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作 者:田冬梅 杨胜雄 刘鑫[2] 李沅衡 胡广 曹荆亚 周军明 邓雨恬 TIAN Dongmei;YANG Shengxiong;LIU Xin;LI Yuanheng;HU Guang;CAO Jingya;ZHOU Junming;DENG Yutian(Southern Marine Science and Engineering Guangdong Laboratory(Guangzhou),Guangzhou 511458,China;Guangzhou Marine Geological Survey,Guangzhou 511458,China)
机构地区:[1]南方海洋科学与工程广东省实验室(广州),广州511458 [2]广州海洋地质调查局,广州511458
出 处:《海洋地质与第四纪地质》2024年第6期25-33,共9页Marine Geology & Quaternary Geology
基 金:国家自然科学基金国家重大科研仪器研制项目“海底地震与电磁同步探测系统关键技术及验证样机”(42327901);国家自然科学基金项目“南海北部高富集天然气水合物储层特征与成藏控制机理研究”(U2244224);广州市基础与应用基础研究项目“基于地震属性海域天然气水合物识别方法研究”(2023A04J0916)。
摘 要:天然气水合物是一种重要的能源资源,具有能量高、储量大、分布广和埋藏浅等优势。准确地从地层中识别出天然气水合物储层是应用天然气水合物资源的必要前提。本文围绕水合物勘探识别的难点问题,结合海洋-地质-人工智能学科交叉技术,以具有显示度的地球物理属性参数为基础,研究并提出了有效的含水合物地层识别技术方法,在中国南海东沙海域研究区进行了方法的验证,选择了几种较为常用的机器学习算法,例如随机森林、Bagging、AdaBoost、和最近邻(KNN)算法,对水合物变化灵敏度较高的纵波速度和密度属性进行数据分析,通过训练优化不同算法模型参数,对比不同算法模型的识别分类效果。结果表明,这几种算法都能够较好地对地层中是否含有水合物进行区分,其中KNN性能最好,表明基于机器学习手段能够提高天然气水合物的识别精度和准确性。Gas hydrate is an important ideal energy source,with advantages of high energy,large reserves,wide distribution,and shallow burial.Accurate identification of gas hydrate reservoirs and estimation of hydrate saturation are the prerequisite for the application of gas hydrate resources.This study focuses on the difficult issues of hydrate identification,combining the interdisciplinary technologies of oceanology,geology,and artificial intelligence.Effective methods of hydrate-bearing strata identification were proposed based on the geophysical attributes,and verified in the Dongsha area of South China Sea.Machine-learning algorithms were used to analyze whether the sediment contains gas hydrates.Several commonly used machine-learning algorithms were selected,including random forest,Bagging,AdaBoost,and KNN;and data were analyzed based on the P-wave velocity and density attributes that are more sensitive to hydrate existence.The parameters of different algorithms were trained and optimized,and the effects of different algorithms on the identification and classification were compared.All these algorithms could do good on whether there is hydrate in the sediment,of which KNN algorithm was shown the best.Therefore,machinelearning-based methods could improve the identification accuracy of gas hydrate.
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