1. Introduction
Plants are the basic components of urban forests, and rich plant diversity can improve the overall function of urban ecosystems [1]. Furthermore, diversity indices can be used to quantify plant diversity [2], and the plant diversity index values reveal the complex relationships between individual plants and are a unique way to reflect the status of plant use of environmental resources [3] Among diversity indices, the richness index is frequently used to describe the number of species found in a community, and diversity indices are functions that combine species diversity and species abundance, such as Simpson’s index and Shannon’s index [4] The Pielou index is used to describe the distribution of species within a community [5] These diversity indices are widely employed to measure vegetation diversity.
Understory vegetation is an important protective layer of urban forest biodiversity and is highly sensitive to environmental changes [6,7]. Studies have found that understory plant diversity is influenced by biotic factors such as forest stand age [8], stand density [9,10], soil biological properties [11], and anthropogenic disturbance [12], as well as abiotic factors such as climatic conditions [13], topographic conditions [14], and soil physical and chemical properties [15,16]. However, at the community scale, the diversity of undergrowth plants is more affected by soil physical and chemical properties, microtopography, and forest structure [17,18,19]. Compared to topographic factors, forest stand structure and soil factors have a greater influence on understory plant diversity at the community scale [20]. Among them, soil physicochemical properties are fundamental factors in maintaining plant species richness and are widely considered to be significantly correlated with plant diversity [15] Competition among individual plants and between plant species for soil resources is an important factor affecting the species composition and succession of plant communities, and the quality of the soil environment at certain spatial and temporal scales influences or even determines the plant diversity of a region [21,22]. Understory vegetation influences soil nutrient availability by altering the input of compounds and organic matter in the form of litter and root exudates [23]. Changes in soil nutrient availability caused by vegetation [24] have an impact on nutrient absorption and assimilation by vegetation [25]. Thus, the relationship between the interaction of soil physicochemical properties and plant diversity is an important issue explored in ecology [26]. However, differences in the soil factors governing understory diversity at the community scale are caused by different study site locations, different stages of urban forest succession, and different stand types [27]. As a result, more research is needed to identify the key drivers influencing understory plant diversity at the community level.
In fact, few studies have examined the effects of soil physicochemical properties on understory plant diversity in different communities. There is no unified conclusion on the mechanisms by which soil physicochemical properties regulate each diversity index. In 2012, Beijing implemented afforestation of plain areas and built a large area of urban forest in the plain areas of Beijing, which had a significant impact on the city’s urban forest ecosystem [28], and it is crucial to study the relationship between understory plant diversity and soil physicochemical properties in urban forests. Previous research on understory plants in Beijing urban forests has concentrated on the investigation of diversity and the unilateral study of soil property characteristics [29,30], with few studies on the relationship between understory plant diversity and soil physicochemical properties.
In this study, 30 community types in the urban forest of Beijing were selected as the research objects. We predict that the soil physical and chemical values of different community types will differ, which will have an effect on plant diversity beneath the forest. As a result, the objectives of this study are as follows: (1) quantify the quantitative characteristics and differences in soil physical and chemical properties of different community types of urban forest in Beijing; (2) evaluate the diversity index differences among different community types in spring, summer, and autumn; and (3) investigate the soil factors that affect the diversity of undergrowth plants. It is expected that this research will provide a scientific foundation for urban forest design and management.
2. Materials and Methods
2.1. Study Sites
Beijing (39°54′20″ N, 116°25′29″ E) is located in Northern China, in the Northern part of the North China Plain, and has an area of 16,410 km2.The climate is a temperate humid monsoon, and the zonal vegetation type is primarily a warm temperate deciduous broad-leaved forest [31], with an annual precipitation total of approximately 450–680 mm. Beijing’s vegetation cover will reach 44% by 2022, with the plain areas where the plain afforestation project is being implemented accounting for approximately 38% of the total area of Beijing (Figure 1).
2.1.1. Sampling Site Selection
Sampling was carried out by a combination of systematic sampling and typical sampling methods, and the urban forest sample plots constructed by the project were evenly distributed in the context of the overall planning of the Beijing Plain Afforestation Project, and 42 sample sites were selected from 12 districts (Table 1). All of the sampling sites were treated with reference to the “Beijing New Million Mu Afforestation and Greening Project Construction Technical Guide” and “Beijing Plain Afforestation Engineering Technology Implementation Rules (revised version)”.
2.1.2. Investigation of Understory Plants
A 50 m × 50 m precision grid was used for a uniform distribution of points in 42 set sampling plots, and some sampling points were added and positioned according to the actual situation. The study was conducted twice a year from 2019–2021, once in spring and summer (March–August) and once in autumn (September–November). The sampling survey referred to the survey method of Jing-Yun Fang [32]. A total of 30 community types and 1189 sampling points with similar stand depression (Table 2) and microtopography were selected for the study to control a single variable, and each sampling point was set up in a 20 m × 20 m sampling square to research the tree layer (Figure 2). The average distribution method was used to set five 1 m × 1 m small sampling squares in the center and four corners of each sample square for herbaceous plants and understory regeneration seedlings, and no separate sample squares were established due to the small number of shrubs (H1–H5 in Figure 2 are herbaceous plant collection sample points). The observation records included information on the survey site: latitude and longitude, elevation, community type; species names, heights, and quantities of shrubs; and species names, average heights, coverages, and abundances of herbs.
2.1.3. Soil Sample Collection
To prevent the surrounding environments from influencing the study results, the soil profile points were selected at sites far from roads without vegetation damage, recent collapse, or severe ground erosion [33]. The sample sites were collected as referenced in Section 2.1.2, with a total of 1231 sampling points.
Soil samples were collected according to the national forestry standard “Collection and Preparation of Forest Soil Samples” [34]. The study was conducted from June to October 2020, and soil samples were collected at soil depths of 0–20 cm, 20–40 cm, and 40–60 cm, with three replicates of each sample, for a total of 3693 soil samples. The soil samples from the same soil layer were mixed and brought back to the laboratory in bags for the determination of soil physical and chemical properties. During the collection process, three in situ soil samples were taken in each of the three soil layers with a ring knife (5 cm in diameter, 100 cm3 in volume) to determine the soil water content.
The collected soil samples were transported to the laboratory, debris was removed, and samples were dried naturally. The soil samples were pulverized for 3 min and passed through a nylon sieve. Then, the air-dried soil samples were preserved for analysis.
