Article(id=1242128191175852247, tenantId=1146029695717560320, journalId=1146031591421210625, issueId=1242128176776806555, articleNumber=null, orderNo=null, doi=10.3981/j.issn.1000-7857.2011.33.008, pmid=null, cstr=null, oa=null, hot=null, price=null, onlineType=0, articleFormat=0, articleType=null, articleTypeStr=null, receivedDate=1319731200000, receivedDateStr=2011-10-28, revisedDate=1321718400000, revisedDateStr=2011-11-20, acceptedDate=null, acceptedDateStr=null, onlineDate=1322409600000, onlineDateStr=2011-11-28, pubDate=1322409600000, pubDateStr=2011-11-28, doiRegisterDate=null, doiRegisterDateStr=null, onlineIssueDate=1322409600000, onlineIssueDateStr=2011-11-28, onlineJustAcceptDate=null, onlineJustAcceptDateStr=null, onlineFirstDate=null, onlineFirstDateStr=null, sourceXml=null, magXml=null, createTime=1774076038398, creator=sys-migrate, updateTime=1774076038398, updator=sys-migrate, issue=Issue{id=1242128176776806555, tenantId=1146029695717560320, journalId=1146031591421210625, year='2011', volume='29', issue='33', pageStart='3', pageEnd='96', issueExtLink='null', onlineDate='null', pubDate='null', beforeIssueId=null, nextIssueId=null, price=null, status=1, issueComplete=1, articleOrder=3, issueType=-1, specialIssue=null, createTime=1774076034967, creator=sys-migrate, updateTime=1774076034967, updator=sys-migrate, preIssue=null, nextIssue=null, ext=null, issueFiles=null}, startPage=52, endPage=57, ext={EN=ArticleExt(id=1242128194711654978, articleId=1242128191175852247, tenantId=1146029695717560320, journalId=1146031591421210625, language=EN, title=Improved PSO-LSSVM Productivity Prediction Model for the Fractured Horizontal Well in Volcanic Gas Reservoir, columnId=1242116080374710456, journalTitle=Science & Technology Review, columnName=Articles, runingTitle=null, highlight=null, articleAbstract=The existing productivity prediction model of fractured horizontal well in volcanic gas reservoir has more influence factors, less real samples, and incomplete parameters, therefore, it is difficult to accurately predict the productivity by using conventional methods. In order to quickly and effectively make certain of the productivity of fractured horizontal well in volcanic gas reservoir with existing data, the influence factors are determined by using Grey Relational Analysis(GRA), and the sensitivity of factor weights is considered to amend the algorithm. The improved PSO-LSSVM productivity model is established based on the parameters of Least Squares Support Vector Machines (LSSVM) which are optimized by Particle Swarm Optimization (PSO) algorithm. This model not only makes full use of the characteristics of the LSSVM small samples, which possess the strong learning ability and simple calculation, but also takes the advantages of fast calculation and better global searching ability of PSO. Comparing the PSO-LSSVM model with the BP-LM model, the improved PSO-LSSVM model has less iteration times, higher calculation precision, and more accurate predict