Modeling the spatial variation of urban park ecological properties using remote sensing data

IF 0.8 Q2 Environmental Science Biosystems Diversity Pub Date : 2022-07-28 DOI:10.15421/012223
O. Kunakh, I. Ivanko, K. Holoborodko, O. Lisovets, A. Volkova, V. V. Nikolaieva, O. Zhukov
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Abstract

Parks perform a wide range of ecosystem services in urban environments. The functional importance of parks depends on the composition and structure of the tree stand and the specific influence on soil and microclimatic conditions. The article reveals the dependence of soil and microclimatic properties on the structure of the crown space of a park stand. Spectral indices were also shown to be applicable for predicting the spatial variability of soil and climatic properties and indicators of crown space. Soil properties (temperature, moisture, and electrical conductivity in the 5–7 cm layer) and microclimatic parameters (light exposure, air temperature, and atmospheric humidity) were measured in the park plantation using a quasi-regular grid. The canopy structure and gap light transmission indices were extracted from the true-colour fisheye photographs. Thirty species of trees and shrubs were detected in the stand and understory. Robinia pseudoacacia L. was found most frequently (24.5% of all tree records). Acer negundo L. and A. platanoides L. were also frequent (12.4% and 15.5%, respectively). The first four principal components, whose eigenvalues exceeded unity, were extracted by the principal components analysis of the variability of ecological properties and vegetation indices. The principal component 1 explained 50.5% of the variation of the traits and positively correlated with the spectral vegetation indices. The principal component 1 reflected the variability of tree cover densities due to the edaphic trophicity. The principal component 2 described 13% of the variation in the feature space. This component correlated positively with the spectral indices. The principal component 2 was interpreted as a trend of vegetation cover variability induced by moisture variation. The principal component 3 described 8.6% of trait variation. It was most strongly correlated with the atmospheric humidity. An increase in atmospheric humidity was associated with an increase in the soil moisture and electrical conductivity and a decrease in the soil and atmospheric temperature. The principal component 4 described 7.5 % of the variation of traits. An increase in the values of principal component 4 was associated with an increase in the soil moisture and electrical conductivity and atmospheric moisture and was associated with a decrease in the soil and atmospheric temperature. The combinations of the trophotope and hygrotope create the optimal conditions for specific tree species, which is a condition for achieving the maximization of ecosystem services. The mineral nutrition conditions of plants and soil moisture exhibit spatial patterns that allow them to be considered in the design and management of park plantations. The ecological indices measured in the field were shown to be predicted using the vegetation indices. Multiple regression models were able to explain 11–61% of indicator variation. The regression relationships between markers of soil and microclimatic conditions and vegetation predictors are important for monitoring the condition of park plantations and evaluating the performance of park plantation management tools.
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基于遥感数据的城市公园生态属性空间变异建模
公园在城市环境中发挥着广泛的生态系统服务作用。公园的功能重要性取决于林分的组成和结构以及对土壤和小气候条件的具体影响。本文揭示了土壤和小气候性质对林分树冠空间结构的依赖关系。光谱指数也可用于预测土壤和气候特征的空间变异性以及冠层空间指标。使用准规则网格测量了公园人工林5-7 cm土层的土壤特性(温度、水分和电导率)和小气候参数(光照、空气温度和大气湿度)。从真彩鱼眼照片中提取了冠层结构和间隙透光指数。林分和林下共发现乔灌木30种。刺槐(Robinia pseudoacacia L.)的发现频率最高,占所有乔木记录的24.5%。枫槭(12.4%)和扁桃槭(15.5%)也较为常见。通过对生态特性和植被指数变异度的主成分分析,提取出特征值超过1的前4个主成分。主成分1解释了50.5%的性状变异,与光谱植被指数呈正相关。主成分1反映了由土壤营养性引起的树木覆盖密度的变异性。主成分2描述了13%的特征空间变化。该成分与光谱指数正相关。主成分2可以解释为水分变化引起的植被覆盖度变化趋势。主成分3描述了8.6%的性状变异。它与大气湿度的相关性最强。大气湿度的增加与土壤水分和电导率的增加以及土壤和大气温度的降低有关。主成分4描述了7.5%的性状变异。主成分4值的增加与土壤水分、电导率和大气水分的增加有关,并与土壤和大气温度的降低有关。对流层和湿层的组合为特定树种创造了最优条件,这是实现生态系统服务最大化的条件。植物的矿物质营养条件和土壤水分表现出空间模式,使它们能够在公园人工林的设计和管理中得到考虑。结果表明,利用植被指数可以预测田间实测的生态指数。多元回归模型能解释11-61%的指标变异。土壤和小气候条件标记物与植被预测因子之间的回归关系对于监测人工林状况和评价人工林管理工具的效果具有重要意义。
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CiteScore
2.40
自引率
0.00%
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0
审稿时长
12 weeks
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