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pso algorithm

در نشریات گروه فناوری اطلاعات
تکرار جستجوی کلیدواژه pso algorithm در نشریات گروه فنی و مهندسی
تکرار جستجوی کلیدواژه pso algorithm در مقالات مجلات علمی
  • Mohammad Nazarpour, navid nezafati, Sajjad Shokouhyar

    Integration and diversity of IOT terminals and their applicable programs make them more vulnerable to many intrusive attacks. Thus, designing an intrusion detection model that ensures the security, integrity, and reliability of IOT is vital. Traditional intrusion detection technology has the disadvantages of low detection rates and weak scalability that cannot adapt to the complicated and changing environment of the Internet of Things. Hence, one of the most widely used traditional methods is the use of neural networks and also the use of evolutionary optimization algorithms to train neural networks can be an efficient and interesting method. Therefore, in this paper, we use the PSO algorithm to train the neural network and detect attacks and abnormalities of the IOT system. Although the PSO algorithm has many benefits, in some cases it may reduce population diversity, resulting in early convergence. Therefore,in order to solve this problem, we use the modified PSO algorithm with a new mutation operator, fuzzy systems and comparative equations. The proposed method was tested with CUP-KDD data set. The simulation results of the proposed model of this article show better performance and 99% detection accuracy in detecting different malicious attacks, such as DOS, R2L, U2R, and PROB.

    Keywords: Attack detection, Internet of Things (IOT), Neural Network, PSO Algorithm, Fuzzy rule, Adaptive Formulation
  • حامد فضل اللهی آقاملک*، سید محمد رضوی، ناصر مهرشاد، غلامرضا نادعلی نیاچاری
    در این مقاله، برای بهبود بازشناسی ارقام دستنویس فارسی از ادغام در سطح ویژگی استفاده شده است. با استفاده از ادغام سه بردار ویژگی متفاوت و وزن دهی برداری به هر سه بردار ویژگی، توسط الگوریتم بهینه سازی ژنتیک و انبوه ذرات، ضرایب وزنی بهینه برای بردار ویژگی بهدست آورده شده است. هدف اصلی در این تحقیق مقایسه ضرایب وزنی با دو الگوریتم بهینه ساز ژنتیک و انبوه ذرات به بردار ویژگی و بهبود نرخ بازشناسی و زمان بازشناسی ارقام دستنویس فارسی با استفاده از ادغام در سطح ویژگی نسبت به ترکیب طبقه بندها میباشد. در این تحقیق از پایگاهداده هدی که شامل 06666 نمونه آموزش و 06666 نمونه تست میباشد استفاده شده است.

    کلید واژگان: ادغام ویژگی، الگوریتم ژنتیک، الگوریتم بهینه سازی انبوه ذرات، بازشناسی ارقام دستنویس، ترکیب طبقه بندها
    Hamed Fazlollahi Aghamalek*, Seyed Mohammad Razavi, Naser Mehrshad, Qolamreza Nadalinia Charei
    In this paper, feature fusion technique is employed for improvement of recognition of handwritten digits. By merging three different feature vectors, given a specific weight for each of vectors, the Genetic Algorithm and Particle Swarm Optimization processes were applied to calculate the optimum weights. The main objective in this study was to compare the calculated weights according to each of the optimization techniques to that of classifiers combination in order to achieve a higher recognition rate and time for Persian Handwritten digits. A database containing 60'000 training samples and 20'000 test samples is used for the process.
    Keywords: feature fusion, GA algorithm, PSO algorithm, Persian Handwritten Digits Recognition, classifiers combination
  • Mozhgan Rahimirad *, Mohammad Mosleh, AmirMasoud Rahmani

    With the explosive growth in amount of information, it is highly required to utilize tools and methods in order to search, filter and manage resources. One of the major problems in text classification relates to the high dimensional feature spaces. Therefore, the main goal of text classification is to reduce the dimensionality of features space. There are many feature selection methods. However, only a few methods are utilized for huge text classification problems. In this paper, we propose a new wrapper method based on Particle Swarm Optimization (PSO) algorithm and Support Vector Machine (SVM). We combine it with Learning Automata in order to make it more efficient. This helps to select better features using the reward and penalty system of automata. To evaluate the efficiency of the proposed method, we compare it with a method which selects features based on Genetic Algorithm over the Reuters-21578 dataset. The simulation results show that our proposed algorithm works more efficiently.

    Keywords: Text mining, Feature Selection, Classification, learning automata, PSO algorithm
  • Elham Imaie, Abdolreza Sheikholeslami, Roya Ahmadi Ahangar
    According to this fact that wind is now a part of global energy portfolio and due to unreliable and discontinuous production of wind energy; prediction of wind power value is proposed as a main necessity. In recent years, various methods have been proposed for wind power prediction. In this paper the prediction structure involves feature selection and use of Artificial Neural Network (ANN). In this paper, feature selection tool is applied in filtering of inappropriate and irrelevant inputs of neural network and is performed on the biases of mutual information. After determining appropriate inputs, the wind power value for the next 24-hours is predicted using neural network in which BP algorithm and PSO and ICA evolutionary algorithms are used as training algorithm. With investigation and compare numerical results, better performance of PSO and ICA evolutionary algorithm is deduced with respect to BP algorithm. More accurate survey will result in more proper efficiency of imperialist competitive algorithm (ICA) in comparison to swarm particle algorithm. Thus, in this paper; accuracy of the wind power prediction for the next 24-hours is improved considerably using mutual information and providing an irrelevancy filter for reducing the input dimension by eliminating the irrelevant candidates and more effectively using Imperialist competitive evolutionary algorithm for training the neural network.
    Keywords: Neural Networks, Wind Power Prediction, PSO Algorithm, ICA Algorithm, Feature Selection, Mutual Information
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