Suchergebnisse - machine learning algorithms in forestry

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    Predictive Modeling of Volume and Biomass in Pinus pseudostrobus Using Machine Learning and Allometric Approaches von Antúnez, Pablo, Wehenkel, Christian, Basave-Villalobos, Erickson, Calixto-Valencia, Celi Gloria, Valenzuela-Encinas, César, Ruiz-Aquino, Faustino, Sarmiento-Bustos, David

    ISSN: 2158-0103, 2158-0715, 2158-0715
    Veröffentlicht: Seoul Taylor & Francis 02.01.2025
    Veröffentlicht in Forest science and technology (02.01.2025)
    “… This study aims to evaluate the effectiveness of machine learning algorithms in predicting key forest metrics-stem volume, root system volume, and organ biomass …”
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    Configuracao de algoritmos de aprendizado de maquina na modelagem florestal: um estudo de caso na modelagem da relacao hipsometrica/Tunning machine learning algorithms for forestry modeling: a case study in the height-diameter relationship von da Costa Filho, Sérgio Vinícius Serejo, Arce, Julio Eduardo, Montaño, Razer Nizer Rojas, Pelissari, Allan Libanio

    ISSN: 1980-5098
    Veröffentlicht: Universidade Federal de Santa Maria 01.10.2019
    Veröffentlicht in Ciência florestal (01.10.2019)
    “… No presente estudo foram aplicados quatro algoritmos de aprendizado de máquina na tarefa de modelagem da relação hipsométrica de povoamentos de Pinus taeda L …”
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    A data-informed analytical approach to human-scale greenway planning: Integrating multi-sourced urban data with machine learning algorithms von Tang, Ziyi, Ye, Yu, Jiang, Zhidian, Fu, Chaowei, Huang, Rong, Yao, Dong

    ISSN: 1618-8667, 1610-8167
    Veröffentlicht: Elsevier GmbH 01.12.2020
    Veröffentlicht in Urban forestry & urban greening (01.12.2020)
    “… Accordingly, this study proposes a data-informed approach to planning urban greenway networks using a combination of classical urban design theories, multi-sourced urban data, and machine learning algorithms …”
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    Quantification of carbon sequestration by urban forest using Landsat 8 OLI and machine learning algorithms in Jodhpur, India von Uniyal, Swati, Purohit, Saurabh, Chaurasia, Kuldeep, Rao, Sitiraju Srinivas, Amminedu, Eadara

    ISSN: 1618-8667, 1610-8167
    Veröffentlicht: Elsevier GmbH 01.01.2022
    Veröffentlicht in Urban forestry & urban greening (01.01.2022)
    “… •Geospatial data with Machine learning algorithms can accurately predict urban forest aboveground biomass and carbon in arid region …”
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    Forestry Digital Twin With Machine Learning in Landsat 7 Data von Jiang, Xuetao, Jiang, Meiyu, Gou, YuChun, Li, Qian, Zhou, Qingguo

    ISSN: 1664-462X, 1664-462X
    Veröffentlicht: Lausanne Frontiers Media SA 13.06.2022
    Veröffentlicht in Frontiers in plant science (13.06.2022)
    “… In this study, we propose a machine learning-based digital twin approach for forestry. A data processing algorithm was designed to process Landsat 7 remote sensing data as model's input …”
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    Using Machine Learning in Forestry von Kamber Can Alkiş, Zennure Uçar, Abdurrahim Aydın, Remzi Eker

    ISSN: 2149-3898
    Veröffentlicht: Isparta University of Applied Sciences Faculty of Forestry 01.06.2023
    Veröffentlicht in Turkish Journal of Forestry (Online) (01.06.2023)
    “… ) are integrated into decision-making processes in forestry. This study aims to increase further the comprehensibility of machine learning …”
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    Data-based wildfire risk model for Mediterranean ecosystems – case study of the Concepción metropolitan area in central Chile von Jaque Castillo, Edilia, Fernández, Alfonso, Fuentes Robles, Rodrigo, Ojeda, Carolina G.

