Abstract

In the past decade, time series data have been generated from various fields at a rapid speed, which offers a huge opportunity for mining valuable knowledge. As a typical task of time series mining, Time Series Classification (TSC) has attracted lots of attention from both researchers and domain experts due to its broad applications ranging from human activity recognition to smart city governance. Specifically, there is an increasing requirement for performing classification tasks on diverse types of time series data in a timely manner without costly hand-crafting feature engineering. Therefore, in this paper, we propose a framework named Edge4TSC that allows time series to be processed in the edge environment, so that the classification results can be instantly returned to the end-users. Meanwhile, to get rid of the costly hand-crafting feature engineering process, deep learning techniques are applied for automatic feature extraction, which shows competitive or even superior performance compared to state-of-the-art TSC solutions. However, because time series presents complex patterns, even deep learning models are not capable of achieving satisfactory classification accuracy, which motivated us to explore new time series representation methods to help classifiers further improve the classification accuracy. In the proposed framework Edge4TSC, by building the binary distribution tree, a new time series representation method was designed for addressing the classification accuracy concern in TSC tasks. By conducting comprehensive experiments on six challenging time series datasets in the edge environment, the potential of the proposed framework for its generalization ability and classification accuracy improvement is firmly validated with a number of helpful insights.

Highlights

  • In the past decade, the time series data are generated from various domains at a rapid speed [1], which offers a huge opportunity for mining valuable knowledge

  • To meet the increasing requirement of performing classification tasks on diverse types of time series data in a timely manner without costly hand-crafting feature engineering, we propose a framework named Edge4TSC that allows the time series data to be classified on the edge device rather than the remote server

  • When we check the results of Residual Network (ResNet) and Fully Convolutional Network (FCN), it is observed that, for 4 out of 6 datasets, the Time Series Classification (TSC) accuracy is significantly improved, while the average accuracy is boosted to 0.481 and 0.46, respectively

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Summary

Introduction

The time series data are generated from various domains at a rapid speed [1], which offers a huge opportunity for mining valuable knowledge. As a typical task of time series mining, Time Series Classification (TSC) has attracted lots of attention from both researchers and domain experts due to its broad applications, such as human activity recognition [2], clinical data analysis [3], wind power forecasting [4], psychological research [5], complex event detection [6,7] and conjunctivities classification [8]. Computation and storage resources of most end devices are very limited, which makes locally processing collected data impractical. In most cases, raw time series data will be sent to the remote server for further processing. Edge computing [9], as an emerging technique, has become the reasonable

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