2.2. Methods for Determining the Physical and Chemical Properties of Soils
Combining the results of previous studies on urban forest soil [35,36], hydrogen ion concentration (pH), soil bulk density (SBD), total soil porosity (TSP), soil water content (SWC), organic carbon (SOC), organic matter (SOM), total nitrogen (TN), total phosphorus (TP), available phosphorous (AP), and available potassium (AK) were selected in this study. The porosity included soil capillary porosity (CP) and noncapillary porosity (NCP).
The pH was determined by a PHSJ-5 laboratory pH meter (Thundermagnetic Instrument Co., Ltd., Shanghai, China). The SBD was determined through the ring knife sampling analysis method [37], and the TSP was determined by a TYC-1 pore pressure measuring instrument. The SWC was determined through the drying method and the neutron deceleration method [38]. The SOC was determined by the potassium dichromate oxidation spectrophotometry method [39]. The SOM was determined by multiplying the SOC result by a conversion factor of 1.724; the TN was determined by the semimicro Kjeldahl method [40]; the TP was determined by the sodium hydroxide fusion-molybdenum antimony anti-colorimetric method [41]; the AP was determined by the Olsen method [42]; and the AK was determined by the 0.5 mol-L−1 sodium bicarbonate leaching method [43].
The evaluation criteria for soil physical and chemical properties refer to the classification of the soil census techniques in China [44].
2.3. Calculation Methods of Diversity Correlation Index Data Analysis
Combined with the research data, a statistical analysis of the understory plant species diversity in the Beijing Plain afforestation sample sites was conducted. The calculated indices included the Shannon–Weiner index, Simpson index, Pielou index, and Margalef richness index [45,46,47].
Shannon–Weiner index (H′):
(1)
Simpson index (C):
(2)
Pielou index (E):
(3)
Maximum richness index (DMG):
(4)
where S is the total number of species, N is the total number of individuals of all species, and Pi is the importance value of species i.Based on the survey results, the stand types in the current sample plots were classified into 30 community types (Table 2).
2.4. Data Analysis
Correlation analysis was performed after uniformity and normal distribution tests, and the natural logarithm or a trigonometric function was employed for data conversion if the data did not follow a normal distribution. Soil physicochemical parameters and understory plant diversity were compared using one-way analysis of variance (ANOVA) followed by Tukey’s HSD (p < 0.05) in SPSS 22.0 software (SPSS, Chicago, IL, USA). Mantel test correlation analysis of environmental factors and understory plant diversity was performed in R (v3.2.0). Redundancy analysis (RDA) of the soil physicochemical properties and understory plant diversity was executed using CANOCO 5.0 software (Microcomputer Power, Ithaca, NY, USA). Variance partitioning analysis (VPA) was conducted in R using the “vegan” package to determine the contribution of soil factors to understory plant diversity. The correlation analysis graphs were produced with Origin 2019 (OriginLab Corporation, Northampton, MA, USA).
3. Results
3.1. Soil Physicochemical Property Analysis
The results of the study showed that the pH value of urban forests indicates an alkaline reaction (pH 7.5–8.5). The results showed that the current soil conditions are class 4–5 soils, indicating that the current soils are of poor quality and barren. Some community types have very thin soil layers, with soil-cover depths less than 60 cm.
3.1.1. Soil Physical Property Characteristics
The soil capacitance results of multiple comparative analyses of the physical properties of the soil (Figure 3) showed that the Robinia pseudoacacia f. decaisneana forest (1.116 ± 0.314 g/cm3), broadleaf and coniferous forest (1.106 ± 0.245 g/cm3), and mixed broadleaf forest (1.086 ± 0.237 g/cm3) had lower soil capacity values and looser soils. In contrast, the Fraxinus pennsylvanica forest (2.568 ± 0.593 g/cm3), Platycladus orientalis forest (2.095 ± 0.528 g/cm3), and Styphnolobium japonicum forest (2.034 ± 0.466 g/cm3) had higher soil capacity values, with compact and poorly structured soils.
In terms of TSP, the mixed broadleaf forests, Pinus bungeana forest, and R. pseudoacacia f. decaisneana forest had higher values of 51.393% ± 3.317%, 50.359% ± 11.516%, and 49.765% ± 9.889%, respectively. The ranking of CP differed from that of TSP but remained the same for all three community types. The comparative analysis of NCP showed that the Ulmus pumila ‘jinye’ forest (3.431% ± 0.602%) had a higher value, but most of the community types did not show significant differences, and the NCP values were lower in the Salix matsudana forest (1.390% ± 0.336%), Populus tomentosa forest (1.279% ± 0.266%), and R. pseudoacacia f. decaisneana forest (1.274% ± 0.284%).
The SWC analysis showed that the broadleaf mixed forest had the highest SWC, which was significantly higher than that of the other community types, with a value of 15.925% ± 3.668%, followed by the tufted Acer truncatum forest and the R. pseudoacacia ‘Idaho’ forest, with values of 15.441% ± 3.88% and 14.731% ± 3.39%, respectively. In contrast, the SWC of Ulmus pumila ‘Jinye’ forest (9.547% ± 2.290%), F. pennsylvanica forest (9.140% ± 2.107%), and S. japonicum forest (9.050% ± 2.347%) was significantly lower than that of the other community types.
3.1.2. SOC and SOM Characteristics
By comparing the SOM and SOC values of different communities, the results (Figure 4) showed that the SOC and SOM contents of the R. pseudoacacia f. decaisneana forest, mixed broadleaf forest, and R. pseudoacacia forest were significantly higher than those of other community types in the 0–20 cm soil layer, with SOC values of 17.163 ± 3.771 g·kg−1, 15.479 ± 3.406 g·kg−1 and 15.478 ± 1.356 g·kg−1, respectively, and SOM values of 29.589 ± 6.50 g·kg−1, 26.69 ± 5.87 g·kg−1, and 26.68 ± 2.33 g·kg−1, respectively. The SOC contents (9.488 ± 0.944 g·kg−1, 9.463 ± 2.827 g·kg−1, and 9.212 ± 1.359 g·kg−1) and SOM contents (16.358 ± 1.627 g·kg−1, 16.315 ± 4.874 g·kg−1, and 15.880 ± 2.343 g·kg−1) were the lowest among all community types and differed significantly from the numerical contents of other community types (Figure 3).
