Ten years ago I was quite proud of how smart the machines in our own factory were. Now, with my today’s definition of smart, I realise they were actually quite stupid.
Why? Because although they were doing what they were designed to do, the minute they encountered anything unexpected or out of the ordinary they were stumped. They resorted to asking the operator ‘what is wrong with me?’.
Troubleshooting and getting machines back up and running called for smart people. Highly skilled operators. Experienced software and hardware engineers.
The problem is that in the last ten years, these people have become increasingly unavailable. There quite simply isn’t enough new talent entering the industry to offset the number of workers reaching retirement age. When they leave the business, retirees take with them their hard-earned on-the-job knowledge that is a culmination of years of experience. With each departing worker, businesses are faced with the prospect of a less productive and less skilled workforce.
No more dumb questions…
The obvious solution is that machines get smarter so they no longer have to ask stupid questions. Machine builders engineer systems that can figure out for themselves why they have stopped or why there is a problem.
This is already happening to some extent. The use of sensors so that the cartoning machine can tell the operator that it has run out of blanks, for example.
However, you can only get so far with sensors alone. Taking system autonomy to the next level requires Artificial Intelligence (AI) so that machines can use smart algorithms that are capable of performing sophisticated analytics more akin to human brain circuitry.
There is a lot of talk about using AI to emulate human thought processes in industrial applications, but real life examples of business who are successfully unlocking the value of AI are few and far between.
Common AI pitfalls
There are two main reasons for this: firstly, companies often fall into the trap of being too generic in their application of AI and secondly, they do not know how to handle the explosion of data that this broad-brush approach generates.
If you are going to look at how AI can be applied in your factory, first of all you should establish what problem you want to solve or what improvement you want to make. Start small with a very specific problem. Then you have to collect the relevant data, which is not an easy task. Not only do you need to make sure you have the right data, but also that it is stored at the right time and that you don’t miss any data. And you need to analyse that data.
OMRON's AI Controller - the world’s first AI solution that operates ‘at the edge’ (with the hardware based on the Sysmac NY5 IPC and the NX7 CPU) - will do all of that for you. This controller will record the data at micro-speed and analyse it using pattern recognition based on process data collected directly on the production line. It is integrated into our Sysmac factory control platform, which means it can be used in the machine directly, to prevent efficiency losses.
AI in action
As an example of this approach in action, we are currently working with a food industry customer to improve seal integrity. Rather than relying on the operator to recognise when the sealing head is not performing as it should, the packaging machine uses AI to maintain repeatable performance. By applying an AI approach to the sealing operation, we will increase the shelf life by several days and minimise the occurrence of faulty seals, thereby eliminating the risk of a complete product batch being rejected by retail customers.
Machine learning: bridging the experience gap
So far, I’ve only talked about harnessing AI to make machines smarter. The other development trajectory for AI is making people smarter. Data can be returned from physical assets - in this case highly experienced workers - and pattern recognition applied. Put simply, the skilled operator trains the machine and the machine trains the unskilled operator
In our laboratory, we are currently experimenting with AI-driven machines that ask operators to assemble products and record how they do it to discover the smartest way of performing this task, so that this technique can be taught to other operators.
Another industrial application for machine learning might be the use of AI to establish what actions the operator should be performing on the machine. If the operator’s hands move in the wrong direction, for example, this generates an alert.
Only smarties have the answer
Enterprises that are well advanced on their digital transformation journey will be best placed to harness the value of AI - whether that is for identifying and training best practices, predicting failures or monitoring running conditions. However, businesses at the start of their journey shouldn’t be deterred from exploring AI. When ordering a new machine, make sure that it has the functionality to generate data for AI purposes. You don’t have to know what data you require - you just need to know the right questions to ask your machine builder. Also, start small and take a step by step approach - human DNA has evolved over millions of years and so it is unrealistic to expect machines to emulate the human brain in a matter of months.Contact us for more information
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Tim ForemanThe quote on the desk of Tim Foreman in his office at the European R&D headquarters reads: "If you want to go fast go alone, if you want to go far go together".