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View Full Version : the most sharp LTE RF scanner, LTE interference checker in the world, DRT4311B



crisnspro
2017-06-05, 11:19 AM
the link also can search in ebay.

DRT4311B already selected by all Chinese 3 operators (China Mobile, China Telecom, China Unicom) for their networks (LTE FDD, LTE TDD, WCDMA, CDMA2000, GSM) from year 2017, integrated the best scanner, we provide the total solution for the world, as for the scanner selection, you may have the basic knowledge of the scanner (scanning receiver):
1. Superheterodyne detection is an old method for the receiver before, now, FFT technology already been implemented to the new scanner, with high receiving sensitivity (low than -134dBm, RBW=1KHz) and high speed (3000MHz/s) in same time, seamless scanning from 2-3000MHz, the wideband scanner’s band can be defined by customer within its range.
2. scanner’s feature:
we tested feature of the main scanner (wideband with MIMO) as attached, field and lab test in Beijing and Taipei:

40546

3. scanner’s performance:
During the LTE testing, RSSI,RSRP, RSRQ, RS-CINR, Time offset etc. are the basic measurement (maybe occupy 20% performance of a scanner), DRT4311B also can do the measurement for LTE (include FDD and TDD) each RE and each symbol:

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The LTE scanner must sync with GPS then get the correct time offset of each cell, it is very important for TDD LTE interference checking;
Not only GPS, DRT4311B can sync the atomic clock, so the clock tolerance will less than 1E-8, we designed rubidium clock as following:

40542

Depends the atomic clock, DRT4311B can check the Doppler Effect when in the high-speed train.

4. in some area for interference checking, you may need the integrated version of scanner, already integrated the battery, tablet PC etc. into a box:

For the interference locating, you may need the following log directional antenna (500-7500MHz, 14dBi gain):
5. the specification as following:

5.1.Testing protocol and items:

Channel average power
Spectrum scan
Synchronization detection
Reference clock
Interference analysis
MIMO
Auto detect:bandwidth,TX port,duplexer FDD/TDD,cyclic prefix (CP)Decode:MIB,SIB1,SI

5.2. RF parameter:
Band:2-3000 MHz

Amplitude tolerance:±1dB (–100 dBm to –25 dBm)
Frequency tolerance:1.0 ppm (free run),0.05 ppm (GPS locked)
Noise Figure:11.0 dB (typical), 6.0 dB (Preamp on)
IP3:-10.0 dBm
Phase Noise:–90 dBc (typical,10KHz offset)
VSWR: 2.5:1
Internal spurious transmitting:-114 dBm
Maximum input allowed: +30 dBm (1W)
5.3. Performance parameter:
RSSI scan speed:500 channels/second(continuous measurement)
Ec/Io sensitivity:-21 dB
LTE SCH scan speed:50 channels/second
LTE selectivity:>= -50 dB
Spectrum scan:1.6KHz RBW,3000 MHz/second

5.4. Physical parameter:
Weight:721 grams
size:33mm (height),76mm (width),172mm (depth)
Power consumption:10Watts (maximum)
Power supply:DC 9-30V, AC 90-260V
MTBF: >35040 hours

5.5.Interface:
Data Interface:RJ45 or USB
RF interface:SMA
GPS interface:SMB
Sync interface: Micro DB9

6. Supported application software:
Opti-test, opti-scan Investigation and opti-scan Explorer
Anite, Nemo Outdoor (7.6 and later)
Infovista, TEMS
Accuver, Xtel
Dingli, Pilot Pioneer



Any scanner problem (include option, parts, application, using, testing, calibration etc.) can contact us.

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For the interference locating, you may need the following log directional antenna (500-7500MHz, 14dBi gain):
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5. the specification as following:

5.1.Testing protocol and items:

Channel average power
Spectrum scan
Synchronization detection
Reference clock
Interference analysis
MIMO
Auto detect:bandwidth,TX port,duplexer FDD/TDD,cyclic prefix (CP)Decode:MIB,SIB1,SI

5.2. RF parameter:
Band:2-3000 MHz

Amplitude tolerance:±1dB (–100 dBm to –25 dBm)
Frequency tolerance:1.0 ppm (free run),0.05 ppm (GPS locked)
Noise Figure:11.0 dB (typical), 6.0 dB (Preamp on)
IP3:-10.0 dBm
Phase Noise:–90 dBc (typical,10KHz offset)
VSWR: 2.5:1
Internal spurious transmitting:-114 dBm
Maximum input allowed: +30 dBm (1W)
5.3. Performance parameter:
RSSI scan speed:500 channels/second(continuous measurement)
Ec/Io sensitivity:-21 dB
LTE SCH scan speed:50 channels/second
LTE selectivity:>= -50 dB
Spectrum scan:1.6KHz RBW,3000 MHz/second

5.4. Physical parameter:
Weight:721 grams
size:33mm (height),76mm (width),172mm (depth)
Power consumption:10Watts (maximum)
Power supply:DC 9-30V, AC 90-260V
MTBF: >35040 hours

5.5.Interface:
Data Interface:RJ45 or USB
RF interface:SMA
GPS interface:SMB
Sync interface: Micro DB9

5. Supported application software:
Opti-test, opti-scan Investigation and opti-scan Explorer
Anite, Nemo Outdoor (7.6 and later)
Infovista, TEMS
Accuver, Xtel
Dingli, Pilot Pioneer

6. The auction included (separated version):
One DRT4311B scanner (V1, LTE FDD and TDD option);
One RF antenna (700-2700MHz);
One GPS antenna;
One RJ45 cable;
One AC/DC power

Any scanner problem (include option, parts, application, using, testing, calibration etc.) can contact us.
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