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新疆玛纳斯河流域蜉蝣目昆虫的初步研究 被引量:2
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作者 张建华 李晶 《石河子大学学报(自然科学版)》 CAS 2000年第3期189-192,共4页
于 1 995~ 1 998年的 6~ 8月间在新疆玛纳斯河源头的部分流域 ,采用扫网、刷石等综合取样法 ,共采得水生蜉蝣目 (Ephemeroptera)昆虫幼期标本 638头 ,经室内鉴定 ,分属 3科 5属 ,即扁蜉科(Heptageniidae)、高翔蜉属 (Epeorus)、溪颜蜉... 于 1 995~ 1 998年的 6~ 8月间在新疆玛纳斯河源头的部分流域 ,采用扫网、刷石等综合取样法 ,共采得水生蜉蝣目 (Ephemeroptera)昆虫幼期标本 638头 ,经室内鉴定 ,分属 3科 5属 ,即扁蜉科(Heptageniidae)、高翔蜉属 (Epeorus)、溪颜蜉属 (Rhithrogena)Ironodes,四节蜉科 (Baetidae)四节蜉属(Baetis)、AmeletidaeAmeletus.sp(中国新纪录 )。研究了其目、科、属的形态特征 ,并编写了蜉蝣目昆虫新疆常见科。 展开更多
关键词 蜉蝣目 水生昆虫 玛纳斯河 新疆 物种资源
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蜉蝣属Ephemera五种稚虫描述 被引量:1
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作者 周长发 周开亚 归鸿 《南京师大学报(自然科学版)》 CAS CSCD 2003年第1期69-73,共5页
对蜉蝣属Ephemera的徐氏蜉E .hsuiZhangetal.、黑翅蜉E .nigropteraZhouetal.、腹色蜉E .pictiventrisMcLachlan、绢蜉E .sericaEaton、梧州蜉E .wuchowensisHsu的
关键词 蜉蝣 稚虫 蜉蝣属 蜉蝣科
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侏罗纪中蜉属和珠蜉属蜉蝣昆虫化石研究的新进展 被引量:8
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作者 张俊峰 《古生物学报》 CAS CSCD 北大核心 2006年第2期268-276,共9页
长期以来,我国昆虫化石研究者所确认,并为众多地层古生物工作者所引用,作为地层对比和确定地质时代的两种侏罗系蜉蝣幼虫化石:西伯利亚中蜉(MesobaetissibiricaBrauer,RedtenbacheretGanglbauer,1889)和古珠蜉(MesonetaantiquaBrauer,Re... 长期以来,我国昆虫化石研究者所确认,并为众多地层古生物工作者所引用,作为地层对比和确定地质时代的两种侏罗系蜉蝣幼虫化石:西伯利亚中蜉(MesobaetissibiricaBrauer,RedtenbacheretGanglbauer,1889)和古珠蜉(MesonetaantiquaBrauer,RedtenbacheretGanglbauer,1889)在我国境内并不存在。迄今为止,这两个种仅局限于俄罗斯西伯利亚下侏罗统。此前,被我国昆虫化石研究者分别归入中蜉属(MesobaetisBrauer,RedtenbacheretGanglbauer,1889)和珠蜉属(MesonetaBrauer,RedtenbacheretGanglbauer,1889)的所有种类,其科级和属级分类位置有误。它们包括:西伯利亚中蜉,三间房中蜉(MesobaetissanjianfangensisHong,LiangetHu,1995),黑斑中蜉(MesobaetismaculataHong,LiangetHu,1995),古珠蜉和北票珠蜉(MesonetabeipiaoensisWang,1980)。道虎沟组、海房沟组、九龙山组和三间房组的水生蜉蝣组合完全不同,彼此不能对比。我国侏罗系—下白垩统蜉蝣幼虫全部是湖相,为原地埋藏,而非河流相,异地埋藏类型。 展开更多
关键词 蜉蝣昆虫化石 中蜉属 珠蜉属 分类学 地层对比 古生态学 侏罗系
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MADCR:Mobility Aware Dynamic Clustering-Based Routing Protocol in Internet of Vehicles 被引量:8
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作者 Sankar Sennan Somula Ramasubbareddy +3 位作者 Sathiyabhama Balasubramaniyam Anand Nayyar Chaker Abdelaziz Kerrache Muhammad Bilal 《China Communications》 SCIE CSCD 2021年第7期69-85,共17页
Internet of Vehicles(IoV)is an evolution of the Internet of Things(IoT)to improve the capabilities of vehicular ad-hoc networks(VANETs)in intelligence transport systems.The network topology in IoV paradigm is highly d... Internet of Vehicles(IoV)is an evolution of the Internet of Things(IoT)to improve the capabilities of vehicular ad-hoc networks(VANETs)in intelligence transport systems.The network topology in IoV paradigm is highly dynamic.Clustering is one of the promising solutions to maintain the route stability in the dynamic network.However,existing algorithms consume a considerable amount of time in the cluster head(CH)selection process.Thus,this study proposes a mobility aware dynamic clustering-based routing(MADCR)protocol in IoV to maximize the lifespan of networks and reduce the end-to-end delay of vehicles.The MADCR protocol consists of cluster formation and CH selection processes.A cluster is formed on the basis of Euclidean distance.The CH is then chosen using the mayfly optimization algorithm(MOA).The CH subsequently receives vehicle data and forwards such data to the Road Side Unit(RSU).The performance of the MADCR protocol is compared with that ofAnt Colony Optimization(ACO),Comprehensive Learning Particle Swarm Optimization(CLPSO),and Clustering Algorithm for Internet of Vehicles based on Dragonfly Optimizer(CAVDO).The proposed MADCR protocol decreases the end-toend delay by 5–80 ms and increases the packet delivery ratio by 5%–15%. 展开更多
关键词 clustering protocol Internet of things Internet of vehicles optimization algorithm Mayfly algorithm
