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Spatial-temporal Evolution and Determinants of the Belt and Road Initiative: A Maximum Entropy Gravity Model Approach 被引量:8
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作者 HUANG Qinshi ZHU Xigang +3 位作者 LIU Chunhui WU Wei LIU Fengbao ZHANG Xinyi 《Chinese Geographical Science》 SCIE CSCD 2020年第5期839-854,共16页
The spatial interaction model is an effective way to explore the geographical disparities inherent in the Belt and Road Initiative(BRI) by simulating spatial flows. The traditional gravity model implies the hypothesis... The spatial interaction model is an effective way to explore the geographical disparities inherent in the Belt and Road Initiative(BRI) by simulating spatial flows. The traditional gravity model implies the hypothesis of equilibrium points without any reference to when or how to achieve it. In this paper, a dynamic gravity model was established based on the Maximum Entropy(MaxEnt) theory to estimate and monitor the interconnection intensity and dynamic characters of bilateral relations. In order to detect the determinants of interconnection intensity, a Geodetector method was applied to identify and evaluate the determinants of spatial networks in five dimensions. The empirical study clearly demonstrates a heterogeneous and non-circular spatial structure. The main driving forces of spatial-temporal evolution are foreign direct investment, tourism and railway infrastructure construction, while determinants in different sub-regions show obvious spatial differentiation. Southeast Asian countries are typically multi-island area where aviation infrastructure plays a more important role. North and Central Asian countries regard oil as a pillar industry where power and port facilities have a greater impact on the interconnection. While Western Asian countries are mostly influenced by the railway infrastructure, Eastern European countries already have relatively robust infrastructure where tariff policies provide a greater impetus. 展开更多
关键词 spatial interaction model the Belt and Road Initiative(BRI) maximum entropy(maxent)gravity model spatial pattern China
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Predicting Potential Distribution of Tibetan Spruce (Picea smithiana) in Qomolangma (Mount Everest) National Nature Preserve Using Maximum Entropy Niche-based Model 被引量:15
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作者 ZHANG Jiping ZHANG Yili +1 位作者 LIU Linshan NIE Yong 《Chinese Geographical Science》 SCIE CSCD 2011年第4期417-426,共10页
Tibetan spruce (Picea smithiana) is an endemic species of the Himalayas,and it distributes only in a re-stricted area with very low number.To address the lack of detailed distributional information,we used maximum en-... Tibetan spruce (Picea smithiana) is an endemic species of the Himalayas,and it distributes only in a re-stricted area with very low number.To address the lack of detailed distributional information,we used maximum en-tropy (Maxent) niche-based model to predict the species' potential distribution from limited occurrence-only records.The location data of P.smithiana,relative bioclimatic variables,vegetation data,digital elevation model (DEM),and the derived data were analyzed in Maxent.The receiver operating characteristic (ROC) curve was applied to assess the prediction accuracy.The Maxent jackknife test was performed to quantify the training gains from data layers and the response of P.smithiana distribution to four typical environmental variables was analyzed.Results show that the model performs well at the regional