Hostname: page-component-cd9895bd7-8ctnn Total loading time: 0 Render date: 2024-12-23T11:56:20.017Z Has data issue: false hasContentIssue false

Maxent modelling for predicting climate change effects on the potential planting area of tuber mustard in China

Published online by Cambridge University Press:  04 October 2019

H. Q. Li
Affiliation:
School of Advanced Agriculture and Bioengineering, Yangtze Normal University, Chongqing 408100, China
X. H. Liu
Affiliation:
Library, Yangtze Normal University, Chongqing 408100, China
J. H. Wang
Affiliation:
School of Advanced Agriculture and Bioengineering, Yangtze Normal University, Chongqing 408100, China
L.G. Xing
Affiliation:
School of Advanced Agriculture and Bioengineering, Yangtze Normal University, Chongqing 408100, China
Y. Y. Fu*
Affiliation:
School of Advanced Agriculture and Bioengineering, Yangtze Normal University, Chongqing 408100, China
*
Author for correspondence: Y. Y. Fu, E-mail: [email protected]
Rights & Permissions [Opens in a new window]

Abstract

Potential planting area for tuber mustard was simulated using the Maxent model under current and future conditions based on 591 coordinates and 22 environmental layers. Model accuracy was excellent, with area under the receiving operator curve values of 0.967 and 0.958 for model training and testing, respectively. Dominant factors were mean diurnal range, mean temperature of the coldest quarter, annual mean temperature and minimum temperature of the coldest month, with thresholds of 6.5–7.5, 5.5–9, 16–19 and 2.0–6.5 °C, respectively. Under current conditions, suitable habitat areas (2.16% of total land in China) were concentrated mainly in Central, Southwest and East China, which can be defined as three occurrence and diffusion centres. In the 2050s and 2070s, suitable habitat areas are predicted to change to 3.72 and 3.92%, and 3.60 and 3.73% under scenarios RCP4.5 and RCP6.0, respectively, indicating that suitable habitat areas will increase slightly. However, future distribution of tuber mustard was predicted to differ among provinces or cities, i.e. predicted suitable habitat areas in Sichuan Province increased up to the 2050s but remained relatively unchanged between the 2050s and 2070s; in Chongqing city they first increased and then decreased; in Hunan, Anhui, Jiangsu, Zhejiang and Fujian Provinces they increased continuously; and in Guizhou, Hubei, Jiangxi Provinces and Shanghai city they first decreased, and then increased. The results from the current study provide useful information for management decisions of tuber mustard.

Type
Climate Change and Agriculture Research Paper
Copyright
Copyright © Cambridge University Press 2019 

Introduction

Tuber mustard (Brassica juncea var. tumida Tsen & Lee) is endemic to China and belongs to a variation of the species B. juncea of the family Cruciferae. It is an agricultural and economic crop in China (Chen et al., Reference Chen, Yang, Zhou, Fan, Zhang, Shen, Zhang and Jiang2011) and its swollen fleshy stem is used as a raw material and processed to form a delicious pickled food, named Fuling hot pickled tuber mustard. To date, it has been cultivated along the Yangtze River in China including Chongqing, Sichuan, Zhejiang, Fujian, Jiangsu, Hubei, Hunan, Shanghai and Guangxi province/city of China (Liu, Reference Liu1996; Fan et al., Reference Fan, Liu, Lin, Wang, Wang, Zhou and Shen2017). At present, it is famous for its unique sweet and crisp taste, produced by wind dehydration and the processing technology. Fuling hot pickled tuber mustard, as well as the European pickled vegetable and Japanese pickle, are the three most famous pickled vegetables worldwide (Chen et al., Reference Chen, Yang, Zhou, Fan, Zhang, Shen, Zhang and Jiang2011). In recent years, with the development of the market both at home and abroad, demand for tuber mustard products has increased greatly and increasing its production base has become the most fundamental problem in the development of the pickle industry. In addition, climate change, especially with regards to temperature, rainfall and humidity, affects physiological and ecological characteristics, as well as phenology of tuber mustard, which has certainly influenced some changes in its geographical distribution (Tao and Zhang, Reference Tao and Zhang2011; Li et al., Reference Li, Liu, Wang, Fu, Ding, Xie and Zhang2018). The detailed potential distribution of this species in China is unclear under current and future environmental conditions except from related data from Chongqing municipality (Li et al., Reference Li, Liu, Wang, Fu, Ding, Xie and Zhang2018). Therefore, it is very important to determine the current and/or future potential area of this species for scientific planning of agricultural production and formulating policies to cope with climate change.

