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Friday, 14 April 2023 11:38

Asset health in the palm of your hand

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~ How on-site oil analysis could give control back to industry decision-makers ~

When it comes to minimising disruptive maintenance work and lowering costs, prevention is better than a cure. Using oil condition monitoring as a predictive maintenance solutions can provide a deep insight into ongoing system health, reducing the risk of equipment damage caused by unknown contaminants in the system. Here, Dr Tom Knott, product manager at petrochemical lab equipment supplier SciMed, discusses the benefits of oil condition monitoring (OCM) analysis and offers some advice on the best equipment for the job.

Keeping an eye on the quality and integrity of your oil is nothing new to most industries that rely on lubrication, hydraulic or coolant fluids. Almost 70% of industry respondents to a Spectro Scientific® survey had some form of reliability monitoring programme in place. It’s safe to say that most decision-makers are aware that tracking the status of machine lubricant to enable predictive maintenance action is an essential practice.

2023 04 14 113143Predictive maintenance is the sweet spot where facility managers can make decisions based on timely data about the health of their critical machinery assets. This is more cost-effective than preventative maintenance, where oil replacements are carried out based on a routine schedule, and far more economical than reactive maintenance, when components break and shut down production until the problem is fixed.

This predictive strategy is especially important in those industries where replacing worn bearings or overheated components is particularly difficult, such as off-shore power generation and remote materials processing sites.

In 2023, most OCM programmes involve sending samples to professional laboratories. While providing the peace of mind that analysis is executed by experts, this outsourcing practice can limit businesses in a number of ways.

For one, the timeframe of sending a sample to the lab and waiting for the report is usually multiple weeks. With each passing day, maintenance managers could be running out of time to intervene in the mechanical decline of a vital asset.

Another issue with outsourcing the OCM process is the rising cost. The UK’s industrial services have been universally inflated by the COVID-19 pandemic and supply chain issues from China. The necessary increase in cost constrains testing volume: if you can only test six samples per month instead of ten, the likelihood that you miss a burgeoning problem increases.

These same geopolitical factors that are prompting quality managers to seek more cost-effective alternatives to outsourcing their oil condition monitoring needs also compound the potentially ruinous costs of a reactive maintenance policy. If your machine breaks and halts business, you might be waiting weeks, not days, for a replacement part.

Solving the fluid analysis conundrum

On-site fluid analysis instruments can significantly boost testing volume, improve sustainability and provide immediate results to give maintenance managers the best platform from which to make decisions and keep business running smoothly.

In the first implementation year of an on-site OCM programme that only tracked one parameter of oil quality, an industrial manufacturer of animal feed cut their unplanned maintenance downtime by 50%. Furthermore, the company saved almost $1 million (~£810,000) in lost production time and gear failures.

It’s true that the short-term investment costs of in-house OCM can deter facility managers from pursuing this as a cost-saving avenue. Additionally, it’s natural for engineers and machine operators without a chemical background to feel unprepared to take on the role of oil analyser.

Although understandable, these concerns can easily be assuaged.

OCM instruments are often sold as modules, each responsible for analysing different properties of the classic oil condition tri-vector; Wear, Contamination, and Chemistry & Viscosity. This is true of the Minilab series from Spectro Scientific®, a central docking station with multiple portable analysers. Maintenance managers can select the instrument most relevant to their business without investing in the whole selection.

One helpful device in this endeavour is a common software feature that allows the operator to schedule tests, collate and trend results, set alarm/action limits and track how much money has been saved on lubricant purchases, unplanned downtime and labour costs.

Indeed, the benefit to maintenance budgets is something worth highlighting. While the initial cost of investment might appear significant, the savings produced from predictive oil condition monitoring can be lucrative. An American city saved $2 million (~£1.62 million) in one year by extending the interval periods between oil changes in a large municipal fleet of city vehicles.

Uncertainty about the rapidity of oil degradation had pressured the city into spending millions on a preventative maintenance strategy and servicing their vehicles before it was necessary.

The popularity of on-site oil condition monitoring is set to sky-rocket in the coming years, as maintenance managers seek to optimise processes to protect their business against rising costs and increasingly drastic consequences for inadequate instrumentation management.

To find out more about how you can implement on-site oil condition monitoring into your workflow, visit Scimed’s product page.

About SciMed:

Since its founding in 1979, Scientific & Medical Products (SciMed) has been a highly successful distributor of laboratory and process equipment. It exclusively represents a number of leading manufacturers in the UK and Ireland and has recently been appointed the distributor for several companies in France and other selected regions around Europe. The company’s focus is on the promotion, sales, service and support of innovative and world-class products to customers in industry and academia.

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