results., correspAuthors=null, authorNote=null, correspAuthorsNote=null, copyrightStatement=null, copyrightOwner=null, extLink=null, articleAbsUrl=null, sourceXml=null, magXml=null, pdfUrl=null, pdf=+107hNcgwz9viKnd2vOPiA==, pdfFileSize=1385474, pdfExtLink=null, richHtmlUrl=null, mobilePdfUrl=null, reviewReport=null, pdfFirstPage=null, abstractGraph=null, abstractGraphContent=null, abstractVideo=null, citation=null, cebUrl=null, magXmlContent=null, mapNumber=null, authorCompany=1. School of Petroleum Engineering, China University of Petroleum, Qingdao 266555, Shandong Province, China;2. Sinopec International Petroleum Exploration and Production Corporation, Beijing 100083, China, fund=null, authors=WANG Peixi1, ZHANG Jing2, authorsList=WANG Peixi;ZHANG Jing), CN=ArticleExt(id=1242128193688240346, articleId=1242128191175852247, tenantId=1146029695717560320, journalId=1146031591421210625, language=CN, title=改进的PSO-LSSVM火山岩气藏压裂水平井产能预测模型, columnId=1146540929516700224, journalTitle=科技导报, columnName=研究论文, runingTitle=null, highlight=null, articleAbstract=在火山岩气藏压裂水平井产能预测模型中,影响因素多、实际样本少、各项参数获取不完整,因而利用常规方法预测的误差较大。为了充分地利用现有数据资料,从而快速有效地确定火山岩气藏压裂水平井产能,本文采用灰色关联方法确定了影响火山岩气藏压裂水平井产能的因素,利用粒子群算法对最小二乘支持向量机参数进行了优化,同时考虑到不同参数的敏感性,引入因素权重,形成了改进的PSO-LSSVM火山岩气藏压裂水平井产能预测模型。模型既充分利用了最小二乘支持向量机的小样本学习能力强和计算简单的特点,又发挥了粒子群算法计算速度快和具有较强的全局搜索能力的优点,还兼顾了各因素之间相互作用的影响。使用改进的PSO-LSSVM模型与传统的PSO-LSSVM模型和BP-LM模型进行计算对比的结果表明,改进的PSO-LSSVM模型所需的计算迭代次数更少,计算精度更高,进行模型预测的结果也更精确。, correspAuthors=null, authorNote=null, correspAuthorsNote=null, copyrightStatement=null, copyrightOwner=null, extLink=null, articleAbsUrl=null, sourceXml=null, magXml=null, pdfUrl=null, pdf=aTt28YIuAuwriSd38E7Zcw==, pdfFileSize=1385474, pdfExtLink=null, richHtmlUrl=null, mobilePdfUrl=null, reviewReport=null, pdfFirstPage=null, abstractGraph=null, abstractGraphContent=null, abstractVideo=null, citation=null, cebUrl=null, magXmlContent=null, mapNumber=null, authorCompany=1. 中国石油大学(华东)石油工程学院,山东青岛 266555;2. 中国石化集团国际石油勘探开发有限公司,北京 100083, fund=null, authors=王培玺1, 张静2, authorsList=王培玺;张静)}, authors=null, keywords=[Keyword(id=1242128193138790962, tenantId=1146029695717560320, journalId=1146031591421210625, articleId=1242128191175852247, language=CN, orderNo=1, keyword=灰色关联分析), Keyword(id=1242128193214288436, tenantId=1146029695717560320, journalId=1146031591421210625, articleId=1242128191175852247, language=CN, orderNo=1, keyword=粒子群优化), Keyword(id=1242128193310757430, tenantId=1146029695717560320, journalId=1146031591421210625, articleId=1242128191175852247, language=CN, orderNo=1, keyword=最小二乘支持向量机), Keyword(id=1242128193390449207, tenantId=1146029695717560320, journalId=1146031591421210625, articleId=1242128191175852247, language=CN, orderNo=1, keyword=压裂水平井), Keyword(id=1242128193486918200, tenantId=1146029695717560320, journalId=1146031591421210625, articleId=1242128191175852247, language=CN, orderNo=1, keyword=产能预测), Keyword(id=1242128194237694179, tenantId=1146029695717560320, journalId=1146031591421210625, articleId=1242128191175852247, language=EN, orderNo=1, keyword=GRA), Keyword(id=1242128194334167613, tenantId=1146029695717560320, journalId=1146031591421210625, articleId=1242128191175852247, language=EN, orderNo=1, keyword=PSO), Keyword(id=1242128194405470782, tenantId=1146029695717560320, journalId=1146031591421210625, articleId=1242128191175852247, language=EN, orderNo=1, keyword=LSSVM), Keyword(id=1242128194497745471, tenantId=1146029695717560320, journalId=1146031591421210625, articleId=1242128191175852247, language=EN, orderNo=1, keyword=fractured