scale.There is a potential for continued expansion of P.smithiana population numbers and distribution in China.P.smithiana potentially distributes in the lower reaches of Gyirong Zangbo and Poiqu rivers in Gyirong and Nyalam counties in Qomolangma (Mount Everest) National Nature Preserve (QNNP),China.The species prefers warm temperate climate in mountain area and mainly distributes in needle-leaved evergreen closed to open forest and mixed forest along the river valley at relatively low altitudes of about 2000-3000 m.Model simulations suggest that distribution patterns of rare species with few species numbers can be well predicted by Max-ent. 展开更多
关键词 Picea smithiana maximum entropy niche-based model potential distribution Qomolangma (Mount Ev-erest) National Nature Preserve (QNNP)
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A MAXIMUM ENTROPY CHUNKING MODEL WITH N-FOLD TEMPLATE CORRECTION 被引量:1
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作者 Sun Guanglu Guan Yi Wang Xiaolong 《Journal of Electronics(China)》 2007年第5期690-695,共6页
This letter presents a new chunking method based on Maximum Entropy (ME) model with N-fold template correction model.First two types of machine learning models are described.Based on the analysis of the two models,the... This letter presents a new chunking method based on Maximum Entropy (ME) model with N-fold template correction model.First two types of machine learning models are described.Based on the analysis of the two models,then the chunking model which combines the profits of conditional probability model and rule based model is proposed.The selection of features and rule templates in the chunking model is discussed.Experimental results for the CoNLL-2000 corpus show that this approach achieves impressive accuracy in terms of the F-score:92.93%.Compared with the ME model and ME Markov model,the new chunking model achieves better performance. 展开更多
关键词 CHUNKING maximum entropy (ME) model Template correction Cross-validation
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Droplets diameter distribution using maximum entropy formulation combined with a new energy-based sub-model 被引量:2
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作者 Seyed Mostafa Hosseinalipour Hadiseh Karimaei Ehsan Movahednejad 《Chinese Journal of Chemical Engineering》 SCIE EI CAS CSCD 2016年第11期1625-1630,共6页
The maximum entropy principle(MEP) is one of the first methods which have been used to predict droplet size and velocity distributions of liquid sprays. This method needs a mean droplets diameter as an input to predic... The maximum entropy principle(MEP) is one of the first methods which have been used to predict droplet size and velocity distributions of liquid sprays. This method needs a mean droplets diameter as an input to predict the droplet size distribution. This paper presents a new sub-model based on the deterministic aspects of liquid atomization process independent of the experimental data to provide the mean droplets diameter for using in the maximum entropy formulation(MEF). For this purpose, a theoretical model based on the approach of energy conservation law entitled energy-based model(EBM) is presented. Based on this approach, atomization occurs due to the kinetic energy loss. Prediction of the combined model(MEF/EBM) is in good agreement with the available experimental data. The energy-based model can be used as a fast and reliable enough model to obtain a good estimation of the mean droplets diameter of a spray and the combined model(MEF/EBM) can be used to well predict the droplet size distribution at the primary breakup. 展开更多
