การทดสอบแบบจำลองโครงข่ายประสาทเทียมสำหรับการคาดการณ์เหตุการณ์แผ่นดินไหวในประเทศไทยและกลุ่มรอยเลื่อนพะเยา
This research was to study the prediction of the next earthquake in Thailand and group of Phayao faults using Artificial Neural Network model. The earthquake events were chosen to study as data for importing the model consisted of earthquakes in Thailand and in the Phayao Fault zone during the ye...
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Other Authors: | |
Format: | Theses and Dissertations |
Language: | other |
Published: |
เชียงใหม่ : บัณฑิตวิทยาลัย มหาวิทยาลัยเชียงใหม่
2020
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Online Access: | http://cmuir.cmu.ac.th/jspui/handle/6653943832/69743 |
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Institution: | Chiang Mai University |
Language: | other |
Summary: | This research was to study the prediction of the next earthquake in Thailand and group of Phayao
faults using Artificial Neural Network model. The earthquake events were chosen to study as data for
importing the model consisted of earthquakes in Thailand and in the Phayao Fault zone during the
years 2015–2019 with the size of ≥ 3.5 and ≥ 3.0 magnitude, respectively. The earthquake database
revealed found that Thailand occurred 51 events and group of Phayao faults occurred 32 events. These
data were calculated statistically to be the input variables of the model (Mmean, dE1/2, μ, c, b, η and
ΔM) and the output variable (T value). These variables were obtained from G-R relation equation.
The studied variables have the units in the form of days and hours. The result suggested that the
prediction of models with days as the unit of variables could predict the duration of the next
earthquake in accordance with the actual data more than the model with hours as the unit of variables.
Therefore, the variables in days were appropriate for the earthquake prediction of the model. In order
to increase the forecasting efficiency of models with the variables in days, the architecture of models
with different structures were developed, including structures with 1, 2, 3 and 4 hidden layers and the
number of hidden nodes in 1, 50% and 100% of the number of input variables. Then, comparing
the prediction results of each structures, this study found that the model with 3 layers and the hidden
nodes of 4:4:4 were the most accurate and suitable model for earthquake prediction in Thailand. For
group of Phayao faults, the most accurate and suitable model was the model with 3 hidden layers and the hidden nodes of 4:7:7. By comparing the result of the earthquake prediction in Thailand and
groupof Phayao faults, it was found that the earthquake prediction in Thailand was more accurate than
the earthquake prediction in group of Phayao faults, with r values of 0.899 and 0.878 respectively.
The result of the next earthquake prediction suggested that Thailand will have an earthquake of ≥ 3.5
magnitude between July 1, 2020 and July 29, 2020 and group of Phayao faults will have an earthquake
of ≥ 3.0 magnitude between April 26, 2020 and June 17, 2020. |
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