Predictive maintenance

Manage your fleet of machines efficiently

Anticipate equipment maintenance needs in advance to boost productivity and lower costs — with TeamViewer.

Interactive augmented reality connections with TeamViewer

What is predictive maintenance?

Predictive maintenance (sometimes abbreviated as PdM) is a pre-emptive approach to the maintenance of machinery, plants, vehicles, devices, and other equipment.

Closely linked to IoT (Internet of Things) technology — particularly the use of sensors and smart devices within industrial and manufacturing processes — predictive maintenance involves capturing and analyzing machine data to detect patterns and anomalies and predict when equipment failures are likely to occur.

Predictive maintenance allows you to anticipate failures, measure the rate of performance degradation over time, plan maintenance schedules and budgets in advance, minimize unexpected outages, and potentially extend the lifetime of your assets.

How does predictive maintenance work?

Data generation

IoT sensors are embedded into equipment to gather important data on asset performance and condition. A few examples include accelerometers, temperature detectors, current transformers, flow meters, viscometers, and strain gauges.

Data collection

These IoT sensors are connected to a network and transmit data to a centralized, usually cloud-based location. The data needs to be preprocessed to filter out irrelevant information and extract the specific information required for maintenance-based predictive analysis.

Data analysis

Using a range of machine learning algorithms (e.g., regression analysis and time series analysis), models are trained on a combination of historical and real-time data. Based on this, they’re able to predict the likelihood and timing of future failure and the need for maintenance.

Maintenance planning

Building on this analysis, you get a much clearer picture of pending and future maintenance needs. For instance, on a particular piece of machinery, the analysis indicates that thresholds linked to component fatigue will be reached by X date. You can use this information to schedule component replacement and maintenance accordingly.

The benefits of predictive maintenance

  • Reduced downtime

    On average, large companies lose the equivalent of 8-11% of revenue each year due to downtime. When a critical asset fails unexpectedly, the financial hit can be both immediate and severe. Predictive maintenance gives you a valuable heads-up, enabling you to intervene before a problem triggers a costly outage.

  • Efficient task scheduling

    An effective predictive maintenance system means technicians spend less time in firefighting mode, reacting to failures at short notice. Schedules can be planned, with a lower likelihood that those schedules will need to be reworked as a result of unplanned emergency repairs.

  • Less user disruption

    A proactive approach to maintenance gives you greater scope for scheduling activities during planned downtimes, quiet periods, or outside of normal working hours, meaning less disruption for equipment users. Especially if you deliver maintenance as part of a managed service agreement, this can help boost user-focused metrics such as user-impacted downtime and user satisfaction.

  • Extended asset lifespan

    Predictive maintenance incorporates regular monitoring of assets’ state of health. This helps you step in with timely maintenance and prevent excessive wear and tear. Equipment tends to stay in good working condition for longer, reducing the need for replacements.

  • Inventory management

    With a diverse portfolio of plant and equipment to oversee, a sizable chunk of your budget can easily be tied up in stockpiling spare parts “just in case”. With a predictive maintenance system, you can predict when parts will be needed, allowing for a more targeted and less wasteful approach to inventory management.

  • Supporting your sustainability initiatives

    Predictive maintenance can and should perform an integral role in helping you meet sustainability targets. Water leaks, depleted lubricant or coolant levels, excessive waste, increased fuel or power consumption: Your predictive maintenance system can be configured to track these variables. That means smarter maintenance management and sustainability can go hand-in-hand.

Examples

Predictive maintenance in practice

Embedded IoT technologies and advanced analytics combine to help build effective predictive maintenance processes across a range of sectors.

Manufacturing

  • Production line equipment. IoT sensors can continuously measure vibration, and component temperature on production line equipment, such as cycle times on injection molding machines and deviations in force application in press machines.
  • Factory 4.0 components. For advanced robotics equipment, next-gen rapid prototyping, and similar complex machinery, predictive maintenance allows you to identify performance degradation at a highly granular level, safeguarding your return on significant investments.

Logistics

  • Fleet management. Sensors installed within vehicles to track variables, such as engine efficiency, tire pressure, and fuel consumption, can help reduce downtime through vehicle breakdowns and enhance fleet reliability.
  • Warehouse equipment and systems. Investments in advanced warehousing technologies can be protected with the help of predictive maintenance. For example, the sensors in automated guided vehicles, that monitor motor function responsiveness and hydraulic system performance, can be checked to ensure their effectiveness.

