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Help Needed for NILM-based Load Disaggregation of Fans and Mixer Grinders #2

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YSSAINITISH18052000 opened this issue Sep 16, 2024 · 3 comments
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@YSSAINITISH18052000
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Hello everyone,

I am a student working on load disaggregation using a data acquisition device sampling Active Power at 1Hz. I have successfully implemented a few deep learning models for this purpose but none of these seem to give any good results with appliances multiple states especially Fans, Mixer Grinders.

Could anyone provide guidance or point me in the right direction on how to tackle this issue?

Thank you in advance for any help you can provide!

@khirds
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khirds commented Sep 18, 2024

What models have you tested so far ,are you using your own data or available datasets

@goruck goruck self-assigned this Sep 28, 2024
@goruck goruck added the question Further information is requested label Sep 28, 2024
@goruck
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goruck commented Sep 28, 2024

@YSSAINITISH18052000 I used the REFIT dataset to train the models described in this project but only focused on kettle, microwave, fridge,, dishwasher and washing machine appliance types. However, the REFIT data set does contain limited data for fans and grinders/mixers. You can fine tune one of my appliance models with the REFIT data for fans and mixers/grinders and or fine tune with locally generated data or data from another data set. My models work well for appliances with multiple states so this approach should work. If you want to do this, I can send you the weight of my models.

@khirds
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khirds commented Sep 28, 2024 via email

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