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Random forest algorithm reveals novel sites in HA protein that shift receptor binding preference of the H9N2 avian influenza virus
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作者 Yuncong Yin Wen Li +7 位作者 Rujian Chen Xiao Wang Yiting Chen Xinyuan Cui Xingbang Lu David M.Irwin Xuejuan Shen Yongyi Shen 《Virologica Sinica》 2025年第1期109-117,共9页
A switch from avian-typeα-2,3 to human-typeα-2,6 receptors is an essential element for the initiation of a pandemic from an avian influenza virus.Some H9N2 viruses exhibit a preference for binding to human-typeα-2,... A switch from avian-typeα-2,3 to human-typeα-2,6 receptors is an essential element for the initiation of a pandemic from an avian influenza virus.Some H9N2 viruses exhibit a preference for binding to human-typeα-2,6 receptors.This identifies their potential threat to public health.However,our understanding of the molecular basis for the switch of receptor preference is still limited.In this study,we employed the random forest algorithm to identify the potentially key amino acid sites within hemagglutinin(HA),which are associated with the receptor binding ability of H9N2 avian influenza virus(AIV).Subsequently,these sites were further verified by receptor binding assays.A total of 12 substitutions in the HA protein(N158D,N158S,A160 N,A160D,A160T,T163I,T163V,V190T,V190A,D193 N,D193G,and N231D)were predicted to prefer binding toα-2,6 receptors.Except for the V190T substitution,the other substitutions were demonstrated to display an affinity for preferential binding toα-2,6 receptors by receptor binding assays.Especially,the A160T substitution caused a significant upregulation of immune-response genes and an increased mortality rate in mice.Our findings provide novel insights into understanding the genetic basis of receptor preference of the H9N2 AIV. 展开更多
关键词 H9N2 Hemagglutinin(HA) Receptor binding preference random forest algorithm Host shift Interspecies transmission
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基于TSNE-NGO-RF算法的混凝土坝变形预测模型
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作者 郑东健 赵宇 +2 位作者 冉成 林英浩 陈林泽 《郑州大学学报(工学版)》 北大核心 2026年第2期122-127,135,共7页
对混凝土坝变形监测资料进行合理的数据分析和准确的预测是确保大坝安全长效运行的关键手段,针对影响大坝变形的环境量具有周期性和非线性的特点,以及传统随机森林模型参数寻优方法适用性差和计算效率低等问题,提出了一种新型的大坝变... 对混凝土坝变形监测资料进行合理的数据分析和准确的预测是确保大坝安全长效运行的关键手段,针对影响大坝变形的环境量具有周期性和非线性的特点,以及传统随机森林模型参数寻优方法适用性差和计算效率低等问题,提出了一种新型的大坝变形预测模型。该模型采用t-分布式随机邻域嵌入对特征值进行降维,提高模型的分类性能,并运用北方苍鹰优化算法对传统随机森林模型进行了改进,提高了随机森林模型参数的择优选取效率。运用北方苍鹰优化算法在第80次迭代时即可确定随机森林模型的参数,且适应度函数为0.2493,相较麻雀搜索算法和粒子群优化算法取得了较好的结果。选取某混凝土坝第18^(#)坝段和第26^(#)坝段进行实例分析,结果表明:所提融合模型预测结果的平均绝对误差分别为0.50193和0.17302 mm,均方误差分别为0.35971和0.04387 mm^(2),平均绝对百分比误差分别为0.81959%,0.11362%,决定系数分别为0.91456和0.89274,相较于其他模型,该模型在预测准确性和模型稳定性方面表现最优,为混凝土坝变形的精准预测开辟了新的可能性。 展开更多
关键词 混凝土坝 变形预测 降维 北方苍鹰优化算法 随机森林算法
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基于模态分析和PCA-WOA-RF的磨煤机下架体壳振预测
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作者 赵小惠 刘磊 +3 位作者 蒲军平 成小乐 高畅 胡胜 《山东大学学报(工学版)》 北大核心 2026年第1期149-157,168,共10页
为探究磨煤机下架体壳振与其他运行参数之间的复杂非线性映射关系,并提高磨煤机下架体壳振预测的准确性,提出一种基于PCA-WOA-RF模型的磨煤机下架体壳振预测方法。对磨煤机下架体进行模态分析,验证下架体壳振标准值,使用Spearman相关系... 为探究磨煤机下架体壳振与其他运行参数之间的复杂非线性映射关系,并提高磨煤机下架体壳振预测的准确性,提出一种基于PCA-WOA-RF模型的磨煤机下架体壳振预测方法。对磨煤机下架体进行模态分析,验证下架体壳振标准值,使用Spearman相关系数法和主成分分析法(principal component analysis,PCA)对磨煤机工作数据进行相关性分析并提取主成分;以随机森林(random forest,RF)为预测模型结构基础,使用鲸鱼优化算法(whale optimization algorithm,WOA)对模型的超参数进行优化;以国能长源武汉青山热电有限公司磨煤机工作数据进行实例验证,并与PCA-BP、PCA-SVM和PCA-RF模型进行精度对比。结果表明:一次风流量、拉杆应变、磨煤机电机轴振动、中架体壳振、煤量和一次风出入口差压与磨煤机下架体壳振有显著相关性,经过主成分分析法提取的2个主成分方差贡献率达94.569%,所提出的PCA-WOA-RF模型平均预测误差最小,预测精度达到97.80%。该模型进一步提升了磨煤机下架体壳振预测精度。 展开更多
关键词 磨煤机 下架体壳振 主成分分析 随机森林 鲸鱼优化算法
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基于AHC-PSO-RF代理模型的大型集装箱船参数横摇运动快速预报
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作者 孙强 谭杰 周耀华 《中国舰船研究》 北大核心 2026年第1期104-113,共10页
[目的]针对传统基于水动力学的数值模拟方法计算船舶参数横摇存在计算成本高、操作要求高且无法覆盖所有装载工况等问题,提出一种融合特征物理化重构、凝聚层次聚类(AHC)与改进随机森林(RF)的集成机器学习替代模型,用于高效预测船舶参... [目的]针对传统基于水动力学的数值模拟方法计算船舶参数横摇存在计算成本高、操作要求高且无法覆盖所有装载工况等问题,提出一种融合特征物理化重构、凝聚层次聚类(AHC)与改进随机森林(RF)的集成机器学习替代模型,用于高效预测船舶参数横摇幅值。[方法]利用AHC压缩特征维度,降低模型复杂度和计算开销;采用粒子群算法(PSO)对RF超参数进行全局寻优。[结果]基于某大型集装箱船多工况水动力数值模拟结果数据的验证结果表明:与广义回归神经网络(GRNN)及未优化RF模型相比,在迎浪和艉随浪工况下,该模型(AHC–PSO–RF)在横摇有义值预测中的决定系数(R2)平均提升5.84%与0.27%,均方根误差(RMSE)平均降低59.28%与10.69%,预测精度较高。此外,模型在单个装载工况的平均计算耗时相比于水动力数值模拟方法减少84.5%。[结论]该模型在批量预测任务中具备显著效率优势,证明了其作为高效替代方案的工程实用价值。 展开更多