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Bio-Inspired Intelligent Routing in WSN: Integrating Mayfly Optimization and Enhanced Ant Colony Optimization for Energy-Efficient Cluster Formation and Maintenance
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作者 V.G.Saranya S.Karthik 《Computer Modeling in Engineering & Sciences》 SCIE EI 2024年第10期127-150,共24页
Wireless Sensor Networks(WSNs)are a collection of sensor nodes distributed in space and connected through wireless communication.The sensor nodes gather and store data about the real world around them.However,the node... Wireless Sensor Networks(WSNs)are a collection of sensor nodes distributed in space and connected through wireless communication.The sensor nodes gather and store data about the real world around them.However,the nodes that are dependent on batteries will ultimately suffer an energy loss with time,which affects the lifetime of the network.This research proposes to achieve its primary goal by reducing energy consumption and increasing the network’s lifetime and stability.The present technique employs the hybrid Mayfly Optimization Algorithm-Enhanced Ant Colony Optimization(MFOA-EACO),where the Mayfly Optimization Algorithm(MFOA)is used to select the best cluster head(CH)from a set of nodes,and the Enhanced Ant Colony Optimization(EACO)technique is used to determine an optimal route between the cluster head and base station.The performance evaluation of our suggested hybrid approach is based on many parameters,including the number of active and dead nodes,node degree,distance,and energy usage.Our objective is to integrate MFOA-EACO to enhance energy efficiency and extend the network life of the WSN in the future.The proposed method outcomes proved to be better than traditional approaches such as Hybrid Squirrel-Flying Fox Optimization Algorithm(HSFLBOA),Hybrid Social Reindeer Optimization and Differential Evolution-Firefly Algorithm(HSRODE-FFA),Social Spider Distance Sensitive-Iterative Antlion Butterfly Cockroach Algorithm(SADSS-IABCA),and Energy Efficient Clustering Hierarchy Strategy-Improved Social Spider Algorithm Differential Evolution(EECHS-ISSADE). 展开更多
关键词 Enhanced ant colony optimization mayfly optimization algorithm wireless sensor networks cluster head base station(BS)
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An Efficient Cyber Security and Intrusion Detection System Using CRSR with PXORP-ECC and LTH-CNN
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作者 Nouf Saeed Alotaibi 《Computers, Materials & Continua》 SCIE EI 2023年第8期2061-2078,共18页
Intrusion Detection System(IDS)is a network security mechanism that analyses all users’and applications’traffic and detectsmalicious activities in real-time.The existing IDSmethods suffer fromlower accuracy and lack... Intrusion Detection System(IDS)is a network security mechanism that analyses all users’and applications’traffic and detectsmalicious activities in real-time.The existing IDSmethods suffer fromlower accuracy and lack the required level of security to prevent sophisticated attacks.This problem can result in the system being vulnerable to attacks,which can lead to the loss of sensitive data and potential system failure.Therefore,this paper proposes an Intrusion Detection System using Logistic Tanh-based Convolutional Neural Network Classification(LTH-CNN).Here,the Correlation Coefficient based Mayfly Optimization(CC-MA)algorithm is used to extract the input characteristics for the IDS from the input data.Then,the optimized features are utilized by the LTH-CNN,which returns the attacked and non-attacked data.After that,the attacked data is stored in the log file and non-attacked data is mapped to the cyber security and data security phases.To prevent the system from cyber-attack,the