horizontal well), Keyword(id=1242128194577437248, tenantId=1146029695717560320, journalId=1146031591421210625, articleId=1242128191175852247, language=EN, orderNo=1, keyword=productivity prediction)], refs=null, funds=null, companyList=null, figs=null, attaches=null, journal=Journal(id=1125356956822126595, delFlag=0, nameCn=科技导报, nameEn=Science & Technology Review, nameHistory1=null, nameHistory2=null, issn=1000-7857, eissn=, cn=11-1421/N, coden=null, periodic=3, language=CN, oaType=0, ccby=null, superviseOffice=null, ownerOffice=null, pubOffice=null, editorOffice=null, officeType=null, aims=null, clcCode=null, officeProv=null, officeCity=null, officeAddr=null, officeZip=null, officeEmail=null, officePhone=null, editDirector=null, officeDirector=null, officeDirectorPhone=null, officeStaffNum=null, officeEmpNum=null, coverPicUrl=aEuqdCNQUjPEKa3rm5A/8Q==, journalPrice=null, startedYear=null, abbrevIsoEn=Sci Technol Rev, journalRemark=null, publicationField=null, createdTime=null, updatedTime=1754267492363, createdBy=null, updatedBy=13701087609, firstLetterCn=S, firstLetterEn=S, subjectCode=Natural Sciences, subjectName=自然科学, subjectCodeEn=Natural Sciences, subjectNameEn=null, picCn=aEuqdCNQUjPEKa3rm5A/8Q==, picEn=4AIQ9/oc3H8lvjeELJ6WWw==, jcr=null, cjcr=null, exts=[JournalExt(id=1159045127382855686, language=CN, name=科技导报, nameHistory1=null, nameHistory2=null, managedBy=中国科学技术协会, sponsoredBy=中国科学技术协会, publishedBy=科技导报社, editorOffice=, officeProv=null, officeCity=null, officeAddr=, officeZip=, editDirector=null, officeDirector=null, officePhone=null, coverPicUrl=null, journalRemark=, submitArticleUrl=null, websiteUrl=http://www.kjdb.org/CN/home, createdTime=1754267492385, updatedTime=1754267492385, createdBy=13701087609, updatedBy=13701087609, submissionGuidelinesUrl=http://www.kjdb.org/CN/column/column7.shtml, submissionAuthorUrl=https://kjdbauthor.cast.org.cn/webm, submissionEditorUrl=https://kjdbeditor.cast.org.cn/webm/, submissionReviewUrl=https://kjdbauthor.cast.org.cn/webm, submissionCeEditorUrl=https://kjdbeditor.cast.org.cn/webm/, submissionAeEditorUrl=https://kjdbeditor.cast.org.cn/webm/, option={"copyright":""}), JournalExt(id=1159045127433187335, language=EN, name=Science & Technology