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    Improving response surface methodology by using artificial neural network and simulated annealing

    , Article Expert Systems with Applications ; Volume 39, Issue 3 , February , 2012 , Pages 3461-3468 ; 09574174 (ISSN) Abbasi, B ; Mahlooji, H ; Sharif University of Technology
    2012
    Abstract
    Response surface methodology (RSM) explores the relationships between several explanatory variables and one or more response variables. The main idea of RSM is to use a set of designed experiments to obtain an optimal response. RSM tries to simplify the original problem through some polynomial estimation over small sections of the feasible area, elaborating on optimum provision through a well known optimization technique, say Gradient Method. As the real world problems are usually very complicated, polynomial estimation may not perform well in providing a good representation of the objective function. Also, the main problem of the Gradient Method, getting trapped in local minimum (maximum),... 

    Monitoring multivariate profiles in multistage processes

    , Article Communications in Statistics: Simulation and Computation ; 2019 ; 03610918 (ISSN) Bahrami, H ; Akhavan Niaki, T ; Khedmati, M ; Sharif University of Technology
    Taylor and Francis Inc  2019
    Abstract
    In some quality control applications, processes consist of multiple components, stations or stages to finish the final products or the services. Some quality characteristics in each stage of these processes (called multistage processes) can be represented by a relationship between a response and one or more explanatory variables which is named as profile. In this paper, a general model is proposed for monitoring multivariate profiles in multistage processes. To this aim, the multivariate form of the U transformation approach is first used to remove the effect of the cascade property between the stages. Then, three control schemes are employed to monitor the parameters of multivariate simple... 

    Monitoring multivariate profiles in multistage processes

    , Article Communications in Statistics: Simulation and Computation ; 2019 ; 03610918 (ISSN) Bahrami, H ; Akhavan Niaki, S. T ; Khedmati, M ; Sharif University of Technology
    Taylor and Francis Inc  2019
    Abstract
    In some quality control applications, processes consist of multiple components, stations or stages to finish the final products or the services. Some quality characteristics in each stage of these processes (called multistage processes) can be represented by a relationship between a response and one or more explanatory variables which is named as profile. In this paper, a general model is proposed for monitoring multivariate profiles in multistage processes. To this aim, the multivariate form of the U transformation approach is first used to remove the effect of the cascade property between the stages. Then, three control schemes are employed to monitor the parameters of multivariate simple... 

    Monitoring autoregressive binary social networks based on likelihood statistics

    , Article Computers and Industrial Engineering ; Volume 149 , 2020 Taheri, Z ; Esmaeeli, H ; Doroudyan, M. H ; Sharif University of Technology
    Elsevier Ltd  2020
    Abstract
    Network monitoring is a new area in statistical process control applications. It aims at detecting assignable changes in the communication structure of a network. The probability of communications in social networks is usually based on the attributes of vertices. Moreover, due to the nature of human relationships, social networks are almost time-dependent. Neglecting this feature in control chart design reduces the chart performance. In this paper, communications are defined as autoregressive binary variables with the probability modeled by the logit link function. The explanatory variables of the model are the vertices’ attributes and previous information of the network. Accordingly, we... 

    A generalized linear Statistical model approach to monitor profiles

    , Article International Journal of Engineering, Transactions A: Basics ; Volume 20, Issue 3 , 2007 , Pages 233-242 ; 17281431 (ISSN) Akhavan Niaki, S. T ; Abbasi, B ; Arkat, J ; Sharif University of Technology
    Materials and Energy Research Center  2007
    Abstract
    Statistical process control methods for monitoring processes with univariate or multivariate measurements are used widely when the quality variables fit to known probability distributions. Some processes, however, are better characterized by a profile or a function of quality variables. For each profile, it is assumed that a collection of data on the response variable along with the values of the corresponding quality variables is measured. While the linear function is the simplest, it occurs frequently that many of the nonlinear functions may be transferred to linear functions easily. This paper proposes a control chart based on the generalized linear test (GLT) to monitor coefficients of... 

    Monitoring multivariate profiles in multistage processes

    , Article Communications in Statistics: Simulation and Computation ; Volume 50, Issue 11 , 2021 , Pages 3436-3464 ; 03610918 (ISSN) Bahrami, H ; Akhavan Niaki, T ; Khedmati, M ; Sharif University of Technology
    Taylor and Francis Ltd  2021
    Abstract
    In some quality control applications, processes consist of multiple components, stations or stages to finish the final products or the services. Some quality characteristics in each stage of these processes (called multistage processes) can be represented by a relationship between a response and one or more explanatory variables which is named as profile. In this paper, a general model is proposed for monitoring multivariate profiles in multistage processes. To this aim, the multivariate form of the U transformation approach is first used to remove the effect of the cascade property between the stages. Then, three control schemes are employed to monitor the parameters of multivariate simple... 

    Time series analysis framework for forecasting the construction labor costs

    , Article KSCE Journal of Civil Engineering ; Volume 25, Issue 8 , 2021 , Pages 2809-2823 ; 12267988 (ISSN) Faghih, S. A. M ; Gholipour, Y ; Kashani, H ; Sharif University of Technology
    Springer Verlag  2021
    Abstract
    This manuscript presents a framework to develop vector error correction (VEC) models applicable to forecasting the short- and long-run movements of the average hourly earnings of construction labor, which is an essential predictor of the construction labor costs. These models characterize the relationship between average hourly earnings and a set of explanatory variables. The framework is applied to develop VEC forecasting models for the average hourly earnings of construction labor in the USA based on the identified variables that govern its movements, such as Global Energy Price Index, Gross Domestic Product, and Personal Consumption Expenditures. More than 150 candidate VEC models were...