To simulate species' geographical distribution effectively, detailed and reliable information about the geographic coordinates of the species is required. However, species-occurrence data are often sparse for the vast majority of species. Recently, researchers have created several techniques to model species distribution with only small sample sizes or presence-only data (Phillips et al., Reference Phillips, Anderson and Schapire2006; Pearson et al., Reference Pearson, Raxworthy, Nakamura and Peterson2007; Wang et al., Reference Wang, Huang, Jiang and Qiao2010). Species distribution models are algorithmic tools that can relate the occurrence of a species to the environmental characteristics of its location (Guisan and Thuiller, Reference Guisan and Thuiller2005; Jaryan et al., Reference Jaryan, Datta, Uniyal, Kumar, Gupta and Singh2013). Of the available species distribution models (e.g. Bioclim, Domain, Maxent and Garp), the Maxent model is a maximum entropy based machine-learning program, by means of which the probability map of a species' occurrence can be computed by assessing the probability distribution based on the principle of maximum entropy (Xu et al., Reference Xu, Peng, Feng and Abdulsalih2014). The method has many advantages to make it suitable for species distribution modelling (Phillips et al., Reference Phillips, Anderson and Schapire2006; Liao et al., Reference Liao, Lei, Ren, Chen and Li2017; Qin et al., Reference Qin, Liu, Guo, Bussmann, Ma, Jian, Xu and Pei2017). For example, the Maxent model can utilize both continuous and categorical data, incorporates interactions between different variables (Phillips et al., Reference Phillips, Anderson and Schapire2006; Wang et al., Reference Wang, Huang, Jiang and Qiao2010) and has been proven to perform better than other models in forecasting species distribution with small sample sizes or presence-only data (Elith et al., Reference Elith, Graham, Anderson, Dudík, Ferrier, Guisan, Hijmans, Huettmann, Leathwick, Lehmann, Li, Lohmann, Loiselle, Manion, Moritz, Nakamura, Nakazawa, Overton, Peterson, Phillips, Richardson, Scachetti-Pereira, Schapire, Soberón, Williams, Wisz and Zimmermann2006; Hu et al., Reference Hu, Jin, Wang, Mao and Li2015). Additionally, the probability distribution obtained from the Maxent model has a concise mathematical expression and is amenable for studying the obtained results. The model can also identify environmental factors that limit species distribution. Therefore, the Maxent model originating from the statistical mechanics (Jaynes, Reference Jaynes1957) is very popular for accurately forecasting species distribution (Elith et al., Reference Elith, Graham, Anderson, Dudík, Ferrier, Guisan, Hijmans, Huettmann, Leathwick, Lehmann, Li, Lohmann, Loiselle, Manion, Moritz, Nakamura, Nakazawa, Overton, Peterson, Phillips, Richardson, Scachetti-Pereira, Schapire, Soberón, Williams, Wisz and Zimmermann2006; Wang et al., Reference Wang, Huang, Jiang and Qiao2010; Qin et al., Reference Qin, Liu, Guo, Bussmann, Ma, Jian, Xu and Pei2017).

In the current study, the Maxent model was adopted to simulate the planting area of the tuber mustard species by combining a set of known geo-coordinates together with layers of environmental variables in China under current and future environmental conditions. The aims of the study were to: (1) determine the potential planting area of tuber mustard under current environmental conditions; (2) identify dominant environmental variables associated with the distribution of its potential planting area and (3) analyse distribution trends of tuber mustard in the future, which will be of benefit to the government and relevant departments for undertaking regional layout and scientific planning of tuber mustard plantations in China.