Source and Destination IP address is converted into a complex binary format named 1’s Complement Reverse Shift Right(CRSR),where,in the data security phase the sensed data is converted into an encrypted format using Senders Public key Exclusive OR Receivers Public Key-Elliptic Curve Cryptography(PXORP-ECC)Algorithm to improve the data security.TheNetwork Security Laboratory-Knowledge Discovery inDatabases(NSLKDD)dataset and real-time sensor are used to train and evaluate the proposed LTH-CNN.The suggested model is evaluated based on accuracy,sensitivity,and specificity,which outperformed the existing IDS methods,according to the results of the experiments. 展开更多
关键词 Intrusion detection system logistic tanh-based convolutional neural network classification(LTH-CNN) correlation coefficient based mayfly optimization(CC-MA) cyber security
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Signal Conducting System with Effective Optimization Using Deep Learning for Schizophrenia Classification
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作者 V.Divya S.Sendil Kumar +1 位作者 V.Gokula Krishnan Manoj Kumar 《Computer Systems Science & Engineering》 SCIE EI 2023年第5期1869-1886,共18页
Signal processing based research was adopted with Electroencephalogram(EEG)for predicting the abnormality and cerebral activities.The proposed research work is intended to provide an automatic diagnostic system to det... Signal processing based research was adopted with Electroencephalogram(EEG)for predicting the abnormality and cerebral activities.The proposed research work is intended to provide an automatic diagnostic system to determine the EEG signal in order to classify the brain function which shows whether a person is affected with schizophrenia or not.Early detection and intervention are vital for better prognosis.However,the diagnosis of schizophrenia still depends on clinical observation to date.Without reliable biomarkers,schizophrenia is difficult to detect in its early phase and hence we have proposed this idea.In this work,the EEG signal series are divided into non-linear feature mining,classification and validation,and t-test integrated feature selection process.For this work,19-channel EEG signals are utilized from schizophrenia class and normal pattern.Here,the datasets initially execute the splitting process based on raw 19-channel EEG into 6250 sample point’s sequences.With this process,1142 features of normal and schizophrenia class patterns can be obtained.In other hand,157 features from each EEG patterns are utilized based on Non-linear feature extraction process where 14 principal features can be identified in terms of considering the essential features.At last,the Deep Learning(DL)technique incorporated with an effective optimization technique is adopted for classification process called a Deep Convolutional Neural Network(DCNN)with mayfly optimization algorithm.The proposed technique is implemented into the platform of MATLAB in order to obtain better results and is analyzed based on the performance analysis framework such as accuracy,Signal to Noise Ratio(SNR),Mean Square Error,Normalized Mean Square Error(NMSE)and Loss.Through comparison,the proposed technique is proved to a better technique than other existing techniques. 展开更多
关键词 Deep learning optimization algorithm signal conducting system SCHIZOPHRENIA convolutional neural network mayfly optimization algorithm
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比较口服奥施康定与美菲康治疗晚期癌症重度疼痛的临床疗效 被引量:4
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作者 吕俊杰 《当代医学》 2018年第25期46-49,共4页
