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Main Authors: Liu, Chengzhi, Tao, Zheng, Luo, Zihong, Liu, Chenghao
Format: Preprint
Published: 2024
Subjects:
Online Access:https://arxiv.org/abs/2402.05423
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author Liu, Chengzhi
Tao, Zheng
Luo, Zihong
Liu, Chenghao
author_facet Liu, Chengzhi
Tao, Zheng
Luo, Zihong
Liu, Chenghao
contents Time series analysis and modelling constitute a crucial research area. Traditional artificial neural networks struggle with complex, non-stationary time series data due to high computational complexity, limited ability to capture temporal information, and difficulty in handling event-driven data. To address these challenges, we propose a Multi-modal Time Series Analysis Model Based on Spiking Neural Network (MTSA-SNN). The Pulse Encoder unifies the encoding of temporal images and sequential information in a common pulse-based representation. The Joint Learning Module employs a joint learning function and weight allocation mechanism to fuse information from multi-modal pulse signals complementary. Additionally, we incorporate wavelet transform operations to enhance the model's ability to analyze and evaluate temporal information. Experimental results demonstrate that our method achieved superior performance on three complex time-series tasks. This work provides an effective event-driven approach to overcome the challenges associated with analyzing intricate temporal information. Access to the source code is available at https://github.com/Chenngzz/MTSA-SNN}{https://github.com/Chenngzz/MTSA-SNN
format Preprint
id arxiv_https___arxiv_org_abs_2402_05423
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle MTSA-SNN: A Multi-modal Time Series Analysis Model Based on Spiking Neural Network
Liu, Chengzhi
Tao, Zheng
Luo, Zihong
Liu, Chenghao
Computer Vision and Pattern Recognition
Time series analysis and modelling constitute a crucial research area. Traditional artificial neural networks struggle with complex, non-stationary time series data due to high computational complexity, limited ability to capture temporal information, and difficulty in handling event-driven data. To address these challenges, we propose a Multi-modal Time Series Analysis Model Based on Spiking Neural Network (MTSA-SNN). The Pulse Encoder unifies the encoding of temporal images and sequential information in a common pulse-based representation. The Joint Learning Module employs a joint learning function and weight allocation mechanism to fuse information from multi-modal pulse signals complementary. Additionally, we incorporate wavelet transform operations to enhance the model's ability to analyze and evaluate temporal information. Experimental results demonstrate that our method achieved superior performance on three complex time-series tasks. This work provides an effective event-driven approach to overcome the challenges associated with analyzing intricate temporal information. Access to the source code is available at https://github.com/Chenngzz/MTSA-SNN}{https://github.com/Chenngzz/MTSA-SNN
title MTSA-SNN: A Multi-modal Time Series Analysis Model Based on Spiking Neural Network
topic Computer Vision and Pattern Recognition
url https://arxiv.org/abs/2402.05423