1. Introduction
Global changes since the industrial revolution have included climate warming. In 2019, the global average temperature was approximately 1.1 °C higher than in the pre-industrial period, and the period from 2015 to 2019 was the warmest five years since complete meteorological observation records have been available. As our understanding of such warming has deepened, phenology has been found to be closely associated with the study of global climate change [
1]. Phenology is the traditional discipline of studying the seasonal activities of flora and fauna, considering environmental factors as driving forces. Plant phenology, a natural phenomenon in which plants are annually affected by biological and environmental factors [
2], is the growth and development rhythm formed by a plant’s long-term adaptation to seasonal changes. Affected by global warming, plant phenology has become a significant and sensitive indicator of global climate change, particularly changes in start of season (SOS), for which the period of decline has become a study hotspot [
3]. Nevertheless, the characteristic changes in plant phenology are subject to multiple environmental factors, which are often mutually interdependent. Therefore, it is ideal to implement controlled experiments to test the theoretical phenological hypotheses. By controlling the gradient changes in one or more influencing factors (temperature, moisture, light, etc.), considerable phenological data can be collected in a short period of time [
4]. Among the environmental influencing factors, temperature is deemed the foremost meteorological factor affecting plant phenology [
5]. Zhai Jia et al. [
6] analyzed individual observations and model simulations and discovered that for every 1 °C increase in temperature, the spring phenology of plants growing in China advances by 4.93 d. Mo Fei et al. [
7] observed that with small changes in temperature and photoperiod throughout the year, the changes in the phenological period of plants will depend primarily on changes in temperature due to their heat requirements. Illumination is also a significant meteorological factor influencing plant phenology. Keller et al. [
8] investigated the blossoms of 33 alpine plants in Austria and discovered that 54% of the plants were sensitive to photoperiod during florescence. Moisture can also influence phenological changes; however, Hou Meiting et al. [
9] considered that the main climatic factor to cause notable changes in vegetation in eastern China was temperature, and the role of precipitation was not evident.
From initial human observations to the use of remote sensing technology, plant phenology observation methods have gradually become the current mainstream means. Although satellite remote sensing can be used to observe plant phenology at the regional and global scales, it is vulnerable to external influences such as clouds and the atmosphere. Nevertheless, the camera’s continuous photography technology, known as near-ground remote sensing technology, makes it possible to perform the phenological analysis of time series by extracting image information. This technology is characterized by high resolution, small-scale observation, automatic high-frequency measurement, high-quality images, and low cost [
10,
11], and it can be used to verify the large-scale vegetation phenology analyses performed on the basis of satellite remote sensing, and observe the fine phenological characteristics of microcosms and individual species. This is a powerful means to counteract insufficient specific and technological analysis of satellite remote sensing and conventional ground phenological observation. It has been widely used in many national phenology observation networks, worldwide. Zhou [
12] employed the vegetation data in the phenology camera observation network (Pheno Cam), and multiple phenological extraction methods were compared to verify the accuracy of camera phenological parameter extraction. Zhou et al. [
13] used digital cameras to analyze the differences in greenness indices pursuant to the phenology of alpine grasslands in Dangxiong, Tibet, and determined that the absolute greenness index could be used to characterize the seasonal changes in alpine grassland vegetation communities. Ahrend et al. [
14] reported that digital cameras could be used to elaborate the phenological changes in mixed beech forests in northern Switzerland. Zhou [
15] used near-earth remote sensing (digital camera) at the Oakville Prairie Biological Field Station to analyze the response of GCC to environmental factors such as soil moisture and temperature, air temperature, and solar radiation. Liu et al. [
16] adopted near-Earth remote sensing to recognize sources of uncertainty in forest canopy phenology. As indicated by the above literature, the majority of studies focus on the phenological response to climate in terms of temperature and light. Irrigation has a certain impact on phenology. An experiment in Northeast Thailand showed that for most crops in the lowlands, irrigation was able to subtract 6–7 days from the flowering stage [
17]. Walk et al. pointed out that the growth and flowering periods of alpine and Arctic plant species were closely related to the snowmelt date, because snowmelt causes changes in water and temperature, thus affecting plant growth [
18]. The impact of precipitation on plant flowering is particularly obvious in tropical and arid areas. Lampe et al. [
19] studied shrubs in northeast Venezuela and found that, due to the serious impact of drought conditions, they immediately responded by flowering as soon as precipitation occurred, resulting in a highly consistent phenological synchronization. R. Savé et al. [
20] modeled the direct effects of global changes in climatic variables and soil water-related characteristics influencing the contribution of crops on the water balance, and found that changes in environmental conditions affected the real water availability in different crops.