目的比较口服奥施康定与美菲康治疗晚期癌症重度疼痛的临床疗效。方法选取2013年8月~2017年8月本院收治的晚期癌症重度疼痛患者38例作为研究对象,按照随机偶数奇数法分为对照组和实验组,每组19例。对照组选择口服美菲康的方法治疗,实... 目的比较口服奥施康定与美菲康治疗晚期癌症重度疼痛的临床疗效。方法选取2013年8月~2017年8月本院收治的晚期癌症重度疼痛患者38例作为研究对象,按照随机偶数奇数法分为对照组和实验组,每组19例。对照组选择口服美菲康的方法治疗,实验组选择口服奥施康定的方法治疗,观察比较两组患者的镇痛效果、药物维持剂量与起效时间、治疗前后生活质量以及不良反应发生情况。结果对照组镇痛总有效率与实验组比较差异无统计学意义;实验组起效时间显著短于对照组,差异有统计学意义(P<0.05),两组药物维持剂量比较差异无统计学意义;对照组的不良反应发生率明显高于实验组,差异有统计学意义(P<0.05);治疗后两组食欲、睡眠、日常生活、精神状态、人际交往等生活质量评分均显著优于治疗前,差异有统计学意义(P<0.05),治疗后实验组与对照组间比较差异无统计学意义(P<0.05)。结论奥施康定与美菲康对晚期癌症重度疼痛均具有良好的镇痛效果,可显著改善患者生活质量,但奥施康定具有起效快,安全性高等优势,值得临床优先选择和推广。 展开更多
关键词 晚期癌症 重度疼痛 美菲康 奥施康定
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Antifogging properties and mechanism of micron structure in Ephemera pictiventris McLachlan compound eyes 被引量:4
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作者 Zhiwu Han Huiying Guan +2 位作者 Yanyan Cao Shichao Niu Luquan Ren 《Chinese Science Bulletin》 SCIE EI CAS 2014年第17期2039-2044,共6页
An antifogging function surface with simple structure and suitable for large-area production was found inspired by Ephemera pictiventris McLachlan compound eyes.The compound eyes structure,antifogging properties and m... An antifogging function surface with simple structure and suitable for large-area production was found inspired by Ephemera pictiventris McLachlan compound eyes.The compound eyes structure,antifogging properties and mechanism were studied by anti-fog test,dyeing test and scanning electron microscopy,and so forth.Then,3D model of the sample was established,and the antifogging mechanism was explained by the Cassie model.Results showed that the compound eyes are composed of hundreds of micron size ommatidia arranged in curved array form,and this structure shows excellent antifogging function.This research may provide new ideas for design of simple structure and micron size antifogging function surface.This work is also expected to be applied to antifogging function surface of astronaut helmets and medical endoscopes,and so forth. 展开更多
关键词 防雾性能 结构 复眼 微米 蜉蝣 机制 扫描电子显微镜 功能表面
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Machine Learning Based Cybersecurity Threat Detection for Secure IoT Assisted Cloud Environment
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作者 Z.Faizal Khan Saeed M.Alshahrani +6 位作者 Abdulrahman Alghamdi Someah Alangari Nouf Ibrahim Altamami Khalid A.Alissa Sana Alazwari Mesfer Al Duhayyim Fahd N.Al-Wesabi 《Computer Systems Science & Engineering》 SCIE EI 2023年第10期855-871,共17页
The Internet of Things(IoT)is determine enormous economic openings for industries and allow stimulating innovation which obtain between domains in childcare for eldercare,in health service to energy,and in developed t... The Internet of Things(IoT)is determine enormous economic openings for industries and allow stimulating innovation which obtain between domains in childcare for eldercare,in health service to energy,and in developed to transport.Cybersecurity develops a difficult problem in IoT platform whereas the presence of cyber-attack requires that solved.The progress of automatic devices for cyber-attack classifier and detection employing Artificial Intelligence(AI)andMachine Learning(ML)devices are crucial fact to realize security in IoT platform.It can be required for minimizing the issues of security based on IoT devices efficiently.Thus,this research proposal establishes novel mayfly optimized with Regularized Extreme Learning Machine technique called as MFO-RELM model for Cybersecurity Threat classification and detection fromthe cloud and IoT environments.The proposed MFORELM model provides the effective detection of cybersecurity threat which occur in the cloud and IoT platforms.To accomplish this,the MFO-RELM technique pre-processed the actual cloud and IoT data as to meaningful format.Besides,the proposed models will receive the pre-processing data and carry out the classifier method.For boosting the efficiency of the proposed models,theMFOtechnique was utilized to it.The experiential outcome of the proposed technique was tested utilizing the standard CICIDS 2017 dataset,and the outcomes are examined under distinct aspects. 展开更多
