• XML

    isc pubmed crossref medra doaj doaj
  • فهرست مقالات


      • دسترسی آزاد مقاله

        1 - Regression Analysis Using Core Vector Machine Technique Based on Kernel Function Optimization
        Babak Afshin Mohammad Ebrahim Shiri Kamran Layeghi Hamid HajSeyyedJavadi
        Core vector regression (CVR) is an extension of the core vector machine algorithm for regression estimation by generalizing the minimum bounding ball (MEB) problem. As an estimator, both the kernel function and its parameters can significantly affect the prediction prec چکیده کامل
        Core vector regression (CVR) is an extension of the core vector machine algorithm for regression estimation by generalizing the minimum bounding ball (MEB) problem. As an estimator, both the kernel function and its parameters can significantly affect the prediction precision of CVR. In this paper, a method to improve CVR performance using pre-processing based on data feature extraction and Grid algorithm is proposed to obtain appropriate parameters values of the main formulation and its kernel function. The CVR estimated mean absolute error rate here is the evaluation criterion of the proposed method that should be minimized. In addition, some benchmark datasets out of different databases were used to evaluate the proposed parameter optimization approach. The obtained numerical results show that the proposed method can reduce the CVR error with an acceptable time and space complexity. Therefore, it is able to deal with very large data and real world regression problems. پرونده مقاله
      • دسترسی آزاد مقاله

        2 - Design an Intelligent Multi-agent Computer-aided System for Recommender Systems
        Ramazan Teimouri Yansari Mojtaba Ajoudani Seyed Reza Mosayyebi
        Abstract – Due to the increasing amount of information and services available on the web, it is necessary to provide tools such as recommender systems to websites and applications that can help users find information and services that suit their interests. For thi چکیده کامل
        Abstract – Due to the increasing amount of information and services available on the web, it is necessary to provide tools such as recommender systems to websites and applications that can help users find information and services that suit their interests. For this reason, providing appropriate guidance and suggestions to users in different choices, according to the user's priorities, has found a special position in different fields. Recommender systems are information systems that help in the decision-making process by modeling the behavior of users in operational environments in ranking, comparing, selecting and preferring user items, by limiting the search space through high-quality and accurate recommendations. In this research, a multi-agent recommender system was proposed that can provide suitable recommendations as a shopping assistant in the purchasing process. To analyze the proposed model, the sales dataset of an online store including 1067371 records of online sales data has been used. According to the results, in this evaluation, the accuracy of the proposed model was 91.5% on average. By combining multi-agent systems, multi-agent recommender systems were proposed that can provide suitable recommendations as a purchasing assistant in the purchasing process. The results of applying the proposed model on the data related to the purchase history of the customers of an online shopping showed that the proposed model has a good efficiency in evaluating the parameters used in comparison with the common methods in this property field. پرونده مقاله
      • دسترسی آزاد مقاله

        3 - Non-Linear Control of Quasi-Z-Source Inverter with Battery for Renewable energy Systems Based ‎on Interconnection-Damping-Assignment Passivity-Based Control
        Gholam Reza Shahabadi Majid Reza Naseh Siavash Eshaghi
        Due to the growing popularity of renewable energy sources, grid-connected inverters are becoming more and more common in distributed microgrid and smart-grid system. The appropriate characteristics of Quasi-Z-source inverters (QZSI), including continuous input current, چکیده کامل
        Due to the growing popularity of renewable energy sources, grid-connected inverters are becoming more and more common in distributed microgrid and smart-grid system. The appropriate characteristics of Quasi-Z-source inverters (QZSI), including continuous input current, common DC rail, and high voltage gain, have made these inverters widely used in the renewable energy system. A battery is necessary for renewable energy systems in order to store energy when the demand for power is low. IN this study a configuration involving a battery across one of the capacitors on the DC side is proposed, through which the DC control loop is adjusted. Also, Interconnection-Damping-Assignment Passivity-Based Control (IDA-PBC)approach has been used to adjust the battery current/voltage and the output voltage. Compared to other controllers, the proposed controller can provide faster response and better stability for QZSI when the variation of input and load. In addition, the proposed controller is not sensitive to the system’s initial operating point and is global asymptotic stability. The simulations and theoretical design show the effectiveness of the proposed controller. پرونده مقاله
      • دسترسی آزاد مقاله

