TY - CONF
T1 - A method to classify the signals from artificially prepared defects in GIS using the decision tree method
AU - Hirose, H.
AU - Ohhata, T.
AU - Kotou, Y.
AU - Matsuda, S.
AU - Hikita, M.
AU - Nishimura, T.
AU - Ohtsuka, S.
AU - Matsumoto, S.
AU - Tsuru, S.
AU - Ichimaru, J.
N1 - Funding Information:
†Points of entry included major airports and land borders (primarily the land border with Uganda). Alert surveillance also included postmortem testing of persons suspected to have died from COVID-19. Sentinel surveillance sites tested persons seeking health care for any reason who had symptoms of COVID-19. Outbound travel screening also included some asymptomatic persons tested for nontravel-related reasons. Surveillance source testing was available for all persons in South Sudan regardless of citizenship. All persons who tested positive were supported through case management programs that either support home-based care for asymptomatic, mild, or moderate cases or provided care at a dedicated COVID-19 medical facility for severe or critical cases. §South Sudan’s COVID-19 response is funded by donors, including the Bureau for Humanitarian Assistance, U.S. Agency for International Development; European Civil Protection and Humanitarian Aid Operations, European Commission; Foreign, Commonwealth & Development Office, Government of the United Kingdom; and CDC.
PY - 2005
Y1 - 2005
N2 - On-line diagnosing of GIS (Gas Insulated Switchgears) requires the pattern classification and identification of signals that are emitted from GIS. To classify the patterns correctly, substantial data sets that are emitted by artificially mimicked defects in GIS are needed. Applying the neural networks to the data sets, in general, identification methods of defects in GIS have widely been developed. Some identification system shows a good success such that the misclassification rate is reduced to below 5%; the key features in identification, however, are not obviously revealed in neural networks systems because of nonlinear network structures. The decision tree method that classifies the signals using the feature rules in plain graphical representations can explains the classification rules in clear forms. We applied the decision tree classification method to the signals emitted from the signals by artificially prepared defects in GIS, and find that the method shows a good classification rates over 95% which are comparable to that in neural networks. We also discuss the robustness from noise, and compare the results of the misclassification rates by the two methods.
AB - On-line diagnosing of GIS (Gas Insulated Switchgears) requires the pattern classification and identification of signals that are emitted from GIS. To classify the patterns correctly, substantial data sets that are emitted by artificially mimicked defects in GIS are needed. Applying the neural networks to the data sets, in general, identification methods of defects in GIS have widely been developed. Some identification system shows a good success such that the misclassification rate is reduced to below 5%; the key features in identification, however, are not obviously revealed in neural networks systems because of nonlinear network structures. The decision tree method that classifies the signals using the feature rules in plain graphical representations can explains the classification rules in clear forms. We applied the decision tree classification method to the signals emitted from the signals by artificially prepared defects in GIS, and find that the method shows a good classification rates over 95% which are comparable to that in neural networks. We also discuss the robustness from noise, and compare the results of the misclassification rates by the two methods.
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U2 - 10.1109/iseim.2005.193523
DO - 10.1109/iseim.2005.193523
M3 - Paper
AN - SCOPUS:25644452937
SP - 885
EP - 888
T2 - 2005 International Symposium on Electrical Insulating Materials, ISEIM 2005
Y2 - 5 June 2005 through 9 June 2005
ER -