关键词 船舶稳性 参数横摇 代理模型 凝聚层次聚类−粒子群优化−随机森林模型 集装箱船 动稳性预报
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A rapid classification method of aluminum alloy based on laser-induced breakdown spectroscopy and random forest algorithm 被引量:8
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作者 Liuyang ZHAN Xiaohong MA +4 位作者 Weiqi FANG Rui WANG Zesheng LIU Yang SONG Huafeng ZHAO 《Plasma Science and Technology》 SCIE EI CAS CSCD 2019年第3期148-154,共7页
As an important non-ferrous metal structural material most used in industry and production,aluminum(Al) alloy shows its great value in the national economy and industrial manufacturing.How to classify Al alloy rapidly... As an important non-ferrous metal structural material most used in industry and production,aluminum(Al) alloy shows its great value in the national economy and industrial manufacturing.How to classify Al alloy rapidly and accurately is a significant, popular and meaningful task.Classification methods based on laser-induced breakdown spectroscopy(LIBS) have been reported in recent years. Although LIBS is an advanced detection technology, it is necessary to combine it with some algorithm to reach the goal of rapid and accurate classification. As an important machine learning method, the random forest(RF) algorithm plays a great role in pattern recognition and material classification. This paper introduces a rapid classification method of Al alloy based on LIBS and the RF algorithm. The results show that the best accuracy that can be reached using this method to classify Al alloy samples is 98.59%, the average of which is 98.45%. It also reveals through the relationship laws that the accuracy varies with the number of trees in the RF and the size of the training sample set in the RF. According to the laws, researchers can find out the optimized parameters in the RF algorithm in order to achieve,as expected, a good result. These results prove that LIBS with the RF algorithm can exactly classify Al alloy effectively, precisely and rapidly with high accuracy, which obviously has significant practical value. 展开更多
关键词 LASER-INDUCED BREAKDOWN spectroscopy(LIBS) random forest(rf) aluminum(Al)alloy classification
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Prostate cancer prediction forest algorithm that takes using the random into account transrectal ultrasound findings, age, and serum levels of prostate-specific antigen 被引量:5
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作者 Li-Hong Xiao Pei-Ran Chen +4 位作者 Zhong-Ping Gou Yong-Zhong Li Mei Li Liang-Cheng Xiang Ping Feng 《Asian Journal of Andrology》 SCIE CAS CSCD 2017年第5期586-590,共5页
The aim of this study is to evaluate the ability of the random forest algorithm that combines data on transrectal ultrasound findings, age, and serum levels of prostate-specific antigen to predict prostate carcinoma. ... The aim of this study is to evaluate the ability of the random forest algorithm that combines data on transrectal ultrasound findings, age, and serum levels of prostate-specific antigen to predict prostate carcinoma. Clinico-demographic data were analyzed for 941 patients with prostate diseases treated at our hospital, including age, serum prostate-specific antigen levels, transrectal ultrasound findings, and pathology diagnosis based on ultrasound-guided needle biopsy of the prostate. These data were compared between patients with and without prostate cancer using the Chi-square test, and then entered into the random forest model to predict diagnosis. Patients with and without prostate cancer differed significantly in age and serum prostate-specific antigen levels (P 〈 0.001), as well as in all transrectal ultrasound characteristics (P 〈 0.05) except uneven echo (P = 0.609). The random forest model based on age, prostate-specific antigen and ultrasound predicted prostate cancer with an accuracy of 83.10%, sensitivity of 65.64%, and specificity of 93.83%. Positive predictive value was 86.72%, and negative predictive value was 81.64%. By integrating age, prostate-specific antigen levels and transrectal ultrasound findings, the random forest algorithm shows better diagnostic performance for prostate cancer than either diagnostic indicator on its own. This algorithm may help improve diagnosis of the disease by identifying patients at high risk for biopsy. 展开更多