        4 - Forward and Inverse Kinematics of 4-DoF SCARA: Using Optimization Algorithms
        Mahdi Zavar Niki Manouchehri Alireza Safa
        In this article, solving and optimizing the problem of forward and inverse kinematics of SCARA is studied. This robot belongs to series robots and it has four degrees of freedom. First, we specify the coordinate axes for each joint and use it to extract the Danavit-Hart چکیده کامل
        In this article, solving and optimizing the problem of forward and inverse kinematics of SCARA is studied. This robot belongs to series robots and it has four degrees of freedom. First, we specify the coordinate axes for each joint and use it to extract the Danavit-Hartenberg parameters. Next, we examineforward kinematics of the robot and obtain the rotation matrices and the homogeneous transformation matrix and calculate the forward kinematics of the robot. Next, the method of solving the inverse kinematics problem of the robot is studied using different algorithms, including Cultural Algorithm, Genetic-Hybrid Algorithm, Gray Wolf Optimization, Firefly Algorithm, Ant Colony Optimization and Particle Swarm Optimization.Them, we optimize the inverse kinematics of the robot using these algorithms in two ways: fixed point and circular path. In the end, the effectiveness of the proposed approaches for solving the inverse kinematics problem of the SCARA robot is evaluated with multiple simulations. پرونده مقاله
      • دسترسی آزاد مقاله

        5 - An Adaptive neuro-fuzzy Inference System to Evaluate Trustworthiness of Users in a Social Network
        MohammadMahdi Shafiei Hossein Shirgahi Homayun Motameni Behnam Barzegar
        In recent years, the emergence of various social networks has led to the growth of social network users. However, activity in such networks depends on the level of trust that users have in each other. Therefore, trust is essential and important issue in these networks, چکیده کامل
        In recent years, the emergence of various social networks has led to the growth of social network users. However, activity in such networks depends on the level of trust that users have in each other. Therefore, trust is essential and important issue in these networks, especially when users interact with each other. In this article, we examine this issue and provide a method to evaluate it. It is not easy to measure the accuracy of trust for users who interact with social networks. Here, interactions are virtual. In this article, we have used the adaptive neuro-fuzzy inference system to evaluate trustworthiness by considering different personality attributes of users such as reliability, availability, interest, patience and adaptability. Using these features as input and based on the adaptive neuro-fuzzy inference system, we evaluated the trustworthiness of users in social network. The proposed adaptive neuro-fuzzy inference system is expandable because in this system, trust can be defined as a set of one or more personality attributes. Epinions social network dataset is also used to simulate and validate the proposed method. In the proposed method, the absolute mean value of error is less than 0.0095 and the value of F-score is more than 0.9884. Based on the obtained results and compared to the previous methods, the proposed adaptive neuro-fuzzy inference system shows an acceptable accuracy for evaluating the trustworthiness of users. پرونده مقاله
      • دسترسی آزاد مقاله

        6 - Energy Consumption Control with Zero Energy Approach for a Building Model
        Rasoul Moradimehr Esmaeil Alibeiki Seyyed Mostafa Ghadami
        Abstract - Based on the study of the theoretical foundations of the research, it is determined that so far there is no detailed study on heating and cooling energy related to zero-energy buildings in the recent research based on energy waste in buildings. Therefore, in چکیده کامل
        Abstract - Based on the study of the theoretical foundations of the research, it is determined that so far there is no detailed study on heating and cooling energy related to zero-energy buildings in the recent research based on energy waste in buildings. Therefore, in this article, by simulating commercial buildings and simulating the correct materials and strategies in the heating and cooling system, as well as investigating the insulation of buildings, we will study the effect of zero-energy building materials on energy wastage to model the temperature variations in building and control to achieve desire value. This article, taking into account the effects of heat transfer through building walls, the energy consumption model, and by genetic algorithm model predictive control (MPC) method optimizes the indoor temperature of the building. For this purpose, the genetic algorithm is used to determine the best control input in the form of building heating. The simulation of this process has been done in MATLAB software and the method of modeling heat loss and temperature change outputs shows that the proposed method has a good performance. The maximum of overshoot of the temperature is %4 and the cost function of GA algorithm is 165 based of minimum control effort and temperature error. پرونده مقاله