Materials and methods

Species distribution samples

The occurrence locations of tuber mustard were obtained partly via on-the-spot investigation using a Global Positioning System (GPS) receiver with ± 5 m positional accuracy in Chongqing Municipality. The majority of occurrence records for this species were gathered from two databases, the Plant Specimen Database (http://mnh.scu.edu.cn) and the Chinese Digital Plant Specimen Database (http://www.cvh.org.cn), which only provide the names of small places where this species has been recorded, without GPS information. Then, the coordinates of known locations were acquired when occurrence records lacked exact geo-coordinates using the Geographic Names Database (http://www.geonames.org/) and Google Earth (http://ditu.google.cn/). Spatial autocorrelation among the predictor variables has been identified as a source of error (Jaryan et al., Reference Jaryan, Datta, Uniyal, Kumar, Gupta and Singh2013); therefore, duplicate and neighbouring records were deleted, so only one occurrence record per grid cell was retained. Finally, the data set was reduced from 671 to 591 occurrence points from the sources mentioned above. The known coordinates of this species were then reorganized into a database based on the requirements of the Maxent model.

Current environmental parameters

In general, the geographical distribution of species is affected by environmental factors, such as climate, terrain and so on (Phillips and Dudík, Reference Phillips and Dudík2008; Wang et al., Reference Wang, Huang, Jiang and Qiao2010; Xu et al., Reference Xu, Peng, Feng and Abdulsalih2014). Consequently, environmental factors including 19 bioclimatic parameters and three topographic variables were selected for use in the current study. These bioclimatic parameters with 30 s spatial resolution (c. 1 km2 at the ground level) were downloaded from the WorldClim database (http://www.worldclim.org), which expresses a combination of annual trends, seasonality and extreme environmental conditions in terms of temperature and precipitation (Hijmans et al., Reference Hijmans, Cameron, Parra, Jones and Jarvis2005). Elevation (digital elevation model) information with the same spatial resolution as described above, also obtained from the WorldClim website, was utilized to produce the slope degree, aspect and altitude data layers. Finally, Chinese environmental data in GCS-WGS-1984 were obtained from the above global raster data overlaid by the administrative boundary maps of China in ESRI shape format in ArcGIS 10.2 and then converted into ‘asc’ format based on the requirements of the Maxent model. Additionally, the analysis base map (China 1:4 000 000) was downloaded from the national fundamental geographic information system (http://mail.nsdi.gov.cn/).

Future environmental parameters

The representative concentration pathways (RCPs), published by the Intergovernmental Panel on Climate Change (IPCC) in the fifth IPCC assessment report (AR5), express the full bandwidth of possible future emission trajectories. The RCPs (RCP2.6, RCP4.5, RCP6.0 and RCP8.5) were named based on the possible range of radiative forcing values in the year 2100 compared with pre-industrial values (Hu et al., Reference Hu, Jin, Wang, Mao and Li2015). For simplification, the intermediate stable paths were selected for simulation, such as RCP4.5-2050 and RCP6.0-2050, which represent the average values for the years 2041–2060, whereas RCP4.5-2070 and RCP6.0-2070 represent the average values for the years 2061–2080. The two future bioclimatic data selected were downloaded from the WorldClim website (Hijmans et al., Reference Hijmans, Cameron, Parra, Jones and Jarvis2005). Other environmental parameters such as slope degree, aspect and altitude data were unchanged for the Maxent model analyses under the future environmental conditions. In total, there were 22 environmental factors used directly by the Maxent model, which were similar to the above environmental parameters.

Predicting potential distribution and evaluation

The potential geographic distribution of tuber mustard was simulated using the Maxent model Version 3.4.1 (http://www.cs.princeton.edu/~schapire/maxent/) (Phillips et al., Reference Phillips, Anderson and Schapire2006; Qin et al., Reference Qin, Liu, Guo, Bussmann, Ma, Jian, Xu and Pei2017). In the current model, 25% of the data was utilized randomly for model testing and the other 75% was used for model training (Phillips et al., Reference Phillips, Anderson and Schapire2006; Qin et al., Reference Qin, Liu, Guo, Bussmann, Ma, Jian, Xu and Pei2017). To avoid over-fitting of the test data, the regularization multiplier value was set as 0.1. Meanwhile, ‘do jack-knife to measure variable importance’ and ‘create response curves’ commands were checked in the model with the default used for the other settings. The output result generated by the Maxent model predicted the suitability of a habitat in logistic format and asc types. Further, this result was transformed into a raster format and the grade classification was completed based on the suitable values using Jenks' natural breaks in the ArcGIS 10.2. Simultaneously, all habitat areas were calculated after projection conversion.