关键词 Mayfly optimization machine learning artificial intelligence CYBERSECURITY threat detection
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“蜉蝣”名称考 被引量:3
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作者 周长发 郑乐怡 《昆虫知识》 CAS CSCD 北大核心 2003年第2期190-191,189,共3页
“蜉蝣”一词最早见于《诗经》。蜉蝣成虫极短的生活期、暴发式的羽化及大量蜉蝣成虫几乎同时死亡后漂浮于水面可能是“蜉蝣 (浮游 )”的真正含义及由来。
关键词 蜉蝣 名称 昆虫 蜉游目
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Random mating mayfly algorithm for RFID network planning 被引量:2
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作者 Xie Xiaode Zheng Jiali +2 位作者 Lin Zihan He Siyi Feng Minyu 《The Journal of China Universities of Posts and Telecommunications》 EI CSCD 2022年第5期40-50,共11页
In order to improve robustness and efficiency of the radio frequency identification(RFID)network,a random mating mayfly algorithm(RMMA)was proposed.Firstly,RMMA introduced the mechanism of random mating into the mayfl... In order to improve robustness and efficiency of the radio frequency identification(RFID)network,a random mating mayfly algorithm(RMMA)was proposed.Firstly,RMMA introduced the mechanism of random mating into the mayfly algorithm(MA),which improved the population diversity and enhanced the exploration ability of the algorithm in the early stage,and find a better solution to the RFID nework planning(RNP)problem.Secondly,in RNP,tags are usually placed near the boundaries of the working space,so the minimum boundary mutation strategy was proposed to make sure the mayflies which beyond the boundary can keep the original search direction,as to enhance the ability of searching near the boundary.Lastly,in order to measure the performance of RMMA,the algorithm is then benchmarked on three well-known classic test functions,and the results are verified by a comparative study with particle swarm optimization(PSO),grey wolf optimization(GWO),and MA.The results show that the RMMA algorithm is able to provide very competitive results compared to these well-known meta-heuristics,RMMA is also applied to solve RNP problems.The performance evaluation shows that RMMA achieves higher coverage than the other three algorithms.When the number of readers is the same,RMMA can obtain lower interference and get a better load balance in each instance compared with other algorithms.RMMA can also solve RNP problem stably and efficiently when the number and position of tags change over time. 展开更多
关键词 radio frequency identification(RFID) RFID network planning(RNP) reader deployment mayfly algorithm(MA) random mating
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蜉蝣稚虫形态多样性及其适应性变化 被引量:2
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作者 周长发 郑乐怡 周开亚 《动物学杂志》 CAS CSCD 北大核心 2003年第6期81-85,共5页
根据蜉蝣稚虫的生活环境 ,可简单地将其分为静水区种类和流水区种类。静水区种类可生活于水体中、底质表面和底质中三种不同的小栖境 ,流水区种类可生活于水体中、底质表面和底质缝隙间三类小栖境。形态各异的不同种类蜉蝣稚虫生活在不... 根据蜉蝣稚虫的生活环境 ,可简单地将其分为静水区种类和流水区种类。静水区种类可生活于水体中、底质表面和底质中三种不同的小栖境 ,流水区种类可生活于水体中、底质表面和底质缝隙间三类小栖境。形态各异的不同种类蜉蝣稚虫生活在不同的小环境 ,表明种类演化和形态变化与环境有密切关系。 展开更多
关键词 蜉蝣 稚虫 形态 栖境
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The unusual life history of a southern Iberian Peninsula population of Torleya major (Ephemeroptera: Ephemerellidae)
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作者 M. J. Lopez-Rodriguez J. M. Tierno de Figueroa J. Alba-Tercedor 《Insect Science》 SCIE CAS CSCD 2011年第5期583-589,共7页
