Constrained Motion Particle Swarm Optimization for Non-Linear Time Series Prediction

Time series prediction techniques have been used in many real-world applications such as financial market prediction, electric utility load forecasting, weather and environmental state prediction, and reliability forecasting. The underlying system models and time series data generating processes are...

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Main Author: Sapankevych, Nicholas
Format: Others
Published: Scholar Commons 2015
Subjects:
Online Access:https://scholarcommons.usf.edu/etd/5569
https://scholarcommons.usf.edu/cgi/viewcontent.cgi?article=6771&context=etd
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spelling ndltd-USF-oai-scholarcommons.usf.edu-etd-67712019-10-04T05:07:12Z Constrained Motion Particle Swarm Optimization for Non-Linear Time Series Prediction Sapankevych, Nicholas Time series prediction techniques have been used in many real-world applications such as financial market prediction, electric utility load forecasting, weather and environmental state prediction, and reliability forecasting. The underlying system models and time series data generating processes are generally complex for these applications and the models for these systems are usually not known a priori. Accurate and unbiased estimation of time series data produced by these systems cannot always be achieved using well known linear techniques, and thus the estimation process requires more advanced time series prediction algorithms. One type of time series interpolation and prediction algorithm that has been proven to be effective for these various types of applications is Support Vector Regression (SVR) [1], which is based on the Support Vector Machine (SVM) developed by Vapnik et al. [2, 3]. The underlying motivation for using SVMs is the ability of this methodology to accurately forecast time series data when the underlying system processes are typically nonlinear, non-stationary and not defined a-priori. SVMs have also been proven to outperform other non-linear techniques including neural-network based non-linear prediction techniques such as multi-layer perceptrons. As with most time series prediction algorithms, there are typically challenges associated in applying a given heuristic to any general problem. One difficult challenge in using SVR to solve these types of problems is the selection of free parameters associated with the SVR algorithm. There is no given heuristic to select SVR free parameters and the user is left to adjust these parameters in an ad hoc manner. The focus of this dissertation is to present an alternative to the typical ad hoc approach of tuning SVR for time series prediction problems by using Particle Swarm Optimization (PSO) to assist in the SVR free parameter selection process. Developed by Kennedy and Eberhart [4-8], PSO is a technique that emulates the process living creatures (such as birds or insects) use to discover food resources at a given geographic location. PSO has been proven to be an effective technique for many different kinds of optimization problems [9-11]. The focus of this dissertation is to present an alternative to the typical ad hoc approach of tuning SVR for time series prediction problems by using Particle Swarm Optimization (PSO) to assist in the SVR free parameter selection process. Developed by Kennedy and Eberhart [4-8], PSO is a technique that emulates the process living creatures (such as birds or insects) use to discover food resources at a given geographic location. PSO has been proven to be an effective technique for many different kinds of optimization problems [9-11]. 2015-03-13T07:00:00Z text application/pdf https://scholarcommons.usf.edu/etd/5569 https://scholarcommons.usf.edu/cgi/viewcontent.cgi?article=6771&context=etd default Graduate Theses and Dissertations Scholar Commons Competition for Artificial Time Series Convex Optimization EUNITE Mackey-Glass Support Vector Regression Electrical and Computer Engineering
collection NDLTD
format Others
sources NDLTD
topic Competition for Artificial Time Series
Convex Optimization
EUNITE
Mackey-Glass
Support Vector Regression
Electrical and Computer Engineering
spellingShingle Competition for Artificial Time Series
Convex Optimization
EUNITE
Mackey-Glass
Support Vector Regression
Electrical and Computer Engineering
Sapankevych, Nicholas
Constrained Motion Particle Swarm Optimization for Non-Linear Time Series Prediction
description Time series prediction techniques have been used in many real-world applications such as financial market prediction, electric utility load forecasting, weather and environmental state prediction, and reliability forecasting. The underlying system models and time series data generating processes are generally complex for these applications and the models for these systems are usually not known a priori. Accurate and unbiased estimation of time series data produced by these systems cannot always be achieved using well known linear techniques, and thus the estimation process requires more advanced time series prediction algorithms. One type of time series interpolation and prediction algorithm that has been proven to be effective for these various types of applications is Support Vector Regression (SVR) [1], which is based on the Support Vector Machine (SVM) developed by Vapnik et al. [2, 3]. The underlying motivation for using SVMs is the ability of this methodology to accurately forecast time series data when the underlying system processes are typically nonlinear, non-stationary and not defined a-priori. SVMs have also been proven to outperform other non-linear techniques including neural-network based non-linear prediction techniques such as multi-layer perceptrons. As with most time series prediction algorithms, there are typically challenges associated in applying a given heuristic to any general problem. One difficult challenge in using SVR to solve these types of problems is the selection of free parameters associated with the SVR algorithm. There is no given heuristic to select SVR free parameters and the user is left to adjust these parameters in an ad hoc manner. The focus of this dissertation is to present an alternative to the typical ad hoc approach of tuning SVR for time series prediction problems by using Particle Swarm Optimization (PSO) to assist in the SVR free parameter selection process. Developed by Kennedy and Eberhart [4-8], PSO is a technique that emulates the process living creatures (such as birds or insects) use to discover food resources at a given geographic location. PSO has been proven to be an effective technique for many different kinds of optimization problems [9-11]. The focus of this dissertation is to present an alternative to the typical ad hoc approach of tuning SVR for time series prediction problems by using Particle Swarm Optimization (PSO) to assist in the SVR free parameter selection process. Developed by Kennedy and Eberhart [4-8], PSO is a technique that emulates the process living creatures (such as birds or insects) use to discover food resources at a given geographic location. PSO has been proven to be an effective technique for many different kinds of optimization problems [9-11].
author Sapankevych, Nicholas
author_facet Sapankevych, Nicholas
author_sort Sapankevych, Nicholas
title Constrained Motion Particle Swarm Optimization for Non-Linear Time Series Prediction
title_short Constrained Motion Particle Swarm Optimization for Non-Linear Time Series Prediction
title_full Constrained Motion Particle Swarm Optimization for Non-Linear Time Series Prediction
title_fullStr Constrained Motion Particle Swarm Optimization for Non-Linear Time Series Prediction
title_full_unstemmed Constrained Motion Particle Swarm Optimization for Non-Linear Time Series Prediction
title_sort constrained motion particle swarm optimization for non-linear time series prediction
publisher Scholar Commons
publishDate 2015
url https://scholarcommons.usf.edu/etd/5569
https://scholarcommons.usf.edu/cgi/viewcontent.cgi?article=6771&context=etd
work_keys_str_mv AT sapankevychnicholas constrainedmotionparticleswarmoptimizationfornonlineartimeseriesprediction
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