Year
2023
File Attachment
finalpaper_468_0504081810.pdf412.67 KB
Abstract
We present a dataset for enabling the use of deep learning for understanding the state of operating
machinery. This dataset includes voltage and vibroacoustic measurements taken in a phase-locked
fashion on a variety of common office and lab equipment. All included equipment connects to the wall
via standard electrical cords with a strong emphasis on small hand tools. The distribution package
includes the raw voltage and vibroacoustic data, the metadata, a Jupyter notebook that trains and
evaluates a baseline deep learning model for performing useful sample tasks (e.g., building a classifier to
determine if a single piece of equipment is on or off), a modifiable PyTorch dataloader, and a file to
build an appropriate python environment. Using these tools, the next generation of data science
practitioners can work toward newer and better approaches specifically for analyzing and understanding
signals from operating machinery.