Populus spp. is one of the world’s fastest-growing trees in temperate areas and is the main wood species in northern China. Water is a significant limiting factor on the growth of
Populus, whose high growth rate is associated with its high water demand. Therefore,
Populus is highly susceptible to water and abiotic stresses.
Triploid Populus tomentosa is a significant tree species for the development of fast-growing and high-yield forests with independent intellectual property rights in China. However, the average productivity of its forest land is 12 m
3·hm
−2a−1 [
21], which is lower than the international average level of 20 ~ 30 m
3·hm
−2a−1 [
22], and its forest productivity is far from reaching its growth potential. Therefore, it is of great significance to investigate the phenology of planted forests of
Populus in order to advance its productivity in China.
Therefore, under a normal climate (i.e., without extreme weather), in this study, the following assumptions were made when the response mechanism affecting changes in the planted forests’ phenological characteristics in response to adequate water and different irrigation methods was still unclear: (1) water sufficiency will notably influence the changes in the phenological characteristics of vegetation, and (2) different irrigation methods can affect the changes in the phenological characteristics of vegetation. In order to address these hypotheses, we took triploid P. tomentosa B301 clones [(P. tomentosa × P. bolleana) × P. tomentosa] in a planted forest as the study object. Using near-earth satellite remote sensing equipment under the same temperature and light conditions in order to perform a controlled experiment, different irrigation methods—full drip irrigation, full furrow irrigation, and rain feeding (no irrigation)—were adopted on the forest farm, and the changes in the phenological characteristics were analyzed.
3. Results
3.1. Irrigation Duration and Irrigation Amount
Experiments using different irrigation volumes were performed on
P. tomentosa B301 cultivated in three ways, and the data were categorized as shown in
Figure 6.
Figure 6a shows the annual precipitation measured by a rain gauge. It can be observed that the rainy season in this area occurred after July. Rain fed (CK) develops under normal weather conditions, as shown in the schematic diagram of the precipitation in normal weather recorded from the first precipitation on 2 April to 27 June at preset point 1 in the plantation (
Figure 6b).
Figure 6c shows DIFI and records the irrigation volume and the irrigation duration, indicating that the tree species at preset point 3 was fully drip-irrigated from 26 March to 26 June. Due to the influence of external environmental factors such as light, the soil moisture content in the wet area was different; therefore, the irrigation volume and irrigation time were different. The average duration of full drip irrigation was 8 h.
Figure 6d shows BIFI and records the irrigation volume and duration, indicating that the tree species in the area of preset point 5 was fully irrigated from 25 March to 25 June. Due to the influence of external factors such as temperature, the average soil moisture content in the shallow soil layer (50 cm) was different, and the irrigation amount and irrigation time are also different. The average duration of furrow irrigation was 1 h.
3.2. Comparison of Vegetation Indexes at Different Preset Points
The ROI of the trees was extracted from six colors of vegetation indices, demonstrating that the ratio greenness index (GGR), green chromatic coordinate (GCC), green red vegetation index (GRVI), and green excess index (GEI) were able to reflect the whole process of growth and withering, as indicated in
Figure 7.
Figure 7 shows that the entire growth process corresponds to five stages of vegetation phenology: The first stage is the leaf bud expansion stage, and the corresponding GGR, GCC, GRVI, and GEI all show a gentle recursion trend; the second stage is the leaf bud blossom stage, and the corresponding GGR, GCC, GRVI, and GEI all show a rapidly rising trend; the third stage is the leaf spreading period, and the corresponding GGR, GCC, GRVI, and GEI all gradually reach the peak trend; the fourth stage is the leaf discoloration period, and the vegetation index remains relatively stable and only fluctuates slightly, representing a healthy growth trend; the fifth stage is the abscission period, which corresponds to the period when GGR, GCC, GRVI, and GEI begin to drop significantly to the lowest value. When the above four vegetation indexes are at their lowest value, the (RCC) shows the opposite trend. HUE was generally stable throughout the year.
Partial Enlargement of the Same Vegetation Index at Different Preset Points
The overall curves of RCC and HUE remained stable, indicating that the normal growth of
P. tomentosa B301 in the stand was not severely damaged by the natural environment. To observe the growth trend, GGR, GCC, GRVI, GEI and four vegetation indices with distinct trend characteristics were selected for enlarged observation and analysis, as shown in
Figure 8.
