five

CRAWDAD elasticmon5G2019

收藏
DataCite Commons2022-12-13 更新2025-04-16 收录
下载链接:
https://ieee-dataport.org/open-access/crawdad-elasticmon5g2019
下载链接
链接失效反馈
官方服务:
资源简介:
nickname : elasticmon5G2019institution : eurecomrelease date: 2019-08-28date/time of measurement start: 2019-12-11date/time of measurement end : 2019-12-11network type : None of the abovecollection environment : The 10 datasets come in two different grouped versions, namely: 01-RawDatasets: raw statistics containing MAC, RRC and PDCP metric values provided by the FlexRAN controller; 02-PreprocessedDatasets: processed monitoring data by adding timestamps and cleaning out (i) corrupt/inaccurate metric values and (ii) static values; Each grouped version is composed of five comma-separated files: -1- moving-away.csv: the UE moves away from the eNB to a maximum distance of 10 meters. -2- movingcloserfarcloser.csv: the UE moves back and forth relative to the eNB, from a 0 distance up to approximately 10 meters. -3- stableshortdistance.csv: the UE stands still in a short distance (approx., 0-1m) away from the eNB. -4- stablemiddistance.csv: the UE stands still in a mid distance (approx., 1-5m) away from the eNB. -5- stablelongdistance.csv: the UE stands still in a long distance (approx., 5-10m) away from the eNB. In what follows, we describe our processing process as a paradigm. Prospective users are advised to customize this process in order to match their needs. Step 1 - Raw datasets: Medium Access Control (MAC), Radio Resource Control (RRC), Packet Data Convergence Protocol (PDCP) data provided by the FlexRAN controller recorded for 1 UE in a JSON format. Each JSON measurement contains more than a 100 metrics. A detailed description of mea surement metrics available by the FlexRAN controller is available here: http://mosaic-5g.io/apidocs/flexran/#api-Stats. Step 2 - processed Datasets: Pre-processing takes place to give a proper structure to raw recordings and to reduce the number of metrics per measurement from over a 100 to 42. Pre-processing is necessary for a series of reasons: - Adding a timestamp: Exact dates in raw measurements do not give useful information. It is necessary to add timestamps inside the recorded JSON tree of each measurement. This is needed for computing the time elapsed between consecutive measurements. - Cleaning out static values: Omitting specific metric fields that do not change over time. Such metrics maintain in a constant value across measurements regardless of the UE being in motion or not. Therefore, they offer no valuable information for prediction. Note that the rem aining 'dynamic' metrics after this step drops to 42. - Adjusting corrupt/inaccurate metric values: There are measurements such as 'macStats_phr', with corrupt/inaccurate values due to integer overflow. The problem is addressed based on the type of metric and number of consecutive corrupt/inaccurate values by replacing evidently corrupt/inaccurate values with either (a) the median value of their neighboring rows or (b) the mean value over a period of time (e.g., past 100ms) out of a series of neighboring rows (resp., 100 rows). Option (a) was used in cases where consequent values created a trend that was not matched by the identified as corrupt/inaccurate; value, while option (b) was preferred for particular types of metrics such as macStats_phr.network configuration : One user using an Android v8.0 (Oreo) Nexus 6P phone connected to an eNB (carrier band 7). 5G network based on FlexRAN v2.0 and OpenAirInterface snap packages as follows: oai-ran rev. 16 openairinterface5g tag 2018.w42 (see https://snapcraft.io/oai-ran) and oai-cn rev. 26 (see https://snapcraft.io/oai-cn).data collection methodology : (1) Collection environment: Raw datasets are collected using our prototype version of ElasticMon v0.1. ElasticMon is a novel elastic monitoring 5G framework for OAI-RAN (see https://snapcraft.io/oai-ran) and OAI-CN (see https://snapcraft.io/oai-cn) built over the F lexRAN v2.0 programmable SD-RAN platform (see: http://mosaic-5g.io/flexran/) (2) Data collection: A single mobile user engaged into different mobility scenarios by following different motion patterns for moving further away or closer to the eNB, or by remaining in a static distance relative to the eNB. The adopted measurement frequency was 50ms.sanitization : The datasets contain no sensitive information that could raise any privacy concerns. Therefore, the datasets are not sanitized TracesMAC, RRC and PDCP data provided by the FlexRAN controller recorded for 1 UE in a JSON format. Each JSON measurement contains more than a 100 metrics. A detailed description of measurement metrics available by the FlexRAN controller is available here: http://mosaic-5g.io/apidocs/flexran/#api-Stats.URL: ftp:/ftp.eurecom.fr/incoming/02-PreprocessedDatasets.zipA necessary pre-processing takes place to give a proper structure to raw recordings and to reduce the number of metrics per measurement from over 100 to 42.In brief, each of the five comma-separated files in the second (processed) traceset contains:-1- moving-away.csv: the UE moves away from the eNB to a maximum distance of 10 meters.-2- movingcloserfarcloser.csv: the UE moves back and forth relative to the eNB, from a 0 distance up to approximately 10 meters.-3- stableshortdistance.csv: the UE stands still in a short distance (approx., 0-1m) away from the eNB.-4- stablemiddistance.csv: the UE stands still in a mid-distance (approx., 1-5m) away from the eNB.-5- stablelongdistance.csv: the UE stands still in a long-distance (approx., 5-10m) away from the eNB.TracesMAC, RRC and PDCP data provided by the FlexRAN controller recorded for 1 UE in a JSON format
提供机构:
IEEE DataPort
创建时间:
2022-12-13
5,000+
优质数据集
54 个
任务类型
进入经典数据集
二维码
社区交流群

面向社区/商业的数据集话题

二维码
科研交流群

面向高校/科研机构的开源数据集话题

数据驱动未来

携手共赢发展

商业合作