Agriculture

  • Maintenance of scattered sites. Across multiple fields, livestock sheds, greenhouses, and storage facilities, a network of embedded sensors, e.g., for climate control, crop monitoring, harvesting equipment, and vehicle systems, enables farmers to stay in control of maintenance requirements. It also reduces the need for unscheduled maintenance call-outs.
  • Enhancing worker safety. A proactive approach to maintenance covers, for instance, hydraulic systems on vehicles and harvesting equipment. This helps to prevent sudden failures, ensuring a safer working environment for farm operatives.

Optimize machinery management with TeamViewer’s predictive maintenance solution

Covering remote control, maintenance, and support, along with a cloud-based solution for managing even the most complex IoT projects, TeamViewer’s flexible range of products is trusted the world over.

Be prepared for downtime and forecast any issue ahead of time

Predictive maintenance only becomes a reality when you have the ability to connect all your assets and ensure the right data is analyzed and shared at the right time. With TeamViewer, this is easy.

TeamViewer offers a 360° remote connectivity platform for all kinds of devices, including any IoT elements deployed throughout your business.

With comprehensive remote device monitoring capabilities, the platform ensures early recognition of problems across your entire technical infrastructure and warns you immediately when an issue arises. The result is a 24/7 visibility of all assets and an enhanced ability to forecast issues before they turn into major business problems.

Leverage existing data effectively

No two businesses are the same in their predictive maintenance needs. Exact requirements depend on a range of factors, including the equipment or machinery in question, safety requirements, operating conditions, and organizational goals. 

This is where TeamViewer’s expertise comes in. By working in partnership with your team, we can help you implement and configure a solution as an exact match for your predictive maintenance needs. Its important taking into account the variables you need to track, the thresholds for intervention, appropriate connectivity and data transmission methods, and the cadence required for data transmission.

Through this partnership approach, we can help you harness all relevant machine-level performance data, translate it into insights, and use it as a foundation for an effective predictive maintenance strategy.

Why choose TeamViewer for predictive maintenance?

  • A single solution for all your devices

    TeamViewer is fully cross-compatible across operating systems and devices. This means you can rely on a single solution to connect to, monitor, and use predictive maintenance for your entire inventory of machinery and equipment. That includes everything from frontline manufacturing components to back office computers and peripherals.

  • Combine predictive maintenance with remote intervention

    You’ve predicted a pending need for maintenance. So what happens next? Full remote access and remote control capabilities mean that maintenance teams can remotely access and control any connected machine to perform diagnostics, troubleshooting, and reconfiguration. So, TeamViewer doesn’t just enable you to reduce unplanned maintenance; it also helps reduce reliance on physical intervention.

  • Configurability

    Depending on the policies and workflows your organization intends to integrate into its predictive maintenance strategy, TeamViewer’s flexibility ensures this. Whether this is the categories of data you need to analyze or the machine-level patterns you intend to track, you can configure TeamViewer’s predictive maintenance strategy precisely according to your needs.

  • Ease of integration

    TeamViewer enhances and integrates with your existing software investments, including IoT platforms, cloud storage and data warehousing, predictive analytics tools, enterprise resource planning (ERP), and corporate performance management (CPM) solutions. This facilitates seamless integration of predictive maintenance workflows into existing business processes.

  • Security

    With TeamViewer, your core business processes — and business-critical data — are in trusted hands. Safeguards, such as 256-bit AES encryption, fine-grained conditional access controls, and multi-factor authentication, ensure that your connections and IoT data transfers remain secure.

Hem bireysel hem de kurumsal kullanımda ödüllü yazılım

Frequently asked questions (FAQs)

Predictive maintenance boosts your business’ ability to identify maintenance issues at an early stage based on analysis of current and historical machine-level data. It’s important because it offers the opportunity to reduce downtime and save on maintenance costs.

Yes. Predictive maintenance helps you pre-empt maintenance requirements, reducing the need for emergency interventions, and giving you more control over maintenance schedules. This improves the asset management process.

The benefits of predictive maintenance include less unplanned machinery downtime, more efficient maintenance activity scheduling, less user disruption, easy management of spare parts, and extended asset lifespans.