关键词 diagnosis prostate cancer prostate-specific antigen random forest algorithm transrectal ultrasound characteristics
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A real-time intelligent lithology identification method based on a dynamic felling strategy weighted random forest algorithm 被引量:7
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作者 Tie Yan Rui Xu +2 位作者 Shi-Hui Sun Zhao-Kai Hou Jin-Yu Feng 《Petroleum Science》 SCIE EI CAS CSCD 2024年第2期1135-1148,共14页
Real-time intelligent lithology identification while drilling is vital to realizing downhole closed-loop drilling. The complex and changeable geological environment in the drilling makes lithology identification face ... Real-time intelligent lithology identification while drilling is vital to realizing downhole closed-loop drilling. The complex and changeable geological environment in the drilling makes lithology identification face many challenges. This paper studies the problems of difficult feature information extraction,low precision of thin-layer identification and limited applicability of the model in intelligent lithologic identification. The author tries to improve the comprehensive performance of the lithology identification model from three aspects: data feature extraction, class balance, and model design. A new real-time intelligent lithology identification model of dynamic felling strategy weighted random forest algorithm(DFW-RF) is proposed. According to the feature selection results, gamma ray and 2 MHz phase resistivity are the logging while drilling(LWD) parameters that significantly influence lithology identification. The comprehensive performance of the DFW-RF lithology identification model has been verified in the application of 3 wells in different areas. By comparing the prediction results of five typical lithology identification algorithms, the DFW-RF model has a higher lithology identification accuracy rate and F1 score. This model improves the identification accuracy of thin-layer lithology and is effective and feasible in different geological environments. The DFW-RF model plays a truly efficient role in the realtime intelligent identification of lithologic information in closed-loop drilling and has greater applicability, which is worthy of being widely used in logging interpretation. 展开更多
关键词 Intelligent drilling Closed-loop drilling Lithology identification random forest algorithm Feature extraction
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Basic Tenets of Classification Algorithms K-Nearest-Neighbor, Support Vector Machine, Random Forest and Neural Network: A Review 被引量:15
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作者 Ernest Yeboah Boateng Joseph Otoo Daniel A. Abaye 《Journal of Data Analysis and Information Processing》 2020年第4期341-357,共17页
In this paper, sixty-eight research articles published between 2000 and 2017 as well as textbooks which employed four classification algorithms: K-Nearest-Neighbor (KNN), Support Vector Machines (SVM), Random Forest (... In this paper, sixty-eight research articles published between 2000 and 2017 as well as textbooks which employed four classification algorithms: K-Nearest-Neighbor (KNN), Support Vector Machines (SVM), Random Forest (RF) and Neural Network (NN) as the main statistical tools were reviewed. The aim was to examine and compare these nonparametric classification methods on the following attributes: robustness to training data, sensitivity to changes, data fitting, stability, ability to handle large data sizes, sensitivity to noise, time invested in parameter tuning, and accuracy. The performances, strengths and shortcomings of each of the algorithms were examined, and finally, a conclusion was arrived at on which one has higher performance. It was evident from the literature reviewed that RF is too sensitive to small changes in the training dataset and is occasionally unstable and