3.1.3. Soil Chemical Property Characteristics
Significance was correlated and labeled by comparing the soil pH values between community types at different soil depths. The results showed that the pH values of the soils in Beijing urban forests were all alkaline and higher than 7.5. The pH of the Robinia pseudoacacia forest (8.825 ± 0.698) was slightly higher than that of the other forest types, while the pH of the Ulmus pumila forest (7.275 ± 0.911) was the lowest among all community types.
Broadleaf mixed forests had significantly higher levels of TN (0.884 ± 0.119 g·kg−1), TP (0.908 ± 0.121 g-kg−1), AP (30.634 ± 3.994 mg·kg−1), and AK (115.244 ± 13.053 mg·kg−1) among all communities (Figure 5). The chemical properties of the R. pseudoacacia ‘Idaho’ forest, coniferous mixed forest, and broadleaf and coniferous forest also showed some dominance, while the chemical properties of the Fraxinus pennsylvanica forest, Juniperus chinensis forest, Platycladus orientalis forest, and Populus tomentosa forest were significantly lower than those of the other community types and had lower nutrient levels.
3.2. Understory Plant Diversity Characteristics
In the selected urban forest sample sites, a total of 166 species (including varieties/cultivars) in 110 genera belonging to 46 families of understory plants were surveyed and recorded (Appendix A Table A1).
According to the statistical analysis, the Shannon diversity index (H′) of understory plants in most communities was significantly lower in spring and summer than in autumn. For the spring and summer understory plant diversity, H′ was highest (3.13 ± 0.88) in the broadleaf mixed forest, with a significant difference (p < 0.05), followed by the P. bungeana forest (2.65 ± 0.86) and R. pseudoacacia ‘Idaho’ forest (2.60 ± 0.99) (Figure 6a). The H′ of understory plants in autumn in broadleaf mixed forests (3.63 ± 0.97) was highest (p < 0.05), followed by that in R. pseudoacacia f. decaisneana forest (2.91 ± 0.94), with a fluctuating H′ in autumn, ranking second, and that in Robinia pseudoacacia ‘Idaho’ forest (2.91 ± 0.70), ranking third. The H′ indices of the Ulmus pumila ‘Jinye’ forest and Platycladus orientalis forest were higher in spring than in autumn (Figure 6b).
Correlations of the Pielou evenness index (E) of understory plants of different community types showed a high evenness index for understory plants (p < 0.05) in spring in broadleaf and coniferous forests (0.62 ± 0.18), followed by the Ailanthus altissima ‘Qiantou’ forest (0.62 ± 0.17), and mixed coniferous forests (0.61 ± 0.14) (Figure 6a). As the number of understory plant species increased, the highest evenness index of the understory plants in autumn was found in the deciduous broadleaf mixed forest (0.79 ± 0.08), Q. mongolica forest (0.75 ± 0.10), and tufted A. truncatum forest (0.75 ± 0.10) (Figure 6b).
The lowest Simpson dominance index in spring was found in broadleaf mixed forests (0.12 ± 0.09), although the Diospyros kaki forest (0.14 ± 0.08) and Q. mongolica forest (0.14 ± 0.08) also had low levels, indicating that their understory plants were more evenly distributed and did not have significantly dominant plants (Figure 6a). The plant distribution in the understory of the mixed broadleaf forests (0.07±0.07) remained more uniform in autumn, as did the plant composition of the R. pseudoacacia ‘Idaho’ forest (0.09 ± 0.08), R. pseudoacacia forest (0.09 ± 0.08) and R. pseudoacacia f. decaisneana forest (0.09 ± 0.09) (Figure 6b). The Cedrus deodara forest, Styphnolobium japonicum forest, Juniperus chinensis forest, and Platycladus orientalis forest have always had higher Simpson index values due to the small number of plants within these types of tree forests and their uneven distribution. In contrast, the Simpson dominance index was higher in the P. tabuliformis forest in autumn due to the absolute dominance of dogwood in the oleander forest in autumn, which resulted in a higher diversity index.
Analysis of the Margalef richness index showed that the understory of the mixed broadleaf forest was the most abundant in both seasons and significantly (p < 0.05) higher than that of the other community types, with values of 6.84 ± 1.96 and 13.35 ± 3.08, respectively. This was followed by the R. pseudoacacia ‘Idaho’ forest > R. pseudoacacia f. decaisneana forest > P. bungeana forest > mixed conifer forest, which all had rich understories (Figure 6). The abundances of the community types, such as Juniperus chinensis forest, P. orientalis forest, C. deodara forest, and Eucommia ulmoides forest, were all lower and showed a decreasing trend with seasonal changes.
3.3. Correlations of Understory Plant Diversity with Soil
3.3.1. Correlations between Soil and Plant Diversity in Spring and Summer
Based on the correlation analysis of understory plant diversity with soil factors, all soil factors, except pH, had significant effects on understory plant diversity (p < 0.05). RDA was employed to determine the relationship between understory plant diversity and soil physicochemical parameters. The results showed that the contribution rates of eigenvalues on the RDA1 and RDA2 axes reached 36.5% and 2.77%, respectively (Figure 7a). Mantel test analysis showed that SOM and SOC were the key drivers of understory plant diversity (Figure 7b). The Shannon—Wiener index (H′) showed significant positive correlations with SOM, SOC, TP, AP, AK, and TSP (p < 0.05) and negative correlations with SBD (p < 0.05); the Pielou index (E) showed a significant positive correlation with SOM, SOC, TP, AP, and AK (p < 0.05); the Simpson index (C) had a significant negative correlation with SOM, SOC, TP, AP, and AK (p < 0.05); and the Margalef richness index (DMG) showed significant positive correlations with SOM, SOC, TP, AP, AK, and TSP (p < 0.05). SOC and SOM showed a correlation coefficient of 0.72 ** (p < 0.01) with the Shannon—Wiener index (H′); 0.48 ** and 0.49 ** (p < 0.01) with the Pielou index (E); and −0.53 ** (p < 0.01) with the Simpson index (C). The correlation coefficient was −0.53 **; the correlation coefficient for the Margalef richness index (DMG) was 0.73 ** (p < 0.01), which was the highest value (Figure 7c).
VPA was used to analyze the comprehensive contribution of soil physicochemical parameters to the understory plant diversity (Figure 8). Based on the results, the SOM had a high interpretation rate of 36.6%, while the TP, TSP, AK, SBD, SOC, AP, and pH each explained 10.1%, 6.1%, 3.6%, 2.4%, 1.3%, 0.9%, and 0.6%, respectively.
