TY - JOUR
T1 - Creation of temporal model for prioritized transmission in predictive spatial-monitoring using machine learning
AU - Sato, Keiichiro
AU - Shinkuma, Ryoichi
AU - Sato, Takehiro
AU - Oki, Eiji
AU - Iwai, Takanori
AU - Onishi, Takeo
AU - Nobukiyo, Takahiro
AU - Kanetomo, Dai
AU - Satoda, Kozo
N1 - Funding Information:
This work was supported in part by JST PRESTO Grant no. JPMJPR1854. Also, the research results were partly obtained from the commissioned research by National Institute of Information and Communications Technology (NICT), Japan.
Publisher Copyright:
Copyright © 2021 The Institute of Electronics, Information and Communication Engineers
PY - 2021
Y1 - 2021
N2 - Predictive spatial-monitoring, which predicts spatial information such as road traffic, has attracted much attention in the context of smart cities. Machine learning enables predictive spatial-monitoring by using a large amount of aggregated sensor data. Since the capacity of mobile networks is strictly limited, serious transmission delays occur when loads of communication traffic are heavy. If some of the data used for predictive spatial-monitoring do not arrive on time, prediction accuracy degrades because the prediction has to be done using only the received data, which implies that data for prediction are 'delay-sensitive'. A utility-based allocation technique has suggested modeling of temporal characteristics of such delay-sensitive data for prioritized transmission. However, no study has addressed temporal model for prioritized transmission in predictive spatial-monitoring. Therefore, this paper proposes a scheme that enables the creation of a temporal model for predictive spatial-monitoring. The scheme is roughly composed of two steps: the first involves creating training data from original time-series data and a machine learning model that can use the data, while the second step involves modeling a temporal model using feature selection in the learning model. Feature selection enables the estimation of the importance of data in terms of how much the data contribute to prediction accuracy from the machine learning model. This paper considers road-traffic prediction as a scenario and shows that the temporal models created with the proposed scheme can handle real spatial datasets. A numerical study demonstrated how our temporal model works effectively in prioritized transmission for predictive spatial-monitoring in terms of prediction accuracy.
AB - Predictive spatial-monitoring, which predicts spatial information such as road traffic, has attracted much attention in the context of smart cities. Machine learning enables predictive spatial-monitoring by using a large amount of aggregated sensor data. Since the capacity of mobile networks is strictly limited, serious transmission delays occur when loads of communication traffic are heavy. If some of the data used for predictive spatial-monitoring do not arrive on time, prediction accuracy degrades because the prediction has to be done using only the received data, which implies that data for prediction are 'delay-sensitive'. A utility-based allocation technique has suggested modeling of temporal characteristics of such delay-sensitive data for prioritized transmission. However, no study has addressed temporal model for prioritized transmission in predictive spatial-monitoring. Therefore, this paper proposes a scheme that enables the creation of a temporal model for predictive spatial-monitoring. The scheme is roughly composed of two steps: the first involves creating training data from original time-series data and a machine learning model that can use the data, while the second step involves modeling a temporal model using feature selection in the learning model. Feature selection enables the estimation of the importance of data in terms of how much the data contribute to prediction accuracy from the machine learning model. This paper considers road-traffic prediction as a scenario and shows that the temporal models created with the proposed scheme can handle real spatial datasets. A numerical study demonstrated how our temporal model works effectively in prioritized transmission for predictive spatial-monitoring in terms of prediction accuracy.
KW - Feature selection
KW - Machine learning
KW - Predictive spatial-monitoring
KW - Temporal model
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U2 - 10.1587/transcom.2020EBP3175
DO - 10.1587/transcom.2020EBP3175
M3 - Article
AN - SCOPUS:85111997365
SN - 0916-8516
VL - E104B
SP - 951
EP - 960
JO - IEICE Transactions on Communications
JF - IEICE Transactions on Communications
IS - 8
ER -