25.03.2021, 15:47
Hi,
I am trying to figure how to get data from my heat pump via modbus tcp.
I have connection with my device:
![](data:image/png;base64,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But is there some kind of tutorial how to read/write data from my device in LM?
![](data:image/png;base64,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I got a parameter list from Nibe, with all the objects.
I am trying to figure how to get data from my heat pump via modbus tcp.
I have connection with my device:
But is there some kind of tutorial how to read/write data from my device in LM?
I got a parameter list from Nibe, with all the objects.