3.3.2. Correlations between Soil and Plant Diversity in Autumn
The correlation between understory plant diversity and soil factors in autumn was similar to that in spring. The results of RDA showed that the contribution rate of eigenvalues on the RDA1 and RDA2 axes reached 50.2% and 6.8%, respectively (Figure 9a). Mantel test analysis showed that SOM and SOC were key drivers of the understory plant diversity that remained in autumn (Figure 9b). The Shannon—Wiener index (H′) had significant positive correlations (p < 0.05) with SOM, SOC, TN, TP, AP, and CP and negative correlations (p < 0.01) with SBD and NCP. The Pielou index (E) had a significant positive correlation (p < 0.05) with SOM, SOC, TN, TP, AP, and CP. The Simpson index (C) showed a significant negative correlation (p < 0.05) with SOM, SOC, TN, TP, AP, SBD, and CP. The Margalef richness index (DMG) had a significant positive correlation (p < 0.05) with SOM, SOC, TN, TP, AP, and CP and a significant negative correlation (p < 0.05) with SBD and NCP. The highest correlation coefficients were found for SOC and SOM, where the correlation impact coefficients were 0.74** and 0.75** for the Shannon—Wiener index (H′) (p < 0.01); 0.38** and 0.39** for the Pielou index (E) (p < 0.01); the correlation coefficient effect on the Simpson index (C) was −0.36**; and the correlation coefficient effect on the Margalef richness index (DMG) was 0.66** (p < 0.01) and 0.67** (Figure 9c).
The results of the VPA-based analysis showed that SOM still had the highest explanation rate of 49.9%, and the influence of soil physicochemical parameters on understory plant diversity decreased in the following order: SOM > SBD > TP > CP > AP > NCP > TN > SOC (Figure 10).
4. Discussion
4.1. Diversity of Understory Plants in Different Communities
The community species diversity index is one of the most direct characteristics of the structure of a community [48]. Studies have shown that the complexity of mixed forests is significantly and positively correlated with the diversity index, and mixed forests are superior to pure forests in improving stand structure and increasing stand habitat heterogeneity and stand stability [3]. Conversely, factors such as plantation type (silvicultural species) and stand composition (pure or mixed forest) may have positive or negative effects on understory species diversity due to the overly subjective selection of tree species in plantations [49]. This may be one of the reasons for the significant variability in understory plant diversity across community types.
The study found that under the same steric conditions, the understory plant diversity indices of both broad-leaved mixed forests and coniferous mixed forests showed higher levels and exhibited some advantages. The mixed forests created different tree levels, which created a suitable environment for the growth of other understory plants and increased the level of understory plant diversity [50]. In this study, the species diversity of understory plants was comprehensively measured using the Shannon–Weiner index (H′), Simpson index (C), Pielou index (E), and Margalef species richness index (DMG) (Figure 7 and Figure 8). Similar to the results of previous studies, the diversity indices of broad-leaved mixed forests showed high levels and exhibited certain advantages [51]. This result indicates that the understory species in mixed broad-leaved forests are more abundant and more evenly distributed than those in other communities. In addition, there are some urban forest groups in which the undergrowth plants have no obvious seasonal changes (such as lateral Berlin and cedar forests). They have a higher Simpson (C) index and a lower Margalef richness index (DMG), which may be related to the canopy density of forest stands, and related studies can be conducted subsequently. Based on the above findings, community creation and maintenance of urban forests should also focus on creating complex mixed communities to maintain a high level of understory plant diversity.
4.2. Effect of Different Community Types on Soil Physicochemical Properties
In this study, except for soil pH, there were significant differences (p < 0.05) in soil physicochemical indicators among community types, which indicates that community type differences could have a significant effect on soil physicochemical properties. Differences in the physical and chemical properties of soils are important factors influencing the structure of plant communities, and plants of different types of communities directly or indirectly affect soil physicochemical properties through long-term succession due to growth activities and decomposition of plant litter [52,53]. The soil beneath conifers is more acidic than the soil beneath broad-leaved species under the same environmental conditions, according to previous studies [54]. This difference is due to the high content of organic acids produced by conifer litter during the decomposition process. However, this study differs from previous studies, and the soil nutrient statuses of the broad-leaved plant community were better than those of the coniferous plant community. This difference may be because the litter decomposition of broad-leaved tree species is usually stronger than that of coniferous species, and this attribute is more conducive to soil nutrient accumulation. In addition, the soil bulk density and water content have a large range of numerical fluctuations between different communities, and some communities have serious soil compaction (such as F. pennsylvanica forests), which may be related to the allelopathy of some arbor species; these topics require additional consideration in follow-up research.
Although Beijing has continued to carry out afforestation projects since 2012, compared with a previous study [55], the physical and chemical values of the Beijing urban forest had a downward trend with growth each year, which indicates that the soil nutrients of the community have not been supplemented in time, and weed cleaning too frequently may lead to the soil nutrient loss of willows, which may indicate that the management measures taken in the forest area need to be improved. In addition, this study found that the SOM content in the urban forest soil in the Beijing urban forest had a downward trend, which would affect the soil fertility, soil structure, water retention, and nutrient content. This result may be related to the current unreasonable maintenance management mode.
4.3. Relationship between Soil Factors and Understory Plant Diversity
Some research results suggest that soil organic matter (SOM) is positively correlated with plant diversity, and an increase in plant species diversity enhances the function of the soil ecosystem [56]. However, some research results have shown that SOM is negatively correlated with plant diversity [57]. It is believed that high soil nutrient levels lead to increased attacks by plant pathogens, which negatively affect plant survival and then lead to decreased plant diversity [58]. In this study, soil organic matter (SOM) and organic carbon (SOC) were the main soil factors influencing understory plant diversity, which is also consistent with the results of previous studies. SOM (soil organic matter) is a key indicator of soil quality [25]. It affects soil nutrient availability as an energy material for microbial activities [51]. However, according to the classification criteria of China’s second soil census, the soils in the current study area are classes III and IV, indicating that the current soil nutrient content is low, which could be due to frequent weed removal.
