An Improved Construction of Büchi Automata for Scientific Applications
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Abstract
Omega automata or infinite words automata is a finite machine that works on words or strings of
infinite length. There is no acceptance condition as we have for NFA or DFA because of the words
or strings of infinite length. Omega automata can be classified into five categories based on
acceptance criteria: Büchi, Co-Büchi, Muller, Rabin, and Streett automata. All of these listed
omega automata have equal power but different acceptance conditions. Omega automata play an
essential part in verifying and synthesizing reactive systems. Omega automata is characterized by
two aspects acceptance condition and determinism. This thesis investigates the various classes of
omega automata and their applications by implementing multiple algorithms and models. The main
objective is to generate an algorithm for transforming omega regular expression to Büchi
automata.
This dissertation is dedicated to designing and expanding an algorithm that converts an omega
regular expression to its corresponding omega automata using a minimal approach. The proposed
algorithm improved the traditional canonical derivatives approach and introduced the canonical
factors reducing the no. of states in the resultant Büchi automaton. Ilie & Yu’s approach for
generating the Büchi automaton from -regular expressions was also revised.
Additionally, we employed the Büchi automaton model to illustrate the stages of cancer
progression. Furthermore, this thesis proposes a model that elucidates the process of tumor
formation by focusing on the activation/deactivation of the tumor suppressor gene as a result of a
mutation in the DNA nucleotide sequence, employing Büchi automata. The model
comprehensively explains the DNA mutation process and the origin of mutated cells, which are
subsequently followed by cellular proliferation.
We have also applied the concept of a Quantum Support Vector machine on the Breast Cancer
Wisconsin Data using Pennylane Default Simulator, Quantum Amazon Simulator State Vector,
and Quantum Amazon Simulator Density Matrix. A comparative study of amplitude encoding,
angle encoding, Z-Feature Map, ZZ-Feature Map, and poly feature map was conducted.
