Numerical evaluation of effect of using UTM grid maps on emergency response performance -A case of information-Processing Training at an Emergency Operation Center in Tagajo City, Miyagi Prefecture

被引:0
作者
Sato S. [1 ]
Nouchi R. [2 ]
Imamura F. [1 ]
机构
[1] International Research Institute of Disaster Science (IRIDeS), Tohoku University, Sendai-shi
[2] Frontier Research Institute for Interdisciplinary Sciences (FRIIS), Tohoku University, Sendai-shi
来源
| 1600年 / Maruzen Co., Ltd.卷 / E99A期
关键词
Common operational picture (COP); Emergency response training; Geo-information; Information processing; Utm grid;
D O I
10.1587/transfun.e99.a.1560
中图分类号
学科分类号
摘要
It is qualitatively considered that emergency information processing by using UTM grids is effective in generating COP (Common Operational Pictures). Here, we conducted a numerical evaluation based on emergency information-processing training to examine the efficiency of the use of UTM grid maps by staff at the Tagajo City Government office. The results of the demonstration experiment were as follows: 1) The time required for information propagation and mapping with UTM coordinates was less than that with address text consisting of area name and block number. 2) There was no measurable difference in subjective estimates of the training performance of participants with or without the use of UTM grids. 3) Fear of real emergency responses decreased among training participants using UTM grids. 4) Many of the negative free answers on a questionnaire evaluation of participants involved requests regarding the reliability and operability of UTM tools. © 2016 The Institute of Electronics, Information and Communication Engineers.
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页码:1560 / 1566
页数:6
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