Vorausschauende Wartung: Der Schlüssel zu einem zuverlässigen, belastbaren Betrieb - FORTNA

Predictive Maintenance: The Key to Reliable, Resilient Operations

by Bryan Duncan

In a landscape of continuous, “always on” commerce with hyper elevated customer expectations, any unexpected downtime in fulfillment operations can profoundly impact the company’s bottom line – in loss of revenue, damaged brand reputation and ultimately, customer loyalty and market share.

The true cost of downtime varies by industry, but analyst estimates put the starting line for a 750,000 square foot warehouse at $10,000 per hour and as high as $500,000 per hour. The price of not meeting service level agreements can be steep and add up quickly, especially when supply chain disruption leads to out-of-stock parts and transportation delays. In critical infrastructure sectors like health care, chemicals or food processing and storage, the penalties are just the start of game changing issues. Then there are the safety issues that often occur as workers try to pick up the workload where machinery has failed. Resilience is the word of the year, and your key to ensuring reliable, resilient operations is predictive maintenance (PdM).

Predictive vs. Preventive

Predictive maintenance should not be confused with preventive maintenance (PM). Preventive maintenance is regular servicing of equipment based on a time interval or usage to reduce the likelihood of failure. The problem with this type of maintenance is that you may end up replacing parts more frequently than necessary, which adds to costs — or not often enough, which requires even more costly reactive maintenance or repairs (RM).

Predictive maintenance relies on data-driven analysis of the condition of the equipment as indicated by sensors that detect misalignment, wear, friction, and stress. There are sensors for detecting vibration, temperature, and sound. Even ultrasonic levels of sound can be detected by certain sensors. PdM is performed based on the real-time behavior of the equipment, not on the manufacturer’s expected component lifetime. By monitoring real-time conditions, you can order parts in advance and ensure technicians are prepared and repairs can be made quickly at a time that works within the operating rhythm of the facility.

The Value of Predictive Maintenance

Predictive maintenance programs have been shown to lead to a 25-30% reduction in maintenance costs and 70–75% reduction in equipment breakdowns, 35–40% decrease in downtime needed to perform maintenance1.

Predictive Maintenance can:

  • minimize the number of unexpected breakdowns
  • maximize asset uptime and improve asset reliability
  • reduce operational costs by performing maintenance only when necessary
  • reduce maintenance costs through reduced streamlined parts inventory and planned labor
  • improve worker safety

Considerations

Some questions to ask yourself to determine whether predictive maintenance is right for you.

  • What is your daily unit volume?
  • What does an hour of down time cost you?
  • How critical are your operations to the business? How reliable do your assets need to be?
  • What is the current failure rate on your existing assets?
  • What are your current maintenance costs? Are they in line with industry standards?
  • Do you have the right spare parts in the right place at the right time? Have recent supply chain disruptions impacted your ability to obtain parts when you need them?
  • How do you determine when it is time to replace an asset rather than to maintain it?
  • Do you have some critical assets that would benefit from a predictive maintenance program?
  • Do you have the in-house tech expertise to develop a predictive maintenance program?

Getting Started

There are several steps you can take to get started:

Maintenance Skills Upgrade. The maintenance worker of the future will use technology as their primary tool. If you can’t hire the tech skills needed for the role, you may need to develop them, whether that means upskilling your current team or hiring tech savvy workers who can grow into the role through training programs.

Streamline Spare Parts Inventory. A good PdM program will rely on a comprehensive and efficient spares inventory. Work to identify critical parts that must be maintained on site versus those that can be stored centrally or sourced quickly and reliably. A global parts supply chain adds complexity and transportation costs and times must be factored in.

Implement WES Software. A robust warehouse execution system is critical to assist not only with monitoring of IIoT data, but for the intelligence it provides.

Focus on Critical Assets First. Establish which assets are most critical. Establish a baseline of historical data for those assets. Analyze failure modes and make predictions, then use technology to test and validate your hypothesis in the pilot before moving on to other assets.

Don’t Forget Cybersecurity Measures. Much has been written about the security weakness of the Internet of Things (IoT). Just because the technology is in a warehouse or not tied directly to your financial systems doesn’t mean it can’t be leveraged and shouldn’t be protected.

FORTNA can help you get started with offerings including maintenance team training, spare parts planning and fulfillment, WES software and facility health checks to ensure uptime, performance reliability and seamless operations.

A Final Thought

Your warehouses are more than storage facilities. Today’s automated distribution and fulfillment centers are complex machines through which the lifeblood of the organization passes. They generate vast quantities of data that, with the right algorithm, can be tapped into for improved visibility and better decision-making. That’s where Predictive Maintenance meets Predictive Analytics. The crossroads where machine learning transforms data into systems insights, such as why the sorter recirc rate has increased, but also informs the business decisions, like where to place inventory and when. These capabilities are nascent, but rapidly being developed. We’ll explore this more in a future post on Predictive Analytics.

Weitere Insights hier:
Wartung vor Ort  |  Parts & Warranty | System Health Checks

 

<sup>[1]</sup>https://www.fiixsoftware.com/maintenance-strategies/predictive-maintenance

Über den Autor

Bryan Duncan

Vice President Sales, Global Lifecycle Services

Bryan is Vice President Sales, Global Lifecycle Services for FORTNA. Bryan has been in the logistics automation industry for 25+ years. He has been in sales, leadership and consulting specializing in complex automated systems with experience in the retail, food & beverage, grocery and industrial markets.