关键词 Mean droplets diameter Energy conservation maximum entropy formulation (MEF) Size distribution Statistical thermodynamics Mathematical modeling
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基于MaxEnt的山东省恙虫病影响因素分析及风险区域预测
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作者 石兴龙 徐欣颖 +6 位作者 乔颖异 吕婧 岳芳 程传龙 左慧 鲁亮 李秀君 《中国病原生物学杂志》 北大核心 2026年第1期55-60,65,共7页
目的分析山东省恙虫病发病的影响因素,预测其高风险区域,为恙虫病的精准防控提供科学依据。方法选取2017-2021年山东省恙虫病报告病例数据,收集同期气象、环境和社会经济因素数据;计算各影响因素间Spearman相关系数分析相关性;构建最大... 目的分析山东省恙虫病发病的影响因素,预测其高风险区域,为恙虫病的精准防控提供科学依据。方法选取2017-2021年山东省恙虫病报告病例数据,收集同期气象、环境和社会经济因素数据;计算各影响因素间Spearman相关系数分析相关性;构建最大熵模型(Maximum entropy model,MaxEnt),评估各影响因素对恙虫病发生的相对贡献,通过影响因素的响应曲线反映恙虫病的发生与影响因素之间的关联,预测高风险区域,绘制风险区域分布图,通过受试者工作特征(Receiver operating characteristic,ROC)曲线与曲线下面积(Area under curve,AUC)评估模型预测效果。结果2017-2021年山东省共报告3355例恙虫病病例,发病率较高的地区主要集中在山东省中南部及东部,北部与西部地区发病率较低,发病高峰在10~11月,男女性别比为1∶1.27,50岁以上老人占比最多(81.31%),农民是发病最多的职业(89.63%)。MaxEnt模型结果显示,归一化植被指数(Normalized difference vegetation index,NDVI)、相对湿度、年平均温度、海拔、坡度对恙虫病的发生有着较大贡献(累计贡献度86.10%),NDVI对恙虫病发病贡献度最大(37.80%),与恙虫病发病呈倒“U”型关系。模型预测的高风险区域主要集中在山东省中南部及胶东半岛地区,在西部和北部预测有零散分布。ROC曲线结果表明模型具有良好的预测性能(AUC=0.839)。结论山东省恙虫病受多种因素的影响,NDVI、相对湿度、年平均温度、海拔、坡度是影响恙虫病发生的主要因素,山东省中南部及东部地区是恙虫病发生的高风险地区。应加强环境监测和健康教育,针对高风险地区开展精准防控措施。 展开更多
关键词 恙虫病 最大熵模型 影响因素 风险区域
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基于优化的MaxEnt模型的合肥乡土花椒适生区预测
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作者 陈翠萍 王志琴 +2 位作者 余红梅 周朝彬 王景燕 《生态学杂志》 北大核心 2026年第1期276-283,共8页
合肥乡土花椒果皮品质极优,开展适生区分布预测对于合肥乡土花椒的推广种植具有重要意义。本研究基于33个分布点信息和27个生态因子,采用ENMeval优化的最大熵模型(MaxEnt),结合ArcGIS预测合肥乡土花椒的适生区分布,并分析影响其分布的... 合肥乡土花椒果皮品质极优,开展适生区分布预测对于合肥乡土花椒的推广种植具有重要意义。本研究基于33个分布点信息和27个生态因子,采用ENMeval优化的最大熵模型(MaxEnt),结合ArcGIS预测合肥乡土花椒的适生区分布,并分析影响其分布的主要生态因子。结果表明:在当前(1970—2000年)和未来气候(2050年)下,训练样品的受试者工作特征曲线下的面积值(AUC)均高于0.9,表明预测结果可靠;影响合肥乡土花椒潜在分布的主要生态因子为最干月降水量、最冷月最低温、等温性和年温度变化范围,累计贡献率为97.3%;当前气候条件下,合肥乡土花椒高、中和低适生区面积分别为1.35×10^(4)、0.93×10^(4)和0.57×10^(4) km^(2),高适生区主要集中在合肥北部的赤水、习水北、桐梓和道真等地;与当前气候相比,合肥乡土花椒在未来2050年的RCP26和RCP45两种气候情景下的高适生区面积将减少,主要减少区域为习水、桐梓和道真等地区。 展开更多
关键词 花椒 最大熵模型 ARCGIS 潜在适生区 气候变化
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A New Detection Approach Based on the Maximum Entropy Model
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作者 DONG Xiaomei XIANG Guang YU Ge LI Xiaohua 《Wuhan University Journal of Natural Sciences》 CAS 2006年第6期1765-1768,共4页
The maximum entropy model was introduced and a new intrusion detection approach based on the maximum entropy model was proposed. The vector space model was adopted for data presentation. The minimal entropy partitioni... The maximum entropy model was introduced and a new intrusion detection approach based on the maximum entropy model was proposed. The vector space model was adopted for data presentation. The minimal entropy partitioning method was utilized for attribute diseretization. Experiments on the KDD CUP 1999 standard data set were designed and the experimental results were shown. The receiver operating eharaeteristie(ROC) curve analysis approach was utilized to analyze the experimental results. The analysis results show that the proposed approach is comparable to those based on support vector maehine(SVM) and outperforms those based on C4.5 and Naive Bayes classifiers. According to the overall evaluation result, the proposed approach is a little better than those based on SVM. 展开更多
关键词 intrusion detection maximum entropy model CLASSIFIER support vector machine receiver operating characteristic curve
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Video segmentation using Maximum Entropy Model