Review, nameHistory1=null, nameHistory2=null, managedBy=, sponsoredBy=, publishedBy=, editorOffice=, officeProv=null, officeCity=null, officeAddr=, officeZip=, editDirector=null, officeDirector=null, officePhone=null, coverPicUrl=null, journalRemark=, submitArticleUrl=null, websiteUrl=http://www.kjdb.org/EN/home, createdTime=1754267492398, updatedTime=1754267492398, createdBy=13701087609, updatedBy=13701087609, submissionGuidelinesUrl=http://www.kjdb.org/EN/column/column7.shtml, submissionAuthorUrl=https://kjdbauthor.manuscriptcloud.com/login, submissionEditorUrl=https://kjdbeditor.manuscriptcloud.com/login, submissionReviewUrl=https://kjdbauthor.manuscriptcloud.com/login, submissionCeEditorUrl=https://kjdbeditor.manuscriptcloud.com/login, submissionAeEditorUrl=https://kjdbeditor.manuscriptcloud.com/login, option={"copyright":""})], databaseList=null, tenantJournalId=1146031591421210625, websiteList=[Website(id=1146104741081231361, webName=null, webTitle=null, webDomain=null, webCopyrigh=null, webIpcNo=null, seoTitle=null, seoKeywords=null, seoDescription=null, tenantJournalId=null, journalId=1146031591421210625, journalNameCn=null, journalNameEn=null, grayFlag=null, tenantId=1146029695717560320, platformId=null, journalGroupId=null, journalGroupNameCn=null, journalGroupNameEn=null, type=1, domain=https://castjournals.cast.org.cn/joweb/kjdb/CN, language=CN, createTime=1751182263881, createBy=18614031015, updateTime=1751778001962, updateBy=18614031015, name=科技导报, tplId=1146099689490845704, title=科技导报, delFlag=0, indexPage=/home, props=[WebsiteProps(id=1148021146403992296, tenantId=1146029695717560320, journalId=null, journalGroupId=null, siteId=1146104741081231361, code=articleTextType, value=kx, createTime=1751639170504, updateTime=1751639170504, creator=18614031015, updator=18614031015), WebsiteProps(id=1148021146378826469, tenantId=1146029695717560320, journalId=null, journalGroupId=null, siteId=1146104741081231361, code=banner, value=null, createTime=1751639170498, updateTime=1751639170498, creator=18614031015, updator=18614031015), WebsiteProps(id=1148021146366243556, tenantId=1146029695717560320, journalId=null, journalGroupId=null, siteId=1146104741081231361, code=logo, value=https://castjournals.cast.org.cn/joweb/kjdb/CN/file/pic?fileId=9GHSf7eGlIPH0Tv/OOdstA==, createTime=1751639170495, updateTime=1751639170495, creator=18614031015, updator=18614031015), WebsiteProps(id=1148021146395603687, tenantId=1146029695717560320, journalId=null, journalGroupId=null, siteId=1146104741081231361, code=picServerUrl, value=https://castjournals.cast.org.cn/joweb/kjdb/CN/file/pic, createTime=1751639170502, updateTime=1751639170502, creator=18614031015, updator=18614031015), WebsiteProps(id=1148021146387215078, tenantId=1146029695717560320, journalId=null, journalGroupId=null, siteId=1146104741081231361, code=staticResourcePath, value=https://castjournals.cast.org.cn/joweb/cast_kjdb_cn_619/, createTime=1751639170500, updateTime=1751639170500, creator=18614031015, updator=18614031015)]), Website(id=1146105254833139715, webName=null, webTitle=null, webDomain=null, webCopyrigh=null, webIpcNo=null, seoTitle=null, seoKeywords=null, seoDescription=null, tenantJournalId=null, journalId=1146031591421210625, journalNameCn=null, journalNameEn=null, grayFlag=null, tenantId=1146029695717560320, platformId=null, journalGroupId=null, journalGroupNameCn=null, journalGroupNameEn=null, type=1, domain=https://castjournals.cast.org.cn/joweb/kjdb/EN, language=EN, createTime=1751182386363, createBy=18614031015, updateTime=1753500121937, updateBy=18614031015, name=科技导报, tplId=1146101810881728533, title=Science & Technology Review, delFlag=0, indexPage=/home, props=[WebsiteProps(id=1155838567709528217, tenantId=1146029695717560320, journalId=null, journalGroupId=null, siteId=1146105254833139715, code=articleTextType, value=kx, createTime=1753502988984, updateTime=1753502988984, creator=18614031015, updator=18614031015), WebsiteProps(id=1155838567692750998, tenantId=1146029695717560320, journalId=null, journalGroupId=null, siteId=1146105254833139715, code=banner, value=null, createTime=1753502988980, updateTime=1753502988980, creator=18614031015, updator=18614031015), WebsiteProps(id=1155838567688556693, tenantId=1146029695717560320, journalId=null, journalGroupId=null, siteId=1146105254833139715, code=logo, value=https://castjournals.cast.org.cn/joweb/kjdb/EN/file/pic?fileId=9GHSf7eGlIPH0Tv/OOdstA==, createTime=1753502988979, updateTime=1753502988979, creator=18614031015, updator=18614031015), WebsiteProps(id=1155838567705333912, tenantId=1146029695717560320, journalId=null, journalGroupId=null, siteId=1146105254833139715, code=picServerUrl, value=https://castjournals.cast.org.cn/joweb/kjdb/EN/file/pic, createTime=1753502988983, updateTime=1753502988983, creator=18614031015, updator=18614031015), WebsiteProps(id=1155838567701139607, tenantId=1146029695717560320, journalId=null, journalGroupId=null, siteId=1146105254833139715, code=staticResourcePath, value=https://castjournals.cast.org.cn/joweb/cast_kjdb_en_623/, createTime=1753502988982, updateTime=1753502988982, creator=18614031015, updator=18614031015)])], journalTitle=科技导报, weixinUrl=null, journalUrl=null, iacademicId=null, status=0, seqNo=null, journalTitleEn=Science & Technology Review, journalPhotoCn=aEuqdCNQUjPEKa3rm5A/8Q==, journalPhotoEn=4AIQ9/oc3H8lvjeELJ6WWw==, journalFirstLetter=S, journalRecommend=null, journalNew=null, journalCollection=1, jcrJf=null, cjcrJf=0.91, jcrJfStr=null, cjcrJfStr=null, submissionFirstDecision=null, sciSubjectClassification=null, casSubjectClassification=null, citeScore=null, totalCitationFrequency=null, icpCode=null, psCode=null, advertisingLicenseCode=null, copyrightInformation=null, country=null, option=null, provinceCode=null, provinceName=null, collectFlag=false), detailUrlCn=https://castjournals.cast.org.cn/joweb/kjdb/CN/10.3981/j.issn.1000-7857.2011.33.008, detailUrlEn=https://castjournals.cast.org.cn/joweb/kjdb/EN/10.3981/j.issn.1000-7857.2011.33.008, pdfUrlCn=https://castjournals.cast.org.cn/joweb/kjdb/CN/PDF/10.3981/j.issn.1000-7857.2011.33.008, pdfUrlEn=https://castjournals.cast.org.cn/joweb/kjdb/EN/PDF/10.3981/j.issn.1000-7857.2011.33.008, aliStartDate=null, aliEndDate=null, collectionFlag=false, citedCount=null, citedUrl=null, reference=null)
收藏切换
改进的PSO-LSSVM火山岩气藏压裂水平井产能预测模型
收藏切换
PDF下载
科技导报 | 研究论文 2011,29(33): 52-57
收起
收藏切换
科技导报 | 研究论文 2011, 29(33): 52-57
改进的PSO-LSSVM火山岩气藏压裂水平井产能预测模型
全屏
王培玺1, 张静2
作者信息
