徐建华
教授 博士生导师
主要从事地理计算 (Geo-computation)、地理信息系统 (GIS)和生态经济模拟方面的科研工作。
个性化签名
- 姓名:徐建华
- 目前身份:在职研究人员
- 担任导师情况:博士生导师
- 学位:
-
学术头衔:
博士生导师
- 职称:高级-教授
-
学科领域:
地理学其他学科
- 研究兴趣:主要从事地理计算 (Geo-computation)、地理信息系统 (GIS)和生态经济模拟方面的科研工作。
徐建华, 1986年7月毕业于兰州大学数学专业, 获理学学士学位; 1988年12月毕业于兰州大学自然地理学专业, 获理学硕士学位; 1989年1月被分配到兰州大学地理科学系工作。1990年6月晋升讲师; 1992年7月晋升副教授; 1996年12月晋升教授; 1998年11月获得博士生导师任职资格(区域经济学); 2000年2月作为学术带头人被引进到华东师范大学工作, 聘为教授, 博士生导师(地图学与地理信息系统)。本人主要从事地理建模、地理计算与GIS应用等方面的教学与科研工作;先后主持完成国家自然科学基金项目、国家社会科学基金项目及省(部)级课题30余项;出版专著 (教材)16部,其中,《计量地理学》现后入选“十一五”和“十二五”国家级规划教材、获上海市优秀教材奖,《现代地理学中的数学方法(第2版)》是教育部研究生工作办公室推荐的研究生教学用书;作为第一作者或通讯作者,发表论文100多篇,其中,SCI收录70多篇;各成果被国内外论著引用16000次以上。本人负责并主讲的《计量地理学》课程,2007年入选华东师范大学精品课程; 2008年入选上海市精品课程; 2009年入选国家级精品课程; 2014年入选国家级精品资源共享课程;2017年入选国家级精品在线开放课程。1993年以来, 先后招收培养研究生80多名 (博士近30名),其中许多人已成为其所在单位的学术带头人或专业技术骨干。
-
主页访问
5546
-
关注数
0
-
成果阅读
2621
-
成果数
27
【期刊论文】Modeling streamflow driven by climate change in data-scarce mountainous basins
Mengtian Fan, Jianhua Xu, Yaning Chen, Mengtian Fan, Jianhua Xu, Yaning Chen
Science of The Total Environment,2021,790(148256):148256
2021年06月08日
The impacts of climate change on the water environment have aroused widespread concern. With global warming, mountainous basins are facing serious water supply situations. However, there are limited meteorological stations on mountains, which thus creates a challenge in terms of accurate simulation of streamflow and water resources. To solve this problem, this study developed a method to model streamflow in data-scarce mountainous basins. Selecting the two head waters originating in the Tienshan mountains, Aksu and Kaidu Rivers, we firstly reconstructed precipitation and temperature dynamics based on Earth system data products, and then integrated the radial basis function artificial neural network and complete ensemble empirical mode decomposition with adaptive noise to model streamflow. Comparison with the observed streamflow according to hydrological stations indicated that the proposed approach was highly accurate. The modeling results showed that the El-Niño Southern Oscillation, temperature, precipitation, and the North Atlantic Oscillation are the main factors driving streamflow, and the streamflow decreased in both the Aksu River and Kaidu River between 2000 and 2017.
Data-scarce mountainous basinsIntegrated modelingClimate changeStreamflow simulation
0
-
123浏览
-
0点赞
-
0收藏
-
0分享
-
1下载
-
0评论
-
引用
Ling Bai, Jianhua Xu, Zhongsheng Chen, Weihong Li
International Journal of Climatology,2015,35(11):3229-3237
2015年11月11日
Based on a temperature anomaly time series from 16 international exchange stations in Xinjiang from 1957 to 2012, the multi‐scale characteristics of temperature variability were analysed using the ensemble empirical mode decomposition (EEMD) method. Regional differences in variation trends and change‐points were also preliminarily discussed. The results indicated that in the past 50+ years, the overall temperature in Xinjiang has exhibited a significant nonlinear upward trend, and its changes have clearly exhibited an inter‐annual scale (quasi‐3 and quasi‐6‐year) and inter‐decadal scale (quasi‐10 and quasi‐30‐year). The variance contribution rates of each component demonstrated that the inter‐annual change had a strong influence on the overall temperature change in Xinjiang, and the reconstructed inter‐annual variation trend could describe the fluctuation state of the original temperature anomaly during the study period. The reconstructed inter‐decadal variability revealed that the climate mode in Xinjiang had a significant transformation before and after 1995, namely the temperature anomaly shift from a negative phase to a positive one. Furthermore, there were regional differences in the nonlinear changes and change‐points of temperature. At the same time, the results also suggested that the EEMD method can effectively reveal variations in long‐term temperature sequences at different time scales and can be used for the complex diagnosis of nonlinear and non‐stationary signal changes.
