IT in Manufacturing


Industrial Machine Learning – it’s AI, just less artificial – Part 1: What is Machine Learning and what makes Industrial Machine Learning different?

April 2021 IT in Manufacturing

Introduction

Within the new world of Industry 4.0, companies are collecting and storing more data than ever before. This due to industrial sensors becoming more cost-effective and smarter, allowing for more instruments to be network connected. IoT initiatives have also enabled connectivity never possible before. Vast amounts of data points and information can thus be gathered from across the entire production process. Most companies know that there is a lot of value in this data, but knowing how to identify, extract, sort and understand the value can be like looking for the needle in a haystack.

Figure 1: Industrial Machine Learning.

Artificial Intelligence (AI) and specifically Machine Learning (ML), is a great tool that can be utilised to make sense and extract value from this information. The Oxford dictionary defines ML as: ‘The use and development of computer systems that are able to learn and adapt without following explicit instructions, by using algorithms and statistical models to analyse and draw inferences from patterns in data.’

This might sound very futuristic, mathematical and way too theoretical (not to mention expensive) to be used in practical industrial applications. However, the concept of ML was defined as far back as 1959 and as processing power has progressed and matured over the years, so have AI and ML. Technology providers have started to incorporate AI and ML into their product suites, enabling it to move away from pure theoretical mathematical concepts to configurable practical products. Today, both small and large organisations are able to utilise ML tools off-the-shelf for a wide variety of industrial applications such as:

• Early anomaly detection to prevent costly failures and downtime.

• Process optimisation.

• Predictive analytics and forecasting.

• Safer operations.

• Continuous quality monitoring and improvement.

• Enabling more efficient production processes.

What makes ‘Industrial’ Machine Learning (IML) different?

IML platforms provide software-based modelling for equipment or processes using advanced pattern recognition (APR). It makes use of historic and realtime data to predict what is going to happen next. The system continuously monitors behaviour in realtime and compares current conditions to historical patterns to identify anomalies and drift.

Should an anomaly be detected, the system will raise an alarm, notification or alert to the appropriate users. It also offers advanced analysis capabilities for problem identification and root cause analysis. Figure 1 shows where a ‘current’ value started deviating from the ‘predicted value, identifying an anomaly well in advance of the equipment failure.

Most mainstream platforms that offer ML (i.e. Microsoft Azure, Amazon Web Services, IBM etc.) provide flexible and configurable capabilities for a wide range of sectors. Although these tools are extremely powerful, they are typically utilised by data scientists who understand how to categorise the various data streams, can perform the pre-processing or ‘cleaning’ of data and know how to select the right mathematical algorithms and parameters for effective modelling. Although these tools are powerful, most companies do not employ data scientists and definitely not on the plant floor.


Gerhard Greef.

In comparison, IML platforms available today are purpose-built tools designed to be used by process engineers and managers who have the relevant plant and domain knowledge, but not the grounding in data science.

The table above highlights some of the key differences between these two types of platforms.

As the table shows, IML platforms trade flexibility for user configurability, which addresses a specific need for industrial clients who require only a certain subset of ML functionality, for which pre-determined algorithms and parameters can be packaged. The focus is thus on making these platforms easily configurable for non-data science users by automating the underlying complexities. This ensures that the product operates in a specifically defined manner, which in turn improves stability and reliability.

There is thus no need for data scientists or any mathematical understanding, as everything is configured or automated. IML works predominantly with industrial time-series data, but can also accommodate event-based data. It automatically classifies incoming data according to historic values, such as whether the signal is Boolean, Smooth, Noisy, a Step or Categorical and checks whether the signal has enough historical data points to be meaningful.

At high level, IML offers the creation of two types of ML models, namely: anomaly detection and forecasting.

Anomaly detection: understand what is happening now

For anomaly detection, the ML model ‘learns’ the normal behaviour of a specific process or equipment by ingesting and analysing large amounts of historical data. The ‘model’ is configured by the user and made up of a number of variables that indicate equipment or process ‘health’. Based on the historical information, the model learns how a specific variable is expected to behave, based on its relative relation to the rest of the variables configured within the model.

The model will then continuously and in realtime, monitor and evaluate the ‘actual’ value of the variable, as obtained from the plant, against the ‘expected’ value based on the historically defined ‘normal’ or ‘healthy’ behaviour. Should the difference between these two values exceed a configured threshold, then the system will flag it as an anomaly.

Anomaly detection is typically used for predictive maintenance as it can identify equipment issues as they start to occur, well in advance of actual equipment breakdown. It can also be used to monitor production efficiencies as it highlights any processes or parameters that are deviating from expected behaviour.

