Recognise vibrations before something crashes.

An unexpected failure often starts with a subtle deviation. TinyML models recognise vibration patterns that deviate from normal behaviour. So you get a warning before a bearing wears out or a shaft misaligns. You save on expensive downtime and parts.

smartly interpret temperature and sound.

Tiny sensors can measure temperature spikes or unusual noises. By analysing that data directly locally, you can quickly see if something is overheating or vibrating. No need to wait for reports - you get signals directly from your own machine.

learning from normal behaviour.

Even without error data, TinyML can learn what is ‘normal’. As a result, the system itself recognises what deviates from the standard. So the model gets smarter the more you use it. This is how you build predictive maintenance on your own process.

TinyML is not future music. It is here now. And it fits on your existing machines - without expensive modifications. In the Fieldlab, we test these kinds of applications with companies like you. Do you also join us in making it sustainable and accelerating? We would like to think along with you.

Want to know more?

For all information on the Fieldlab Edge AI for Smart Industry, contact us at fieldlab@techport.nl. We will get back to you as soon as possible.

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