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Gorilla Troops Optimizer Based Fault Tolerant Aware Scheduling Scheme for Cloud Environment
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作者 r.rengaraj K.Latha 《Intelligent Automation & Soft Computing》 SCIE 2023年第2期1923-1937,共15页
In cloud computing(CC),resources are allocated and offered to the cli-ents transparently in an on-demand way.Failures can happen in CC environment and the cloud resources are adaptable tofluctuations in the performance... In cloud computing(CC),resources are allocated and offered to the cli-ents transparently in an on-demand way.Failures can happen in CC environment and the cloud resources are adaptable tofluctuations in the performance delivery.Task execution failure becomes common in the CC environment.Therefore,fault-tolerant scheduling techniques in CC environment are essential for handling performance differences,resourcefluxes,and failures.Recently,several intelli-gent scheduling approaches have been developed for scheduling tasks in CC with no consideration of fault tolerant characteristics.With this motivation,this study focuses on the design of Gorilla Troops Optimizer Based Fault Tolerant Aware Scheduling Scheme(GTO-FTASS)in CC environment.The proposed GTO-FTASS model aims to schedule the tasks and allocate resources by considering fault tolerance into account.The GTO-FTASS algorithm is based on the social intelligence nature of gorilla troops.Besides,the GTO-FTASS model derives afitness function involving two parameters such as expected time of completion(ETC)and failure probability of executing a task.In addition,the presented fault detector can trace the failed tasks or VMs and then schedule heal submodule in sequence with a remedial or retrieval scheduling model.The experimental vali-dation of the GTO-FTASS model has been performed and the results are inspected under several aspects.Extensive comparative analysis reported the better outcomes of the GTO-FTASS model over the recent approaches. 展开更多
关键词 Cloud computing gorilla troops optimizer task scheduling fault tolerant task completion time failure probability
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Grey Wolf Optimizer to Real Power Dispatch with Non-Linear Constraints
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作者 G.R.Venkatakrishnan r.rengaraj S.Salivahanan 《Computer Modeling in Engineering & Sciences》 SCIE EI 2018年第4期25-45,共21页
A new and efficient Grey Wolf Optimization(GWO)algorithm is implemented to solve real power economic dispatch(RPED)problems in this paper.The nonlinear RPED problem is one the most important and fundamental optimizati... A new and efficient Grey Wolf Optimization(GWO)algorithm is implemented to solve real power economic dispatch(RPED)problems in this paper.The nonlinear RPED problem is one the most important and fundamental optimization problem which reduces the total cost in generating real power without violating the constraints.Conventional methods can solve the ELD problem with good solution quality with assumptions assigned to fuel cost curves without which these methods lead to suboptimal or infeasible solutions.The behavior of grey wolves which is mimicked in the GWO algorithm are leadership hierarchy and hunting mechanism.The leadership hierarchy is simulated using four types of grey wolves.In addition,searching,encircling and attacking of prey are the social behaviors implemented in the hunting mechanism.The GWO algorithm has been applied to solve convex RPED problems considering the all possible constraints.The results obtained from GWO algorithm are compared with other state-ofthe-art algorithms available in the recent literatures.It is found that the GWO algorithm is able to provide better solution quality in terms of cost,convergence and robustness for the considered ELD problems. 展开更多
关键词 GREY WOLF optimization(GWO) constraints power generation DISPATCH EVOLUTIONARY computation computational COMPLEXITY algorithms
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An Ensemble Based Hand Vein Pattern Authentication System
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作者 M.Rajalakshmi r.rengaraj +3 位作者 Mukund Bharadwaj Akshay Kumar N.Naren Raju Mohammed Haris 《Computer Modeling in Engineering & Sciences》 SCIE EI 2018年第2期209-220,共12页
Amongst several biometric traits,Vein pattern biometric has drawn much attention among researchers and diverse users.It gains its importance due to its difficulty in reproduction and inherent security advantages.Many ... Amongst several biometric traits,Vein pattern biometric has drawn much attention among researchers and diverse users.It gains its importance due to its difficulty in reproduction and inherent security advantages.Many research papers have dealt with the topic of new generation biometric solutions such as iris and vein biometrics.However,most implementations have been based on small datasets due to the difficulties in obtaining samples.In this paper,a deeper study has been conducted on previously suggested methods based on Convolutional Neural Networks(CNN)using a larger dataset.Also,modifications are suggested for implementation using ensemble methods.Ensembles were used to reduce training time and cost by training multiple weak classifiers instead of a single,strong classifier.Classifiers used were CNN,Random Forest and Logistic Regression.An inexpensive and robust data acquisition system was also developed for obtaining the dataset.The obtained result shows an improved accuracy of 96.77%using ensemble method instead of dealing with a single classifier. 展开更多
关键词 Convolutional Neural Networks Random FOREST LOGISTIC Regression ENSEMBLE BIOMETRICS VEIN PATTERN
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