tends to overfit in the model. KNN is easy to implement and understand but has a major drawback of becoming significantly slow as the size of the data in use grows, while the ideal value of K for the KNN classifier is difficult to set. SVM and RF are insensitive to noise or overtraining, which shows their ability in dealing with unbalanced data. Larger input datasets will lengthen classification times for NN and KNN more than for SVM and RF. Among these nonparametric classification methods, NN has the potential to become a more widely used classification algorithm, but because of their time-consuming parameter tuning procedure, high level of complexity in computational processing, the numerous types of NN architectures to choose from and the high number of algorithms used for training, most researchers recommend SVM and RF as easier and wieldy used methods which repeatedly achieve results with high accuracies and are often faster to implement. 展开更多
关键词 Classification algorithms NON-PARAMETRIC K-Nearest-Neighbor Neural Networks random forest Support Vector Machines
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Prediction of Permeability Using Random Forest and Genetic Algorithm Model 被引量:7
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作者 JunhuiWang Wanzi Yan +3 位作者 Zhijun Wan Yi Wang Jiakun Lv Aiping Zhou 《Computer Modeling in Engineering & Sciences》 SCIE EI 2020年第12期1135-1157,共23页
Precise recovery of CoalbedMethane(CBM)based on transparent reconstruction of geological conditions is a branch of intelligent mining.The process of permeability reconstruction,ranging from data perception to real-tim... Precise recovery of CoalbedMethane(CBM)based on transparent reconstruction of geological conditions is a branch of intelligent mining.The process of permeability reconstruction,ranging from data perception to real-time data visualization,is applicable to disaster risk warning and intelligent decision-making on gas drainage.In this study,a machine learning method integrating the Random Forest(RF)and the Genetic Algorithm(GA)was established for permeability prediction in the Xishan Coalfield based on Uniaxial Compressive Strength(UCS),effective stress,temperature and gas pressure.A total of 50 sets of data collected by a self-developed apparatus were used to generate datasets for training and validating models.Statistical measures including the coefficient of determination(R2)and Root Mean Square Error(RMSE)were selected to validate and compare the predictive performances of the single RF model and the hybrid RF–GA model.Furthermore,sensitivity studies were conducted to evaluate the importance of input parameters.The results show that,the proposed RF–GA model is robust in predicting the permeability;UCS is directly correlated to permeability,while all other inputs are inversely related to permeability;the effective stress exerts the greatest impact on permeability based on importance score,followed by the temperature(or gas pressure)and UCS.The partial dependence plots,indicative of marginal utility of each feature in permeability prediction,are in line with experimental results.Thus,the proposed hybrid model(RF–GA)is capable of predicting permeability and thus beneficial to precise CBMrecovery. 展开更多
关键词 PERMEABILITY machine learning random forest genetic algorithm coalbed methane recovery
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Anomaly Classification Using Genetic Algorithm-Based Random Forest Modelfor Network Attack Detection 被引量:7
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作者 Adel Assiri 《Computers, Materials & Continua》 SCIE EI 2021年第1期767-778,共12页