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作者 秦莉娟 庄越挺 +1 位作者 潘云鹤 吴飞 《Journal of Zhejiang University-Science A(Applied Physics & Engineering)》 SCIE EI CAS CSCD 2005年第B08期47-52,共6页
Detecting objects of interest from a video sequence is a fundamental and critical task in automated visual surveillance. Most current approaches only focus on discriminating moving objects by background subtraction wh... Detecting objects of interest from a video sequence is a fundamental and critical task in automated visual surveillance. Most current approaches only focus on discriminating moving objects by background subtraction whether or not the objects of interest can be moving or stationary. In this paper, we propose layers segmentation to detect both moving and stationary target objects from surveillance video. We extend the Maximum Entropy (ME) statistical model to segment layers with features, which are collected by constructing a codebook with a set of codewords for each pixel. We also indicate how the training models are used for the discrimination of target objects in surveillance video. Our experimental results are presented in terms of the success rate and the segmenting precision. 展开更多
关键词 Layers segmentation maximum entropy model Visual surveillance
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Prediction of the global potential geographical distribution of Hylurgus ligniperda using a maximum entropy model
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作者 Zhuojin Wu Tai Gao +1 位作者 Youqing Luo Juan Shi 《Forest Ecosystems》 SCIE CSCD 2022年第4期449-459,共11页
Background: Hylurgus ligniperda(Fabricius) is native to Europe but has established populations in many countries and regions. H. ligniperda mainly infests Pinus species, and can cause severe weakness and even death of... Background: Hylurgus ligniperda(Fabricius) is native to Europe but has established populations in many countries and regions. H. ligniperda mainly infests Pinus species, and can cause severe weakness and even death of the host through its boring activity;it can also be a vector of various pathogenic fungi. This study was conducted to investigate the environmental variables limiting the distribution of H. ligniperda and the change trend of its suitable areas under climate change.Results: We used a maximum entropy model to predict the potential geographical distribution of H. ligniperda on a global scale under near current and future climatic scenarios using its occurrence data and environmental variables. The result shows that the areas surrounding the Mediterranean region, the eastern coastal areas of Asia, and the southeastern part of Oceania are highly suitable for H. ligniperda. The environmental variables with the greatest effect on the distribution of H. ligniperda were determined using the jackknife method and Pearson’s correlation analysis and included the monthly average maximum temperature in April, precipitation of driest quarter, the monthly average minimum temperature in December, precipitation of coldest quarter, mean temperature of driest quarter and mean diurnal range.Conclusions: Excessive precipitation in winter and low temperatures in spring had a great effect on the distribution of H. ligniperda. The potential geographical distribution of H. ligniperda was predicted to change under future climatic conditions compared with near current climate conditions. Highly suitable areas, moderately suitable areas and low suitable areas were predicted to increase by 59.99%, 44.43% and 22.92%, respectively, under the2081–2100 ssp245 scenario. 展开更多
