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广东省自然科学基金(s04300504)

作品数:2 被引量:23H指数:2
发文基金:国家自然科学基金广东省自然科学基金更多>>
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Soil Quality Assessment Using Weighted Fuzzy Association Rules被引量:12
2010年
Fuzzy association rules (FARs) can be powerful in assessing regional soil quality, a critical step prior to land planning and utilization; however, traditional FARs mined from soil quality database, ignoring the importance variability of the rules, can be redundant and far from optimal. In this study, we developed a method applying different weights to traditional FARs to improve accuracy of soil quality assessment. After the FARs for soil quality assessment were mined, redundant rules were eliminated according to whether the rules were significant or not in reducing the complexity of the soil quality assessment models and in improving the comprehensibility of FARs. The global weights, each representing the importance of a FAR in soil quality assessment, were then introduced and refined using a gradient descent optimization method. This method was applied to the assessment of soil resources conditions in Guangdong Province, China. The new approach had an accuracy of 87%, when 15 rules were mined, as compared with 76% from the traditional approach. The accuracy increased to 96% when 32 rules were mined, in contrast to 88% from the traditional approach. These results demonstrated an improved comprehensibility of FARs and a high accuracy of the proposed method.
XUE Yue-JuLIU Shu-GuangHU Yue-MingYANG Jing-Feng
关键词:土壤质量评价模糊关联规则
Improving Land Resource Evaluation Using Fuzzy Neural Network Ensembles被引量:11
2007年
陆地评估因素经常包含连续 -- ,分离值、名字值的属性。在传统的陆地评估,这些不同属性通常由陆路被分级进范畴的索引资源专家,和评估结果重重地依靠专家的经验。以便克服缺点,我们介绍了没要求 grading 的一个模糊神经网络整体方法评估因素进范畴的索引并且能由直接使用三种属性价值评估土地资源。模糊的背繁殖神经网络(BPNN ) ,一个模糊光线的基础函数神经网络(RBFNN ) ,一个模糊 BPNN 整体,和一个模糊 RBFNN 整体被用来在广东评估土地资源省。由使用模糊 BPNN 整体和模糊 RBFNN 整体的评估结果是比由使用单个模糊 BPNN 和单个模糊 RBFNN 的那些好一些的,并且单个模糊 RBFNN 或模糊 RBFNN 整体的错误率分别地比单个模糊 BPNN 或模糊 BPNN 整体的低。由使用模糊神经网络整体,土地资源评估的有效性被改进,陆地计算程序的经验上的信赖更加被减少。
XUE Yue-JuHU Yue-MingLIU Shu-GuangYANG Jing-FengCHEN Qi-ChangBAO Shi-Tai
关键词:数据类型径向基函数神经网络模糊神经网络系统
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