The nymphal biology of a population of Torleya major (Klapalek) in southem Iberian Peninsula was studied. An atypical life cycle pattern is described, with eggs hatching in August producing a fast-developing cohort ... The nymphal biology of a population of Torleya major (Klapalek) in southem Iberian Peninsula was studied. An atypical life cycle pattern is described, with eggs hatching in August producing a fast-developing cohort with adults emerging in autumn and a second slow-developing cohort with adults emerging in spring of the following year. Nymphal growth occurred primarily in summer-autumn (in the first cohort) and in spring (in the second). The origin of such a life history is discussed. Nymphs were collector-gatherers, consuming mainly detritus. Although ontogenetic shifts on the use of trophic resources were detected, similar food was utilized during the months when both cohorts cohabited, eliminating the possibility that the rapid growth of the first cohort could be related to the utilization of different food resources. 展开更多
关键词 collector-gatherer life cycle MAYFLY nymphal feeding southern Iberian Peninsula
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胜利河连续系统中蜉蝣优势种的生产量动态和营养基础 被引量:1
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作者 邓山 叶才伟 +2 位作者 王利肖 李晓宇 闫云君 《生态学报》 CAS CSCD 北大核心 2012年第9期2796-2809,共14页
大型底栖动物在河流生态系统中发挥着重要作用,2009年3月至2010年3月间对长江中游支流巴河流域的胜利河大型底栖动物群落进行1周年的调查研究。结果表明,主要蜉蝣优势种扁蜉一种、等蜉一种和红斑蜉的生活史为3代/a、3代/a和2代/a。现存... 大型底栖动物在河流生态系统中发挥着重要作用,2009年3月至2010年3月间对长江中游支流巴河流域的胜利河大型底栖动物群落进行1周年的调查研究。结果表明,主要蜉蝣优势种扁蜉一种、等蜉一种和红斑蜉的生活史为3代/a、3代/a和2代/a。现存量呈现出1—3级河流增加、4级又较3级有所下降的趋势。采用体长频率法(实则size-frequency method)测算的周年生产量分别为:扁蜉,200.13 g.m-.2a-1,P/B为23.69;等蜉,82.06 g.m-.2a-1,P/B为18.12;红斑蜉,12.30 g.m-.2a-1,P/B为8.78。3种蜉蝣生产量时间动态与现存量较一致,但彼此各不相同;扁蜉日均产量于2009年3月在二级河流中达到最大(363.56 mg.m-.2d-1),等蜉于2010年3月在三级河流中到达最大(282.76 mg.m-.2d-1),而红斑蜉于2009年3月在一级河流中到达最大(33.36 mg.m-2.d-1)。生产量的营养基础分析结果表明,3种蜉蝣前肠内含物中无形态碎屑均占最大比例(41.14%—74.37%),其对生产量的贡献率也最大(46.67%—77.15%),其它食物类型均相对较小,且总体上与作者在黑竹冲和叹气沟的研究结果存在一定差异,可能与这些溪流自身环境和地区分布有关。 展开更多
关键词 大型底栖动物 生产量 蜉蝣 优势种 胜利河
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Artificial Intelligence Based Solar Radiation Predictive Model Using Weather Forecasts
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作者 Sathish Babu Pandu A.Sagai Francis Britto +4 位作者 Pudi Sekhar P.Vijayarajan Amani Abdulrahman Albraikan Fahd N.Al-Wesabi Mesfer Al Duhayyim 《Computers, Materials & Continua》 SCIE EI 2022年第4期109-124,共16页
Solar energy has gained attention in the past two decades,since it is an effective renewable energy source that causes no harm to the environment.Solar Irradiation Prediction(SIP)is essential to plan,schedule,and mana... Solar energy has gained attention in the past two decades,since it is an effective renewable energy source that causes no harm to the environment.Solar Irradiation Prediction(SIP)is essential to plan,schedule,and manage photovoltaic power plants and grid-based power generation systems.Numerous models have been proposed for SIP in the literature while such studies demand huge volumes of weather data about the target location for a lengthy period of time.In this scenario,commonly available Artificial Intelligence(AI)technique can be trained over past values of irradiance as well as weatherrelated parameters such as temperature,humidity,wind speed,pressure,and precipitation.Therefore,in current study,the authors aimed at developing a solar irradiance prediction model by integrating big data analytics with AI models(BDAAI-SIP)using weather forecasting data.In order to perform long-term collection of weather data,Hadoop MapReduce tool is employed.The proposed solar irradiance prediction model operates on different stages.Primarily,data preprocessing take place using various sub processes such as data conversion,missing value replacement,and data normalization.Besides,Elman Neural Network(ENN),a type of feedforward neural network is also applied for predictive analysis.It is divided into input layer,hidden layer,loadbearing layer,and output layer.To overcome the insufficiency of ENN in choosing the value of weights and hidden layer neuron count,Mayfly Optimization(MFO)algorithm is applied.In order to validate the performance of the proposed model,a series of experiments was conducted.The experimental values infer that the proposed model outperformed other methods used for comparison. 展开更多