关键词 Climate change Hylurgus ligniperda Invasive pest maximum entropy model Potential geographical distribution
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RESEARCH OF PINYIN-TO-CHARACTER CONVERSION BASED ON MAXIMUM ENTROPY MODEL
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作者 Zhao Yan Wang Xiaolong Liu Bingquan Guan Yi 《Journal of Electronics(China)》 2006年第6期864-869,共6页
This paper applied Maximum Entropy (ME) model to Pinyin-To-Character (PTC) conversion in-stead of Hidden Markov Model (HMM) that could not include complicated and long-distance lexical informa-tion. Two ME models were... This paper applied Maximum Entropy (ME) model to Pinyin-To-Character (PTC) conversion in-stead of Hidden Markov Model (HMM) that could not include complicated and long-distance lexical informa-tion. Two ME models were built based on simple and complex templates respectively, and the complex one gave better conversion result. Furthermore, conversion trigger pair of y A → y B cBwas proposed to extract the long-distance constrain feature from the corpus; and then Average Mutual Information (AMI) was used to se-lect conversion trigger pair features which were added to the ME model. The experiment shows that conver-sion error of the ME with conversion trigger pairs is reduced by 4% on a small training corpus, comparing with HMM smoothed by absolute smoothing. 展开更多
关键词 Pinyin-To-Character (PTC) conversion maximum entropy (ME) model Hidden Markov model(HMM) Conversion trigger pair Average Mutual Information (AMI)
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基于MaxEnt模型预测云南橡胶树空间分布的可靠性验证
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作者 李玉勤 李博群 《林业调查规划》 2026年第1期140-145,共6页
最大熵模型(MaxEnt)已被广泛应用于预测物种的潜在分布区,以往的研究都是采用部分样本地理分布点位数据来预测该物种的潜在分布区,但预测结果的准确性无法得到完整的验证。选用云南省139个橡胶树样本分布点和22个环境变量因子,利用MaxEn... 最大熵模型(MaxEnt)已被广泛应用于预测物种的潜在分布区,以往的研究都是采用部分样本地理分布点位数据来预测该物种的潜在分布区,但预测结果的准确性无法得到完整的验证。选用云南省139个橡胶树样本分布点和22个环境变量因子,利用MaxEnt模型生成云南省橡胶树适生区范围,采用该范围与云南省现有橡胶种植区叠加分析,验证使用MaxEnt模型预测物种空间分布的可靠性。结果表明,采用橡胶树分布点抽样数据,使用MaxEnt模型预测的橡胶树高适生区范围与现地调查的云南省现有橡胶种植区范围几乎重叠。表明使用MaxEnt模型预测物种空间分布是可靠的。 展开更多
关键词 橡胶树 适生区分布 可靠性验证 环境因子 最大熵模型(maxent)
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基于优化MaxEnt模型的怒江州滑坡易发性评价
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作者 李益敏 向倩英 +1 位作者 邓选伦 冯显杰 《河南理工大学学报(自然科学版)》 CAS 北大核心 2025年第1期57-67,共11页
目的 怒江州是典型的高山峡谷地区,地质灾害(滑坡)频发,严重制约着当地的发展。为解决这一问题,方法 综合考虑怒江州实际情况,从气象水文、地形地貌、地层岩性、植被生态和人类活动5个方面选取坡向,高程等14个影响因子,判断滑坡与各影... 目的 怒江州是典型的高山峡谷地区,地质灾害(滑坡)频发,严重制约着当地的发展。为解决这一问题,方法 综合考虑怒江州实际情况,从气象水文、地形地貌、地层岩性、植被生态和人类活动5个方面选取坡向,高程等14个影响因子,判断滑坡与各影响因子间相关性,构建评价指标体系,对最大熵(maximum entropy, MaxEnt)模型的特征类(feature combination,FC)和正则化乘数(regularization multiplier, RM)参数进行优化,对比优化前后小样本赤池信息量准则(akaikeinformationcriterion,AIC)、遗漏率(omissionrate,OR)和AUC(areaunder curve),并基于优化的MaxEnt模型预测滑坡灾害的发生,实现怒江州滑坡易发性评价。结果结果表明:优化后的MaxEnt模型在研究区滑坡易发性预测中适用性优秀(AUC=0.913);运用刀切法(Jackknife)计算各影响因子对易发性的影响程度,高程(S3, 23.2%)、坡度(S9, 22.4%)、居民点密度(S5, 14.2%)、距河流距离(S13, 13.7%)、距道路距离(S4, 9.6%)和岩性(S7, 8.7%)是前六位影响因子,累计贡献度达91.8%;极高、高、中、低滑坡易发性等级的空间占比分别为4.88%,8.96%,18.40%,67.76%,县域中极高和高易发区占比最大的是泸水市,整体上看,极高、高易发区主要沿河流和道路分布于峡谷中,低易发区主要分布于人类活动少、河谷不发育的区域。结论 优化后的MaxEnt模型更适合怒江州滑坡易发性预测,研究结果可为怒江州防灾减灾与土地利用规划提供参考。 展开更多
关键词 怒江州 最大熵模型 滑坡 易发性
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Maximum Entropy Distribution Function and Uncertainty Evaluation Criteria 被引量:6
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作者 CHEN Bai-yu KOU Yi +3 位作者 ZHAO Daniel WU Fang WANG Li-ping LIU Gui-lin 《China Ocean Engineering》 SCIE EI CSCD 2021年第2期238-249,共12页
