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Renovated Random Attribute-Based Fennec Fox Optimized Deep Learning Framework in Low-Rate DoS Attack Detection in IoT
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作者 Prasanalakshmi Balaji Sangita Babu +4 位作者 Maode Ma Zhaoxi Fang Syarifah Bahiyah Rahayu Mariyam Aysha Bivi Mahaveerakannan Renganathan 《Computers, Materials & Continua》 2025年第9期5831-5858,共28页
The rapid progression of the Internet of Things(IoT)technology enables its application across various sectors.However,IoT devices typically acquire inadequate computing power and user interfaces,making them susceptibl... The rapid progression of the Internet of Things(IoT)technology enables its application across various sectors.However,IoT devices typically acquire inadequate computing power and user interfaces,making them susceptible to security threats.One significant risk to cloud networks is Distributed Denial-of-Service(DoS)attacks,where attackers aim to overcome a target system with excessive data and requests.Among these,low-rate DoS(LR-DoS)attacks present a particular challenge to detection.By sending bursts of attacks at irregular intervals,LR-DoS significantly degrades the targeted system’s Quality of Service(QoS).The low-rate nature of these attacks confuses their detection,as they frequently trigger congestion control mechanisms,leading to significant instability in IoT systems.Therefore,to detect the LR-DoS attack,an innovative deep-learning model has been developed for this research work.The standard dataset is utilized to collect the required data.Further,the deep feature extraction process is executed using the Residual Autoencoder with Sparse Attention(ResAE-SA),which helps derive the significant feature required for detection.Ultimately,the Adaptive Dense Recurrent Neural Network(ADRNN)is implemented to detect LR-DoS effectively.To enhance the detection process,the parameters present in the ADRNN are optimized using the Renovated Random Attribute-based Fennec Fox Optimization(RRA-FFA).The proposed optimization reduces the False Discovery Rate and False Positive Rate,maximizing the Matthews Correlation Coefficient from 23,70.8,76.2,84.28 in Dataset 1 and 70.28,73.8,74.1,82.6 in Dataset 2 on EPC-ADRNN,DPO-ADRNN,GTO-ADRNN,FFA-ADRNN respectively to 95.8 on Dataset 1 and 91.7 on Dataset 2 in proposed model.At batch size 4,the accuracy of the designed RRA-FFA-ADRNN model progressed by 9.2%to GTO-ADRNN,11.6%to EFC-ADRNN,10.9%to DPO-ADRNN,and 4%to FFA-ADRNN for Dataset 1.The accuracy of the proposed RRA-FFA-ADRNN is boosted by 12.9%,9.09%,11.6%,and 10.9%over FFCNN,SVM,RNN,and DRNN,using Dataset 2,showing a better improvement in accuracy with that of the proposed RRA-FFA-ADRNN model with 95.7%using Dataset 1 and 94.1%with Dataset 2,which is better than the existing baseline models. 展开更多
关键词 Detecting low-rate DoS attacks adaptive dense recurrent neural network residual autoencoder with sparse attention renovated random attribute-based fennec fox optimization
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基于FFA-GRNN模型的土石坝溃坝洪峰流量预测
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作者 严新军 王雪虎 +3 位作者 赵蕊婷 庄培源 王红徐 马俊玲 《长江科学院院报》 北大核心 2025年第3期99-106,共8页
为提高溃坝洪峰流量预测精度,提出了一种基于GRNN的预测模型,结合耳廓狐优化算法FFA进行超参数优化,实现对溃坝洪峰流量的预测。以国内外堤坝溃决数据库为基础,用溃口底部以上库容、溃口底部以上水深和溃口深度3种因子作为输入变量,构建... 为提高溃坝洪峰流量预测精度,提出了一种基于GRNN的预测模型,结合耳廓狐优化算法FFA进行超参数优化,实现对溃坝洪峰流量的预测。以国内外堤坝溃决数据库为基础,用溃口底部以上库容、溃口底部以上水深和溃口深度3种因子作为输入变量,构建FFA-GRNN溃坝洪峰流量预测模型。为验证模型在溃坝洪峰流量预测精确度和拟合度,与其他4种智能算法进行对比。结果表明:提出的FFA-GRNN模型相较于其他模型具有更低的RMSE、MAE和更高的拟合度R^(2),证明所建模型在整体上具有更好的计算精度与拟合效果。通过分析模型在溃坝洪峰流量预测中的适用性,可为溃坝分析提供技术支撑。 展开更多
关键词 溃坝 洪峰流量 土石坝 耳廓狐算法 广义回归神经网络
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耳廓狐的日常管理
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作者 董蓓欣 《黑龙江动物繁殖》 2024年第2期47-49,58,共4页
耳廓狐的原产地在北非与西亚地区的沙漠地带,最显著的特征是大耳朵,主要功能是散热与探听地下的猎物,是最小的狐种。天津市动物园现有耳廓狐7只,3只雄性,4只雌性,均为3~7岁成年个体。笔者结合自身工作经验,综述了天津市动物园耳廓狐生... 耳廓狐的原产地在北非与西亚地区的沙漠地带,最显著的特征是大耳朵,主要功能是散热与探听地下的猎物,是最小的狐种。天津市动物园现有耳廓狐7只,3只雄性,4只雌性,均为3~7岁成年个体。笔者结合自身工作经验,综述了天津市动物园耳廓狐生存状况,从饮食、作息、环境、疾病预防和免疫、卫生管理几个方面分析耳廓狐饲养管理,以期更好地了解耳廓狐的生活习性和需求,为今后进一步提升饲养管理水平提供参考。 展开更多
关键词 耳廓狐 日常饲养 疾病预防 丰容 健康管理
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