The N, P, and K counts in the soil were the most important factors influencing species composition in the area, while the nutrient distribution characteristics explained the distribution characteristics of herbaceous plants and shrubs to some extent [58]. Plant diversity and species turnover increased with forest succession, and both altered the availability of soil N and P. High plant diversity can both improve soil N and P availability as a result of increased productivity, altered litter quantity and quality, and changed soil physical and chemical properties (i.e., SOC) [59]. In this study, total nitrogen (TN), total phosphorus (TP), and effective phosphorus (AK) were important soil factors influencing understory plant diversity indirectly by regulating soil properties, which is also consistent with the results of previous studies [60,61]. Furthermore, some environmental variables were not explained in this study, indicating that community distribution was influenced by other factors (such as stand factors, biotic interaction factors, disturbance factors, and stochastic factors) [62], and additional research is needed to investigate the relationship between other environmental variables and understory plant diversity. However, the effects of other soil microorganism-caused factors on understory diversity were not considered in this study. This is a shortcoming of this study, and the influence of these factors on understory diversity should be further studied in the future.
4.4. Implications for Future Urban Forest Design
According to this study, in the process of urban forest conservation, attention should be given to regulating and improving soil nutrients and retaining deadfall within the forest floor to increase SOM content, thereby providing a good supply of nutrients for the growth of understory plants and thus enhancing the diversity level of understory plants. As the diversity level of understory plants increases, deadfall can effectively increase soil nutrient content and improve soil physicochemical properties, thus forming a benign ecological cycle between soil and understory plants.
As a component of urban forest ecosystems, soil not only affects plant diversity at the community scale but also plant growth at the regional scale. Related studies have shown that it is very important to evaluate soil physical and chemical properties, nutrients, SOM loss, pollution, biodiversity, etc., within a certain temporal interval [22]. The dynamic stability of an ecosystem is maintained by the synergistic mechanism between vegetation and soil [63]. For the maintenance and subsequent creation of urban forests in Beijing, it is necessary to coordinate the interrelationship between community species growth and soil fertility, focus on the combination and matching of tree species, and appropriately intervene with anthropogenic measures for timely nutrient replenishment to establish a dynamic and balanced urban forest community.
5. Conclusions
This study revealed the influence of soil physicochemical properties on understory plant diversity in different community types. Our results showed that the Shannon—Wiener index, Pielou index, Simpson index, and Margalef richness index of the mixed deciduous broad-leaved forest were significantly (p < 0.05) higher than those of the other community types. Except for soil pH, all other soil physicochemical indicators were significantly different, with mixed deciduous broad-leaved forests having better soil physicochemical properties than the other community types.
The results showed that soil organic matter (SOM) was significantly positively correlated with the diversity of understory plants and was the most important factor affecting the diversity of understory plants. The comprehensive contribution rate of SOM to the diversity of understory plants in spring was 36.3%, and the comprehensive contribution rate to the diversity of understory plants in autumn was 49.9%, according to VPA results. The soil total nitrogen (TN), total phosphorus (TP), and effective phosphorus (AK) also have an impact. To maintain the stability of understory plant diversity in urban forests, designing communities of mixed forest types and forming a good synergistic effect with soils should be the focal points of future urban forest communities.
Conceptualization, X.M., S.F., K.L. and X.L.; methodology, X.M. and X.L.; software, X.M.; investigation, X.M. and K.L.; data curation, X.M.; writing—original draft preparation, X.M.; writing—review and editing. and L.D.; project administration, X.M. and L.D.; funding acquisition, L.D. All authors have read and agreed to the published version of the manuscript.
Not applicable.
Not applicable.
The raw data required to reproduce these findings cannot be shared at this time as the data also forms part of an ongoing study.
The authors declare no conflict of interest.
Footnotes
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Figure 1. Plain afforestation research plot. HR (Huairou District), YQ (Yanqing District), MY (Miyun District), PG (Pinggu District), CP (Changping District), SY (Shunyi District), HD (Haidian District), CY (Chaoyang District), TZ (Tongzhou District), FS (Fangshan District), FT (Fengtai District), and DX (Daxing District).
Figure 2. Sample plots for plant and soil collection. Note: In the figure, H1–H5 are the survey sample points for understory plants; H2, H3, and H5 are soil sampling points.
Figure 3. Multiple comparative analyses of the physical properties of soils in different communities. SWC: soil water content; CP: soil capillary porosity; SBD: soil bulk density; TSP: total soil porosity; NCP: noncapillary porosity. Note: Different lowercase letters indicate significant differences in the values of soil chemical properties between different community types (p < 0.05). Abbreviations of community names refer to Table 2.
Figure 4. Multiple comparative analyses of soil organic carbon and organic matter in different urban forest communities. OC: organic carbon; OM: organic matter Note: Different lowercase letters indicate significant differences in soil organic matter and organic carbon values between different community types (p < 0.05). Abbreviations of community names refer to Table 2.
Figure 5. Multiple comparative analyses of soil chemistry in different urban forest communities. pH: hydrogen ion concentration; TN: total nitrogen; TP: total phosphorus; AP: available phosphorous; AK: available potassium. Note: Different lowercase letters indicate significant differences in the values of soil physical properties between different community types (p < 0.05). Abbreviations of community names refer to Table 2.
Figure 6. Plant diversity characteristics of different community types in Beijing urban forests ((a) spring and summer; (b) autumn). H′: Shannon–Weiner index; C: Simpson index; E: Pielou index; DMG: Margalef richness index. Note: Different lowercase letters indicate significant differences in the diversity values of different community types (p < 0.05). Abbreviations of community names refer to Table 2.
Figure 7. Plant community diversity index (spring and summer) and RDA ordination map of soil environmental factors. (a) Redundancy analysis (RDA) on soil factors and understory plant diversity; (b) correlation between diversity index of understory plants and soil factors in spring and summer; (c) correlation coefficient between understory plant diversity index and soil factors in spring and summer. Note: * correlation significant at 0.01–0.05 level. ** correlation significant at 0.01–0.001 level. *** correlation significant at <0.001 level.
Figure 8. Variance partitioning analysis (VPA) showing the effects of soil factors on understory plant diversity in spring and summer.
Figure 9. Plant community diversity index (autumn) and RDA ordination map of soil environmental factors. (a) Redundancy analysis (RDA) on soil factors and understory plant diversity; (b) correlation between diversity index of understory plants and soil factors in autumn; (c) correlation coefficient between understory plant diversity index and soil factors in autumn. Note: * correlation significant at 0.01–0.05 level. ** correlation significant at 0.01–0.001 level. *** correlation significant at <0.001 level.
Figure 10. Variance partitioning analysis (VPA) showing the effects of soil factors on understory plant diversity in autumn.
Basic information about the 42 selected sample sites.