In
Figure 8, the ROIs of the three methods of cultivation are shown, revealing significant changes in GGR, GCC, GRVI, and GEI. The start of growing season was set as the shooting time (for reference only). Rain fed (preset point 1) reached its growth peak (MOE) 2 days earlier than DIFI (preset point 3) and BIFI (preset point 5) GGR, whereas leaves withered and fell (EOS) almost 6 days before DIFI and BIFI for CK (preset point 1), according to the GRVI. The GCC was used to define the peak time (MOE) of the three groups.
Figure 8 shows that different irrigation methods and irrigation volumes affect the growth and withering of
P. tomentosa B301, indirectly reflecting that different irrigation methods in the same forest stand cause different micro-ecological environments and increase the severity of diseases and insect pests in the area around the trees, corresponding to the differences in withering speed and color of planted forests.
3.3. Growth Response of P. Tomentosa B301 under Different Irrigation Methods and Irrigation Volumes
According to the results, the change trend of the four vegetation indices was consistent, showing a single peak curve change that first increased, then stabilized, and then finally decreased, whereas the RCC showed the opposite trend. Although they all conformed to the change of growth phenology, there were differences in the peak appearance time and the withering time. It was found that the trend of the vegetation index in the overall growth season aligned with the observations. The changing amplitude of the four vegetation indices was the highest, whereas GGR and GRVI had the highest consistency with GCC, being similar to GEI. However, the amplitude of GCC was higher than that of GEI; therefore, GCC was selected to analyze the phenology of growth changes (
Figure 9).
In
Figure 9, the high amplitude of the changes in GCC shows the minute changes more clearly; therefore, the partially enlarged drawing obtained before completion of the full irrigation on June 28 was selected for analysis. By comparison of
Figure 9a–c, it can be observed that DIFI (preset point 3) was irrigated earlier and more frequently than CK (preset point 1); therefore, DIFI’s increase was greater than that of CK. Similarly, the irrigation time of BIFI (preset point 5) was earlier than that of CK, and its irrigation volume was higher; therefore, BIFI’s increase was greater. However, BIFI’s irrigation volume was higher than that of DIFI; therefore, its growth efficiency was higher. In combination with
Figure 9d, it can be observed that when the tree species began to spread its leaves, BIFI’s irrigation volume was higher than the precipitation of DIFI and CK; therefore, BIFI had the greatest increase, followed by DIFI and CK. This indicates that full furrow irrigation is able to provide an adequate water supply that is more conducive to early growth. The irrigation water gradually met the growth needs of the trees. It can be observed from the data in
Figure 2 and
Figure 3 that the overall irrigation volume of DIFI was lower than that of BIFI, but DIFI increased faster than BIFI, and then more gradually before reaching its growth peak. The vegetation index was higher than 0.01 (
Table 3). This may be caused by the microorganisms and environmental pathogens, which grew without limitation and absorbed the nutrients in BIFI. DIFI inhibited the growth of bacteria, diseases, and insect pests in the microbial environment. Compared with BIFI, DIFI was adopted to reduce the waste of water resources, and it was more conducive to the growth of the tree species. In summary, the overall moisture contents of DIFI and BIFI were found to be higher than that of CK, and their growth rate was faster, indicating that the moisture was of greater significance to the growth of the tree species than other factors. After reaching the growth peak, the overall trend of DIFI was more stable than that of BIFI, which indirectly shows that the growth environment in the DIFI area was healthier.
3.4. Impact of Precipitation on Growth during the Rainy Season
On 29 June, the BIFI and DIFI experiments were completed, and it was found that the growth changes in the trees exhibited variation in the rainy season, as shown in
Figure 10.
