Proper Orthogonal Decomposition for Performance Based Design and Modelling Concrete
Date
2022
Authors
Manoj A.
Journal Title
Journal ISSN
Volume Title
Publisher
National Institute of Technology Karnataka, Surathkal
Abstract
Reduction in the usage of Portland cement as the primary cementitious component in
concrete has become a key driver for accomplishment of the UN sustainable
development goals (SDGs). Utilization of secondary cementitious materials, recycled
materials and performance-based design of concrete by innovative cement
combinations are being attempted to make concrete the most versatile and widely used
construction material and sustainable too. Nevertheless, achieving desired workability,
strength and durability characteristics, is still challenging owing to the complex
interaction of many variables. Performance-based design demands thorough qualitative
and quantitative appraisal of concrete characteristics. Knowledge of significant
variables will provide directions to performance-based design methods for
accomplishing targeted levels. Data analytics help enhance state-of-the-art.
Mathematically, in such complex systems, random experiments further add to sources
of redundancy and lead to unnecessary complications, if all the variables are to be
included in performance appraisal. Identification of significant variables, elimination
of redundant helps in dimensionality reduction of data and meaningful representation
of system’s behaviour. Statistical methods, group method of data handling, machine
learning techniques are very popularly employed in modelling complex systems of this
kind.
Proper Orthogonal Decomposition (POD) has been considered in this work for
dimensionality reduction in performance-based design of concrete. An account of
employment of data handling techniques in performance-based design has been
provided and utility of POD in such assignments has been demonstrated and
highlighted. Sequential steps adopted in current research have been described.
Available-published data sets have been adopted for study. Correlation matrix obtained
from screened data has been decomposed to obtain eigenvalues and eigenvectors.
Orthogonal components extracted from dimensionality reduction have been further
used to draw inferences. A method to identify significant variables and their hierarchy
has been ordered, which is of prime importance in performance-based design to for
accomplishment of targets. A performance quality index has been proposed for
evaluating relative quality of different mixes. Potential utility of POD in refinement of
vi
available concrete models to predict and project behaviour of concrete with inclusion
of emerging data in decision-making for redefining such models have been
investigated.
General outcomes on utility of POD in concrete performance evaluation and specific
conclusions on concrete workability, strength, durability and performance at elevated
temperature exposure have been brought out as inferences. It is found that POD can be
an effective tool in exploration of complex concrete data. Identification of crucial
variables and ordering of hierarchy based on their significance can aid in quick
calibration of concrete characteristics depending upon specific target requirements of
performance-based design. Utilization of POD can open up new vistas to extend
existing concrete capabilities and possibilities.
Description
Keywords
Concrete, Data, Correlation, Eigenvalue, Eigenvector, Dimensional and variable reduction, Component plot, POD, Performance index, Models