District | Sample Site | Longitude (°N) | Latitude (°W) | District | Sample Site | Longitude (°N) | Latitude (°W) |
---|---|---|---|---|---|---|---|
DX (Daxing) | DX1 | 39.681165 | 116.508758 | PG (Pinggu) | PG1 | 40.121068 | 117.178731 |
DX2 | 39.681206 | 116.59744 | PG2 | 40.066124 | 117.010529 | ||
DX3 | 39.669858 | 116.321655 | MY (Miyun) | MY1 | 40.397534 | 116.76196 | |
DX4 | 39.507692 | 116.319536 | MY2 | 40.373566 | 116.946701 | ||
DX5 | 39.774158 | 116.256056 | HR (Huairou) | HR1 | 40.278431 | 116.667219 | |
FS (Fangshan) | FS1 | 39.635622 | 115.966366 | HR2 | 40.330371 | 116.700131 | |
FS2 | 39.76578 | 116.202661 | HD (Haidian) | HD1 | 40.089601 | 116.282661 | |
FT (Fengtai) | FT1 | 39.846551 | 116.222275 | HD2 | 39.943478 | 116.264863 | |
FT2 | 39.796151 | 116.355014 | HD3 | 40.06604 | 116.146538 | ||
FT3 | 39.852475 | 116.459305 | SY (Shunyi) | SY1 | 40.129908 | 116.713629 | |
FT4 | 39.812886 | 116.379154 | SY2 | 40.123078 | 116.831259 | ||
CP (Changping) | CP1 | 40.095728 | 116.362866 | SY3 | 40.084625 | 116.559386 | |
CP2 | 40.082261 | 116.421362 | SY4 | 40.18036 | 116.670752 | ||
CP3 | 40.063893 | 116.388207 | SY5 | 40.23692 | 116.791866 | ||
CP4 | 40.098987 | 116.45221 | TZ (Tongzhou) | TZ1 | 39.801547 | 116.881987 | |
CP5 | 40.097294 | 116.371731 | TZ2 | 39.756524 | 116.628646 | ||
CP6 | 40.176499 | 116.330578 | TZ3 | 39.947695 | 116.706227 | ||
CP7 | 40.150183 | 116.285046 | YQ (Yanqing) | YQ1 | 40.473383 | 115.887473 | |
CP8 | 40.107098 | 116.36192 | YQ2 | 40.48354 | 115.907326 | ||
CY (Chaoyang) | CY1 | 39.904041 | 116.488239 | ||||
CY2 | 39.998927 | 116.578898 | |||||
CY3 | 40.048159 | 116.535358 | |||||
CY4 | 40.026288 | 116.501034 |
Community types of the study sample plots (n = 1189).
Type | Name | Abbreviation | Number of Plots |
---|---|---|---|
Pure forests | Betula platyphylla forests | BPF | 40 |
Robinia pseudoacacia forests | RPF | 39 | |
Tufted Acer truncatum forests | ATCF | 22 | |
Eucommia ulmoides forests | EUF | 19 | |
Platanus acerifolia forests | PAF | 34 | |
Styphnolobium japonicum forests | SJF | 43 | |
Salix matsudana forests | SMF | 23 | |
Robinia pseudoacacia f. decaisneana forests | RPDF | 45 | |
Ulmus pumila ‘Jinye’ forests | UPJF | 22 | |
Koelreuteria paniculata forests | KPF | 25 | |
Populus tomentosa forests | PTMF | 31 | |
Quercus mongolica forests | QMF | 19 | |
Ailanthus altissima ‘Qiantou’ forests | AAQF | 51 | |
Catalpa bungei forests | CBF | 30 | |
Populus davidiana forests | 16 | ||
Diospyros kaki forests | DKF | 12 | |
Robinia pseudoacacia ‘Idaho’ forests | RPIF | 45 | |
Fraxinus pennsylvanica forests | FPF | 47 | |
Ginkgo biloba forests | GBF | 30 | |
Ulmus pumila forests | UPF | 33 | |
Acer truncatum forests | ATF | 35 | |
Catalpa ovata forests | COF | 41 | |
Pinus bungeana forests | PBF | 60 | |
Platycladus orientalis forests | POF | 36 | |
Juniperus chinensis forests | JCF | 39 | |
Pinus tabuliformis forests | PTF | 78 | |
Cedrus deodara forests | CDF | 35 | |
Deciduous broadleaf mixed forests | Deciduous broadleaf mixed forests | DDMF | 102 |
Broadleaf and coniferous mixed forests | Broadleaf and coniferous mixed forests | BCF | 77 |
Coniferous mixed forests | Coniferous mixed forests | CMF | 60 |
Appendix A
List of understory plants.