From 24 June to 22 July, DIFI (preset point 3) continued to present the highest vegetation index, and BIFI (preset point 5) was lower than CK (preset point 1) due to there being less precipitation. When there was abundant precipitation during the rainy season (reaching 97.4 mm on 29 July), BIFI was higher than DIFI and the vegetation index at preset point 1 for a short period. From 19 August to 2 September, the precipitation was less and frequent, and the earlier period of DIFI adapted to the growth status of adequate drip irrigation, and was higher than BIFI and CK. From September 2 to 9, the precipitation was lower and irregular in the early period and the vegetation index for DIFI was higher than that of CK, but DIFI did not adapt to the changes in the new environment. CK grew with no interference, and, therefore, was better adapted to the external environment, growing more than DIFI. Due to there being less precipitation, along with the growth of surrounding microorganisms, BIFI had lower average soil moisture content in the shallow soil layer. The vegetation index decreased and was lower than that obtained for DIFI. On 16 September, the precipitation increased suddenly and the vegetation index for CK was significantly higher than the data for DIFI. In addition, the precipitation was higher than 80.6 mm, and the average soil moisture content increased; therefore, the vegetation index of BIFI was higher than that of DIFI, but lower than that of CK. Compared with DIFI and BIFI, the tree species under CK were better able to adapt to the changes in the external environment during the normal rainy reason. High precipitation affected the growth changes under BIFI. From 17 September to October, the precipitation was lower than 50 mm and was frequent. The overall trend of the CK vegetation index was higher than DIFI and BIFI. Due to there being less precipitation, the BIFI index was lower than that for DIFI.
The leaves of the trees gradually withered from 21 October to 14 November, as they entered the abscission period. Due to the water shortage in the early period, the CK trees grew quickly during the rainy reason; therefore, their leaves fell earlier. Although its water content was sufficient in the early period, the BIFI trees experienced serious diseases and breeding of pests in the surrounding environment that absorbed the nutrients. In addition, the overall precipitation in the rainy season was lower than the irrigation volume in the early period; therefore, the growth changes in BIFI trees were blocked, and their withering was accelerated. The overall precipitation in the growing environment of DIFI was relatively stable. The vegetation index of DIFI (preset point 3) was higher than those of CK (preset point 1) and BIFI (preset point 5) until the end of withering. From 15 November to 3 January, colder air was prevalent. All leaves fell naturally until the end of the vegetation growth season. The digital image presented only the trunk color, and the vegetation indices for the CK, DIFI and BIFI trees were stable.
3.5. Fitting of the Vegetation Growth Data Curve and Extraction of the Growth Feature Time Nodes
The time-series data of the plant phenology index reflected the growth and development cycle of the plants, and the fluctuation represented the growth and withering in the development cycle. In general, the wave crest corresponded to the different periods in growth and development. The D-L and the curvature maximum method were applied, and Equations (2) and (3) were adopted to fit the GCC growth curve of the trees in the three modes. According to the characteristic curves of the extracted indices, the critical growth period of the trees was obtained, namely the SOS, EOS, and MOE, as shown in
Figure 11.
From
Figure 11, it can be seen that from day 87 to 100, CK (preset point 1) increased sharply. Due to insufficient precipitation, the overall growth vegetation index was at its lowest. The period from day 137 to 187 was the leaf bud blossom stage with normal growth. Due to the decreased precipitation, the leaf spreading rate gradually accelerated. The period from day 187 to 237 was the leaf spreading stage. Due to the lower but frequent precipitation, CK accelerated gradually from a slow rate. The period from day 237 to day 287 was the leaf discoloration stage. Due to the frequent precipitation and increased rain capacity, the rate accelerated. The period from day 287 to day 350 was the abscission stage, and the leaves fell off quickly. From day 87 to day 100, DIFI (preset point 3) grew quickly. Due to the sufficient irrigation volume, the vegetation growth index was relatively high in the leaf bud expansion stage. The period from day 137 to day 187 was the leaf bud blossom stage, and the leaf spreading rate gradually increased. The period from day 187 to day 237 was the leaf expansion stage. Due to the lower but frequent precipitation in the rainy season, preset point 3 maintained quick growth. The period from day 237 to day 287 was the leaf discoloration stage. Due to the lower but stable precipitation, the growth curve decreased slowly. The period from day 287 to day 350 was the abscission stage, and the leaves fell off gradually. From day 87 to 100, BIFI (preset point 5) grew quickly. Due to the sufficient irrigation volume, the vegetation growth index was relatively high in the leaf bud expansion stage. The period from day 137 to day 187 was the leaf bud blossom stage, and the leaf expansion rate gradually slowed, which may be affected by the plant diseases and insect pests that were evident. The period from day 187 to 237 was the leaf expansion stage. Due to the full furrow irrigation before the normal rainy season with precipitation below 60 mm, the leaf spreading was relatively slow. From day 237 to 287, trees entered the leaf discoloration stage. Due to precipitation being less than 60 mm, BIFI had an accelerated growth rate. The period from day 287 to 350 was the abscission stage and the leaves fell off gradually.
