Stochastic simulation and uncertainty assessment of spatial variation in soil salinity in coastal reclamation regions

2011 ◽  
Vol 19 (3) ◽  
pp. 485-490 ◽  
Author(s):  
Rong-Jiang YAO ◽  
Jin-Song YANG ◽  
Jian-Jun HAN
2014 ◽  
Vol 294 ◽  
pp. 411-417 ◽  
Author(s):  
Yan Xu ◽  
Lijie Pu ◽  
Ming Zhu ◽  
Jianguo Li ◽  
Meng Zhang ◽  
...  

2018 ◽  
Vol 38 (4) ◽  
Author(s):  
刘文全 LIU Wenquan ◽  
卢芳 LU Fang ◽  
徐兴永 XU Xingyong ◽  
曹建荣 CAO Jianrong ◽  
付腾飞 FU Tengfei ◽  
...  

2017 ◽  
Vol 2017 ◽  
pp. 1-9 ◽  
Author(s):  
Tana Qian ◽  
Atsushi Tsunekawa ◽  
Tsugiyuki Masunaga ◽  
Tao Wang

Land salinization and water resource deterioration negatively affect irrigated agriculture in arid and semiarid areas by limiting the area of arable land and reducing crop yields. The spatial variation of soil salinity is affected by many factors, and their interactions are complex. In this study, we utilized grey relational analysis to evaluate the factors that affect soil salinity in China’s Minqin Oasis and the interactions among them and then ranked the significance of their impacts on soil salinity for different land use and cover types. The data used in this study include data obtained from soil chemical analyses based on field sampling in 2015 and hydrological data obtained from local government agencies. We found that the main factors that affect soil salinity in the region’s sparse grassland are groundwater salinity and vegetation cover; the least important factor was the distance to the nearest irrigation canal. For cropland, the most important factors were the distance to irrigation canals and hydrological factors. By accounting for these factors, it should be possible to manage the region’s limited natural water and soil resources more efficiently, while allowing remediation of existing salinized land and helping to maintain sustainable agriculture in this arid land.


Soil Research ◽  
2010 ◽  
Vol 48 (1) ◽  
pp. 27 ◽  
Author(s):  
Masoomeh Delbari ◽  
Willibald Loiskandl ◽  
Peyman Afrasiab

Soil organic carbon (SOC) affects many processes in soil. The main objective of this study was the prediction and uncertainty assessment of the spatial patterns of SOC through stochastic simulation using 2 simulation algorithms, sequential Gaussian simulation (sGs) and sequential indicator simulation (sis). The dataset consisted of 158 point measurements of surface SOC taken from an 18-ha field in Lower Austria. Conditional stochastic simulation algorithms were used to generate 100 maps of equiprobable spatial distribution for SOC. In general the simulated maps represented spatial distribution of SOC more realistically than the kriged map, i.e. overcoming the smoothing effect of kriging. Unlike sGs, sis was able to preserve the connectivity of extreme values in generated maps. The SOC simulated maps generated through sGs reproduced the sample statistics well. The reproduction of class-specific patterns of spatial continuity of SOC for the simulated model produced through sis was also reasonably good. The results highlight that when the class-specific patterns of spatial continuity of the attribute must be preserved, sis is preferred to sGs. For local uncertainty, standard deviations obtained using kriging varied much less across the study area than those obtained using simulations. This shows that the conditional standard deviations achieved through simulations depend on data values in addition to data configuration for greater reliability in reporting the estimation precision. Further, according to accuracy plots and goodness statistic, G, sis performs the modelling uncertainty better than sGs. The simulated models can provide useful information in risk assessment of SOC management in Lower Austria.


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