    ISSN: 1684-9981, 1561-8633, 1684-9981
    Veröffentlicht: Katlenburg-Lindau Copernicus GmbH 03.12.2021
    Veröffentlicht in Natural hazards and earth system sciences (03.12.2021)
    “… –biophysical factors that trigger fires. Those were used to deliver a model of fire hazard using machine learning algorithms, including principal component analysis and Kohonen self-organizing maps in two experimental scenarios …”
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    Improving plot-level growing stock volume estimation using machine learning and remote sensing data fusion von Mirpulatov, I., Kedrov, A., Illarionova, S.

    ISSN: 0134-2452, 2412-6179
    Veröffentlicht: Samara National Research University 01.08.2025
    Veröffentlicht in Kompʹûternaâ optika (01.08.2025)
    “… To automate the data analysis process, machine learning (ML) algorithms are widely applied, particularly in forestry tasks …”
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    Use of multiple LIDAR-derived digital terrain indices and machine learning for high-resolution national-scale soil moisture mapping of the Swedish forest landscape von Ågren, Anneli M., Larson, Johannes, Paul, Siddhartho Shekhar, Laudon, Hjalmar, Lidberg, William

    ISSN: 0016-7061, 1872-6259, 1872-6259
    Veröffentlicht: Elsevier B.V 15.12.2021
    Veröffentlicht in Geoderma (15.12.2021)
    “… •Extreme Gradient Boosting was the best algorithm for mapping soil moisture.•The continuous soil moisture map would significantly contribute to practical forestry …”
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    Mapping Plant Diversity Based on Combined SENTINEL-1/2 Data—Opportunities for Subtropical Mountainous Forests von Yang, Qichi, Wang, Lihui, Huang, Jinliang, Lu, Lijie, Li, Yang, Du, Yun, Ling, Feng

    ISSN: 2072-4292, 2072-4292
    Veröffentlicht: Basel MDPI AG 20.01.2022
    Veröffentlicht in Remote sensing (Basel, Switzerland) (20.01.2022)
    “… Plant diversity is an important parameter in maintaining forest ecosystem services, functions and stability. Timely and accurate monitoring and evaluation of …”
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    Comparison of machine learning algorithms for forest parameter estimations and application for forest quality assessments von Zhao, Qingxia, Yu, Shichuan, Zhao, Fei, Tian, Linghong, Zhao, Zhong

    ISSN: 0378-1127, 1872-7042
    Veröffentlicht: Elsevier B.V 28.02.2019
    Veröffentlicht in Forest ecology and management (28.02.2019)
    “… •Accurate and quickly evaluate forest quality based on satellite images.•Four MLAs were implemented and compared to estimate forest parameters.•RF obtained the …”
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    A low-cost approach for soil moisture prediction using multi-sensor data and machine learning algorithm von Nguyen, Thu Thuy, Ngo, Huu Hao, Guo, Wenshan, Chang, Soon Woong, Nguyen, Dinh Duc, Nguyen, Chi Trung, Zhang, Jian, Liang, Shuang, Bui, Xuan Thanh, Hoang, Ngoc Bich

    ISSN: 0048-9697, 1879-1026, 1879-1026
    Veröffentlicht: Netherlands Elsevier B.V 10.08.2022
    Veröffentlicht in The Science of the total environment (10.08.2022)
    “… In this research, a new approach involving the use of advance machine learning (ML) models, and multi-sensor data fusion including Sentinel-1(S1 …”
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    Machine learning assisted remote forestry health assessment: a comprehensive state of the art review von Estrada, Juan Sebastián, Fuentes, Andrés, Reszka, Pedro, Auat Cheein, Fernando

