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51.
基于网格技术的空间知识发现与数据挖掘研究   总被引:3,自引:0,他引:3  
设计了基于服务网格的空间知识发现与数据挖掘的架构,并对其关键技术进行了探讨性研究。  相似文献   
52.
基于广义3S技术的森林资源经营管理系统建设   总被引:8,自引:0,他引:8  
针对我国森林资源经营管理处于比较粗放的水平,将现代测绘科学与林业相结合,构建基于广义3S技术的森林资源经营管理系统。  相似文献   
53.
There is an urgent necessity to monitor changes in the natural surface features of earth. Compared to broadband multispectral data, hyperspectral data provides a better option with high spectral resolution. Classification of vegetation with the use of hyperspectral remote sensing generates a classical problem of high dimensional inputs. Complexity gets compounded as we move from airborne hyperspectral to Spaceborne technology. It is unclear how different classification algorithms will perform on a complex scene of tropical forests collected by spaceborne hyperspectral sensor. The present study was carried out to evaluate the performance of three different classifiers (Artificial Neural Network, Spectral Angle Mapper, Support Vector Machine) over highly diverse tropical forest vegetation utilizing hyperspectral (EO-1) data. Appropriate band selection was done by Stepwise Discriminant Analysis. The Stepwise Discriminant Analysis resulted in identifying 22 best bands to discriminate the eight identified tropical vegetation classes. Maximum numbers of bands came from SWIR region. ANN classifier gave highest OAA values of 81% with the help of 22 selected bands from SDA. The image classified with the help SVM showed OAA of 71%, whereas the SAM showed the lowest OAA of 66%. All the three classifiers were also tested to check their efficiency in classifying spectra coming from 165 processed bands. SVM showed highest OAA of 80%. Classified subset images coming from ANN (from 22 bands) and SVM (from 165 bands) are quite similar in showing the distribution of eight vegetation classes. Both the images appeared close to the actual distribution of vegetation seen in the study area. OAA levels obtained in this study by ANN and SVM classifiers identify the suitability of these classifiers for tropical vegetation discrimination.  相似文献   
54.
提出了基于模糊推理的空间聚类方法,给出了其实现步骤,并以实例验证了其可行性和科学性。  相似文献   
55.
罗飞  王华忠 《地球物理学报》2021,64(6):2050-2060

随着地震数据采集技术的进步,地震数据量日益增加,全自动、高精度的地震初至走时拾取技术受到了更加广泛的关注.本文将初至拾取看作特征空间内带约束的Markov决策过程,在奖励函数空间,按一定准则全局寻优获得积累奖励值最大的路径,从而达到在高维空间自动拾取初至信息的目的.同时,状态值函数中包含与距离相关的折扣因子γ,使Markov决策过程拾取初至能够考虑地震数据的横向连续性,并且回避地震数据中的坏道信息.在此基础上,本文方法进一步引入受空间几何信息约束的动作(Actions)和转移概率(Transitions Probability),从而降低了对起始状态和折扣因子选取的难度,让地震数据初至走时拾取更加准确和自动化.实际数据测试结果表明,在初至能量较弱(信噪比较低)情况或浅层存在相邻较近复杂波形时,本文提出的约束Markov算法仍能准确地进行初至走时的自动拾取,并且具有一定的质量监控能力,让拾取结果更有物理意义.

  相似文献   
56.
针对基于机器学习的滑坡易发性评价中非滑坡样本选取不规范导致的分类精度较低问题,本文提出联合基于密度的噪声应用空间聚类(Density-Based Spatial Clustering of Applications with Noise,DBSCAN)采样策略和支持向量机(Support Vector Machine,SVM)分类方法的DBSCAN-SVM滑坡易发性评价模型。首先,基于DBSCAN聚类和空间分析选取非滑坡样本;然后,将样本数据代入SVM分类模型进行训练与验证,预测并提取SVM分类中属于滑坡的概率,获得滑坡易发性;最后,以四川省绵阳市为试验区,预测滑坡易发性概率,基于滑坡易发性精度与分级结果等要素,与传统非滑坡样本采集策略的SVM滑坡易发性评价模型进行对比,并结合实际情况对DBSCAN-SVM模型评价结果进行分析。研究结果表明,相比传统SVM滑坡易发性评价模型,本文提出的DBSCAN-SVM滑坡易发性评价模型在高易发区和极高易发区中包含的滑坡样本数量较多,准确率、召回率、AUC、F1分数均得到提高,精度较高。  相似文献   
57.
