Decision making in engineering prediction systems
Doctor of Philosophy === Department of Civil Engineering === Yacoub M. Najjar === Access to databases after the digital revolutions has become easier because large databases are progressively available. Knowledge discovery in these databases via intelligent data analysis technology is a relatively y...
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ndltd-KSU-oai-krex.k-state.edu-2097-162312017-03-03T15:45:07Z Decision making in engineering prediction systems Yasarer, Hakan Decision making Artificial neural networks Auto-associative networks Feedback ANN network Partially missing datasets New approaches to artificial neural network Civil Engineering (0543) Doctor of Philosophy Department of Civil Engineering Yacoub M. Najjar Access to databases after the digital revolutions has become easier because large databases are progressively available. Knowledge discovery in these databases via intelligent data analysis technology is a relatively young and interdisciplinary field. In engineering applications, there is a demand for turning low-level data-based knowledge into a high-level type knowledge via the use of various data analysis methods. The main reason for this demand is that collecting and analyzing databases can be expensive and time consuming. In cases where experimental or empirical data are already available, prediction models can be used to characterize the desired engineering phenomena and/or eliminate unnecessary future experiments and their associated costs. Phenomena characterization, based on available databases, has been utilized via Artificial Neural Networks (ANNs) for more than two decades. However, there is a need to introduce new paradigms to improve the reliability of the available ANN models and optimize their predictions through a hybrid decision system. In this study, a new set of ANN modeling approaches/paradigms along with a new method to tackle partially missing data (Query method) are introduced for this purpose. The potential use of these methods via a hybrid decision making system is examined by utilizing seven available databases which are obtained from civil engineering applications. Overall, the new proposed approaches have shown notable prediction accuracy improvements on the seven databases in terms of quantified statistical accuracy measures. The proposed new methods are capable in effectively characterizing the general behavior of a specific engineering/scientific phenomenon and can be collectively used to optimize predictions with a reasonable degree of accuracy. The utilization of the proposed hybrid decision making system (HDMS) via an Excel-based environment can easily be utilized by the end user, to any available data-rich database, without the need for any excessive type of training. 2013-08-14T13:25:16Z 2013-08-14T13:25:16Z 2013-08-14 2013 August Dissertation http://hdl.handle.net/2097/16231 en_US Kansas State University |
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Decision making Artificial neural networks Auto-associative networks Feedback ANN network Partially missing datasets New approaches to artificial neural network Civil Engineering (0543) |
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Decision making Artificial neural networks Auto-associative networks Feedback ANN network Partially missing datasets New approaches to artificial neural network Civil Engineering (0543) Yasarer, Hakan Decision making in engineering prediction systems |
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Doctor of Philosophy === Department of Civil Engineering === Yacoub M. Najjar === Access to databases after the digital revolutions has become easier because large databases are progressively available. Knowledge discovery in these databases via intelligent data analysis technology is a relatively young and interdisciplinary field. In engineering applications, there is a demand for turning low-level data-based knowledge into a high-level type knowledge via the use of various data analysis methods. The main reason for this demand is that collecting and analyzing databases can be expensive and time consuming. In cases where experimental or empirical data are already available, prediction models can be used to characterize the desired engineering phenomena and/or eliminate unnecessary future experiments and their associated costs. Phenomena characterization, based on available databases, has been utilized via Artificial Neural Networks (ANNs) for more than two decades. However, there is a need to introduce new paradigms to improve the reliability of the available ANN models and optimize their predictions through a hybrid decision system. In this study, a new set of ANN modeling approaches/paradigms along with a new method to tackle partially missing data (Query method) are introduced for this purpose. The potential use of these methods via a hybrid decision making system is examined by utilizing seven available databases which are obtained from civil engineering applications. Overall, the new proposed approaches have shown notable prediction accuracy improvements on the seven databases in terms of quantified statistical accuracy measures. The proposed new methods are capable in effectively characterizing the general behavior of a specific engineering/scientific phenomenon and can be collectively used to optimize predictions with a reasonable degree of accuracy. The utilization of the proposed hybrid decision making system (HDMS) via an Excel-based environment can easily be utilized by the end user, to any available data-rich database, without the need for any excessive type of training. |
author |
Yasarer, Hakan |
author_facet |
Yasarer, Hakan |
author_sort |
Yasarer, Hakan |
title |
Decision making in engineering prediction systems |
title_short |
Decision making in engineering prediction systems |
title_full |
Decision making in engineering prediction systems |
title_fullStr |
Decision making in engineering prediction systems |
title_full_unstemmed |
Decision making in engineering prediction systems |
title_sort |
decision making in engineering prediction systems |
publisher |
Kansas State University |
publishDate |
2013 |
url |
http://hdl.handle.net/2097/16231 |
work_keys_str_mv |
AT yasarerhakan decisionmakinginengineeringpredictionsystems |
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1718418541738196992 |