Temperature variation, Xinjiang,, China, Ensemble empirical mode decomposition
-
96浏览
-
0点赞
-
0收藏
-
0分享
-
0下载
-
0评论
-
引用
Jianhua Xu, Yaning Chen, Weihong Li, Qin Nie
Water Resources Management,2014,28(9):92523–2537
2014年07月18日
Selecting the Yarkand River as a typical representative of an inland river in northwest China, We identified the variation pattern of hydro-climatic process based on the hydrological and meteorological data during the period of 1957 ~ 2008, and constructed an integrated model to simulate the change of annual runoff (AR) with annual average temperature (AAT) and annual precipitation (AP) by combining wavelet analysis (WA) and artificial neural network (ANN) at different time scale. The results showed that the pattern of hydro-climatic process is scale-dependent in time. At 16-year and 32-year time scale, AR presents a monotonically increasing trend with the similar trend of AAT and AP. But at 2-year, 4-year, and 8-year time scale, AR exhibits a nonlinear variation with fluctuations of AAT and AP. The back propagation artificial neural network based on wavelet decomposition (BPANNBWD) well simulated the change of AR with AAT and AP at the all five time scales. Compared to the traditional statistics model, the simulation effect of BPANNBWD is better than that of multiple linear regression (MLR) at every time scale. The results also revealed the fact that the simulation effect at a larger time scale (e.g. 16-year or 32-year scale) is better than that at a smaller time scale (e.g. 2-year or 4-year scale).
Wavelet decomposition, Back-propagation artificial neural network, Regional climate change, Annual runoff
-
140浏览
-
0点赞
-
0收藏
-
0分享
-
0下载
-
0评论
-
引用
【期刊论文】Understanding temporal and spatial complexity of precipitation distribution in Xinjiang, China
Jianhua Xu, Yaning Chen, Weihong Li, Zuhan Liu
Theoretical and Applied Climatology,2016,123(2):321–333
2016年01月28日
Based on the observed data during the period from 1958 to 2012 in Xinjiang, China, we investigated the temporal and spatial complexity of precipitation distribution by using an integrative approach combining the phase space reconstruction (PSR), correlation dimension (CD), variogram, and cokriging interpolation. The CD values showed that the precipitation dynamic is a complex and chaotic system, and its complexity decreases along with the increase of temporal scale. To describe the precipitation dynamics, it needs at least four independent variables at daily scale, and at least three independent variables at monthly scale, whereas at least two independent variables are needed at seasonal and annual scales. The spatial variation of CD value at daily and monthly scales is described by the exponential variogram model, whereas that at seasonal and annual scale needs to be respectively described by the spherical and Gaussian variogram model. The higher CD values mainly distribute on complex landform such as mountain areas, whereas the lower CD values mainly distribute on the flat landform such as basin area, which indicate that the spatial complexity of precipitation distribution is derived from the complex landform.
Correlation Dimension, Correlation Dimension, Precipitation Distribution, Spatial complexity
-
87浏览
-
0点赞
-
0收藏
-
0分享
-
0下载
-
0评论
-
引用
【期刊论文】A hybrid model to simulate the annual runoff of the Kaidu River in northwest China
Jianhua Xu, Yaning Chen, Ling Bai
Hydrology and Earth System Sciences,2016,20(4):1447-1457
2016年04月16日
Fluctuant and complicated hydrological processes can result in the uncertainty of runoff forecasting. Thus, it is necessary to apply the multi-method integrated modeling approaches to simulate runoff. Integrating the ensemble empirical mode decomposition (EEMD), the back-propagation artificial neural network (BPANN) and the nonlinear regression equation, we put forward a hybrid model to simulate the annual runoff (AR) of the Kaidu River in northwest China. We also validate the simulated effects by using the coefficient of determination (R2) and the Akaike information criterion (AIC) based on the observed data from 1960 to 2012 at the Dashankou hydrological station. The average absolute and relative errors show the high simulation accuracy of the hybrid model. R2 and AIC both illustrate that the hybrid model has a much better performance than the single BPANN. The hybrid model and integrated approach elicited by this study can be applied to simulate the annual runoff of similar rivers in northwest China.