In summary, the period from day 87 to day 100 was the leaf bud expansion stage and the value increased for three sides; however, the vegetation index in DIFI and BIFI was higher than the preset point 1 due to full irrigation. The period from day 137 to day 150 was the leaf budding stage, in which the change rate of BIFI was higher than DIFI and CK. The sufficient moisture of BIFI accelerated leaf budding. The leaf spreading rate of DIFI under full furrow irrigation was higher than CK with less precipitation. The tree was fully irrigated from day 150 to 200, and the growth rate of DIFI was higher than that of CK. Affected by the plant diseases and insect pests, BIFI developed gradually, and it was lower than CK. From day 200 to 250, full irrigation was completed, and the rainy season began. At the beginning, DIFI was higher than CK and BIFI, then BIFI gradually decreased due to the low precipitation. From day 250 to 300, precipitation was frequent and irregular, and the change rate of CK increased, whereas DIFI and BIFI decreased gradually.
4. Discussion
It was observed in this study that there were various changes in forest growth at different preset points of the planted forest. On the basis of the vegetation index data, the phenological change in P. tomentosa B301 varied under the different irrigation methods, which supports our initial hypothesis. To explain this phenomenon, six vegetation indices were analyzed in three groups of trees to select the most appropriate one. Next, the same vegetation indices were applied to study the phenological growth of all three groups. The impact of the rainy season on the trees was analyzed.
P. tomentosa B301 grows under different micro-ecological environments, so the chlorophyll produced varies. Additionally, it cannot be excluded that the external differences were affected by the selected preset points and the orientation of the camera obtaining the images. This variation may have been caused by the various irrigation methods, meaning that the
P. tomentosa B301 was not able to absorb the nutrients evenly. However, all six selected vegetation indices were able to reflect the phenological growth phenomenon of the forest. It was found on the basis of comparison that GEI and GCC conformed to the law of the forest growth. In view of the amplitude, GCC is more appropriate for phenological studies of tree species. For example, it was found that, with respect to the sensitivity of the determination of leaf color index on the basis of digital photos, the hue was the most appropriate color index [
34]. In a rubber plantation, measured results indicated that Sgreen and GEI showed a better relationship than hue and GPP [
35]. In addition, some researchers have indicated that hue is not associated with GPP, and is susceptible to white balance. Therefore, RCC has been reported to be more suitable for estimating the abscission period of evergreen forest [
36]. Liu et al. [
37] applied RCC to trace the phenology of the canopy’s photosynthesis in the ENF ecosystem, and found it to be more efficient than GCC. Jiakun Teng et al. [
38] surmised that GEI was more suitable for monitoring the seasonal variation of
Robinia pseudoacacia, but GCC was not sensitive to seasonal changes in birch trees [
39]. Consistent with our findings, previous studies have shown that the six color indices are able to reflect the phenological growth period with slight differences, and appropriate vegetation indices should be selected according to the ecosystem of the tree species studied.
This study found that, due to there being insufficient precipitation in March, the canopy’s vegetation index of trees at CK (preset point 1) was significantly lower than DIFI (preset point 3) and BIFI (preset point 5). Due to the large irrigation volume, the tree species with full furrow irrigation had the fastest growth rate in the leaf budding stage, followed by DIFI and CK. As the water contents gradually satisfied the growth demand, the irrigation volume increased, and the trees grew while absorbing nutrients. Therefore, the further growth rate would be higher than that of BIFI. This indirectly implies that DIFI is more advantageous than BIFI, which is supported by the work of others [
40,
41], who found that efficient irrigation was able to significantly improve stand growth. Additional studies also indicate that drip irrigation could improve water use efficiency when compared with other irrigation methods [
42,
43]. Before the rainy season began, the tree species at CK (preset point 1) always had the lowest growth rate. This further shows that sufficient water has a significant impact on the growth of the trees; therefore, improved irrigation could increase the productivity of planted forests [
44]. In addition, different moisture treatments could influence soil diseases and insect pests, and therefore changes in vegetation phenology [
45]. Fuchun Zhang [
46] deemed that the main meteorological factor affecting the woody plant phenology in China was air temperature, and that precipitation and sunshine have relatively less impact. Wang Lianxi et al. believed that the temperature was the most important factor affecting phenological change, but that when water content becomes the stress factor, its influence on phenology is of great significance. Drought would delay the phenological period of plant development. When drought occurs, the plant is not able to use the light and heat, even if they meet the requirements for growth. Under such circumstances, water has become the main ecological factor affecting plant growth and development [
47]. Valdés et al. [
48] analyzed the phenology and soil temperature response in the Hengill geothermal area, Iceland, and observed that the phenotypic response of phenology toward global warming may often be the integration of a short-term plastic reaction and a long-term evolutionary response. Our research results indicate that changes in the phenological cycle could be reflected by monitoring the canopy vegetation index, and that the same vegetation index may show different performances under the three irrigation modes, because irrigation can affect the growth cycle changes in the forest. Therefore, it can be inferred from this study that sufficient water content can influence the phenological change of tree plantations.
