Earthquake Shake Detecting by Data Mining from Social Network Platforms
Abstract
:1. Introduction
2. Methodology
- Term 1: The author identifies the keyword of the location in the posts to group them into the same region because there is no location information for users in the PTT BBS. This step will classify the message into different regions using the location provided in the posts. The data will not be adopted without location information.
- Term 2: To derive the seismic shaking scale, the author applies the semantic analysis of a post to identify the keyword of the disaster information, such as the shaking of the body, feeling or descriptions of damage during the earthquake.
3. Results and Discussions
4. Conclusions
Funding
Acknowledgments
Conflicts of Interest
References
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Level | Feelings for Earthquake | Inside of House for Earthquake |
---|---|---|
0 | No feelings. | |
1 | A slight tremor can be felt. | |
2 | The most people can feel quake. | The pendants tremor slightly. |
3 | Someone has feeling of fear. | The house and pendants are shaking. |
4 | Startled and woke up at midnight. | The house is shaking violently and the heavy furniture moved. |
5 | Most people feel scared. | The wall has a crack and heavy furniture may overturn. |
6 | Shaking violently and standing with difficulty. | Some buildings have damage, the door and windows maybe deformed. |
7 | Shaking violently cannot move. | Some building suffered great damage and collapsed, almost all furniture was overturned. |
Attributes | Entropy(S) | Gain(S,Ai) |
---|---|---|
Body-feeling | 0.7401 | 0.1339 |
Sleep-affecting | 0.7401 | 0.1339 |
Furniture-toppling | 0.7971 | 0.0769 |
Damage situation of house | 0.8433 | 0.0307 |
Case | Year | Month | Day | Hour | Min | Latitude | Longitude | Depth | Magnitude |
---|---|---|---|---|---|---|---|---|---|
1 | 2013 | 3 | 27 | 10 | 03 | 121.05 | 23.90 | 19.4 | 6.2 |
2 | 2013 | 10 | 31 | 20 | 02 | 121.35 | 23.57 | 15.0 | 6.4 |
3 | 2016 | 2 | 6 | 03 | 57 | 120.54 | 22.92 | 14.6 | 6.6 |
4 | 2016 | 5 | 12 | 12 | 29 | 122.02 | 24.69 | 12.0 | 5.7 |
5 | 2017 | 2 | 11 | 01 | 12 | 120.14 | 22.87 | 16.2 | 5.7 |
Events | Case 1 M6.2 | Case 2 M6.4 | Case 3 M6.6 | Case 4 M5.7 | Case 5 M5.7 | |
---|---|---|---|---|---|---|
Regions | ||||||
Keelung | 2–3 (2) | 2 (2) | 1 (1) | 3–4 (3) | 0 (0) | |
Yilan | 2–3 (2) | 3–5 (2) | 1–2 (2) | 3–6 (3) | 1 (X) | |
Taipei | 2–3 (3) | 3 (4) | 1–2 (2) | 3 (3) | 0 (1) | |
New Taipei | 1–2 (3) | 2–4 (2) | 1–2 (3) | 2–4 (3) | 0 (1) | |
Taoyuan | 2 (2) | 3–4 (3) | 2 (2) | 3–4 (3) | 0 (0) | |
Hsinchu | 3 (2) | 3 (3) | 2 (2) | 3–4 (2) | 1 (1) | |
Miaoli | 3–5 (3) | 3 (2) | 2–3 (3) | 2–3 (3) | 1 (1) | |
Taichung | 4–5 (5) | 3 (4) | 3 (3) | 1–2 (2) | 1–2 (2) | |
Changhua | 4–5 (4) | 2–3 (3) | 3–4 (4) | 1–2 (2) | 2 (2) | |
Nantou | 4–6 (3) | 2–5 (2) | 2–3 (3) | 1–2 (X) | 1–2 (1) | |
Yunlin | 4 (X) | 3 (3) | 4 (3) | 2 (1) | 2–3 (2) | |
Chiayi | 3–4 (2) | 3 (3) | 5 (4) | 1–2 (1) | 3 (3) | |
Tainan | 2–4 (3) | 2–3 (3) | 5–7 (7) | 1 (1) | 2–6 (5) | |
Kaohsiung | 2 (2) | 2 (2) | 5 (5) | 1 (1) | 2–4 (4) | |
Pingtung | 1–2 (2) | 2–3 (2) | 3 (3) | 1 (X) | 1–3 (2) | |
Taitung | 1–2 (X) | 1–3 (2) | 3 (X) | 1 (X) | 1–2 (X) | |
Hualien | 2–3 (2) | 3–6 (5) | 2–3 (2) | 1–4 (1) | 1 (X) |
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Chuo, Y.-J. Earthquake Shake Detecting by Data Mining from Social Network Platforms. Appl. Sci. 2020, 10, 812. https://doi.org/10.3390/app10030812
Chuo Y-J. Earthquake Shake Detecting by Data Mining from Social Network Platforms. Applied Sciences. 2020; 10(3):812. https://doi.org/10.3390/app10030812
Chicago/Turabian StyleChuo, Yu-Jung. 2020. "Earthquake Shake Detecting by Data Mining from Social Network Platforms" Applied Sciences 10, no. 3: 812. https://doi.org/10.3390/app10030812
APA StyleChuo, Y. -J. (2020). Earthquake Shake Detecting by Data Mining from Social Network Platforms. Applied Sciences, 10(3), 812. https://doi.org/10.3390/app10030812