Marine environmental design parameter extrapolation has important applications in marine engineering and coastal disaster prevention.The distribution models used for environmental design parameter usually pass the hyp... Marine environmental design parameter extrapolation has important applications in marine engineering and coastal disaster prevention.The distribution models used for environmental design parameter usually pass the hypothesis tests in statistical analysis,but the calculation results of different distribution models often vary largely.In this paper,based on the information entropy,the overall uncertainty test criteria were studied for commonly used distributions including Gumbel,Weibull,and Pearson-III distribution.An improved method for parameter estimation of the maximum entropy distribution model is proposed on the basis of moment estimation.The study in this paper shows that the number of sample data and the degree of dispersion are proportional to the information entropy,and the overall uncertainty of the maximum entropy distribution model is minimal compared with other models. 展开更多
关键词 maximum entropy distribution model UNCERTAINTY information entropy evaluation criterion
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基于MaxEnt模型的云南香料烟气候适生区 被引量:2
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作者 李含文 张云贵 +5 位作者 李光西 李志宏 甄安忠 刘青丽 唐旭兵 王鹏 《云南农业大学学报(自然科学版)》 北大核心 2025年第1期111-117,共7页
【目的】研究香料烟在云南的气候适生区,为其合理种植提供理论依据。【方法】使用ArcGIS将气候数据结合地形校正进行协同克里金插值,利用最大熵(maximum entropy,MaxEnt)模型筛选影响香料烟分布的气象因子,最后使用ArcGIS对云南省香料... 【目的】研究香料烟在云南的气候适生区,为其合理种植提供理论依据。【方法】使用ArcGIS将气候数据结合地形校正进行协同克里金插值,利用最大熵(maximum entropy,MaxEnt)模型筛选影响香料烟分布的气象因子,最后使用ArcGIS对云南省香料烟的气候适生区进行评价。【结果】MaxEnt模型的曲线下面积(the area under curve,AUC)值为0.993,可精准预测云南省香料烟的气候适生区。影响香料烟在云南省分布的气象因子为2月降雨量、1月日照时间、3月日照时间、3月平均气温、3月降雨量、4月降雨量、1月降雨量、2月日照时间和4月最高气温。香料烟在云南省的最适宜种植区(四级适生区)主要分布在保山、德宏和临沧;适宜种植区(三级适生区)主要分布在保山、德宏、临沧、玉溪、楚雄和大理。MaxEnt模型预测结果与香料烟种植区拟合度较高,其种植区主要分布在四级和三级适生区,极少数分布在二级和一级适生区。【结论】云南省适合种植香料烟的地区主要在西南部,适宜种植区主要为沿怒江、澜沧江、黑惠江及其支流的干热河谷地区。2月降雨量、1月日照时间、3月日照时间和3月平均气温是影响香料烟在云南种植的主要气象因子。 展开更多
关键词 香料烟 最大熵模型(maxent) 气候 适生区 潜在分布
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Maximum entropy spectral characteristics of seismic activity for great earthquakes in China 被引量:2
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作者 宋治平 梅世蓉 +1 位作者 武安绪 薛艳 《Acta Seismologica Sinica(English Edition)》 CSCD 1997年第1期8-15,共8页
The maximum entropy spectral characteristics of seismicity in the seismic enhanced region of 11 great earthquakes is analysed in this paper to seek the difference of seismic period spectral structure between the norm... The maximum entropy spectral characteristics of seismicity in the seismic enhanced region of 11 great earthquakes is analysed in this paper to seek the difference of seismic period spectral structure between the normal and the abnormal stage of seismic activity in this paper. The results show that, during decades or even one hundred years before great earthquakes, only short periods with 6.5~24.3 years appear, and long ones disappear. Otherwise, long periods with 18.5~38.5 years exist chiefly within the normal stages. Decades years after great earthquakes, the period spectra of seismicity are generally about several or ten years. Then the characteristics of great earthquakes is explained physically by applying the strong body seismogenic model, so a method of studying and predicting great earthquakes is offered. 展开更多
关键词 great earthquake maximum entropy spectrum short period long period strong body seismogenic model
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基于MaxEnt模型的厚唇裸重唇鱼当下潜在适宜分布 被引量:3