Hydrological processes, Simulation, Hybrid model
-
82浏览
-
0点赞
-
0收藏
-
0分享
-
0下载
-
0评论
-
引用
Chong Wang, Jianhua Xu, Yaning Chen
Climate Dynamics,2018,50(8): 2829–2844
2018年04月16日
To quantitatively assess the impact of climate variability on streamflow in an ungauged mountainous basin is a difficult and challenging work. In this study, a hybrid model combing downscaling method based on earth data products, back propagation artificial neural networks (BPANN) and weights connection method was developed to explore an approach for solving this problem. To validate the applicability of the hybrid model, the Kumarik River and Toshkan River, two headwaters of the Aksu River, were employed to assess the impact of climate variability on streamflow by using this hybrid model. The conclusion is that the hybrid model presented a good performance, and the quantitative assessment results for the two headwaters are: (1) the precipitation respectively increased by 48.5 and 41.0 mm in the Kumarik catchment and Toshkan catchment, and the average annual temperature both increased by 0.1 °C in the two catchments during each decade from 1980 to 2012; (2) with the warming and wetting climate, the streamflow respectively increased 1.5 × 108 and 3.3 × 108 m3 per decade in the Kumarik River and the Toshkan River; and (3) the contribution of the temperature and precipitation to the streamflow, which were 64.01 ± 7.34, 35.99 ± 7.34 and 47.72 ± 8.10, 52.26 ± 8.10%, respectively in the Kumarik catchment and Toshkan catchment. Our study introduced a feasible hybrid model for the assessment of the impact of climate variability on streamflow, which can be used in the ungauged mountainous basin of Northwest China.
Hybrid model, Climate variability, Streamflow, Ungauged mountainous basin
-
121浏览
-
0点赞
-
0收藏
-
0分享
-
0下载
-
0评论
-
引用
Jianhua Xu
MethodsX,2018,5(2018):561-568
2018年06月15日
Previous studies showed that hydro-climate processes are stochastic and complex systems, and it is difficult to discover the hidden patterns in the all non-stationary data and thoroughly understand the hydro-climate relationships. For the purpose to show multi-time scale responses of a hydrological variable to climate change, we developed an integrated approach by combining wavelet analysis and regression method, which is called wavelet regression (WR). The customization and the advantage of this approach over the existing methods are presented below: (1) The patterns in the data series of a hydrological variable and its related climatic factors are revealed by the wavelet analysis at different time scales. (2) The hydro-climate relationship of each pattern is revealed by the regression method based on the results of wavelet analysis. (3) The advantage of this approach over the existing methods is that the approach provides a routing to discover the hidden patterns in the stochastic and non-stationary data and quantitatively describe the hydro-climate relationships at different time scales.
Wavelet regression, Multi-time scale analyses, Hydro-climate relationship
-
117浏览
-
0点赞
-
0收藏
-
0分享
-
0下载
-
0评论
-
引用
徐建华, Jianhua Xu, * Weihong Li, Minhe Ji, Feng Lu and Shan Dong
HYDROLOGICAL PROCESSES Hydrol. Process. 24, 136-146 (2010),-0001,():
-1年11月30日
Nonlinear characteristics of the runoff processes in the headwaters of the Tarim River were identified and evaluated using several selected methods, including wavelet analysis, correlation dimension, and R/S analysis. Time-series of annual data describing runoff, average temperature, and precipitation from 1957 to 2005 were used to construct and test empirical models. The primary findings of this study were as follows: (1) The annual runoff of the headwaters are complex and nonlinear in nature, and they each presented periodic, nonlinear trends at the chosen time scales, chaotic dynamics, and long-memory characteristics. (2) These nonlinear trends appeared to have resulted from the regional climatic changes that occurred during the study period. The periodicity of changes in runoff occurred on an approximately 25-year cycle, which appeared to be correlated with temperature and precipitation cycles. In addition, the annual runoff exhibited a significant, positive correlation with the temperature and precipitation factors at the 4-, 8-, 16-, and 32-year temporal scales. (3) The correlation dimensions of the attractor derived from the runoff time series for the Hotan, Yarkand, and Aksu rivers were all greater than 3Ð0 and non-integral, implying that all three rivers are dynamic chaotic systems that are sensitive to initial conditions, and that the dynamic modelling of their annual runoff requires at least four independent variables. (4) The computed Hurst exponents indicate that a long-term memory characteristic exists in the annual runoff processes. However, there were some differences observed, with the Aksu and Yarkand rivers demonstrating a persistent trait, and the Hotan River exhibiting an anti-persistent feature.