The area under the receiving operator curve (AUC) has often been utilized to evaluate the goodness-of-fit of a model (Yang et al., Reference Yang, Kushwaha, Saran, Xu and Roy2013; Qin et al., Reference Qin, Liu, Guo, Bussmann, Ma, Jian, Xu and Pei2017), with the range for the AUC value being from 0.5 to 1.0 (Kumar et al., Reference Kumar, Graham, West and Evangelista2014). An AUC value of 0.5 demonstrates that the model performance was no better than random, whereas a value of 1.0 demonstrates excellent discrimination (Jaryan et al., Reference Jaryan, Datta, Uniyal, Kumar, Gupta and Singh2013; Xu et al., Reference Xu, Peng, Feng and Abdulsalih2014). The model with the greatest AUC value is commonly regarded as the best performer.

Determining important variables and threshold values

The jack-knife test was then utilized for B. juncea var. tumida to evaluate the relative importance of the individual environmental variables in the prediction procedure (Kumar et al., Reference Kumar, Graham, West and Evangelista2014; Qin et al., Reference Qin, Liu, Guo, Bussmann, Ma, Jian, Xu and Pei2017). In addition, by using Maxent-produced curves, the relationships between habitat suitability for tuber mustard and environmental variables were analysed to obtain the appropriate ranges of dominant factors (Hu et al., Reference Hu, Jin, Wang, Mao and Li2015).

Results

Current geographic distribution and evaluation

Based on occurrence coordinates and current environmental data, the potential geographical distribution of tuber mustard in China was simulated using the Maxent model. In the current study, the value of AUC was 0.967 for model training and 0.958 for model testing, indicating that Maxent modelling for B. juncea var. tumida provided satisfactory results. Based on a previous study (Li et al., Reference Li, Liu, Wang, Fu, Ding, Xie and Zhang2018), the final potential species distribution map was grouped into three classes (0–1 range), namely ‘suitable habitat’ (>0.5), ‘moderately suitable habitat’ (0.15–0.5) and ‘unsuitable habitat’ (<0.15). The suitable habitats for tuber mustard are concentrated in southwest China, central China and east China, i.e. three occurrence and diffusion centres (Fig. 1). Specifically, the suitable habitat distribution areas are mainly in eastern Sichuan, western and north-western Chongqing, southern Hubei, northern Hunan, south-eastern and eastern Zhejiang, northern Guizhou, eastern Jiangsu and a few regions in Fujian, Jiangxi and Anhui. The moderately suitable habitat areas are mainly in certain regions of Sichuan, Chongqing, Hubei, Hunan, Guangxi, Jiangxi, Anhui, Fujian and Zhejiang Provinces. The unsuitable habitat regions are in the majority of provinces except for the above-mentioned suitable and moderately suitable habitat regions. Based on statistical analysis after the projection conversion, the percentages of suitable, moderately suitable and unsuitable habitat areas of tuber mustard in China are 2.16, 6.31 and 91.53%, respectively.

Fig. 1. Current potential geographic distribution of B. juncea var. tumida.

Importance of environmental variables and threshold values

From the jack-knife procedure, the mean diurnal range had the highest gain when it was used alone (Fig. 2), i.e. it was the most significant environmental variable that affected the distribution of tuber mustard. In addition, the mean temperature of the coldest quarter, annual mean temperature and minimum temperature of the coldest month also affected the geographical distribution of tuber mustard to a certain extent. Subsequently, using individual response curves for different variables (Fig. 3), the following thresholds were obtained for the main environmental parameters (probability of presence >0.5): mean diurnal range (bio-02) ranged from 6.5 to 7.5 °C, mean temperature of coldest quarter (bio-11) ranged from 5.5 to 9 °C, annual mean temperature (bio-01) ranged from 16 to 19 °C and minimum temperature of the coldest month (bio-06) ranged from 2.0 to 6.5 °C.