    ISSN: 1664-462X, 1664-462X
    Veröffentlicht: Switzerland Frontiers Media SA 02.06.2023
    Veröffentlicht in Frontiers in plant science (02.06.2023)
    “… Machine learning techniques combined with robotic platforms and artificial vision systems have been used to provide remote monitoring of the health of the forest, including moisture content …”
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    Comparative analysis of seven machine learning algorithms and five empirical models to estimate soil thermal conductivity von Zhao, Tianyue, Liu, Shuchao, Xu, Jia, He, Hailong, Wang, Dong, Horton, Robert, Liu, Gang

    ISSN: 0168-1923, 1873-2240
    Veröffentlicht: Elsevier B.V 15.08.2022
    Veröffentlicht in Agricultural and forest meteorology (15.08.2022)
    “… ), Campbell (1985) model (Campbell1985), Johansen (1975) model (Johansen 1975), Côté and Konrad (2005) model (Côté and Konrad 2005), and Lu et al. (2007) model (Lu 2007)) and seven machine learning …”
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    Rapid Large-Scale Monitoring of Pine Wilt Disease Using Sentinel-1/2 Images in GEE von Zhi, Junjun, Li, Lin, Fang, Yifan, Zhi, Dandan, Guang, Yi, Liu, Wangbin, Qu, Lean, Fu, Xinwu, Zhao, Haoshan

    ISSN: 1999-4907, 1999-4907
    Veröffentlicht: Basel MDPI AG 01.06.2025
    Veröffentlicht in Forests (01.06.2025)
    “… to China’s forestry resources. To achieve large-scale monitoring of PWD, this study utilized machine learning/deep learning algorithms with Sentinel-1/2 images in the Google Earth Engine cloud platform to implement province-wide …”
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    A 30-m landsat-derived cropland extent product of Australia and China using random forest machine learning algorithm on Google Earth Engine cloud computing platform von Teluguntla, Pardhasaradhi, Thenkabail, Prasad S, Oliphant, Adam, Xiong, Jun, Gumma, Murali Krishna, Congalton, Russell G., Yadav, Kamini, Huete, Alfredo

    ISSN: 0924-2716, 1872-8235
    Veröffentlicht: Elsevier B.V 01.10.2018
    Veröffentlicht in ISPRS journal of photogrammetry and remote sensing (01.10.2018)
    “… •Captured spatial extent of very small to very large farms in Australia and China.•Applied Random Forest machine learning algorithm on cloud computing platform …”
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    Land subsidence susceptibility assessment using random forest machine learning algorithm von Mohammady, Majid, Pourghasemi, Hamid Reza, Amiri, Mojtaba

    ISSN: 1866-6280, 1866-6299
    Veröffentlicht: Berlin/Heidelberg Springer Berlin Heidelberg 01.08.2019
    Veröffentlicht in Environmental earth sciences (01.08.2019)
    “… The mechanism of land subsidence and soil deformation deals with the dissipation of excess pore water pressure and the compaction of soil skeleton under the …”
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    Influence of Variable Selection and Forest Type on Forest Aboveground Biomass Estimation Using Machine Learning Algorithms von Li, Yingchang, Li, Chao, Li, Mingyang, Liu, Zhenzhen

    ISSN: 1999-4907, 1999-4907
    Veröffentlicht: Basel MDPI AG 01.12.2019
    Veröffentlicht in Forests (01.12.2019)
    “… In this paper, we used China’s National Forest Continuous Inventory data and Landsat 8 Operational Land Imager data in combination with three algorithms, either the linear regression (LR), random forest (RF …”
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    Fisheye freshness detection using common deep learning algorithms and machine learning methods with a developed mobile application von Yildiz, Muslume Beyza, Yasin, Elham Tahsin, Koklu, Murat

    ISSN: 1438-2377, 1438-2385
    Veröffentlicht: Berlin/Heidelberg Springer Berlin Heidelberg 01.07.2024
    Veröffentlicht in European food research & technology (01.07.2024)
    “… To achieve this, we have developed a combination of deep and machine learning models that accurately classify the freshness of fish …”
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