Anomaly classification based on network traffic features is an important task to monitor and detect network intrusion attacks.Network-based intrusion detection systems(NIDSs)using machine learning(ML)methods are effec... Anomaly classification based on network traffic features is an important task to monitor and detect network intrusion attacks.Network-based intrusion detection systems(NIDSs)using machine learning(ML)methods are effective tools for protecting network infrastructures and services from unpredictable and unseen attacks.Among several ML methods,random forest(RF)is a robust method that can be used in ML-based network intrusion detection solutions.However,the minimum number of instances for each split and the number of trees in the forest are two key parameters of RF that can affect classification accuracy.Therefore,optimal parameter selection is a real problem in RF-based anomaly classification of intrusion detection systems.In this paper,we propose to use the genetic algorithm(GA)for selecting the appropriate values of these two parameters,optimizing the RF classifier and improving the classification accuracy of normal and abnormal network traffics.To validate the proposed GA-based RF model,a number of experiments is conducted on two public datasets and evaluated using a set of performance evaluation measures.In these experiments,the accuracy result is compared with the accuracies of baseline ML classifiers in the recent works.Experimental results reveal that the proposed model can avert the uncertainty in selection the values of RF’s parameters,improving the accuracy of anomaly classification in NIDSs without incurring excessive time. 展开更多
关键词 Network-based intrusion detection system(NIDS) random forest classifier genetic algorithm KDD99 UNSW-NB15
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Object-based classification of hyperspectral data using Random Forest algorithm 被引量:3
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作者 Saeid Amini Saeid Homayouni +1 位作者 Abdolreza Safari Ali A.Darvishsefat 《Geo-Spatial Information Science》 SCIE CSCD 2018年第2期127-138,共12页
This paper presents a new framework for object-based classification of high-resolution hyperspectral data.This multi-step framework is based on multi-resolution segmentation(MRS)and Random Forest classifier(RFC)algori... This paper presents a new framework for object-based classification of high-resolution hyperspectral data.This multi-step framework is based on multi-resolution segmentation(MRS)and Random Forest classifier(RFC)algorithms.The first step is to determine of weights of the input features while using the object-based approach with MRS to processing such images.Given the high number of input features,an automatic method is needed for estimation of this parameter.Moreover,we used the Variable Importance(VI),one of the outputs of the RFC,to determine the importance of each image band.Then,based on this parameter and other required parameters,the image is segmented into some homogenous regions.Finally,the RFC is carried out based on the characteristics of segments for converting them into meaningful objects.The proposed method,as well as,the conventional pixel-based RFC and Support Vector Machine(SVM)method was applied to three different hyperspectral data-sets with various spectral and spatial characteristics.These data were acquired by the HyMap,the Airborne Prism Experiment(APEX),and the Compact Airborne Spectrographic Imager(CASI)hyperspectral sensors.The experimental results show that the proposed method is more consistent for land cover mapping in various areas.The overall classification accuracy(OA),obtained by the proposed method was 95.48,86.57,and 84.29%for the HyMap,the APEX,and the CASI datasets,respectively.Moreover,this method showed better efficiency in comparison to the spectralbased classifications because the OAs of the proposed method was 5.67 and 3.75%higher than the conventional RFC and SVM classifiers,respectively. 展开更多
关键词 Object-based classification random forest algorithm multi-resolution segmentation(MRS) hyperspectral imagery
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Underground location algorithm based on random forest and environmental factor compensation 被引量:2
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作者 Xin Qiao Fei Chang 《International Journal of Coal Science & Technology》 EI CAS CSCD 2021年第5期1108-1117,共10页