关键词 Solar irradiation prediction weather forecast artificial intelligence Elman neural network mayfly optimization
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Rough Sets Hybridization with Mayfly Optimization for Dimensionality Reduction
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作者 Ahmad Taher Azar Mustafa Samy Elgendy +1 位作者 Mustafa Abdul Salam Khaled M.Fouad 《Computers, Materials & Continua》 SCIE EI 2022年第10期1087-1108,共22页
Big data is a vast amount of structured and unstructured data that must be dealt with on a regular basis.Dimensionality reduction is the process of converting a huge set of data into data with tiny dimensions so that ... Big data is a vast amount of structured and unstructured data that must be dealt with on a regular basis.Dimensionality reduction is the process of converting a huge set of data into data with tiny dimensions so that equal information may be expressed easily.These tactics are frequently utilized to improve classification or regression challenges while dealing with machine learning issues.To achieve dimensionality reduction for huge data sets,this paper offers a hybrid particle swarm optimization-rough set PSO-RS and Mayfly algorithm-rough set MA-RS.A novel hybrid strategy based on the Mayfly algorithm(MA)and the rough set(RS)is proposed in particular.The performance of the novel hybrid algorithm MA-RS is evaluated by solving six different data sets from the literature.The simulation results and comparison with common reduction methods demonstrate the proposed MARS algorithm’s capacity to handle a wide range of data sets.Finally,the rough set approach,as well as the hybrid optimization techniques PSO-RS and MARS,were applied to deal with the massive data problem.MA-hybrid RS’s method beats other classic dimensionality reduction techniques,according to the experimental results and statistical testing studies. 展开更多
关键词 Dimensionality reduction metaheuristics optimization algorithm MAYFLY particle swarm optimizer feature selection
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Optimal IoT Based Improved Deep Learning Model for Medical Image Classification
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作者 Prasanalakshmi Balaji B.Sri Revathi +2 位作者 Praveetha Gobinathan Shermin Shamsudheen Thavavel Vaiyapuri 《Computers, Materials & Continua》 SCIE EI 2022年第11期2275-2291,共17页
Recently medical image classification plays a vital role in medical image retrieval and computer-aided diagnosis system.Despite deep learning has proved to be superior to previous approaches that depend on handcrafted... Recently medical image classification plays a vital role in medical image retrieval and computer-aided diagnosis system.Despite deep learning has proved to be superior to previous approaches that depend on handcrafted features;it remains difficult to implement because of the high intra-class variance and inter-class similarity generated by the wide range of imaging modalities and clinical diseases.The Internet of Things(IoT)in healthcare systems is quickly becoming a viable alternative for delivering high-quality medical treatment in today’s e-healthcare systems.In recent years,the Internet of Things(IoT)has been identified as one of the most interesting research subjects in the field of health care,notably in the field of medical image processing.For medical picture analysis,researchers used a combination of machine and deep learning techniques as well as artificial intelligence.These newly discovered approaches are employed to determine diseases,which may aid medical specialists in disease diagnosis at an earlier stage,giving precise,reliable,efficient,and timely results,and lowering death rates.Based on this insight,a novel