TSML (Time Series Machine Learnng)
Paulito Palmes, Joern Ploennigs, Niall Brady

TL;DR
TSML is a new framework that uses lightweight filters to efficiently analyze large-scale industrial time series data for anomaly detection, pattern discovery, and predictive maintenance.
Contribution
It introduces a pipeline of lightweight filters for parallel processing of industrial time series data, enabling effective data exploitation for various applications.
Findings
Efficient processing of large time series data
Improved anomaly detection capabilities
Enhanced predictive maintenance support
Abstract
Over the past years, the industrial sector has seen many innovations brought about by automation. Inherent in this automation is the installation of sensor networks for status monitoring and data collection. One of the major challenges in these data-rich environments is how to extract and exploit information from these large volume of data to detect anomalies, discover patterns to reduce downtimes and manufacturing errors, reduce energy usage, predict faults/failures, effective maintenance schedules, etc. To address these issues, we developed TSML. Its technology is based on using the pipeline of lightweight filters as building blocks to process huge amount of industrial time series data in parallel.
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Taxonomy
TopicsTime Series Analysis and Forecasting · Neural Networks and Applications · Evolutionary Algorithms and Applications