Fig. 2. Jack-knife test evaluating the relative importance of environmental variables for B. juncea var. tumida under current environmental conditions.

Fig. 3. Relationship of each dominant factor and the distribution probability of B. juncea var. tumida under current environmental conditions.

Future changes in suitable habitat areas

The future distribution was forecast using the Maxent model with future environmental parameters. Based on the same classification standard and projection coordinates as those discussed previously, the potential species distribution map was divided into three categories and each type of area was calculated. The predictive distribution map (Fig. 4) showed that under future environmental parameters, tuber mustard could be potentially distributed in southwest China, central China and east China. The moderately suitable habitat areas were mainly in parts of Sichuan, Chongqing, Hubei, Hunan, Jiangxi, Anhui, Fujian and Zhejiang Provinces. However, the percentage of the three habitat areas had a certain amount of change. Under the current conditions, 2.16% of the areas were identified as suitable habitat areas for tuber mustard, whereas 6.01% was identified as moderately suitable habitat areas. In the 2050s and 2070s, the percentage of suitable habitat areas changed to 3.72 and 3.92%, and 3.60 and 3.73%, in the two scenarios of RCP4.5 and RCP6.0, respectively, whereas the percentage of the moderately suitable habitat areas was 6.93 and 6.88%, and 7.59 and 7.45%, respectively. The results showed that in the 2050s and 2070s, the suitable and moderately suitable habitat areas were predicted to increase slightly. However, for different provinces or cities (Table 1), the distribution of tuber mustard is different. For example, suitable habitat area in Sichuan Province increased up to the 2050s and 2070s; however, it remained approximately unchanged between the 2050s and 2070s; suitable habitat in Chongqing city increased at first, and then decreased; suitable habitats in Hunan, Anhui, Jiangsu, Zhejiang and Fujian Provinces increased continuously to the 2050s and 2070s; and suitable habitat in Guizhou, Hubei, Jiangxi Provinces and Shanghai city decreased first, but then increased.

Fig. 4. Distribution of habitat suitability for B. juncea var. tumida under different climate change scenarios.

Table 1. Percentage of suitable habitat distribution of B. juncea var. tumida under current and future environmental conditions in different provinces or cities

Discussion

Tuber mustard belongs to an economically important crop in China. To date, it has been cultivated in provinces along the Yangtze River including Chongqing, Shanghai, Sichuan, Hubei, Zhejiang, Fujian, Jiangsu, Hunan and Guangxi Provinces (Liu, Reference Liu1996; Chen et al., Reference Chen, Yang, Zhou, Fan, Zhang, Shen, Zhang and Jiang2011). Analysis of the relationship between species and environment parameters has become an important issue in ecology and biogeography (Yang et al., Reference Yang, Kushwaha, Saran, Xu and Roy2013). With the development of applied ecology, species distribution models are regarded as an important tool for evaluating and forecasting changes in a species' potential distribution and have been compiled into software tools (Wang et al., Reference Wang, Huang, Jiang and Qiao2010; Qin et al., Reference Qin, Liu, Guo, Bussmann, Ma, Jian, Xu and Pei2017). Compared with other species distribution models, the Maxent model is popular for accurately forecasting species distribution in a certain region (Phillips et al., Reference Phillips, Anderson and Schapire2006; Jaryan et al., Reference Jaryan, Datta, Uniyal, Kumar, Gupta and Singh2013; Qin et al., Reference Qin, Liu, Guo, Bussmann, Ma, Jian, Xu and Pei2017). The principle of the design of the Maxent model is that species are present in areas with suitable environmental conditions and absent in unsuitable climates (Guisan and Zimmermann, Reference Guisan and Zimmermann2000; Hu et al., Reference Hu, Wu, Guo and Liu2014), and there are only minor deviations from biological routes of transmission and interactions between organisms (Svenning et al., Reference Svenning, Normand and Skov2008; Hu et al., Reference Hu, Wu, Guo and Liu2014). In the current study, human cultivation activities of tuber mustard have overcome these two restrictions; therefore, the accuracy of the Maxent model is excellent in predicting potential planting areas for tuber mustard. In addition, the value of AUC was 0.967 and 0.958 for model training and testing, respectively, indicating that the model performance was excellent. Furthermore, climate change, especially temperature, rainfall and humidity modifications, have significant effects on the physiological and ecological characteristics, phenology and geographical distribution of tuber mustard (Li et al., Reference Li, Liu, Wang, Fu, Ding, Xie and Zhang2018). Compared with current environmental variables, the suitable habitats of tuber mustard in the future were found to be concentrated mainly in southwest China, central China and east China, i.e. three occurrence and diffusion centres. Fortunately, in the 2050s and 2070s, the suitable distribution areas are predicted to increase gradually, and a new suitable area is expected to appear in central China including southern Hubei and northern Hunan. This trend is in agreement with the development of the pickle industry in China. However, for different provinces or cities, the distribution of this species is different, for example, the suitable habitat area in Chongqing city increases first, but then begins to decrease, whereas the suitable habitat area in Guizhou, Hubei, Jiangxi Provinces and Shanghai city decreases first, but then begins to increase. Therefore, management of suitable planting areas of tuber mustard must be strengthened and, for the reduced area of suitable planting regions, suitable local varieties should be bred and domestication increased in the moderately suitable habitat to ensure that the total volume will not decrease in the future.