Aiming at the poor location accuracy caused by the harsh and complex underground environment,long strip roadway,limited wireless transmission and sparse anchor nodes,an underground location algorithm based on random f... Aiming at the poor location accuracy caused by the harsh and complex underground environment,long strip roadway,limited wireless transmission and sparse anchor nodes,an underground location algorithm based on random forest and compensation for environmental factors was proposed.Firstly,the underground wireless access point(AP)network model and tunnel environment were analyzed,and the fingerprint location algorithm was built.And then the Received Signal Strength(RSS)was analyzed by Kalman Filter algorithm in the offline sampling and real-time positioning stage.Meanwhile,the target speed constraint condition was introduced to reduce the error caused by environmental factors.The experimental results show that the proposed algorithm solves the problem of insufficient location accuracy and large fluctuation affected by environment when the anchor nodes are sparse.At the same time,the average location accuracy reaches three meters,which can satisfy the application of underground rescue,activity track playback,disaster monitoring and positioning.It has high application value in complex underground environment. 展开更多
关键词 Underground Coal Mine random forest Kalman Filter Compensation algorithm
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基于随机森林算法(RF)的深层煤岩气CO_(2)与N_(2)伴注压裂协同增效机制
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作者 方燕俊 罗懿 王帆 《非常规油气》 2026年第1期63-72,共10页
针对深层煤岩气藏吸附气解吸困难、压后产能低和递减快等问题,在CO_(2)与N_(2)对煤层作用机制的基础上,以鄂尔多斯盆地大牛地深层煤岩气为研究对象,通过开展甲烷解吸性能测试、岩心伤害测试以及返排液滞留测试等室内实验,进行地层条件... 针对深层煤岩气藏吸附气解吸困难、压后产能低和递减快等问题,在CO_(2)与N_(2)对煤层作用机制的基础上,以鄂尔多斯盆地大牛地深层煤岩气为研究对象,通过开展甲烷解吸性能测试、岩心伤害测试以及返排液滞留测试等室内实验,进行地层条件下不同注气压力、气液体积比和气体配比等伴注参数混合气伴注对煤岩润湿性能、微观结构、表面电荷性质以及对甲烷解吸性能的影响因素分析,同时结合随机森林算法(RF),明确了滑溜水压裂液对深层煤岩气解吸性能影响的主控因素和预测主控因素边界条件。研究表明,气体与液体共存条件下,压裂液对煤岩的伤害占主导地位,注气可以减缓压裂液对煤岩的伤害;Zeta电位、质量差、接触角和注气压力是煤岩气解吸影响的主控因素,当气液配比为1∶4、V(N_(2))∶V(CO_(2))=1∶3~1∶4(温度80℃,压力5 MPa),浸泡后煤样与水的接触角控制在30°~40°、Zeta电位控制在-60~-70mV,最有利于提高甲烷的解吸量,同时考虑CO_(2)成本高于N_(2),V(N_(2))∶V(CO_(2))=1∶3效益最佳。 展开更多
关键词 深层煤岩气 混合气伴注 解吸 CO_(2) N_(2) 随机森林算法(rf)
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Prediction of maximum upward displacement of shield tunnel linings during construction using particle swarm optimization-random forest algorithm 被引量:2
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作者 Xiaowei YE Xiaolong ZHANG +2 位作者 Yanbo CHEN Yujun WEI Yang DING 《Journal of Zhejiang University-Science A(Applied Physics & Engineering)》 SCIE EI CAS CSCD 2024年第1期1-17,共17页
During construction,the shield linings of tunnels often face the problem of local or overall upward movement after leaving the shield tail in soft soil areas or during some large diameter shield projects.Differential ... During construction,the shield linings of tunnels often face the problem of local or overall upward movement after leaving the shield tail in soft soil areas or during some large diameter shield projects.Differential floating will increase the initial stress on the segments and bolts which is harmful to the service performance of the tunnel.In this study we used a random forest(RF)algorithm combined particle swarm optimization(PSO)and 5-fold cross-validation(5-fold CV)to predict the maximum upward displacement of tunnel linings induced by shield tunnel excavation.The mechanism and factors causing upward movement of the tunnel lining are comprehensively summarized.Twelve input variables were selected according to results from analysis of influencing factors.The prediction performance of two models,PSO-RF and RF(default)were compared.The Gini value was obtained to represent the relative importance of the influencing factors to the upward displacement of linings.The PSO-RF model successfully predicted the maximum upward displacement of the tunnel linings with a low error(mean absolute error(MAE)=4.04 mm,root mean square error(RMSE)=5.67 mm)and high correlation(R^(2)=0.915).The thrust and depth of the tunnel were the most important factors in the prediction model influencing the upward displacement of the tunnel linings. 展开更多
关键词 random forest(rf) Particle swarm optimization(PSO) Upward displacement of lining Machine learning prediction Shieldtunneling construction
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基于ISSA-RF算法的光伏阵列故障诊断研究
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作者 许桂敏 宋雨航 +2 位作者 相里梦桥 杨亚龙 段晨东 《太阳能学报》 北大核心 2026年第2期111-121,共11页
