การพยากรณ์ระดับน้ำในสถานีวัดน้ำโดยใช้เทคนิคโครงข่าย ประสาทเทียม

This independent study is to study and apply the artificial neural network model to predict the water level in the river for flash flood preparedness. The experimenting with the water level in the past with different periods (i.e., 10 minutes, in average of one hour, and at one hour) is applied to p...

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Bibliographic Details
Main Author: บุญนาท สุวรรณศรี
Other Authors: อาจารย์ ดร.ภาสกร แช่มประเสริฐ
Format: Independent Study
Language:Thai
Published: เชียงใหม่ : บัณฑิตวิทยาลัย มหาวิทยาลัยเชียงใหม่ 2020
Online Access:http://cmuir.cmu.ac.th/jspui/handle/6653943832/69249
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Institution: Chiang Mai University
Language: Thai
Description
Summary:This independent study is to study and apply the artificial neural network model to predict the water level in the river for flash flood preparedness. The experimenting with the water level in the past with different periods (i.e., 10 minutes, in average of one hour, and at one hour) is applied to predict water level in the future. Moreover, the water level data from two monitoring stations is applied to evaluate the predicted water level and compared with the data from only one station. The simulation results show that the predicted water level at 10 minutes is accurate as the average error is lower than the set criteria of 0.05. It is also found that the 3 major factors affecting the water level prediction using the artificial neural network, which are the numbers of data, the numbers of hiding levels and the time of prediction. It also reveals that the higher the number of data, the more accurate or precise it could be; however, it takes a long time. The more numbers of hiding levels, the more time it took the artificial neural network for the measurement. The lesser the prediction time, the more precision the prediction is. However, the factors of the artificial neural network (e.g., the number of nodes, hiding levels, the number of input data) is also required to be carefully designed.