Industrial PLC Network Modeling and Parameter Identification Using Sensitivity Analysis and Mean Field Variational Inference

Raelynn Wonnacott,David S. Ching, John Chilleri,Cosmin Safta, Lee Rashkin,Thomas A. Reichardt

Sensors (Basel, Switzerland)(2023)

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摘要
A multiple input multiple output (MIMO) power line communication (PLC) model for industrial facilities was developed that uses the physics of a bottom-up model but can be calibrated like top-down models. The PLC model considers 4-conductor cables (three-phase conductors and a ground conductor) and has several load types, including motor loads. The model is calibrated to data using mean field variational inference with a sensitivity analysis to reduce the parameter space. The results show that the inference method can accurately identify many of the model parameters, and the model is accurate even when the network is modified.
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关键词
power line communications,mean field variational inference,sensitivity analysis,MIMO
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