震前自然电场的前兆及其可能机理   总被引:6,自引:1,他引:6  
研究了震前自然电场的前兆及礤可能机理。主要结论:(1)5.4 ̄6.2级地震在150 ̄200km,7.0 ̄7.9级地震在250km范围内自然电场出现前兆;(2)过滤电场、电化学电场、土体受压变密和机电转换可能是自然电场的前兆机理。  相似文献   
58.
Characterization, correlation and provenance determination of tephra samples in sedimentary sections (tephrochronological studies) are powerful tools for establishing ages of depositional events, volcanic eruptions, and tephra dispersion. Despite the large literature and the advancements in this research field, the univocal attribution of tephra deposits to specific volcanic sources remains too often elusive. In this contribution, we test the application of a machine learning technique named Support Vector Machine to attempt shedding new light upon tephra deposits related to one of the most complex and debated volcanic regions on Earth: the Pliocene-Pleistocene magmatism in Italy. The machine learning algorithm was trained using one of the most comprehensive global petrological databases (GEOROC); 17 chemical elements including major (SiO2, TiO2, Al2O3, Fe2O3T, CaO, MgO, MnO, Na2O, K2O, P2O5) and selected trace (Sr, Ba, Rb, Zr, Nb, La, Ce) elements were chosen as input parameters. We first show the ability of support vector machines in discriminating among different Pliocene-Pleistocene volcanic provinces in Italy and then apply the same methodology to determine the volcanic source of tephra samples occurring in the Caio outcrop, an Early Pleistocene sedimentary section located in Central Italy. Our results show that: 1) support vector machines can successfully resolve high-dimensional tephrochronological problems overcoming the intrinsic limitation of two- and three-dimensional discrimination diagrams; 2) support vector machines can discriminate among different volcanic provinces in complex magmatic regions; 3) in the specific case study, support vector machines indicate that the most probable source for the investigated tephra samples is the so-called Roman Magmatic Province. These results have strong geochronological and geodynamical implications suggesting new age constraints (1.4 Ma instead of 0.8 Ma) for the starting of the volcanic activity in the Roman Magmatic Province.  相似文献   
59.
The algorithmic approach to data modelling has developed rapidly these last years, in particular methods based on data mining and machine learning have been used in a growing number of applications. These methods follow a data-driven methodology, aiming at providing the best possible generalization and predictive abilities instead of concentrating on the properties of the data model. One of the most successful groups of such methods is known as Support Vector algorithms. Following the fruitful developments in applying Support Vector algorithms to spatial data, this paper introduces a new extension of the traditional support vector regression (SVR) algorithm. This extension allows for the simultaneous modelling of environmental data at several spatial scales. The joint influence of environmental processes presenting different patterns at different scales is here learned automatically from data, providing the optimum mixture of short and large-scale models. The method is adaptive to the spatial scale of the data. With this advantage, it can provide efficient means to model local anomalies that may typically arise in situations at an early phase of an environmental emergency. However, the proposed approach still requires some prior knowledge on the possible existence of such short-scale patterns. This is a possible limitation of the method for its implementation in early warning systems. The purpose of this paper is to present the multi-scale SVR model and to illustrate its use with an application to the mapping of Cs137 activity given the measurements taken in the region of Briansk following the Chernobyl accident.  相似文献   
60.
腾格里沙漠地区钾芒硝的首次发现及地质意义   总被引:5,自引:0,他引:5  
腾格里沙漠地区钾芒硝的首次发现及地质意义@刘振敏@崔天秀@韦钊@高月珍¥化工部化学矿产地质研究院钾芒硝,首次发现,地质意义,腾格里沙漠腾格里沙漠地区钾芒硝的首次发现及地质意义刘振敏崔天秀韦钊高月珍(化工部化学矿产地质研究院,河北涿州072754)关键词钾...  相似文献   
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