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Multi parameter water quality detection workstation

NegotiableUpdate on 01/17
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Overview
The AIWT 1800 water quality multi parameter detection workstation combines water quality detection with robots, achieving full automation, unmanned operation, high efficiency, and full process control of water quality detection through AI and automation technology. It can maximize the accuracy of data analysis, reduce human errors, greatly enhance laboratory detection capabilities, and assist in the digital, unmanned, and intelligent upgrading and transformation of laboratories at all levels.
Product Details

Multi parameter water quality detection workstationFunction: Routine physical and chemical testing of factory water and drinking water

Testing items: pH, ammonia nitrogen, nitrite nitrogen, chloride, total hardness, total alkalinity, iron, manganese, aluminum, permanganate index

Microbial automatic detection system: automated detection of total bacterial count, total coliform bacteria, and Escherichia coli

Detection efficiency: no less than 50 samples/day, can be upgraded and expanded

Key operation to achieve unmanned analysis throughout the entire process

One click operation, powerful functions, full process monitoring, traceable data, avoiding human errors


Multi parameter water quality detection workstation24-hour testing, daily testing capacity increased by more than 3 times

The daily testing ability can reach 240 samples/day, greatly improving the laboratory testing capability; The testing items can be quickly upgraded.


Big data comparison, warning, and guidance for customer production

Our testing platform not only detects samples, but also is a powerful experimental data analysis master. It can automatically compare historical data according to user needs, timely discover data trends, guide users in production, avoid human errors and mistakes, and form big data analysis reports.