提出一种基于改进麻雀搜索(ISSA)优化随机森林(RF)的算法,用以提高光伏阵列故障诊断的准确率。首先,通过搭建光伏阵列模拟5种工况,提取故障向量,构造光伏阵列故障数据集。其次,通过测试函数对灰狼搜索算法(GWO)、粒子群算法(PSO)、ISSA... 提出一种基于改进麻雀搜索(ISSA)优化随机森林(RF)的算法,用以提高光伏阵列故障诊断的准确率。首先,通过搭建光伏阵列模拟5种工况,提取故障向量,构造光伏阵列故障数据集。其次,通过测试函数对灰狼搜索算法(GWO)、粒子群算法(PSO)、ISSA和麻雀搜索算法(SSA)进行寻优对比,发现ISSA在平均值和标准差方面均优于其他算法,显示出更好的鲁棒性。然后,利用光伏阵列故障仿真数据集对ISSA-RF诊断模型进行性能分析,得到ISSA-RF方法整体准确率达到97.06%,比传统RF模型提高6.94个百分点。最后,结合实验室光伏阵列开路、短路、遮荫、老化和正常5种工况数据集对ISSA-RF诊断模型进行验证,证明所提基于ISSA-RF的光伏阵列故障诊断方法具有较高的分类效率和精度,其性能表现优于其他诊断模型。 展开更多
关键词 光伏阵列 故障诊断 改进麻雀搜索算法 随机森林算法
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基于特征加权与ISIA-RF的油浸式变压器故障诊断
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作者 张富民 张菁 解大 《实验室研究与探索》 北大核心 2026年第1期71-78,84,共9页
针对电力变压器早期故障诊断准确性较低的问题,提出一种基于ISIA-RF的变压器故障诊断模型。该模型首先采用数据加权策略对DGA数据进行处理;进而融合自适应t分布和Levy飞行策略,提升IVYA算法的全局搜索能力与收敛性能;在此基础上,利用改... 针对电力变压器早期故障诊断准确性较低的问题,提出一种基于ISIA-RF的变压器故障诊断模型。该模型首先采用数据加权策略对DGA数据进行处理;进而融合自适应t分布和Levy飞行策略,提升IVYA算法的全局搜索能力与收敛性能;在此基础上,利用改进的ISIA算法对随机森林(RF)模型参数进行寻优。通过将所构建的变压器故障诊断模型ISIA-RF与经SSA、GWO、WOA及IVYA算法优化的RF模型实验对比,结果表明,ISIA-RF模型的变压器故障诊断平均准确率达到97.16%,均高于其他诊断模型。该模型有效提升了故障诊断的准确率与鲁棒性,具有较强的泛化能力,为变压器早期故障诊断提供了有效的解决方案。 展开更多
关键词 电力变压器 故障诊断 数据优化 随机森林 常青藤优化算法
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基于GA-RF的螺杆转子砂带磨削表面粗糙度预测
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作者 李越 杨赫然 +2 位作者 孙兴伟 董祉序 刘寅 《制造技术与机床》 北大核心 2026年第1期201-207,共7页
为了系统分析砂带磨削工艺参数对螺杆转子表面质量的影响规律,从而为实际生产中的参数选择提供参考依据。为提高预测精度,文章构建基于遗传算法优化的随机森林预测模型,并设计了五因素五水平正交试验,试验装置为自主研发的多头螺杆磨削... 为了系统分析砂带磨削工艺参数对螺杆转子表面质量的影响规律,从而为实际生产中的参数选择提供参考依据。为提高预测精度,文章构建基于遗传算法优化的随机森林预测模型,并设计了五因素五水平正交试验,试验装置为自主研发的多头螺杆磨削装置,具体参数为工件轴向进给速度为100~300 mm/min、砂带线速度为4.4~13.3 m/s、砂带张紧压力为0.20~0.30 MPa、磨削压力为0.40~0.50 MPa、砂带粒度为60~180μm。试验结果表明,遗传-随机森林(genetic algorithm-random forest, GA-RF)模型的平均预测误差为9.06%,明显低于Lasso模型(25.96%)和SVR模型(30.68%);单因素分析显示,表面粗糙度随轴向进给速度增加而变大,随着砂带线速度升高而降低;当进给速度从100增至300 mm/min时,Ra值上升约27%;而线速度从4.4 m/s提高到13.3 m/s时,Ra值下降约35%。研究验证了遗传-随机森林(GA-RF)模型在砂带磨削质量预测中的有效性,同时揭示了关键工艺参数的影响规律。研究可为螺杆转子加工参数选择提供理论指导,对实际生产具有重要的参考价值。 展开更多
关键词 砂带磨削 接触轮式磨削 粗糙度预测 遗传算法 随机森林
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Winter Wheat Yield Estimation Based on Sparrow Search Algorithm Combined with Random Forest:A Case Study in Henan Province,China 被引量:1
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作者 SHI Xiaoliang CHEN Jiajun +2 位作者 DING Hao YANG Yuanqi ZHANG Yan 《Chinese Geographical Science》 SCIE CSCD 2024年第2期342-356,共15页
Precise and timely prediction of crop yields is crucial for food security and the development of agricultural policies.However,crop yield is influenced by multiple factors within complex growth environments.Previous r... Precise and timely prediction of crop yields is crucial for food security and the development of agricultural policies.However,crop yield is influenced by multiple factors within complex growth environments.Previous research has paid relatively little attention to the interference of environmental factors and drought on the growth of winter wheat.Therefore,there is an urgent need for more effective methods to explore the inherent relationship between these factors and crop yield,making precise yield prediction increasingly important.This study was based on four type of indicators including meteorological,crop growth status,environmental,and drought index,from October 2003 to June 2019 in Henan Province as the basic data for predicting winter wheat yield.Using the sparrow search al-gorithm combined with random forest(SSA-RF)under different input indicators,accuracy of winter wheat yield estimation was calcu-lated.The estimation accuracy of SSA-RF was compared with partial least squares regression(PLSR),extreme gradient boosting(XG-Boost),and random forest(RF)models.Finally,the determined optimal yield estimation method was used to predict winter wheat yield in three typical years.Following are the findings:1)the SSA-RF demonstrates superior performance in estimating winter wheat yield compared to other algorithms.The best yield estimation method is achieved by four types indicators’composition with SSA-RF)(R^(2)=0.805,RRMSE=9.9%.2)Crops growth status and environmental indicators play significant roles in wheat yield estimation,accounting for 46%and 22%of the yield importance among all indicators,respectively.3)Selecting indicators from October to April of the follow-ing year yielded the highest accuracy in winter wheat yield estimation,with an R^(2)of 0.826 and an RMSE of 9.0%.Yield estimates can be completed two months before the winter wheat harvest in June.4)The predicted performance will be slightly affected by severe drought.Compared with severe drought year(2011)(R^(2)=0.680)and normal year(2017)(R^(2)=0.790),the SSA-RF model has higher prediction accuracy for wet year(2018)(R^(2)=0.820).This study could provide an innovative approach for remote sensing estimation of winter wheat yield.yield. 展开更多