runoff, headwater, Tarim River, nonlinearity, wavelet, correlation dimension, Hurst exponent
-
103浏览
-
0点赞
-
0收藏
-
0分享
-
170下载
-
0评论
-
引用
徐建华, Jianhua Xu, a* Yaning Chen, b Feng Lu, a Weihong Li, b Lijun Zhang, a and Yulian Honga
INTERNATIONAL JOURNAL OF CLIMATOLOGY Int. J. Climatol. (2010),-0001,():
-1年11月30日
The nonlinear trend of runoff and its response to climate change in the Aksu River were identified and evaluated using several selected methods, including grey relation analysis, wavelet analysis, and regression analysis. The time series of runoff and related climate variables from two hydrologic stations and four meteorological stations during 1959–2005 for the Aksu River were used to construct and test empirical models. The key findings of this study indicate that although the time series of the runoff, temperature and precipitation present nonlinear trends, the runoff exhibits a linear correlation with the temperature and precipitation. These results reveal that there is a close relationship between variations in the annual runoff of the Aksu River and regional climate change; in other words, the nonlinear trends of the variations in the runoff is the response to that of regional climate change. The details supporting the key findings are as follows: (1) The annual runoff presented nonlinear trends that depend on time scales, which appeared to have resulted from the regional climate changes that occurred during the study period. (2) The periodicity of changes in runoff, temperature, and precipitation are closely correlated, that of annual runoff occurred on 24-year cycle, whereas annual average temperature and annual precipitation occurred on 23-and 25-year cycles. (3) The annual runoff exhibited a significant, positive correlation with the temperature and precipitation at the 1-, 2-, 4-, and 8-year temporal scales.
climate change, nonlinear trend, grey relation analysis, wavelet approximation, wavelet regression analysis, Aksu River, Northwest China
-
110浏览
-
0点赞
-
0收藏
-
0分享
-
195下载
-
0评论
-
引用
徐建华, XU Jianhua, , CHEN Yaning, LI Weihong, JI Minhe, DONG Shan, HONG Yulian
Chin. Geogra. Sci. 2009 19(4)306-313,-0001,():
-1年11月30日
Using wavelet analysis, regression analysis and the Mann-Kendall test, this paper analyzed time-series (1959–2006) weather data from 23 meteorological stations in an attempt to characterize the climate change in the Tarim River Basin of Xinjiang Uygur Autonomous Region, China. Major findings are as follows: 1) In the 48-year study period, average annual temperature, annual precipitation and average annual relative humidity all presented nonlinear trends. 2) At the 16-year time scale, all three climate indices unanimously showed a rather flat before 1964 and a detectable pickup thereafter. At the 8-year time scale, an S-shaped nonlinear and uprising trend was revealed with slight fluctuations in the entire process for all three indices. Incidentally, they all showed similar pattern of a slight increase before 1980 and a noticeable up-swing afterwards. The 4-year time scale provided a highly fluctuating pattern of periodical oscillations and spiral increases. 3) Average annual relative humidity presented a negative correlation with average annual temperature and a positive correlation with annual precipitation at each time scale, which revealed a close dynamic relationship among them at the confidence level of 0.001. 4) The Mann-Kendall test at the 0.05 confidence level demonstrated that the climate warming trend, as represented by the rising average annual temperature, was remarkable, but the climate wetting trend, as indicated by the rising annual precipitation and average annual relative humidity, was not obvious.
climate change, nonlinear trend, wavelet analysis, Mann-Kendall test, Tarim River Basin
-
66浏览
-
0点赞
-
0收藏
-
0分享
-
127下载
-
0评论
-
引用