#EMrex14: Wireless condition monitoring and prediction system reduces plant downtime and maintenance costs.

Online vibration monitoring of pumps identifies potential problems earlier, enabling planned maintenance and greater plant availability

Emerson Process Management’s wireless condition monitoring and prediction system is being used at the SABIC Olefins plant in Teesside in the North of England, to detect potential problems with pumps before they disrupt normal operations. The system helps reduce the risk of unexpected failures that can cause lost production and expensive repairs, as well as safety and environmental incidents.

Emerson_502904b_SABIC_Teesside

The Sabic Teeside plant

The critical pumps being monitored are installed on the plant’s Olefins Cracker, which is used to produce ethylene, propylene, butadiene and gasoline products. SABIC Teesside previously collected and analysed vibration data for these pumps manually, but potential problems could occur between readings. This led to higher maintenance costs and reduced plant availability, which was affecting overall production.

“We wanted to improve the monitoring of critical pumps at the Olefins plant in Teesside,” said David Hambling, Instrument Electrical Technical Engineer, SABIC UK Petrochemicals. “By installing Emerson’s wireless vibration transmitters we can now continuously monitor vibration levels and detect faults before a failure occurs.” 

Emerson’s online vibration monitoring system has detected a number of problems that could have resulted in equipment failure, including a chipped tooth on a gearbox gear and an impending bearing failure. Identifying and rectifying potential problems earlier helps minimise pump failures and maintenance costs.

In addition to measuring overall vibration and temperature, the CSI 9420 Wireless Vibration Transmitter includes PeakVue™ technology, which detects faults that cause impacting, friction, and fatigue, particularly in gearbox and rolling element bearings. The monitoring system takes basic readings every 30 seconds and an in-depth, full spectrum analysis once every day. By tracking rising vibration levels, SABIC Teesside can detect developing faults and improve maintenance scheduling.

“Emerson’s Smart Wireless technologies, combined with advances in sensor technology and low lifecycle costs, have made it quick and easy for our customers to access data from their critical assets,” said Nathan Pettus, vice president, Machinery Health Management for Emerson Process Management. “With our proven predictive technologies like PeakVue and our focus on pervasive sensing, we are helping customers like SABIC Teesside to filter, automatically analyse, and capture useful, actionable information so they can rectify any issues that could interrupt production.” 

The plant’s existing Emerson Smart Wireless network made installing the wireless vibration transmitters quick and easy, enabling vibration data to be sent to SABIC’s process control system. The established mesh network also makes it easy to add or relocate wireless-enabled devices for additional process information from remote or difficult-to-access locations.

“Wireless monitoring has shown itself to be a valuable tool in our condition monitoring armoury,” added SABIC’s Hambling. “Predicting failures in gearboxes of this type can make considerable savings on any subsequent turnaround and help to keep equipment available.”

About Eoin Ó Riain

Sé Read-out iris uaithoibríoch, ionstraim agus stiúradh na hÉireann agus an "Signpost" a áit ar an idirlín! Read-out is Ireland's journal of automation, instrumentation and control and the Instrumentation Signpost is it's web presence.
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