Many studies have indicated that the main factors restricting geographical distribution of plants are cold tolerance, energy supply needed to complete life-cycles and available water (Woodward, Reference Woodward1987; Jia et al., Reference Jia, Ma, Zhou, Zhou, Yu and Qin2017). The results in the current study are in agreement with these viewpoints. In the current study, the mean diurnal range, mean temperature of the coldest quarter, annual mean temperature and minimum temperature of the coldest month made the largest contributions to the model for tuber mustard compared with the other parameters. These key factors are all related to temperature, suggesting that this is one of the decisive factors affecting the distribution of suitable habitat areas for tuber mustard. This is in agreement with previous studies (Li et al., Reference Li, Dai and Zhan2015, Reference Li, Liu, Wang, Fu, Ding, Xie and Zhang2018). Among them, mean diurnal range made the largest contribution, with the threshold ranging from 6.5 to 7.5 °C. For tuber mustard, the winter mean diurnal range from 6.5 to 7.5 °C may guarantee local minimum temperature over 0 °C, thus avoiding frostbite, because in Chongqing the daytime temperature is 4–15 °C (Li et al., Reference Li, Dai and Zhan2015). The mean temperature of the coldest quarter is from 5.5 to 9 °C and the minimum temperature of the coldest month is from 2.0 to 6.5 °C, which might also guarantee the avoidance of frostbite for tuber mustard. The annual mean temperature from 16 to 19 °C coincides with the optimum temperature of tuber mustard tuber (Li et al., Reference Li, Dai and Zhan2015). Previous studies have shown that precipitation is the dominant factor affecting plant growth, regeneration, nutrient cycle and community productivity in different habitats (Hu et al., Reference Hu, Wu, Guo and Liu2014; Fu et al., Reference Fu, Xu, Ma, Xu, Liu and Ding2016). However, the growth period of tuber mustard is from August to late February of the following year (Fan et al., Reference Fan, Liu, Lin, Wang, Wang, Zhou and Shen2017; Li et al., Reference Li, Liu, Wang, Fu, Ding, Xie and Zhang2018). Since winter occurs in the dry season in China, tuber mustard grows relatively slowly; therefore, precipitation becomes less important for this species.

Conclusions

(1) The suitable habitats of tuber mustard in China under current environmental conditions are concentrated mainly in central China, south-west China and east China, i.e. there are three occurrence and diffusion centres. (2) The dominant factors were mean diurnal range, mean temperature of the coldest quarter, annual mean temperature and minimum temperature of the coldest month, which had the threshold of 6.5–7.5, 5.5–9, 16–19 and 2.0–6.5 °C, respectively. (3) By the 2050s and 2070s, the predicted suitable and moderately suitable habitat areas increased slightly. However, the suitable habitat area in Sichuan Province increased up to the 2050s and 2070s yet remained reasonably unchanged between the 2050s and 2070s; suitable habitat area in Chongqing city increased at first and then decreased; suitable habitats in Hunan, Anhui, Jiangsu, Zhejiang and Fujian Provinces increased continuously; and suitable habitat areas in Guizhou, Hubei, Jiangxi Provinces and Shanghai city decreased first, but then began to increase.

