license: afl-3.0
language:
- en
- id
metrics:
- name: accuracy
value: 0.9394
- name: precision
value: 0.9413
- name: recall
value: 0.9394
- name: F1-Score
value: 0.9388
library_name: transformers
tags:
- bert
- research abstract
widget:
- text: >-
Following the tsunami in December 2004 in Aceh, Indonesia, there has been
a massive programme of rebuilding permanent houses for the tsunami
victims. The houses are of various designs, and the internal conditions
and thermal performance vary considerably. This paper is aimed at
assessing comfort in a number of these houses, and is based on
measurements from ten designs of post tsunami houses conducted between
22nd May and 4th July 2009. These ten house types are categorized by
different form, design and materials, two houses of each type being
represented in the results. Air and surface temperatures, relative
humidity, and air velocity were measured and questionnaires on thermal
comfort were filled in by the occupants. The results show an interesting
range of temperature and humidity, ranging from 250C-380C indoors and
210C-41.40C outdoors, relative humidity of 40%-86% indoors, compared with
26%-98% outdoors. The households qualify their house comfort by voting
seven thermal sensation scales.
example_title: recovery
Model Card for Model ID
This modelcard aims to be text classification for research abstract regarding to disaster management phase.
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