Climate Change-based Urban Geographical Regions Planning: Sustainable Application Using Artificial Intelligence

被引:0
|
作者
Khaja Shahini Begum [1 ]
Srinivas Ambala [2 ]
Bathina Rajesh Kumar [1 ]
Mohd Shukri Ab Yajid [3 ]
Elangovan Muniyandy [4 ]
Ritwik Haldar [5 ]
机构
[1] Koneru Lakshmaiah Education Foundation,Department of English
[2] Pimpri Chinchwad College of Engineering,Department of Computer Engineering
[3] Management and Science University,Department of Biosciences
[4] Saveetha School of Engineering,Applied Science Research Center
[5] Saveetha Institute of Medical and Technical Sciences,Department of Electronics and Communication Engineering
[6] Applied Science Private University,undefined
[7] Vel Tech Rangarajan Dr. Sagunthala R&D Institute of Science and Technology,undefined
关键词
Urban geographical region; Climate change detection; Machine learning; Graph cut; Active contour;
D O I
10.1007/s41976-024-00177-1
中图分类号
学科分类号
摘要
From the level of individual creatures to that of ecosystems, where all species are components of intricate webs of interactions in the natural world, climate change can have a cascade impact. Though their full promise for mitigating climate change is still unrealised, artificial intelligence and machine learning are revolutionising scientific fields. Despite making up a small percentage of the planet’s surface, the enormous population of urban areas has a huge impact on climate change. Nevertheless, our understanding of the consequences of urbanisation on ecosystems and the climate is still lacking. This research proposes a novel technique in urban geographical region planning and climate change detection using a machine learning model. Here, the input has been collected as urban region geographical region changes analysis with climate change dataset and processed for noise removal and normalisation. Then this image has been segmented using a region-based graph cut active contour neural network, and features have been extracted using a deep transfer convolutional Gaussian model. Experimental analysis has been carried out in terms of detection accuracy, random precision, AUC, F1-score, and recall. The proposed model attained detection accuracy of 97%, random precision of 94%, AUC of 96%, F1-score of 95%, and recall of 98%.
引用
收藏
页码:98 / 107
页数:9
相关论文
共 50 条
  • [41] Urban nature-based solutions planning for biodiversity outcomes: human, ecological, and artificial intelligence perspectives
    Prodanovic, Veljko
    Bach, Peter M.
    Stojkovic, Milan
    URBAN ECOSYSTEMS, 2024, 27 (05) : 1795 - 1806
  • [42] Influence and Effectiveness Analysis of Urban Community Planning on Children's Play Environment Based on Artificial Intelligence
    Zheng, Tianzhu
    Qin, Haifang
    JOURNAL OF SENSORS, 2022, 2022
  • [43] Green urban logistics path planning design based on physical network system in the context of artificial intelligence 
    Juanjuan Ren
    Siti Salwa Salleh
    The Journal of Supercomputing, 2024, 80 : 9140 - 9161
  • [44] Remote Sensing-Based Earth Climate Detection in Geoscience Model with Artificial Intelligence Application
    Aarti Amod Agarkar
    Mandar S. Karyakarte
    Gajanan Chavhan
    I. A. Ariffin
    Milind Patil
    Linginedi Ushasree
    D. Divya Priya
    Remote Sensing in Earth Systems Sciences, 2024, 7 (4) : 569 - 581
  • [45] Urban climate change adaptation planning using participatory scenarios: a systematic review of methods and approaches
    Drescher, Michael
    Skoyles, Adam
    JOURNAL OF ENVIRONMENTAL PLANNING AND MANAGEMENT, 2024,
  • [46] Campus Energy Use Prediction (CEUP) Using Artificial Intelligence (AI) to Study Climate Change Impacts
    Fathi, Soheil
    Srinivasan, Ravi
    Ries, Robert
    PROCEEDINGS OF BUILDING SIMULATION 2019: 16TH CONFERENCE OF IBPSA, 2020, : 3594 - 3601
  • [47] Sensitivity of extreme precipitation to climate change inferred using artificial intelligence shows high spatial variability
    Bird, Leroy J.
    Bodeker, Gregory E.
    Clem, Kyle R.
    COMMUNICATIONS EARTH & ENVIRONMENT, 2023, 4 (01):
  • [48] Sensitivity of extreme precipitation to climate change inferred using artificial intelligence shows high spatial variability
    Leroy J. Bird
    Gregory E. Bodeker
    Kyle R. Clem
    Communications Earth & Environment, 4
  • [49] Irrigation demand for fruit trees under a climate change scenario using artificial intelligence1
    Battisti, Rafael
    Neto, Waldemiro Alcantara da Silva
    da Costa, Ronaldo Martins
    Dapper, Felipe Puff
    Elli, Elvis Felipe
    PESQUISA AGROPECUARIA TROPICAL, 2024, 54
  • [50] Measurement scales of mental health related to climate change: a scoping review protocol using artificial intelligence
    Dominguez-Rodriguez, Alejandro
    Villarreal-Zegarra, David
    Malaquias-Obregon, Sofia
    Herdoiza-Arroyo, Paulina Erika
    Gonzalez-Cantero, Joel Omar
    Chavez-Valdez, Sarah Margarita
    Cruz-Martinez, Roberto Rafael
    BMJ OPEN, 2023, 13 (10):