No. | Family | Genus | Latin Scientific Name | Type |
---|---|---|---|---|
1 | Cornaceae | Cornus | Cornus alba | Shrub |
2 | Tamaricaceae | Tamarix | Tamarix chinensis | Shrub |
3 | Rutaceae | Zanthoxulum | Zanthoxylum simulans | Shrub |
4 | Ebnaceae | Diospyros | Diospyros lotus | Shrub |
5 | Solanaceae | Lycium | Lycium chinense | Shrub |
6 | Oleaceae | Forsythia | Forsythia suspensa | Shrub |
7 | Oleaceae | Syringa | Syringa oblata | Shrub |
8 | Fabaceae | Cercis | Cercis chinensis | Shrub |
9 | Rosaceae | Amygdalus | Amygdalus triloba | Shrub |
10 | Rosaceae | Sorbaria | Sorbaria sorbifolia | Shrub |
11 | Rosaceae | Kerria | Kerria japonica | Shrub |
12 | Rosaceae | Kerria | Kerria japonica f. pleniflora | Shrub |
13 | Lythraceae | Lagerstroemia | Lagerstroemia indica | Shrub |
14 | Cupressaceae | Juniperus | Juniperus sabina | Evergreen Shrub |
15 | Buxaceae | Buxus | Buxus megistophylla | Evergreen Shrub |
16 | Cupressaceae | Juniperus | Juniperus procumbens | Evergreen Shrub |
17 | Asteraceae | Artemisia | Artemisia argyi | Herb |
18 | Amaranthaceae | Amaranthus | Amaranthus blitum | Herb |
19 | Poaceae | Imperata | Imperata cylindrica | Herb |
20 | Poaceae | Echinochloa | Echinochloa crus-galli | Herb |
21 | Boraginaceae | Bothriospermum | Bothriospermum chinense | Herb |
22 | Polygonaceae | Polygonum | Polygonum aviculare | Herb |
23 | Asteraceae | Xanthium | Xanthium strumarium | Herb |
24 | Fabaceae | Melilotus | Melilotus officinalis | Herb |
25 | Rosaceae | Potentilla | Potentilla supina | Herb |
26 | Plantaginaceae | Plantago | Plantago asiatica | Herb |
27 | Asteraceae | Lactuca | Lactuca indica | Herb |
28 | Alismataceae | Sagittaria | Sagittaria trifolia subsp. leucopetala | Herb |
29 | Convolvulaceae | Calystegia | Calystegia hederacea | Herb |
30 | Poaceae | Setaria | Setaria faberi | Herb |
31 | Asteraceae | Cirsium | Cirsium japonicum | Herb |
32 | Asteraceae | Artemisia | Artemisia sieversiana | Herb |
33 | Chenopodiaceae | Kochia | Kochia scoparia | Herb |
34 | Orobanchaceae | Rehmannia | Rehmannia glutinosa | Herb |
35 | Euphorbiaceae | Euphorbia | Euphorbia humifusa | Herb |
36 | Apocynaceae | Cynanchum | Cynanchum thesioides | Herb |
37 | Rosaceae | Sanguisorba | Sanguisorba officinalis | Herb |
38 | Brassicaceae | Lepidium | Lepidium apetalum | Herb |
39 | Apocynaceae | Cynanchum | Cynanchum chinense | Herb |
40 | Brassicaceae | Orychophragmus | Orychophragmus violaceus | Herb |
41 | Caryophyllaceae | Stellaria | Stellaria media | Herb |
42 | Amaranthaceae | Amaranthus | Amaranthus retroflexus | Herb |
43 | Araceae | Lemna | Lemna minor | Herb |
44 | Boraginaceae | Trigonotis | Trigonotis peduncularis | Herb |
45 | Poaceae | Setaria | Setaria viridis | Herb |
46 | Poaceae | Cynodon | Cynodon dactylon | Herb |
47 | Brassicaceae | Rorippa | Rorippa indica | Herb |
48 | Poaceae | Chloris | Chloris virgata | Herb |
49 | Asteraceae | Artemisia | Artemisia annua | Herb |
50 | Amaranthaceae | Chenopodium | Chenopodium glaucum | Herb |
51 | Fabaceae | Kummerowia | Kummerowia striata | Herb |
52 | Zygophyllaceae | Tribulus | Tribulus terrestris | Herb |
53 | Solanaceae | Nicandra | Nicandra physalodes | Herb |
54 | Asteraceae | Crepidiastrum | Crepidiastrum sonchifolium | Herb |
55 | Poaceae | Setaria | Setaria pumila | Herb |
56 | Asteraceae | Helianthus | Helianthus tuberosus | Herb |
57 | Asteraceae | Sonchus | Sonchus brachyotus | Herb |
58 | Fabaceae | Glycine | Glycine soja | Herb |
59 | Papaveraceae | Corydalis | Corydalis pallida | Herb |
60 | Geraniaceae | Geranium | Geranium wilfordii | Herb |
61 | Amaranthaceae | Chenopodium | Chenopodium album | Herb |
62 | Polygonaceae | Polygonum | Polygonum persicaria | Herb |
63 | Convolvulaceae | Ipomoea | Ipomoea nil | Herb |
64 | Asteraceae | Senecio | Senecio nemorensis | Herb |
65 | Solanaceae | Solanum | Solanum nigrum | Herb |
66 | Poaceae | Phragmites | Phragmites australis | Herb |
67 | Apocynaceae | Apocynum | Apocynum venetum | Herb |
68 | Apocynaceae | Metaplexis | Metaplexis japonica | Herb |
69 | Cannabaceae | Humulus | Humulus scandens | Herb |
70 | Portulacaceae | Portulaca | Portulaca oleracea | Herb |
71 | Iridaceae | Iris | Iris lactea | Herb |
72 | Poaceae | Digitaria | Digitaria sanguinalis | Herb |
73 | Solanaceae | Datura | Datura stramonium | Herb |
74 | Fabaceae | Gueldenstaedtia | Gueldenstaedtia verna | Herb |
75 | Asteraceae | Artemisia | Artemisia japonica | Herb |
76 | Fabaceae | Medicago | Medicago sativa | Herb |
77 | Cucurbitaceae | Cucurbita | Cucurbita moschata | Herb |
78 | Asteraceae | Hemisteptia | Hemisteptia lyrata | Herb |
79 | Poaceae | Eleusine | Eleusine indica | Herb |
80 | Asteraceae | Artemisia | Artemisia dubia | Herb |
81 | Poaceae | Elymus | Elymus dahuricus | Herb |
82 | Plantaginaceae | Plantago | Plantago depressa | Herb |
83 | Asteraceae | Taraxacum | Taraxacum mongolicum | Herb |
84 | Asteraceae | Artemisia | Artemisia igniaria | Herb |
85 | Brassicaceae | Capsella | Capsella bursa-pastoris | Herb |
86 | Rubiaceaea | Rubia | Rubia cordifolia | Herb |
87 | Malvaceae | Abutilon | Abutilon theophrasti | Herb |
88 | Asteraceae | Lactuca | Lactuca tatarica | Herb |
89 | Convolvulaceae | Ipomoea | Ipomoea triloba | Herb |
90 | Asteraceae | Ambrosia | Ambrosia trifida | Herb |
91 | Crassulaceae | Phedimus | Phedimus aizoon | Herb |
92 | Asteraceae | Bidens | Bidens pilosa | Herb |
93 | Boraginaceae | Tournefortia | Tournefortia sibirica | Herb |
94 | Papaveraceae | Chelidonium | Chelidonium majus | Herb |
95 | Rosaceae | Duchesnea | Duchesnea indica | Herb |
96 | Polygonaceae | Rumex | Rumex japonicus | Herb |
97 | Fabaceae | Vicia | Vicia unijuga | Herb |
98 | Convolvulaceae | Convolvulus | Convolvulus arvensis | Herb |