When the precipitation was greater than 60 mm, the growth rate was accelerated significantly under BIFI (preset point 5), while the growth rate may decrease in DIFI (preset point 3). In contrast, when the precipitation was lower than 60 mm, the growth rate under DIFI (preset point 3) was faster than that under BIFI (preset point 5). In the rainy season, different levels of precipitation may affect the original growth environment. For example, Chao et al. [
49] found that, compared with air temperature, vegetation index was more sensitive to precipitation. Bai et al. [
50] found that precipitation influenced vegetation density and above-ground biomass. The results of Yang [
51] showed that precipitation could change the soil temperature and salinity, thus affecting vegetation change and the ecological environment. It was found in this study that precipitation was frequent and irregular in the later period of the rainy season. CK (preset point 1) had the highest growth change rate, followed by DIFI (preset point 3) and BIFI (preset point 5). This study showed that precipitation affects the growth and phenological change of the forest plantations of
P. tomentosa B301, which is consistent with other studies.
Using near-earth remote sensing images with respect to P. tomentosa B301, in summary: (1) The data of the six vegetation indices was slightly different, and the same vegetation index was extracted for three different types of cultivation for analysis. On the basis of comparison, it could be observed that GCC was more aligned to the phenological growth laws of the species. The vegetation index of the tree species cultivated in three different ways showed various different effects; (2) The changes in phenological growth of
P. tomentosa B301 cultivated using the three different methods were different when analyzing the GCC vegetation index. Sufficient water and different irrigation methods affected the growth of
P. tomentosa B301. It was proved that different irrigation methods directly affect changes in the growth and phenology of
P. tomentosa B301 [
52], indicating that the DIFI trees were more suitable in another aspect for achieving increased production than the BIFI trees; (3) In the rainy season, precipitation leads to different results for the
P. tomentosa B301 species cultivated in three different ways, where there are different responses with precipitation, and CK (preset point 1) adapts better to changes in the external environment; (4) The phenology of Populus tomentosa B301 can be well monitored using near-earth remote sensing images
5. Conclusions
With respect to P. tomentosa B301, our research results show that all six vegetation indices were able to reflect the phenological growth law, but there were slight differences among them. To represent the growth conditions objectively in the process of phenological analysis, GCC and GEI were selected to show the seasonal changes in the vegetation. However, the amplitude of variation in GCC is relatively large, so it was deemed to be more suitable for accurately studying P. tomentosa B301. Under sufficient water conditions, the overall vegetation index of P. tomentosa B301 under DIFI (preset point 1) was higher, and the withering process was relatively short. BIFI (preset point 5) performed rapidly in the early stage and gradually slowed during the later stage. The amplitude of variation of the vegetation value was large. This indicates that the irrigation results of DIFI were better than those of BIFI, and that DIFI was more conducive to the growth of P. tomentosa B301 after reducing the waste of water resources. Additionally, the irrigation methods exert different degrees of damage due to diseases and insect pests on P. tomentosa B301. Furthermore, this indicates that sufficient water is more conducive to the growth and development of planted forests than rain fed (preset point 1). In the rainy season, the high precipitation could improve the growth rate of P. tomentosa B301 in the BIFI area, but the growth rate decreased for this tree species in the DIFI area. Conversely, low precipitation was able to increase the growth rate of P. tomentosa B301 in the DIFI area. In view of the irregular follow-up and low precipitation, the tree species under CK (preset point 1) had better development, indicating that vegetation with rain-fed irrigation (preset point 1) was better able to adapt to changes in the environment. Overall, precipitation had different impacts on P. tomentosa B301 in the DIFI and BIFI areas. From the perspective of long-term development, monitoring forest phenology using near-earth remote sensing images using scientific cultivation modes could improve productivity.
This study provides corresponding scientific measurements for precision irrigation, nutrient supply and pest prevention, forms an information system while reducing material waste and financial cost, provides a feasible way to study the relationship between seasonal changes in vegetation communities and different health factors, and provides an effective means to diagnose the seasonal evolution characteristics of artificial forests and the rapid response of ecosystems to climate change on local, regional and global scales.