LGDec 27, 2022

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

arXiv:2212.13513v11 citationsh-index: 31
Originality Synthesis-oriented
AI Analysis

This is an incremental application of existing anomaly detection methods to a specific industrial domain for monitoring battery health.

The paper tackled the problem of detecting anomalies in laser-guided vehicle batteries to prevent production interruptions and optimize maintenance scheduling, applying time series anomaly detection methods in an industrial case study.

Detecting anomalous data within time series is a very relevant task in pattern recognition and machine learning, with many possible applications that range from disease prevention in medicine, e.g., detecting early alterations of the health status before it can clearly be defined as "illness" up to monitoring industrial plants. Regarding this latter application, detecting anomalies in an industrial plant's status firstly prevents serious damages that would require a long interruption of the production process. Secondly, it permits optimal scheduling of maintenance interventions by limiting them to urgent situations. At the same time, they typically follow a fixed prudential schedule according to which components are substituted well before the end of their expected lifetime. This paper describes a case study regarding the monitoring of the status of Laser-guided Vehicles (LGVs) batteries, on which we worked as our contribution to project SUPER (Supercomputing Unified Platform, Emilia Romagna) aimed at establishing and demonstrating a regional High-Performance Computing platform that is going to represent the main Italian supercomputing environment for both computing power and data volume.

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