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首页> 外文期刊>ISPRS Journal of Photogrammetry and Remote Sensing >Imaging spectroscopy in soil-water based site suitability assessment for artificial regeneration to Scots pine
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Imaging spectroscopy in soil-water based site suitability assessment for artificial regeneration to Scots pine

机译:影像光谱法在土壤水基场地适宜性评估中的应用

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In a humid northern boreal climate, the success rate of artificial regeneration to Scots pine (Pinus sylvestris L) can be improved by including a soil water content (SWC) based assessment of site suitability in the reforestation planning process. This paper introduces an application of airborne visible-near-infrared imaging spectroscopic data to identify suitable subregions of forest compartments for the low SWC-tolerant Scots pine. The spatial patterns of understorey plant species communities, recorded by the AISA (Airborne Imaging Spectrometer for Applications) sensor, were demonstrated to be dependant on the underlying SWC. According to the nonmetric multidimensional scaling and correlation results twelve understorey species were found to be most abundant on sites with high soil SWCs. The abundance of bare soil, rocks and abundance of more than ten species indicated low soil SWCs. The spatial patterns of understorey are attributed to time-stability of the underlying SWC patterns. A supervised artificial neural network (radial basis functional link network, probabilistic neural network) approach was taken to classify AISA imaging spectrometer data with dielectric (as a measure volumetric SWC) ground referencing into regimes suitable and unsuitable for Scots pine. The accuracy assessment with receiver operating characteristics curves demonstrated a maximum of 74.1% area under the curve values which indicated moderate success of the NN modelling. The results signified the importance of the training set's quality, adequate quantity (>2.43 points/ha) and NN algorithm selection over the NN algorithm training parameter optimization to perfection. This methodology for the analysis of site suitability of Scots pine can be recommended, especially when artificial regeneration of former mixed wood Norway spruce (Picea abies L. Karst) - downy birch {Betula pubenscens Ehrh.) stands is being considered, so that artificially regenerated areas to Scots pine can be optimized for forestry purposes.
机译:在北方北方潮湿的气候中,通过在重新造林规划过程中纳入基于土壤水分含量(SWC)的场地适宜性评估,可以提高人工改良成苏格兰松(Pinus sylvestris L)的成功率。本文介绍了机载可见-近红外成像光谱数据的应用,以确定对SWC耐受性低的苏格兰松树的森林区隔的合适分区。由AISA(应用的航空成像光谱仪)传感器记录的底层植物物种群落的空间模式已证明取决于底层SWC。根据非度量多维标度和相关结果,在土壤SWC较高的地点发现了12个下层物种最丰富。裸露的土壤,岩石的丰富性和十多种物种的丰富性表明土壤SWC较低。底层的空间模式归因于基础SWC模式的时间稳定性。采用监督人工神经网络(径向基函数链接网络,概率神经网络)方法,将具有介电常数(作为测量体积SWC)的AISA成像光谱仪数据分类为适合和不适合苏格兰松树的体系。带有接收器工作特性曲线的准确性评估表明,曲线值下的最大面积为74.1%,这表明NN建模取得了一定程度的成功。结果表明,训练集的质量,足够的数量(> 2.43点/公顷)和选择NN算法对实现NN算法训练参数最优化至关重要。可以推荐使用这种方法来分析苏格兰松树,特别是在考虑对人工混合的以前的挪威混交云杉(Picea abies L. Karst)-柔软的桦木(Betula pubenscens Ehrh。)林分进行人工再生时,尤其如此苏格兰松树的面积可以优化用于林业。

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