Artificial Neural Networks and Ensemble Learning for Enhanced Liquefaction Prediction in Smart Cities

被引:0
|
作者
Cong, Yuxin [1 ]
Inazumi, Shinya [2 ]
机构
[1] Shibaura Inst Technol, Grad Sch Engn & Sci, Tokyo 1358548, Japan
[2] Shibaura Inst Technol, Coll Engn, Tokyo 1358548, Japan
来源
SMART CITIES | 2024年 / 7卷 / 05期
关键词
artificial neural networks; ensemble learning; geotechnical information; prediction; smart cities; IDENTIFICATION; CLASSIFICATION; LITHOLOGY; MODELS;
D O I
10.3390/smartcities7050113
中图分类号
TM [电工技术]; TN [电子技术、通信技术];
学科分类号
0808 ; 0809 ;
摘要
Highlights What are the main findings? The bagging prediction model demonstrated approximately 20% higher accuracy compared to the single ANN model. Accurate prediction of bearing layer depth is critical for improving urban resilience and infrastructure planning in smart cities. What are the implications of the main finding? The improved accuracy of the bagging model supports more reliable geotechnical investigations, which can lead to safer urban development in earthquake-prone areas. Improved prediction models for bearing layer depth can reduce the need for extensive in situ testing, lowering costs and increasing the efficiency of construction projects.Highlights What are the main findings? The bagging prediction model demonstrated approximately 20% higher accuracy compared to the single ANN model. Accurate prediction of bearing layer depth is critical for improving urban resilience and infrastructure planning in smart cities. What are the implications of the main finding? The improved accuracy of the bagging model supports more reliable geotechnical investigations, which can lead to safer urban development in earthquake-prone areas. Improved prediction models for bearing layer depth can reduce the need for extensive in situ testing, lowering costs and increasing the efficiency of construction projects.Abstract This paper examines how smart cities can address land subsidence and liquefaction in the context of rapid urbanization in Japan. Since the 1960s, liquefaction has been an important topic in geotechnical engineering, and extensive efforts have been made to evaluate soil resistance to liquefaction. Currently, there is a lack of machine learning applications in smart cities that specifically target geological hazards. This study aims to develop a high-performance prediction model for estimating the depth of the bearing layer, thereby improving the accuracy of geotechnical investigations. The model was developed using actual survey data from 433 points in Setagaya-ku, Tokyo, by applying two machine learning techniques: artificial neural networks (ANNs) and bagging. The results indicate that machine learning offers significant advantages in predicting the depth of the bearing layer. Furthermore, the prediction performance of ensemble learning improved by about 20% compared to ANNs. Both interdisciplinary approaches contribute to risk prediction and mitigation, thereby promoting sustainable urban development and underscoring the potential of future smart cities.
引用
收藏
页码:2910 / 2924
页数:15
相关论文
共 50 条
  • [21] Comparison of viscosity prediction capabilities of regression models and artificial neural networks
    Gulum, Mert
    Onay, Funda Kutlu
    Bilgin, Atilla
    ENERGY, 2018, 161 : 361 - 369
  • [22] On the importance of training methods and ensemble aggregation for runoff prediction by means of artificial neural networks
    Piotrowski, Adam P.
    Napiorkowski, Jaroslaw J.
    Osuch, Marzena
    Napiorkowski, Maciej J.
    HYDROLOGICAL SCIENCES JOURNAL-JOURNAL DES SCIENCES HYDROLOGIQUES, 2016, 61 (10): : 1903 - 1925
  • [23] Rainfall-runoff models using artificial neural networks for ensemble streamflow prediction
    Jeong, DI
    Kim, YO
    HYDROLOGICAL PROCESSES, 2005, 19 (19) : 3819 - 3835
  • [24] Electricity Consumption Prediction in an Electronic System Using Artificial Neural Networks
    Stosovic, Miona Andrejevic
    Radivojevic, Novak
    Ivanova, Malinka
    ELECTRONICS, 2022, 11 (21)
  • [25] Prediction of Surface Roughness and Adhesion Strength of Wood by Artificial Neural Networks
    Ozsahin, Sukru
    Singer, Hilal
    JOURNAL OF POLYTECHNIC-POLITEKNIK DERGISI, 2019, 22 (04): : 889 - 900
  • [26] FIBER QUALITY PREDICTION USING NIR SPECTRAL DATA: TREE-BASED ENSEMBLE LEARNING VS DEEP NEURAL NETWORKS
    Nasir, Vahid
    Ali, Syed Danish
    Mohammadpanah, Ahmad
    Raut, Sameen
    Nabavi, Mohamad
    Dahlen, Joseph
    Schimleck, Laurence
    WOOD AND FIBER SCIENCE, 2023, 55 (01): : 100 - 115
  • [27] Enhanced Accuracy of Heart Disease Prediction using Machine Learning and Recurrent Neural Networks Ensemble Majority Voting Method
    Javid, Irfan
    Alsaedi, Ahmed Khalaf Zager
    Ghazali, Rozaida
    INTERNATIONAL JOURNAL OF ADVANCED COMPUTER SCIENCE AND APPLICATIONS, 2020, 11 (03) : 540 - 551
  • [28] Soil Categorization and Liquefaction Prediction Using Deep Learning and Ensemble Learning Algorithms
    Ghani, Sufyan
    Thapa, Ishwor
    Adhikari, Dhan Kumar
    Waris, Kenue Abdul
    TRANSPORTATION INFRASTRUCTURE GEOTECHNOLOGY, 2025, 12 (01)
  • [29] An Ensemble Learning-Based Prediction Model for Image Forensics From IoT Camera in Smart Cities
    Xu, Ge
    Xiao, Yongqiang
    Wang, Tao
    Guan, Yin
    Xiao, Jinhua
    Zhong, Zhixiong
    Ye, Dongyi
    Lyu, Jia
    IEEE ACCESS, 2020, 8 (08): : 222117 - 222125
  • [30] Advanced breast cancer prediction using Deep Neural Networks integrated with ensemble models
    Al Reshan, Mana Saleh
    Amin, Samina
    Zeb, Muhammad Ali
    Sulaiman, Adel
    Shaikh, Asadullah
    Alshahrani, Hani
    Rajab, Khairan
    CHEMOMETRICS AND INTELLIGENT LABORATORY SYSTEMS, 2025, 262