G-CMP: Graph-enhanced Contextual Matrix Profile for unsupervised anomaly detection in sensor-based remote health monitoring

11/29/2022
by   Nivedita Bijlani, et al.
0

Sensor-based remote health monitoring is used in industrial, urban and healthcare settings to monitor ongoing operation of equipment and human health. An important aim is to intervene early if anomalous events or adverse health is detected. In the wild, these anomaly detection approaches are challenged by noise, label scarcity, high dimensionality, explainability and wide variability in operating environments. The Contextual Matrix Profile (CMP) is a configurable 2-dimensional version of the Matrix Profile (MP) that uses the distance matrix of all subsequences of a time series to discover patterns and anomalies. The CMP is shown to enhance the effectiveness of the MP and other SOTA methods at detecting, visualising and interpreting true anomalies in noisy real world data from different domains. It excels at zooming out and identifying temporal patterns at configurable time scales. However, the CMP does not address cross-sensor information, and cannot scale to high dimensional data. We propose a novel, self-supervised graph-based approach for temporal anomaly detection that works on context graphs generated from the CMP distance matrix. The learned graph embeddings encode the anomalous nature of a time context. In addition, we evaluate other graph outlier algorithms for the same task. Given our pipeline is modular, graph construction, generation of graph embeddings, and pattern recognition logic can all be chosen based on the specific pattern detection application. We verified the effectiveness of graph-based anomaly detection and compared it with the CMP and 3 state-of-the art methods on two real-world healthcare datasets with different anomalies. Our proposed method demonstrated better recall, alert rate and generalisability.

READ FULL TEXT

page 1

page 4

page 9

research
01/31/2023

Graph-based Time-Series Anomaly Detection: A Survey

With the recent advances in technology, a wide range of systems continue...
research
12/27/2022

Anomaly detection in laser-guided vehicles' batteries: a case study

Detecting anomalous data within time series is a very relevant task in p...
research
06/13/2021

Graph Neural Network-Based Anomaly Detection in Multivariate Time Series

Given high-dimensional time series data (e.g., sensor data), how can we ...
research
08/27/2021

Anomaly Detection on IT Operation Series via Online Matrix Profile

Anomaly detection on time series is a fundamental task in monitoring the...
research
08/31/2020

Data Anomaly Detection for Structural Health Monitoring of Bridges using Shapelet Transform

With the wider availability of sensor technology, a number of Structural...
research
10/22/2020

Early Anomaly Detection in Time Series: A Hierarchical Approach for Predicting Critical Health Episodes

The early detection of anomalous events in time series data is essential...
research
01/31/2019

Unsupervised Prediction of Negative Health Events Ahead of Time

The emergence of continuous health monitoring and the availability of an...

Please sign up or login with your details

Forgot password? Click here to reset