A machine learning-based protocol to support visual tree assessment and risk of failure classification on a university campus

被引:0
|
作者
Srivanit, Manat [1 ,2 ]
Kaewkhow, Suppawad [1 ]
机构
[1] Thammasat Univ, Fac Architecture & Planning, Pathum Thani 12121, Thailand
[2] Thammasat Univ, Fac Architecture & Planning, Res Cluster Livable Environm & Architectural Desig, Pathum Thani 12121, Thailand
关键词
Bosch; Machine learning; Decision tree analysis; Visual tree assessment; Tree management; URBAN TREES; IDENTIFICATION; IMPACT; FOREST; PARAMETERS; GROWTH;
D O I
10.1016/j.ufug.2024.128420
中图分类号
Q94 [植物学];
学科分类号
071001 ;
摘要
Tree failure risk assessment involves visually evaluating trees by considering three essential factors: identifying potential targets that may be affected if the tree falls, assessing the potential consequences of the fall, and determining the likelihood of tree failure. This assessment was used to evaluate the safety of trees in a study area at Thammasat University Rangsit Center, Thailand. In two priority-selected areas for tree risk management, 3659 trees representing 139 species were assessed, and to understand the spatial patterns of tree health conditions and risks, the study employed a GIS-based mapping methodology to manage tree inventory and analyze the spatial patterns of tree health conditions and risks. A decision tree protocol based on the chi-squared automatic interaction detector (CHAID) algorithm, which employs machine learning, was used to evaluate the risk of tree failure. Our study successfully identified seven variables that are crucial in assessing the risk of tree failure. According to the findings, the overall accuracy rate of failure risk classification was 87.35 %, and of all the trees evaluated, 280 trees (7.65 % of the total) representing 34 different species were at high risk. It is recommended to start the assessment process by evaluating important variables such as tree cavities, pest infestations, mechanical damage, dead branches, and epicormic growth. Machine learning protocols, integrated with GIS, are shown to be effective, spatially-explicit, decision-support tools for detecting tree failure potential and assessing risk ratings. Application of these tools improves tree risk management practices.
引用
收藏
页数:11
相关论文
共 50 条
  • [41] Machine learning-based classification of valvular heart disease using cardiovascular risk factors
    Aslam, Muhammad Usman
    Xu, Songhua
    Hussain, Sajid
    Waqas, Muhammad
    Abiodun, Nafiu Lukman
    SCIENTIFIC REPORTS, 2024, 14 (01):
  • [42] A NOVEL MACHINE LEARNING-BASED RISK CLASSIFICATION FOR VASCULAR DAMAGE IN MEN WITH ERECTILE DYSFUNCTION
    Belladelli, Federico
    Pozzi, Edoardo
    Corsini, Christian
    Bertini, Alessandro
    Raffo, Massimiliano
    Negri, Fausto
    Cattafi, Francesco
    Oddo, Marco
    Malvestiti, Marco
    Ramadani, Riccardo
    Candela, Luigi
    Capogrosso, Paolo
    Boeri, Luca
    Zahiti, Leutrim
    Mattei, Agostino
    d'Arma, Alessia
    Deho, Federico
    Montorsi, Francesco
    Salonia, Andrea
    JOURNAL OF UROLOGY, 2024, 211 (05): : E764 - E764
  • [43] A confident learning-based support vector machine for robust ground classification in noisy label environments
    Zhang, Xin-Yue
    Zhang, Xiao-Ping
    Yu, Hong-Gan
    Liu, Quan-Sheng
    TUNNELLING AND UNDERGROUND SPACE TECHNOLOGY, 2025, 155
  • [44] Machine learning-based model for worsening heart failure risk in Chinese chronic heart failure patients
    Sun, Ziyi
    Wang, Zihan
    Yun, Zhangjun
    Sun, Xiaoning
    Lin, Jianguo
    Zhang, Xiaoxiao
    Wang, Qingqing
    Duan, Jinlong
    Huang, Li
    Li, Lin
    Yao, Kuiwu
    ESC HEART FAILURE, 2025, 12 (01): : 211 - 228
  • [45] Machine learning-based risk prediction of malignant arrhythmia in hospitalized patients with heart failure
    Wang, Qi
    Li, Bin
    Chen, Kangyu
    Yu, Fei
    Su, Hao
    Hu, Kai
    Liu, Zhiquan
    Wu, Guohong
    Yan, Ji
    Su, Guohai
    ESC HEART FAILURE, 2022, 8 (06): : 5363 - 5371
  • [46] Machine learning-based risk prediction of malignant arrhythmia in hospitalized patients with heart failure
    Wang, Qi
    Li, Bin
    Chen, Kangyu
    Yu, Fei
    Su, Hao
    Hu, Kai
    Liu, Zhiquan
    Wu, Guohong
    Yan, Ji
    Su, Guohai
    ESC HEART FAILURE, 2021, 8 (06): : 5363 - 5371
  • [47] Deep Learning and Machine Learning-Based Model for Conversational Sentiment Classification
    Ullah, Sami
    Talib, Muhammad Ramzan
    Rana, Toqir A.
    Hanif, Muhammad Kashif
    Awais, Muhammad
    CMC-COMPUTERS MATERIALS & CONTINUA, 2022, 72 (02): : 2323 - 2339
  • [48] A Machine Learning-Based Protocol for Efficient Routing in Opportunistic Networks
    Sharma, Deepak K.
    Dhurandher, Sanjay K.
    Woungang, Isaac
    Srivastava, Rohit K.
    Mohananey, Anhad
    Rodrigues, Joel J. P. C.
    IEEE SYSTEMS JOURNAL, 2018, 12 (03): : 2207 - 2213
  • [49] Machine Learning-Based Decision-Making Mechanism for Risk Assessment of Cardiovascular Disease
    Wang, Cheng
    Zhu, Haoran
    Rao, Congjun
    CMES-COMPUTER MODELING IN ENGINEERING & SCIENCES, 2024, 138 (01): : 691 - 718
  • [50] Machine learning-based risk assessment for cardiovascular diseases in patients with chronic lung diseases
    Xi, Huiming
    Kang, Qingxin
    Jiang, Xunsheng
    MEDICINE, 2025, 104 (10)