关键词 winter wheat yield estimation sparrow search algorithm combined with random forest(SSA-rf) machine learning multi-source indicator optimal lead time Henan Province China
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基于RF-Transformer的测井曲线页岩岩相识别方法
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作者 苏俊磊 董旭 +4 位作者 唐嘉伟 曾渝 石雪莹 李佩璇 杨仁杰 《测井技术》 2026年第1期153-162,共10页
岩相识别是油气储层精细刻画的关键环节,其准确性直接影响储层评价结果的可靠性。现有识别方法在测井数据高频噪声抑制方面存在不足,且难以准确捕捉地层纵向长程依赖关系。因此,本文提出了一种融合随机森林(Random Forest,RF)与Transfor... 岩相识别是油气储层精细刻画的关键环节,其准确性直接影响储层评价结果的可靠性。现有识别方法在测井数据高频噪声抑制方面存在不足,且难以准确捕捉地层纵向长程依赖关系。因此,本文提出了一种融合随机森林(Random Forest,RF)与Transformer的深度学习模型(RF-Transformer),以提高非均质储层页岩岩相识别的准确性与效率,为储层精细刻画提供技术支撑。该模型首先利用随机森林模型评估测井曲线(如自然伽马、声波时差、电阻率等)特征权重,用以筛选关键参数进而压制高频噪声,构建高质量特征输入向量。随后用Transformer模块,借助其自注意力机制的全局上下文感知能力,并行计算测井曲线的关联权重,从而深度挖掘并重构地层纵向长程依赖关系。以川南页岩气田3800个实测样本(含6类典型岩相、8条常规测井曲线)为数据集,开展模型性能对比与实例应用分析。结果表明:①RF-Transformer模型准确率达91.51%,较Transformer、长短期记忆网络(Long Short-Term Memory,LSTM)和卷积神经网络(Convolutional Neural Network,CNN)模型分别提升了12.90%、23.60%和47.54%,优于K近邻(81.09%)、决策树(77.28%)等传统机器学习模型;②该模型仅需约25次迭代即可进入收敛态,收敛速度较现有模型提升8~10倍;③成功筛选出自然伽马、声波时差、浅侧向电阻率等6条关键测井曲线,有效剔除深侧向电阻率等冗余特征与非地质噪声;④实例应用中,预测页岩岩相剖面纵向连续性与平滑度高,与真实地质分层特征高度吻合,精准刻画页岩岩相过渡带边界。结论认为,该模型在兼顾高抗噪性与强时序捕捉能力的同时,实现页岩岩相的高效精准识别,为非均质储层精细描述提供了可靠技术支撑,后续需围绕测井解释软件适配性展开优化。 展开更多
关键词 测井曲线 岩相识别 随机森林(random forest rf) 深度学习 TRANSFORMER 页岩储层 长程依赖 噪声抑制
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Enhancing rock slope stability prediction using random forest machine learning:A case study
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作者 Afiqah Ismail Ahmad Safuan A Rashid +10 位作者 Ali Dehghanbanadaki Rafiuddin Hakim Roslan Mohd Firdaus Md Dan@Azlan Abd Wahid Rasib Radzuan Saari Mushairry Mustaffar Azman Kassim Rini Asnida Abdullah Khairul Hazman Padil Norbazlan Mohd Yusof Norisam Abd Rahaman 《China Geology》 2025年第4期691-706,共16页
The prediction of slope stability is a complex nonlinear problem.This paper proposes a new method based on the random forest(RF)algorithm to study the rocky slopes stability.Taking the Bukit Merah,Perak and Twin Peak(... The prediction of slope stability is a complex nonlinear problem.This paper proposes a new method based on the random forest(RF)algorithm to study the rocky slopes stability.Taking the Bukit Merah,Perak and Twin Peak(Kuala Lumpur)as the study area,the slope characteristics of geometrical parameters are obtained from a multidisciplinary approach(consisting of geological,geotechnical,and remote sensing analyses).18 factors,including rock strength,rock quality designation(RQD),joint spacing,continuity,openness,roughness,filling,weathering,water seepage,temperature,vegetation index,water index,and orientation,are selected to construct model input variables while the factor of safety(FOS)functions as an output.The area under the curve(AUC)value of the receiver operating characteristic(ROC)curve is obtained with precision and accuracy and used to analyse the predictive model ability.With a large training set and predicted parameters,an area under the ROC curve(the AUC)of 0.95 is achieved.A precision score of 0.88 is obtained,indicating that the model has a low false positive rate and correctly identifies a substantial number of true positives.The findings emphasise the importance of using a variety of terrain characteristics and different approaches to characterise the rock slope. 展开更多
关键词 Slope stability prediction random forest algorithm Remote sensing in Geology Factor of Safety(FOS) Geometrical parameters Rock quality designation(RQD) Multilayer perceptron(MLP)
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