ECONOMICAL SVA1075X 7.5GHZ SPECTRUM / VECTOR NETWORK ANALYZER

The SVA1075X is an economical tool for measuring signal distortion, modulation, spectrum purity, frequency stability, and crosstalk distortion signal parameters, for locating cable fault, and characterizing antenna networks and filters.  

ECONOMICAL SVA1075X 7.5GHZ SPECTRUM VECTOR NETWORK ANALYZER

Saelig Company, Inc. has introduced the Siglent SVA1075X Spectrum / Vector Network Analyzer – a powerful tool with reliable automatic measurements for measuring the performance of RF circuits and networks such as amplifiers, filters, attenuators, cables, and antennas. With a wide frequency range from 9kHz to 7.5GHz, the SVA1015X analyzer delivers reliable automatic measurements with its built-in tracking generator and multiple modes of operation.  It can operate as a vector network analyzer, a frequency domain reflectometer for distance-to-fault location, and a modulation analyzer.  User-friendly operation is enhanced by the choice of its 10.1” (1024×600) multi-touch screen, mouse, or keyboard input.  Remote control is also possible via a web browser or a local PC (SCPI / Labview / IVI , based on USB-TMC / VXI-11 / Socket / Telnet).

The phase behavior of networks can be very important, especially in digital transmission systems. With its built-in preamplifier, the SVA1075X Vector Network Analyzer measures the signal magnitude and phase to quantify reflection coefficients or return loss.  Knowledge of the phase of the reflection coefficient is particularly important for matching systems like antennas in maximizing power transfer.  S-parameters are determined by measuring the magnitude and phase of the incident, reflected, and transmitted signals with the output terminated with a load that is equal to the characteristic impedance of the test system.  This technique can be used to measure the rise time of amplifiers, filters, and other networks.

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