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作者 吴开阳 赵春娴 +7 位作者 吕红健 李筱芹 鲁桃秀 吴彤飞 田辉伍 邓华堂 姚维志 付梅 《水生生物学报》 北大核心 2025年第3期1-12,共12页
研究以厚唇裸重唇鱼(Gymnodiptychuspachycheilus)为研究对象,基于其53个野外分布位点,并结合筛选后的3组环境因子(包括第1组:气候因子与地形因素;第2组:淡水环境因子;第3组:气候因子、地形因素与淡水环境因子)分别构建MaxEnt模型Ⅰ、... 研究以厚唇裸重唇鱼(Gymnodiptychuspachycheilus)为研究对象,基于其53个野外分布位点,并结合筛选后的3组环境因子(包括第1组:气候因子与地形因素;第2组:淡水环境因子;第3组:气候因子、地形因素与淡水环境因子)分别构建MaxEnt模型Ⅰ、Ⅱ、Ⅲ,分析厚唇裸重唇鱼在长江及黄河流域的当下潜在适生区分布及影响其分布的主要环境因子,并进一步探讨MaxEnt模型在内陆淡水鱼类研究中的应用前景。结果表明:(1)基于3组环境因子所构建MaxEnt模型Ⅰ、Ⅱ、Ⅲ对厚唇裸重唇鱼当下在长江与黄河流域适宜分布的预测均具有较高的可靠性,在气候因子与地形因子的基础上,淡水环境因子的添加进一步增加了MaxEnt模型的可靠性与准确性;(2)MaxEnt模型对厚唇裸重唇鱼在长江和黄河流域的当下潜在地理分布预测结果与其现有分布基本吻合;(3)在长江与黄河流域,MaxEnt模型筛选出影响厚唇裸重唇鱼分布的主要环境因子包括草本植被横跨小集水区范围(Hb-rang)、上游平均高程(Up-ele)和温度季节性变异系数(Bio4)。研究结果为厚唇裸重唇鱼野生资源养护和栖息地保护提供了理论依据,并为MaxEnt模型在我国其他珍稀濒危鱼类适生区研究中的应用提供借鉴。此外,MaxEnt模型在我国内陆鱼类栖息地保护、鱼类更替及其灭绝驱动因素预测、鱼类群落生物多样性监测与评估、外来(或入侵)鱼类风险评估等方面具有广阔的应用前景。 展开更多
关键词 最大熵模型 适生区分布 长江流域 黄河流域 厚唇裸重唇鱼
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Effective approach for conformal subarray design based on maximum entropy of planar mappings 被引量:1
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作者 Xiao-Dong Zheng Sheng-Teng Shi +3 位作者 Jun Ou-Yang Feng Yang Qammer Abbasi Abubakar Sharif 《Journal of Electronic Science and Technology》 EI CAS CSCD 2024年第3期16-25,共10页
In this paper,an effective algorithm for optimizing the subarray of conformal arrays is proposed.The method first divides theconformal array into several first-level subarrays.It uses the X algorithm to solve the feas... In this paper,an effective algorithm for optimizing the subarray of conformal arrays is proposed.The method first divides theconformal array into several first-level subarrays.It uses the X algorithm to solve the feasible solution of first-level subarray tiling and employs the particle swarm algorithm to optimize the conformal array subarray tiling scheme with the maximum entropy of the planar mapping as the fitness function.Subsequently,convex optimization is applied to optimize the subarray amplitude phase.Data results verify that the method can effectively find the optimal conformal array tiling scheme. 展开更多
关键词 Conformal array Irregular arrays Particle swarm optimal algorithm maximum entropy model
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Subjectivity in Application of the Principle of Maximum Entropy 被引量:1
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作者 Jan Peter Hessling 《Open Journal of Statistics》 2013年第6期1-8,共8页
Complete prior statistical information is currently required in the majority of statistical evaluations of complex models. The principle of maximum entropy is often utilized in this context to fill in the missing piec... Complete prior statistical information is currently required in the majority of statistical evaluations of complex models. The principle of maximum entropy is often utilized in this context to fill in the missing pieces of available information and is normally claimed to be fair and objective. A rarely discussed aspect is that it relies upon testable information, which is never known but estimated, i.e. results from processing of raw data. The subjective choice of this processing strongly affects the result. Less conventional posterior completion of information is equally accurate but is computationally superior to prior, as much less information enters the analysis. Our recently proposed methods of lean deterministic sampling are examples of very few approaches that actively promote the use of minimal incomplete prior information. The inherited subjective character of maximum entropy distributions and the often critical implications of prior and posterior completion of information are here discussed and illustrated, from a novel perspective of consistency, rationality, computational efficiency and realism. 展开更多
