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Towards dynamic forest trafficability prediction using open spatial data, hydrological modelling and sensor technology

机译:利用开放空间数据,水文建模和传感器技术实现动态森林交换性预测

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摘要

Forest harvesting operations with heavy machinery can lead to significant soil rutting. Risks of rutting depend on the soil bearing capacity which has considerable spatial and temporal variability. Trafficability prediction is required in the selection of suitable operation sites for a given time window and conditions, and for on-site route optimization during the operation. Integrative tools are necessary to plan and carry out forest operations with minimal negative ecological and economic impacts. This study demonstrates a trafficability prediction framework that utilizes a spatial hydrological model and a wide range of spatial data. Trafficability was approached by producing a rut depth prediction map at a 16 x 16 m grid resolution, based on the outputs of a general linear mixed model developed using field data from Southern Finland, modelled daily soil moisture, spatial forest inventory and topography data, along with field measured rolling resistance and information on the mass transported through the grid cells. Dynamic rut depth prediction maps were produced by accounting for changing weather conditions through hydrological modelling. We also demonstrated a generalization of the rolling resistance coefficient, measured with harvester CAN-bus channel data. Future steps towards a nationwide prediction framework based on continuous data flow, process-based modelling and machine learning are discussed.
机译:利用重型机械采伐业务可能导致大型土地轨道。车辙风险取决于土壤承载力,具有相当的空间和时间变异性。在操作期间选择合适的操作站点以及在操作期间进行现场路由优化时,需要交换性预测。综合工具有必要规划和开展森林业务,以极少的生态和经济影响。该研究展示了一种利用空间水文模型和广泛的空间数据的交流预测框架。通过使用来自芬兰南部的现场数据开发的通用线性混合模型的输出产生了16×16米网格分辨率的RUT深度预测映射来接近交通性。具有现场测量滚动阻力和通过网格电池传输的质量的信息。通过核算通过水文建模来改变天气状况来生产动态RUT深度预测图。我们还展示了用收割机CAN总线通道数据测量的滚动电阻系数的概括。讨论了基于连续数据流,基于过程的建模和机器学习的全国范围内预测框架的未来步骤。

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  • 来源
    《Forestry》 |2020年第5期|共13页
  • 作者单位

    Nat Resources Inst Finland Nat Reosurces Unit Latokartanonkaari 9 FI-00790 Helsinki Finland;

    Nat Resources Inst Finland Nat Reosurces Unit Latokartanonkaari 9 FI-00790 Helsinki Finland;

    Nat Resources Inst Finland Nat Reosurces Unit Latokartanonkaari 9 FI-00790 Helsinki Finland;

    Univ Turku Dept Future Technol FI-20014 Turun Finland;

    Univ Turku Dept Future Technol FI-20014 Turun Finland;

    Nat Resources Inst Finland Nat Reosurces Unit Latokartanonkaari 9 FI-00790 Helsinki Finland;

    Nat Resources Inst Finland Nat Reosurces Unit Latokartanonkaari 9 FI-00790 Helsinki Finland;

    Univ Eastern Finland Sch Forest Sci Yliopistonkatu 7 FI-80101 Joensuu Finland;

    Nat Resources Inst Finland Nat Reosurces Unit Latokartanonkaari 9 FI-00790 Helsinki Finland;

    Nat Resources Inst Finland Prod Syst Unit Korkeakoulunkatu 7 FI-33720 Tampere Finland;

    Univ Turku Dept Future Technol FI-20014 Turun Finland;

    Univ Turku Dept Future Technol FI-20014 Turun Finland;

    Nat Resources Inst Finland Nat Resources Unit Yliopistonkatu 6 FI-80130 Joensuu Finland;

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  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类 林业;
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