Financial support

The work was financially supported by the National Natural Science Foundation of China, grant number 31500245 and 31870515, Youth Science and Technology Project from Chongqing Education Science Committee, grant number KJQN201801428 and KJ111313, Excellent Achievement Transformation Project in Universities of Chongqing, grant number KJZH17132 and Basic research and frontier exploration of Chongqing science and Technology Commission, grant number cstc2018jcyjAX0557, cstc2019jcyj-msxmX0014 and 2018BBB3010.

Conflict of interest

The authors declare that there is no conflict of interest.

Ethical standards

Not applicable.

References

Chen, FB, Yang, KC, Zhou, GF, Fan, YH, Zhang, ZY, Shen, JJ, Zhang, H and Jiang, LL (2011) Analysis of heterosis, combining ability and genetic diversity in tuber mustard (Brassica juncea var. tumida Tsen and Lee) inbred lines based on SSR markers and combining ability estimates. Philippine Agricultural Scientist 94, 124131.Google Scholar
Elith, J, Graham, CH, Anderson, RP, Dudík, M, Ferrier, S, Guisan, A, Hijmans, RJ, Huettmann, F, Leathwick, JR, Lehmann, A, Li, J, Lohmann, LG, Loiselle, BA, Manion, G, Moritz, C, Nakamura, M, Nakazawa, Y, Overton, JM, Peterson, AT, Phillips, SJ, Richardson, KS, Scachetti-Pereira, R, Schapire, RE, Soberón, J, Williams, S, Wisz, MS and Zimmermann, NE (2006) Novel methods improve prediction of species’ distributions from occurrence data. Ecography 29, 129151.Google Scholar
Fan, YH, Liu, YH, Lin, HQ, Wang, B, Wang, XW, Zhou, GF and Shen, JJ (2017) A new winter tumorous stem mustard F1 hybrid – ‘Fuza No. 8’. China Vegetables 1, 7981.Google Scholar
Fu, GQ, Xu, XY, Ma, JP, Xu, MS, Liu, J and Ding, AQ (2016) Responses of Haloxylon ammodendron potential geographical distribution to the hydrothermal conditions under MaxEnt model. Pratacultural Science 33, 21732179.Google Scholar
Guisan, A and Thuiller, W (2005) Predicting species distribution: offering more than simple habitat models. Ecology Letters 8, 9931009.Google Scholar
Guisan, A and Zimmermann, NE (2000) Predictive habitat distribution models in ecology. Ecological Modelling 135, 147186.Google Scholar
Hijmans, RJ, Cameron, SE, Parra, JL, Jones, PG and Jarvis, A (2005) Very high resolution interpolated climate surfaces for global land areas. International Journal of Climatology 25, 19651978.Google Scholar
Hu, X, Wu, FC, Guo, W and Liu, N (2014) Identification of potential cultivation region for Santalum album in China by the Maxent ecologic niche model. Scientia Silvae Sinicae 50, 2733.Google Scholar
Hu, XG, Jin, Y, Wang, XR, Mao, JF and Li, Y (2015) Predicting impacts of future climate change on the distribution of the widespread conifer Platycladus orientalis. PLoS One 10, article no. e0132326. https://doi.org/10.1371/journal.pone.0132326.Google Scholar
Jaryan, V, Datta, A, Uniyal, SK, Kumar, A, Gupta, RC and Singh, RD (2013) Modelling potential distribution of Sapium sebiferum – an invasive tree species in western Himalaya. Current Science 105, 12821288.Google Scholar
Jaynes, ET (1957) Information theory and statistical mechanics. Physical Review 106, 620630.Google Scholar
Jia, X, Ma, FF, Zhou, WM, Zhou, L, Yu, DB and Qin, J (2017) Impacts of climate change on the potential geographical distribution of broadleaved Korean pine (Pinus koraiensis) forests. Acta Ecologica Sinica 37, 464473.Google Scholar
Kumar, S, Graham, J, West, AM and Evangelista, PH (2014) Using district-level occurrences in maxent for predicting the invasion potential of an exotic insect pest in India. Computers and Electronics in Agriculture 103, 5562.Google Scholar
