Data-aided Sensing for Gaussian Process Regression in IoT Systems
- URL: http://arxiv.org/abs/2011.11725v1
- Date: Mon, 23 Nov 2020 20:59:51 GMT
- Title: Data-aided Sensing for Gaussian Process Regression in IoT Systems
- Authors: Jinho Choi
- Abstract summary: We use data-aided sensing to learn data sets collected from sensors in Internet-of-Things systems.
We show that modified multichannel ALOHA with predictions can help improve the performance of Gaussian process regression with data-aided sensing.
- Score: 48.523643863141466
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: In this paper, for efficient data collection with limited bandwidth,
data-aided sensing is applied to Gaussian process regression that is used to
learn data sets collected from sensors in Internet-of-Things systems. We focus
on the interpolation of sensors' measurements from a small number of
measurements uploaded by a fraction of sensors using Gaussian process
regression with data-aided sensing. Thanks to active sensor selection, it is
shown that Gaussian process regression with data-aided sensing can provide a
good estimate of a complete data set compared to that with random selection.
With multichannel ALOHA, data-aided sensing is generalized for distributed
selective uploading when sensors can have feedback of predictions of their
measurements so that each sensor can decide whether or not it uploads by
comparing its measurement with the predicted one. Numerical results show that
modified multichannel ALOHA with predictions can help improve the performance
of Gaussian process regression with data-aided sensing compared to conventional
multichannel ALOHA with equal uploading probability.
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