关键词 maximum entropy BAYES Monte Carlo Uncertainty COVARIANCE DETERMINISTIC Sampling Testable Information model Calculation Simulation
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Fourth-Order Predictive Modelling: I. General-Purpose Closed-Form Fourth-Order Moments-Constrained MaxEnt Distribution
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作者 Dan Gabriel Cacuci 《American Journal of Computational Mathematics》 2023年第4期413-438,共26页
This work (in two parts) will present a novel predictive modeling methodology aimed at obtaining “best-estimate results with reduced uncertainties” for the first four moments (mean values, covariance, skewness and k... This work (in two parts) will present a novel predictive modeling methodology aimed at obtaining “best-estimate results with reduced uncertainties” for the first four moments (mean values, covariance, skewness and kurtosis) of the optimally predicted distribution of model results and calibrated model parameters, by combining fourth-order experimental and computational information, including fourth (and higher) order sensitivities of computed model responses to model parameters. Underlying the construction of this fourth-order predictive modeling methodology is the “maximum entropy principle” which is initially used to obtain a novel closed-form expression of the (moments-constrained) fourth-order Maximum Entropy (MaxEnt) probability distribution constructed from the first four moments (means, covariances, skewness, kurtosis), which are assumed to be known, of an otherwise unknown distribution of a high-dimensional multivariate uncertain quantity of interest. This fourth-order MaxEnt distribution provides optimal compatibility of the available information while simultaneously ensuring minimal spurious information content, yielding an estimate of a probability density with the highest uncertainty among all densities satisfying the known moment constraints. Since this novel generic fourth-order MaxEnt distribution is of interest in its own right for applications in addition to predictive modeling, its construction is presented separately, in this first part of a two-part work. The fourth-order predictive modeling methodology that will be constructed by particularizing this generic fourth-order MaxEnt distribution will be presented in the accompanying work (Part-2). 展开更多
关键词 maximum entropy Principle Fourth-Order Predictive modeling Data Assimilation Data Adjustment Reduced Predicted Uncertainties model Parameter Calibration
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基于MaxEnt和ArcGIS的山西省3种黄芩属药用植物生态适宜性区划 被引量:1
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作者 姜霞 赵俊禧 +3 位作者 石盼盼 平莉莉 杜晨晖 詹海仙 《生态学杂志》 北大核心 2025年第7期2456-2464,共9页
开展黄芩属(Scutellaria)药用植物现有资源生态适宜性区划能为其生态适宜性范围预测及栽培区域的选择提供科学依据。本研究收集了山西省3种分布较多的黄芩属药用植物样点分布信息(其中黄芩(Scutellaria baicalensis Georgi)421个、并头... 开展黄芩属(Scutellaria)药用植物现有资源生态适宜性区划能为其生态适宜性范围预测及栽培区域的选择提供科学依据。本研究收集了山西省3种分布较多的黄芩属药用植物样点分布信息(其中黄芩(Scutellaria baicalensis Georgi)421个、并头黄芩(S.scordifolia Fisch.ex Schrank)87个、粘毛黄芩(S.viscidula Bunge.)14个),结合55个生态因子数据,应用最大熵模型(MaxEnt)和地理信息系统(ArcGIS)分析影响3种黄芩属药用植物适生区分布的关键生态因子。结果表明:影响3种黄芩属药用植物适生区分布的关键生态因子主要有植被类型、海拔、降水量等,不同物种间影响其生态适宜性的关键生态因子差异显著;黄芩和并头黄芩在山西省的适生区分布较广,忻州、吕梁、临汾、长治、晋中、太原、朔州等地均有较大面积的适宜分布区;粘毛黄芩在山西的适生区分布较少,主要集中在山西省北部大同、朔州、忻州等地。研究结果对于山西省黄芩及其代替品并头黄芩和粘毛黄芩的合理引种栽培和黄芩的规范化生产具有参考和指导性意义。 展开更多
关键词 山西省 黄芩 最大熵模型 地理信息系统 生态适宜性区划
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