optimal IoT-based improved deep learning model named optimization-driven deep belief neural network(ODBNN)is proposed in this article.In context,primarily image quality enhancement procedures like noise removal and contrast normalization are employed.Then the preprocessed image is subjected to feature extraction techniques in which intensity histogram,an average pixel of RGB channels,first-order statistics,Grey Level Co-Occurrence Matrix,Discrete Wavelet Transform,and Local Binary Pattern measures are extracted.After extracting these sets of features,the May Fly optimization technique is adopted to select the most relevant features.The selected features are fed into the proposed classification algorithm in terms of classifying similar input images into similar classes.The proposed model is evaluated in terms of accuracy,precision,recall,and f-measure.The investigation evident the performa 展开更多
关键词 Deep belief neural network mayfly optimization gaussian filter contrast normalization grey level variance local binary pattern discrete wavelet transform
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Life history, secondary production and trophic basis of two dominant mayflies in a subtropical stream of China
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作者 闫云君 李晓宇 《Chinese Journal of Oceanology and Limnology》 SCIE CAS CSCD 2007年第1期106-115,共10页
Mayflies constitute a major part of macroinvertebrate biomass and production in Iotic ecosystems, and play an important role in material cycle and energy flow. There are more than 250 species of mayflies in rivers and... Mayflies constitute a major part of macroinvertebrate biomass and production in Iotic ecosystems, and play an important role in material cycle and energy flow. There are more than 250 species of mayflies in rivers and streams of China. In order to learn their ecological functions, an investigation on life cycle, production and trophic basis of dominant species of mayflies in a second-order branch of Hanjiang River basin, Hubei, China was carried out during June 2003 to June 2004. The results showed that the dominant mayfly species Epeorus sp. and Caenis sp. developed two generations per year; in term of Epeorus sp., pupation mainly occurred in spring and then from late summer to early autumn, while Caenis sp. pupated in spring and autumn. The abundance and biomass of the Epeorus sp. population peaked twice (1 226 ind/m^2, 3.142 5g/m^2) in April and June. Caenis sp. also had two peaks (307ind/m^2, 1.590 g/m^2), but in February and June. Cohort production and cohort P/B ratio of Epeorus sp. were 161.009 g/m2 wet weight and 7.7, respectively, and annual production and P/B ratio were 267.46g/m^2.a wet weight and 15.4, respectively; cohort production and P/B ratio of Caenis sp. were 26.7995g/m^2 wet weight and 4.7, its annual production and P/B ratio were 53.60 g/m2.a wet weight and 9.4, respectively. For Epeorus sp., the proportions contributing to secondary production of the main food types were: amorphous detritus, 33.46%; fungi, 10.83%; vascular plant detritus, 1.80%; diatoms, 53.90%; for Caenis sp., the proportions were 70.79%, 6.90%, 3.52% and 18.77%, respectively. 展开更多
关键词 Macrozoobenthos MAYFLY secondary production Epeorus sp Caenis sp Heizhuchong Stream
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三种蜉蝣卵壳表面雕纹的显微观察
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作者 吴兴永 许新华 张美英 《南京师大学报(自然科学版)》 CAS CSCD 1991年第4期110-113,共4页
本文报道了用干涉相衬显微镜对三种蜉蝣卵壳表面雕纹进行初步观察的结果。尤氏新河花蜉(Neopotamanthus youi Wu & You)卵壳表面雕纹为不规则的网状嵴。霍山河花蜉(Potamanthus huoshanensis Wu)卵壳表面雕纹为纽扣状的突起。细蜉蝣... 本文报道了用干涉相衬显微镜对三种蜉蝣卵壳表面雕纹进行初步观察的结果。尤氏新河花蜉(Neopotamanthus youi Wu & You)卵壳表面雕纹为不规则的网状嵴。霍山河花蜉(Potamanthus huoshanensis Wu)卵壳表面雕纹为纽扣状的突起。细蜉蝣(Caenis sP)卵壳表面雕纹呈不规则的多角形突起。 展开更多
关键词 蜉蝣 卵壳 表面雕纹
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