Li, S, Dai, XD and Zhan, KH (2015) Impact of extreme climatic events on mustard cultivation in Fuling district, Chongqing. Chinese Agricultural Science Bulletin 31, 174180.Google Scholar
Li, HQ, Liu, XL, Wang, JH, Fu, YY, Ding, SM, Xie, WY and Zhang, J (2018) Influence of climate change on the suitable planting area of pickled mustard tuber in Chongqing, China. Chinese Journal of Applied Ecology 29, 26512657.Google Scholar
Liao, Y, Lei, Y, Ren, Z, Chen, H and Li, D (2017) Predicting the potential risk area of illegal vaccine trade in China. Scientific Reports 7, article no. 3883. https://doi.org/10.1038/s41598-017-03512-3.Google Scholar
Liu, PY (1996) Chinese Mustard. Beijing, China: China Agriculture Press.Google Scholar
Pearson, RG, Raxworthy, CJ, Nakamura, M and Peterson, AT (2007) Predicting species distributions from small numbers of occurrence records: a test case using cryptic geckos in Madagascar. Journal of Biogeography 34, 102117.Google Scholar
Phillips, SJ and Dudík, M (2008) Modeling of species distributions with Maxent: new extensions and a comprehensive evaluation. Ecography 31, 161175.Google Scholar
Phillips, SJ, Anderson, RP and Schapire, RE (2006) Maximum entropy modeling of species geographic distributions. Ecological Modelling 190, 231259.Google Scholar
Qin, A, Liu, B, Guo, Q, Bussmann, RW, Ma, F, Jian, Z, Xu, G and Pei, S (2017) Maxent modeling for predicting impacts of climate change on the potential distribution of Thuja sutchuenensis Franch., an extremely endangered conifer from southwestern China. Global Ecology and Conservation 10, 139146.Google Scholar
Svenning, JC, Normand, S and Skov, F (2008) Postglacial dispersal limitation of widespread forest plant species in nemoral Europe. Ecography 31, 316326.Google Scholar
Tao, FL and Zhang, Z (2011) Impacts of climate change as a function of global mean temperature: maize productivity and water use in China. Climatic Change 105, 409432.Google Scholar
Wang, XY, Huang, XL, Jiang, LY and Qiao, GX (2010) Predicting potential distribution of chestnut phylloxerid (Hemiptera: Phylloxeridae) based on GARP and Maxent ecological niche models. Journal of Applied Entomology 134, 4554.Google Scholar
Woodward, FI (1987) Climate and Plant Distribution. Cambridge, UK: Cambridge University Press.Google Scholar
Xu, ZL, Peng, HH, Feng, ZD and Abdulsalih, N (2014) Predicting current and future invasion of Solidago canadensis: a study from China. Polish Journal of Ecology 62, 263271.Google Scholar
Yang, XQ, Kushwaha, SPS, Saran, S, Xu, J and Roy, PS (2013) Maxent modeling for predicting the potential distribution of medicinal plant, Justicia adhatoda L. in Lesser Himalayan foothills. Ecological Engineering 51, 8387.Google Scholar
Figure 0

Fig. 1. Current potential geographic distribution of B. juncea var. tumida.

Figure 1

Fig. 2. Jack-knife test evaluating the relative importance of environmental variables for B. juncea var. tumida under current environmental conditions.

Figure 2

Fig. 3. Relationship of each dominant factor and the distribution probability of B. juncea var. tumida under current environmental conditions.

Figure 3

Fig. 4. Distribution of habitat suitability for B. juncea var. tumida under different climate change scenarios.

Figure 4

Table 1. Percentage of suitable habitat distribution of B. juncea var. tumida under current and future environmental conditions in different provinces or cities