Making use of data in an industrial context – Factory Simulation

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Just to add some fuel my recent post let me pick a topic to elaborate on (hoping I’ll get even more responses on your expectations on the upcoming webinar series). 

Today let me focus on “Factory Simulation” (which naturally relates to other topics like “Digital Twin” or “Machine Learning”)

The term “Factory Simulation” is widely used with lots of room for interpretation; and probably most of the interpretations have their own right of existence. 

So, a comment I made quite often over the years still stands true: Identify your use case, your business scenario, to put the endeavor into a business context – anything else is useless unless you want to apply technology just for the sake of applying technology.

Most production line managers I talked to really know what they’d like to get out of a factory simulation (vs. a lot of pure IT managers still tend to focus more on the fancy IT stuff), so let’s lean on the production line managers’ interpretations here:

  • I need to maintain my level of quality throughout all potential impacts
  • I need to maintain or improve my productivity rate
  • I need to increase OEE
  • I need to deliver on all contracts even if important ad hoc orders come in

Of course the list above is just a small starter, but I guess you get the picture – it’s (as in basically all Industrial IoT scenarios) coming down to making the optimal decision in real time.

Ideally these decisions would be fully automated, but a) a fully automated system will need some time to implement and b) we, as humans, will need some time to gain trust in these automated decisions. So the natural step before full automation is to implement a solution that will simulate scenarios, taking into account all impacting parameters (equipment, material, supply chain, order management….potentially external parameters like weather information), so an experienced line manager can see results for different possible decisions using real world and real time information before making the final decision that will be entered back into MES/ERP/SFM etc for execution.

The number and nature of impacting parameters can range from low and small complexity to high and ultra-complex. In a recent discussion with a customer I was told they’d only need to consider order management, current capacity and throughput rates over pre-production and assembly lines to cover ad hoc orders – not super-easy, but also not too complex. A shop floor worker for another customer told me a few months ago he exactly knows (after operating the equipment for 20+ years) how to tune the equipment in his responsibility to maintain quality with upcoming thunder storms – this example is not so easy to replicate in a simulation, as a lot of additional information and evaluation of this information is required to achieve reasonable results.

I hope this leads to additional thinking and requests – let me have your thoughts, please.

 

/Chris

Making use of data in an industrial context – what’s on your wish list?

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Again it’s been way to long since I posted here….in the meantime I had a really large number of great customer conversations on how to make use of data in an industrial context. Conversations reach from easy things like creating transparency in shop floor, over to leveraging existing, sophisticated solutions for e.g. automated rescheduling based on advanced analytics, very often reaching more disruptive, challenging topics like Digital Twin or Factory Simulation. 

In that regard I am working with great colleagues including @JerryAOverton and @KaiUHess to set up a series of webinars on such topics. 

A few suggestions right here – let me know what you’d like to see covered in September/October 2016, out of these or others. I will use your comments to get the right experts into those discussions.

  • Digital Twin
  • Factory Simulation
  • Machine Learning in industrial context
  • Smart Analytics to automated manufacturing processes end2end
  • Predictive Supply Chain
  • Integrating IT/OT Islands via MachineLearning based REST APIs
  • CyberSecurity in IoX context
  • Leveraging hybrid cloud in manufacturing
 
I’d really appreciate your comments and wishes here, we definitely want to tell the right stories, including how we solved such situations for customer and/or what we see as emerging technologies fit to  provide value in the (near) future.
 
With your feedback we’ll select & schedule the topics and will publish dates & times here and on csc.com
 
Thanks/Chris

 

 

Real World Digital Transformation

@JDavie25 started an extremely important thread

Too many still think and act as if #Digital #Transformation topics like #IoT #Industry40 etc are pure technical topics.

#Fail !

The value resides in the intelligent combination of business & IT – well, that should be a no-brainer, but are we as IT companies, Service Providers, Consultants etc really acting on this?

There are positive examples – but still not enough. That’s one of the reasons why amongst others so many SMBs do not jump on the train yet – and are thus threatening their existence. As I once wrote somewhere: Not having access to data is bad, having access and not using it in a business appropriate way is a real waste.

We need to face it – the principles of e.g. Orchestrated Manufacturing are old, the algorithms partially exist since centuries. The real benefit comes from fast compute now being a commodity and thus everybody (theoretically) having access to it.

Whoever uses technology just for the sake of using technology will fail, whoever sells technology just for the sake of selling technology might have a quick success but no longstanding customer satisfaction journey.

One always needs to reflect the business needs and tie the use of technology to those use cases.

From high level, there are three main categories of use cases:

1) Product Improvement

2) Production improvement

3) Find a new revenue stream

First step in any exploration with a customer needs to be the agreement of where in those three categories the customer (and thus also the provider) wants to act. Never, absolutely never, do this in IT discussions – this is a business scenario where IT can (should) enable, but not lead.

Second step needs to be a real thorough #UseCase discussion. Identify a few, agree on the PoC, run it fast ( #FailFast ), reflect results and adjust. Only if one is successful with these small steps the chance for doing more comes up, so make sure to focus.

Probably all of the above is #CommonSense – so what are we missing in getting higher acceptance?

Comments welcome

/Chris