Solving Challenges with Predictive Maintenance and Machine Learning

Optimizing Operations: Solving Operational Challenges with Predictive Maintenance and Machine Learning
Illustration: © IoT For All

Predictive maintenance applies data and models to predict when a piece of equipment or an asset will fail. This approach helps companies proactively address situations that would otherwise result in costly downtime or discontinuity. When predictive maintenance is combined with machine learning, there are great advantages.

The alternative is a break-fix approach, which is costly to the company in many ways. Once a machine fails, significantly more resources are required to get it back online than would be the case if the problem was known – and avoided – in advance.

Industrial Maintenance

There are three ways in which plant operators typically approach maintenance:

#1: Reactive Maintenance

The reactive, break-fix approach means that we only replace components when they fail. This method can lead to crippling and expensive consequences and depending on what type of machine we’re talking about; it could even be dangerous.

For example, if the machine in question is a jet engine, failure could put hundreds of lives at risk and potentially ruin a company’s reputation indelibly.

#2: Scheduled Maintenance

Pre-scheduled maintenance is a slightly better approach in that issues are sorted and addressed regularly. However, if no maintenance is required, it is wasteful of a company’s resources.

You don’t know when failure is likely to occur, so a conservative approach is required to avoid unnecessary costs. For example, when you service a machine early, you are essentially wasting viable machine life, applying maintenance resources inefficiently, and generally compounding your cost of doing business.

#3: Predictive Maintenance

Being able to predict when a machine will fail is the ideal situation, but it is difficult to forecast with any great accuracy. In a best-case scenario, you will know when a machine is due to fail.

You will also know what parts are going to fail so you can reduce the time spent diagnosing the issue and reduce waste and risk in the process. When machine failure is signaled by the predictive system, maintenance is scheduled as close to the event as possible to make the most of its remaining useful life.

Predictive Maintenance for Operational Problems

Leveraging data collected from IIoT devices, plant operators can begin to address a wide range of maintenance issues with the ultimate goal of achieving a preemptive posture using predictive maintenance and machine learning (ML).

  • Detecting the point of failure: This concept involves predicting when a component has failed and will help to better predict at what point in its lifecycle a part or machine will fail.
  • Detecting incipient failure: In this instance, we can detect failures before they happen by applying sensor data to the ML algorithm.
  • Maximizing the remaining useful life: With the ability to predict the interval before which a component fails, we can apply maintenance or replace components at exactly the right times. Conversely, we would be replacing these same parts at regular intervals and wasting valuable resources when the parts are still operating as they should.

The more accurately we can predict when a part or a machine will fail, the easier it is to achieve maximum productivity and efficiency throughout operations.

Adopting predictive maintenance improves operations through:

  • More efficient use of the labor force
  • Fewer necessary resources to monitor machine function
  • Predictable productivity levels
  • Maximum machine and part life
  • Peak levels of production performance
  • Elimination of non-essential maintenance tasks
  • Risk reduction
  • Workplace safety improvements

Data Collection for Predictive Maintenance

For predictive maintenance to succeed, these three best practices will be key:

  1. First, and foremost, you need quality data. Ideally, you want historical data that takes into account events that have, in the past, failed. Failure data needs to be juxtaposed against static features of the machine itself, including its average use, general properties, and the conditions under which it operates.
  2. You will no doubt end up with a lot of data, so it is critical to focus on the right data. Getting hung up on extraneous information does little more than muddy the waters, deflecting attention away from what’s most important. You should ask yourself; what failures are likely to occur? Which ones do you want to predict?
  3. Finally, take a close look at any other related systems and parts to ensure you’re not missing critical data. Are there other components that are related to the failure? Can their performance be measured? And finally, how often do these measurements need to happen?

Data collection needs to take place over an extended period for best results. Quality data results in a more accurate predictive model.

Anything less will only narrow the field of possibilities rather than give you hard truths. Analyze the available data and ask yourself if it is possible to build a predictive model based on these insights.

It is important to have the proper context when looking at a problem, as only then do we have the ability to evaluate the predictions with some accuracy.

Data Modeling Approaches

In general, data scientists who help create and implement predictive maintenance programs use one of two predictive modeling approaches:

#1: Regression Models

Regression models predict the remaining useful lifetime of a component. It tells us how much time we have left before the machine fails. For a regression model to work, historical data is necessary. Every event is tracked and, ideally, various types of failure are represented.

The assumption offered by the regression model is that, based on the inherent (static) aspects of the system and its performance in the present, its remaining lifecycle is predictable. However, if there are several ways in which a system can fail, a separate model must be created for each possibility.

#2: Classification Models

Classification models predict machine failure within a certain window of time. In this scenario, we don’t need to know too far in advance when or if a machine is going to fail, only that failure is imminent.

Classification and regression models are similar in many ways, but they do differ on a few points. First, the classification looks at a window of time rather than an exact time. This means that the gradation of the degradation process is a little more relaxed, requiring fewer exacting data.

Additionally, the classification model supports multiple types of failure, allowing incidents to be grouped under the same classification. The success of a classification model depends on there being enough data available, and enough instances of certain types of failures to inform the ML model.

Predictive Maintenance & Machine Learning

Once modeled, predictive maintenance proceeds in this way:

The ML model collects sensor data and based on historical failure data, identifies the events that precede a failure.

The operator pre-sets the desired parameters to trigger an alert to a potential failure. When the sensor data breaches these parameters, an alert is initiated.

Machine learning can then detect unusual patterns that are outside normal system operation. With better awareness of these anomalies based on quality data, the ability to predict failure improves dramatically.

Supporting Data

In conclusion, machine learning supports the analysis of vast amounts of data with minimal human intervention. When applied using best practices, it is an excellent approach to cost reduction and risk mitigation.

By applying machine learning, combined with data collected from IIoT devices, it is possible to improve processes, reduce costs, optimize employee efficiency, and reduce machine downtime significantly – all critical aspects of a successful manufacturing operation.

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This post originally appeared on TechToday.

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