Long-term stagnation monitoring using machine learning: comparison of artificial neural network model and convolution neural network model

被引:0
|
作者
Jaiyeop Lee
Ilho Kim
机构
[1] Korea Institute of Civil Engineering and Building Technology,Department of Environmental Research
[2] University of Science and Technology,Department of Construction Environment Engineering
来源
关键词
ANN; CNN; DO; Monitoring; Stagnation;
D O I
暂无
中图分类号
学科分类号
摘要
In this study, a device to diffuse the flow of water in a horizontal direction was installed over a small river connected to Nakdonggang River and the dissolved oxygen (DO) concentration within the range of its influence was monitored. A DO probe was installed and operated at three depths of water; the surface layer, middle layer and deep layer. In order to judge stagnant water by operating and controlling the device automatically, an artificial neural network model that worked through profiling by logics and expert learning was applied. For expert learning, the number of all cases generated from DO data was labeled based on expert judgment. In other words, when DO concentration was divided into 7 levels, the number of cases was 343, the experts were requested to determine whether each case was a stagnant water. Machine learning was carried out targeting labelling by experts with the artificial neural network (ANN) and the convolution neural network (CNN). The target datasets for learning were 3 × 1 based on numbers from 1 to 7 and 7 × 7 based on the dot graph. The correct ratio for the ANN model learning result based on the graph was only 29.2%, so it was excluded. The correct ratio for the ANN model learning result based on numbers was 87.2%. The correct ratio for the CNN based on the graph was 94.2%. When machine learning was carried out with 30 to 300 randomly selected targeted graphs, the ANN model showed 74.6% as the correct ratio for up to 150 graphs, which was somewhat low, while the CNN showed 84.3% for 30 graphs and 94.2% for 200 graphs, a gradual increase with results comparable to the total number of graphs. By applying the relevant control logics to actual monitoring results, 91.5% and 87.4% was judged to be stagnant water from points directly and indirectly affected by the device, respectively.
引用
收藏
页码:2117 / 2130
页数:13
相关论文
共 50 条
  • [41] Comparison of Hidden Markov Model and Artificial Neural Network Based Machine Learning Techniques Using DDMFCC Vectors for Emotion Recognition in Kannada
    Kannadaguli, Prashanth
    Bhat, Vidya
    2019 5TH IEEE INTERNATIONAL WIE CONFERENCE ON ELECTRICAL AND COMPUTER ENGINEERING (WIECON-ECE 2019), 2019,
  • [42] Automated Machine Learning Algorithm Using Recurrent Neural Network to Perform Long-Term Time Series Forecasting
    Su, Ying
    Wang, Morgan C.
    Liu, Shuai
    CMC-COMPUTERS MATERIALS & CONTINUA, 2024, 78 (03): : 3529 - 3549
  • [43] Tool Condition Monitoring Using Machine Tool Spindle Current and Long Short-Term Memory Neural Network Model Analysis
    Tursic, Niko
    Klancnik, Simon
    SENSORS, 2024, 24 (08)
  • [44] Lung cancer histopathology image classification using transfer learning with convolution neural network model
    Muniasamy, Anandhavalli
    Alquhtani, Salma Abdulaziz Saeed
    Bilfaqih, Syeda Meraj
    Balaji, Prasanalakshmi
    Karunakaran, Gauthaman
    TECHNOLOGY AND HEALTH CARE, 2024, 32 (02) : 1199 - 1210
  • [45] Developing an artificial neural network model to predict the durability of the RC beam by machine learning approaches
    Yu, XuanRui
    CASE STUDIES IN CONSTRUCTION MATERIALS, 2022, 17
  • [46] Classification and Comparison of Cardiotocography Signals with Artificial Neural Network and Extreme Learning Machine
    Comert, Zafer
    Kocamaz, Adnan Fatih
    Gungor, Sami
    2016 24TH SIGNAL PROCESSING AND COMMUNICATION APPLICATION CONFERENCE (SIU), 2016, : 1493 - 1496
  • [47] Dynamic Model of Distribution Network Cell Using Artificial Neural Network Approach
    Fazliana, F.
    Zali, S. M.
    Norfadilah, R.
    Ismail, Mohd Alif
    2016 INTERNATIONAL CONFERENCE ON ADVANCES IN ELECTRICAL, ELECTRONIC AND SYSTEMS ENGINEERING (ICAEES), 2016, : 484 - 487
  • [48] ICA based Artificial Neural Network model for Voltage Stability Monitoring
    Sajan, K. S.
    Kumar, Vishal
    Tyagi, Barjeev
    TENCON 2015 - 2015 IEEE REGION 10 CONFERENCE, 2015,
  • [49] An artificial neural network to model response of a radiotherapy beam monitoring system
    Cho, Young-Bin
    Farrokhkish, Makan
    Norrlinger, Bern
    Heaton, Robert
    Jaffray, David
    Islam, Mohammad
    MEDICAL PHYSICS, 2020, 47 (04) : 1983 - 1994
  • [50] Monitoring diesel engine working condition by artificial neural network model
    Shi, YG
    Dong, JX
    Feng, XL
    CONDITION MONITORING '97, 1997, : 338 - 340