USB-DIO96H Series, Data Acquisition (DAQ)

Results:
1
Manufacturer
Series
Bidirectional Channels
Output Range
Front Connection
Input Resolution
Function
Type
Number of Outputs and Type
Number of Inputs and Type
Counter/Timers
Bus Connection
Input Range
Sampling Rate (Per Second)
Output Resolution
Results remaining1
Applied Filters:
USB-DIO96H
Select
ImageProduct DetailPriceAvailabilityECAD ModelFunctionNumber of Inputs and TypeSampling Rate (Per Second)SeriesTypeBus ConnectionFront ConnectionInput RangeInput ResolutionNumber of Outputs and TypeOutput RangeOutput ResolutionBidirectional ChannelsCounter/Timers
6069-410-032
MCC USB-DIO96H: 96 CHANNEL DIGIT
Contact us
Quantity
Contact us
PCB Symbol, Footprint & 3D Model
Digital I/O
96 - Digital
-
USB-DIO96H
DAQ Device
USB 2.0
Screw Terminal
5V
-
96 - Digital
5V
-
96
1

About  Data Acquisition (DAQ)

Data Acquisition (DAQ) systems are integrated systems that comprise DAQ measurement hardware and sensors used to sample signals measuring voltage, current, temperature, pressure, and other variables. These systems provide a comprehensive solution for collecting and analyzing data across various industries, including research, engineering, manufacturing, and more. Available in diverse configurations, DAQ systems can be filtered based on their function, device type, bus connection, number and type of inputs and outputs, input and output resolution, bidirectional channels, sampling rate per second, and other parameters. By offering flexible and customizable options, these systems cater to the unique needs and requirements of different users and applications. The sensors used in DAQ systems are designed to capture real-time data accurately and reliably, ensuring high precision and consistency in measurements. Moreover, DAQ systems may include software that allows users to monitor, analyze, and visualize data in real-time or store it for later analysis. In summary, DAQ systems are versatile tools that provide efficient and effective solutions for collecting, analyzing, and utilizing data across diverse fields and applications.