99 | Euphorbiaceae | Acalypha | Acalypha australis | Herb |
100 | Mazaceae | Mazus | Mazus pumilus | Herb |
101 | Rosaceae | Potentilla | Potentilla chinensis | Herb |
102 | Lamiaceae | Leonurus | Leonurus sibiricus | Herb |
103 | Lamiaceae | Lagopsis | Lagopsis supina | Herb |
104 | Lamiaceae | Elsholtzia | Elsholtzia ciliata | Herb |
105 | Asteraceae | Helianthus | Helianthus annuus | Herb |
106 | Poaceae | Eragrostis | Eragrostis minor | Herb |
107 | Asteraceae | Cirsium | Cirsium arvense var. integrifolium | Herb |
108 | Amaranthaceae | Chenopodium | Chenopodium ficifolium | Herb |
109 | Asteraceae | Erigeron | Erigeron canadensis | Herb |
110 | Asteraceae | Inula | Inula japonica | Herb |
111 | Commelinaceae | Commelina | Commelina communis | Herb |
112 | Lamiaceae | Leonurus | Leonurus japonicus | Herb |
113 | Asteraceae | Artemisia | Artemisia capillaris | Herb |
114 | Poaceae | Zea | Zea mays | Herb |
115 | Convolvulaceae | Ipomoea | Ipomoea purpurea | Herb |
116 | Violaceae | Viola | Viola prionantha | Herb |
117 | Brassicaceae | Eruca | Eruca vesicaria subsp. sativa | Herb |
118 | Asteraceae | Ixeris | Ixeris chinensis | Herb |
119 | Amaranthaceae | Salsola | Salsola collina | Herb |
120 | Asteraceae | Artemisia | Artemisia scoparia | Herb |
121 | Violaceae | Viola | Viola philippica | Herb |
122 | Fabaceae | Medicago | Medicago lupulina | Herb |
123 | Lamiaceae | Perilla | Perilla frutescens | Herb |
124 | Oxalidaceae | Oxalis | Oxalis corniculata | Herb |
125 | Brassicaceae | Descurainia | Descurainia sophia | Herb |
126 | Poaceae | Eragrostis | Eragrostis pilosa | Herb |
127 | Asteraceae | Carduus | Carduus nutans | Herb |
128 | Asteraceae | Aster | Aster tataricus | Herb |
129 | Asteraceae | Aster | Aster altaicus | Herb |
130 | Euphorbiaceae | Euphorbia | Euphorbia esula | Herb |
131 | Primulaceae | Androsace | Androsace umbellata | Herb |
132 | Asteraceae | Youngia | Youngia japonica | Herb |
133 | Brassicaceae | Rorippa | Rorippa palustris | Herb |
134 | Amaranthaceae | Achyranthes | Achyranthes bidentata | Herb |
135 | Asteraceae | Artemisia | Artemisia caruifolia | Herb |
136 | Urticaceae | Urtica | Urtica angustifolia | Herb |
137 | Fabaceae | Vicia | Vicia sepium | Herb |
138 | Poaceae | Poa | Poa annua | Herb |
139 | Papaveraceae | Corydalis | Corydalis bungeana | Herb |
140 | Poaceae | Cleistogenes | Cleistogenes hancei | Herb |
141 | Cyperaceae | Carex | Carex breviculmis | Herb |
142 | Menispermaceae | Menispermum | Menispermum dauricum | Herb |
143 | Fabaceae | Amphicarpaea | Amphicarpaea edgeworthii | Herb |
144 | Fabaceae | Trifolium | Trifolium repens | Herb |
145 | Asteraceae | Artemisia | Artemisia selengensis | Herb |
146 | Asteraceae | Artemisia | Artemisia desertorum | Herb |
147 | Asteraceae | Artemisia | Artemisia mongolica | Herb |
148 | Amaranthaceae | Amaranthus | Amaranthus spinosus | Herb |
149 | Amaranthaceae | Amaranthus | Amaranthus viridis | Herb |
150 | Fabaceae | Melilotus | Melilotus albus | Herb |
151 | Euphorbiaceae | Euphorbia | Euphorbia maculata | Herb |
152 | Euphorbiaceae | Euphorbia | Euphorbia hypericifolia | Herb |
153 | Equisetaceae | Equisetum | Equisetum arvense | Herb |
154 | Euphorbiaceae | Euphorbia | Euphorbia dentata | Herb |
155 | Asteraceae | Ambrosia | Ambrosia artemisiifolia | Herb |
156 | Asteraceae | Erigeron | Erigeron annuus | Herb |
157 | Asteraceae | Xanthium | Xanthium spinosum | Herb |
158 | Rubiaceaea | Paederia | Paederia foetida | Herb |
159 | Amaranthaceae | Alternanthera | Alternanthera sessilis | Herb |
160 | Brassicaceae | Lepidium | Lepidium densiflorum | Herb |
161 | Papaveraceae | Corydalis | Corydalis yanhusuo | Herb |
162 | Cyperaceae | Carex | Carex giraldiana | Herb |
163 | Asteraceae | Echinacea | Echinacea purpurea | Herb |
164 | Asteraceae | Gaillardia | Gaillardia aristata | Herb |
165 | Asteraceae | Coreopsis | Coreopsis lanceolata | Herb |
166 | Asteraceae | Artemisia | Artemisia anethifolia | Herb |
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Abstract
Understory vegetation affects the richness and stability of urban forest ecosystems. To investigate the influence of soil physicochemical properties on the diversity of understory plants in urban forests, this study used 30 urban forest communities in the Beijing Plain area as the research object and analyzed the correlation between understory plant diversity and soil factors by correlation analysis. Furthermore, pH, soil bulk density (SBD), total soil porosity (TSP), soil water content (SWC), soil organic carbon (SOC), soil organic matter (SOM), total nitrogen (TN), total phosphorus (TP), effective phosphorous (AP), and effective potassium (AK) were determined in this study. The Shannon diversity index (H’), Pielou evenness index (E), Simpson dominance index (C), and Margalef richness index (DMG) of understory plants were calculated. The soil nutrient contents and the understory plant diversity indices of the different community types showed significant differences. There was a strong correlation between soil properties and the diversity index of understory vegetation. SOM and SOC were the main factors affecting the Shannon-Wiener index, Pielou index, Simpson index, and Margalef richness index of the understory plants. We conclude that soil properties were one of the primary drivers of the formation of understory vegetation diversity. The results of the study can provide scientific guidance for the management of urban forests.
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1 School of Landscape Architecture, Beijing Forestry University, Beijing 100083, China; Laboratory of Beijing Urban and Rural Ecological Environment, Beijing 100083, China; National Engineering Research Center for Floriculture, Beijing 100083, China