LGAIJun 5, 2025

Event Classification of Accelerometer Data for Industrial Package Monitoring with Embedded Deep Learning

arXiv:2506.05435v1h-index: 10COMPSAC
Originality Synthesis-oriented
AI Analysis

This work addresses package state detection for industrial logistics to improve efficiency and sustainability, but it is incremental as it applies existing methods to a specific domain.

The study tackled the problem of classifying accelerometer data for industrial package monitoring using an embedded deep learning system, achieving precisions of 94.54% and 95.83% for two classes and reducing model size by a factor of four.

Package monitoring is an important topic in industrial applications, with significant implications for operational efficiency and ecological sustainability. In this study, we propose an approach that employs an embedded system, placed on reusable packages, to detect their state (on a Forklift, in a Truck, or in an undetermined location). We aim to design a system with a lifespan of several years, corresponding to the lifespan of reusable packages. Our analysis demonstrates that maximizing device lifespan requires minimizing wake time. We propose a pipeline that includes data processing, training, and evaluation of the deep learning model designed for imbalanced, multiclass time series data collected from an embedded sensor. The method uses a one-dimensional Convolutional Neural Network architecture to classify accelerometer data from the IoT device. Before training, two data augmentation techniques are tested to solve the imbalance problem of the dataset: the Synthetic Minority Oversampling TEchnique and the ADAptive SYNthetic sampling approach. After training, compression techniques are implemented to have a small model size. On the considered twoclass problem, the methodology yields a precision of 94.54% for the first class and 95.83% for the second class, while compression techniques reduce the model size by a factor of four. The trained model is deployed on the IoT device, where it operates with a power consumption of 316 mW during inference.

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