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Main Authors: He, Jiayi, Chen, Jiao, Liu, Qianmiao, Dai, Suyan, Tang, Jianhua, Liu, Dongpo
Format: Preprint
Published: 2024
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Online Access:https://arxiv.org/abs/2406.15766
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author He, Jiayi
Chen, Jiao
Liu, Qianmiao
Dai, Suyan
Tang, Jianhua
Liu, Dongpo
author_facet He, Jiayi
Chen, Jiao
Liu, Qianmiao
Dai, Suyan
Tang, Jianhua
Liu, Dongpo
contents The Industrial Internet of Things (IIoT) integrates interconnected sensors and devices to support industrial applications, but its dynamic environments pose challenges related to data drift. Considering the limited resources and the need to effectively adapt models to new data distributions, this paper introduces a Continual Learning (CL) approach, i.e., Distillation-based Self-Guidance (DSG), to address challenges presented by industrial streaming data via a novel generative replay mechanism. DSG utilizes knowledge distillation to transfer knowledge from the previous diffusion-based generator to the updated one, improving both the stability of the generator and the quality of reproduced data, thereby enhancing the mitigation of catastrophic forgetting. Experimental results on CWRU, DSA, and WISDM datasets demonstrate the effectiveness of DSG. DSG outperforms the state-of-the-art baseline in accuracy, demonstrating improvements ranging from 2.9% to 5.0% on key datasets, showcasing its potential for practical industrial applications.
format Preprint
id arxiv_https___arxiv_org_abs_2406_15766
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle Continual Learning with Diffusion-based Generative Replay for Industrial Streaming Data
He, Jiayi
Chen, Jiao
Liu, Qianmiao
Dai, Suyan
Tang, Jianhua
Liu, Dongpo
Machine Learning
The Industrial Internet of Things (IIoT) integrates interconnected sensors and devices to support industrial applications, but its dynamic environments pose challenges related to data drift. Considering the limited resources and the need to effectively adapt models to new data distributions, this paper introduces a Continual Learning (CL) approach, i.e., Distillation-based Self-Guidance (DSG), to address challenges presented by industrial streaming data via a novel generative replay mechanism. DSG utilizes knowledge distillation to transfer knowledge from the previous diffusion-based generator to the updated one, improving both the stability of the generator and the quality of reproduced data, thereby enhancing the mitigation of catastrophic forgetting. Experimental results on CWRU, DSA, and WISDM datasets demonstrate the effectiveness of DSG. DSG outperforms the state-of-the-art baseline in accuracy, demonstrating improvements ranging from 2.9% to 5.0% on key datasets, showcasing its potential for practical industrial applications.
title Continual Learning with Diffusion-based Generative Replay for Industrial Streaming Data
topic Machine Learning
url https://arxiv.org/abs/2406.15766