    1. 中国石油大学(华东)石油工程学院,山东青岛 266555;2. 中国石化集团国际石油勘探开发有限公司,北京 100083
Improved PSO-LSSVM Productivity Prediction Model for the Fractured Horizontal Well in Volcanic Gas Reservoir
Affiliations
出版时间: 2011-11-28 doi: 10.3981/j.issn.1000-7857.2011.33.008
文章导航
收藏切换
在火山岩气藏压裂水平井产能预测模型中,影响因素多、实际样本少、各项参数获取不完整,因而利用常规方法预测的误差较大。为了充分地利用现有数据资料,从而快速有效地确定火山岩气藏压裂水平井产能,本文采用灰色关联方法确定了影响火山岩气藏压裂水平井产能的因素,利用粒子群算法对最小二乘支持向量机参数进行了优化,同时考虑到不同参数的敏感性,引入因素权重,形成了改进的PSO-LSSVM火山岩气藏压裂水平井产能预测模型。模型既充分利用了最小二乘支持向量机的小样本学习能力强和计算简单的特点,又发挥了粒子群算法计算速度快和具有较强的全局搜索能力的优点,还兼顾了各因素之间相互作用的影响。使用改进的PSO-LSSVM模型与传统的PSO-LSSVM模型和BP-LM模型进行计算对比的结果表明,改进的PSO-LSSVM模型所需的计算迭代次数更少,计算精度更高,进行模型预测的结果也更精确。
灰色关联分析  /  粒子群优化  /  最小二乘支持向量机  /  压裂水平井  /  产能预测
The existing productivity prediction model of fractured horizontal well in volcanic gas reservoir has more influence factors, less real samples, and incomplete parameters, therefore, it is difficult to accurately predict the productivity by using conventional methods. In order to quickly and effectively make certain of the productivity of fractured horizontal well in volcanic gas reservoir with existing data, the influence factors are determined by using Grey Relational Analysis(GRA), and the sensitivity of factor weights is considered to amend the algorithm. The improved PSO-LSSVM productivity model is established based on the parameters of Least Squares Support Vector Machines (LSSVM) which are optimized by Particle Swarm Optimization (PSO) algorithm. This model not only makes full use of the characteristics of the LSSVM small samples, which possess the strong learning ability and simple calculation, but also takes the advantages of fast calculation and better global searching ability of PSO. Comparing the PSO-LSSVM model with the BP-LM model, the improved PSO-LSSVM model has less iteration times, higher calculation precision, and more accurate predict results.
GRA  /  PSO  /  LSSVM  /  fractured horizontal well  /  productivity prediction
王培玺;张静. 改进的PSO-LSSVM火山岩气藏压裂水平井产能预测模型. 科技导报, 2011 , 29 (33) : 52 -57 . DOI: 10.3981/j.issn.1000-7857.2011.33.008
WANG Peixi;ZHANG Jing. Improved PSO-LSSVM Productivity Prediction Model for the Fractured Horizontal Well in Volcanic Gas Reservoir[J]. Science & Technology Review, 2011 , 29 (33) : 52 -57 . DOI: 10.3981/j.issn.1000-7857.2011.33.008
2011年第29卷第33期
PDF下载
175
4
引用本文
BibTeX
文章信息
doi: 10.3981/j.issn.1000-7857.2011.33.008
  • 接收时间:2011-10-28
  • 首发时间:2011-11-28
  • 出版时间:2011-11-28
补充材料
相关文章
文章信息
作者
出版历史
  • 收稿日期:2011-10-28
  • 修回日期:2011-11-20
基金
作者信息
参考文献
分享链接
https://castjournals.cast.org.cn/joweb/kjdb/CN/10.3981/j.issn.1000-7857.2011.33.008
分享至
全文二维码

扫描看全文

引用本文
BibTeX
本文的引用情况
2种不同金属材料的力学参数

Family
属数
Number of
genus
种数
Number of
species
占总种数比例
Percentage of
total species (%)

Genus
种数
Number of
species
占总种数比例
Percentage of total
species (%)
鹅膏菌科Amanitaceae 2 11 5.26 鹅膏菌属 Amanita 10 4.78
小菇科 Mycenaceae 2 12 5.74 丝盖伞属 Inocybe 5 2.39
多孔菌科 Polyporaceae 8 14 6.70 蜡蘑属 Laccaria 5 2.39
红菇科 Russulaceae 3 23 11.00 小皮伞属 Marasmius 6 2.87
小菇属 Mycena 11 5.26
光柄菇属 Pluteus 5 2.39
红菇属 Russula 17 8.13
栓菌属 Trametes 5 2.39
关闭全屏