Forecasting: understand what is about to happen

Forecasting is used to predict the future value (within an accuracy range) of a specific variable within a user-specified timescale. It shows, in effect, what a variable value will be a few minutes or hours from the present.

Forecasting uses historical data to learn how a process normally behaves. It uses multiple variables and can learn many different modes of operation and correlation at once. It will predict multiple future data points from ‘now’ to the user-selected future target (1, 2, 4 hours etc.). As with anomaly detection, in order to achieve an accurate model prediction, the inputs must have predictive power (relevance) to the target output variable and time.

Forecasting is typically used to increase process efficiency. Knowing that a batch, or a process, is going to be out of specification within the next hour (based on current data) gives one the ability to pre-emptively adjust process set points now (either manually or automatically) to prevent the possible ‘out-of-specification’ event.

Part 2 of this article will be published in the May issue of SA Instrumentation and Control and will cover the practical implementation of Industrial Machine learning. Interested readers who wish to skip ahead can find the full article at https://www.instrumentation.co.za/12850r


Credit(s)



Share this article:
Share via emailShare via LinkedInPrint this page

Further reading:

Five data centre trends to watch in 2025
IT in Manufacturing
Any innovation that comes out in 2025 – whether it’s flying cars, highly advanced AI or a breakthrough medical treatment – will be built on the back of an equally innovative IT foundation driven by data. Data that needs to be stored, managed and made accessible in the data centre, in the cloud or at the edge. Is it too much of a stretch to say the future of humankind is dependent on data storage? We don’t think so.

Read more...
Recovering from a cyberattack
IT in Manufacturing
While many organisations have invested heavily in frontline defence tools to try to keep out bad actors, they have spent far less time and money preparing for what happens when the criminals eventually get in. And they will get in.

Read more...
The value of proactive maintenance management
Schneider Electric South Africa IT in Manufacturing
Maintenance has come a long way from the days when we waited for things to break, and thanks to the ever-increasing capabilities of technology, predictive maintenance has become a viable solution for keeping equipment running smoothly and efficiently around the world.

Read more...
Significant decarbonisation can be achieved in the mining industry
ABB South Africa IT in Manufacturing
ABB has released a global report titled ‘Mining’s Moment’, which highlights the progress being made by the mining industry to make operations more sustainable.

Read more...
Pinpointing pipeline occurrences in seconds, not hours
Schneider Electric South Africa IT in Manufacturing
At any given moment, thousands of kilometres of critical assets flow through pipelines that cross veld, mountainous areas, dense forests, and even busy streets. Surprisingly, many of these pipelines operate either unmonitored or with scant oversight, leading to missed opportunities for operational continuity and efficiency.

Read more...
Next-generation AI-enhanced electronic systems design software
Siemens South Africa IT in Manufacturing
Siemens Digital Industries Software has launched the latest advancement in its electronic systems design portfolio. The next-generation release takes an integrated and multidisciplinary approach, bringing a unified user experience that delivers cloud connectivity and AI capabilities to push the boundaries of innovation in electronic systems design.

Read more...
Spatial computing and AI – where no man has sustainably gone before
Schneider Electric South Africa IT in Manufacturing
Some will argue that we now live in a sci-fi world where we dream of electric sheep, and today’s technology – unlike HAL – can provide us with the answers we seek. To the realist it might seem a bit implausible, but when you start using terms like ‘spatial computing realises sustainable AI’ it doesn’t seem that far-fetched.

Read more...
Safeguarding DCS today and tomorrow
Schneider Electric South Africa IT in Manufacturing
Today’s distributed control systems (DCS) are highly intelligent, converging OT and IT in a centralised manner that allows for simplified management and coordination of operations. It is technology evolution at its finest, but with a caveat, cybersecurity challenges.

Read more...
Quantum computing is not as futuristic as it sounds
IT in Manufacturing
The first quantum computer was created almost three decades ago. While its applications are still unknown to many, this advanced field combines computer science, physics and mathematics to deliver solutions the world has been trying to find for aeons – and those it doesn’t yet know it needs.

Read more...
Transform field data into actionable business data
IT in Manufacturing
As part of its ongoing commitment to enhancing industry connectivity, Teledyne Gas & Flame Detection is making its new and proprietary Teledyne GDCloud available with the company´s GS700, GS500 and Shipsurveyor portable gas leak detectors, and also its PS200 portable four-gas monitor for personal safety and confined-space applications.

Read more...