Operator ID> unique combination detected at the coordinates of the data point.
  • A matlab script and a supporting function to extract and generate processed data from the raw data.

In addition, in the case of the Rome data a function to interpolate missing data in the original data is provided for each technology, as well as the corresponding interpolated data, stored  in a second matlab workspace. The interpolation rationale and procedure is detailed in:

L. De Nardis, G. Caso, Ö. Alay, U. Ali, M. Neri, A. Brunstrom and M.-G. Di Benedetto, "Positioning by Multicell Fingerprinting in Urban NB-IoT networks," Sensors, Volume 23, Issue 9, Article ID 4266, April 2023.

Positioning using the 5G data was furthermore in investigated in: 

K. Kousias, M. Rajiullah, G. Caso, U. Ali, Ö. Alay, A. Brunstrom, L. De Nardis, M. Neri, and M.-G. Di Benedetto, "A Large-Scale Dataset of 4G, NB-IoT, and 5G Non-Standalone Network Measurements," submitted to IEEE Communications Magazine, 2023 

Please refer to the above publications when using and citing the dataset. 

Notes

The work of Luca De Nardis and Maria-Gabriella Di Benedetto in the creation of this dataset was partially supported by the European Union under the Italian National Recovery and Resilience Plan (NRRP) of NextGenerationEU, the partnership on "Telecommunications of the Future" (PE00000001-program "RESTART").

Files

NB-IoT_5G_dataset.zip

Files (317.9 MB)

Name Size Download all
md5:39c1d19612645ae151986d396f2dbe49
317.9 MB Preview Download