Experimental Characterization and Detection of Quantum Entanglement and Nonclassical Correlations
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The thesis explores various facets of quantum information processing, primarily fo
cusing on entanglement detection, quantification, and characterization. It also touches
upon broader aspects of quantum correlations, including discord. Experimental imple
mentations of these concepts are conducted on spin ensemble based nuclear magnetic
resonance (NMR) and superconductor-based IBM quantum processors, highlighting
their practical applicability in quantum information science. Quantum entanglement
is a critical factor driving advancements in quantum technologies. However, detecting
this fundamental property is generally considered to be an NP-hard problem. Tra
ditional methods such as tomography are not feasible due to their resource-intensive
nature. Moreover, many theoretical methods for entanglement detection are not ex
perimentally friendly, posing significant challenges in practical implementation. In
three-qubit systems, SLOCC (Stochastic Local Operations with Classical Communi
cation) classification categorizes quantum states based on their equivalence under local
operations and classical communication. This classification scheme identifies different
classes of entanglement that remain invariant under such operations, providing insights
into the multipartite entanglement structure of quantum states. Specifically, for three
qubits, there are 6 distinct SLOCC classes. Several protocols are proposed and experi
mentally verified for the SLOCC classification and detection of genuinely multipartite
entanglement (GME) in both three-qubit pure and mixed quantum states.
The thesis begins with the presentation of a novel protocol for classifying three
qubit pure states into SLOCC entanglement classes using the reconstruction of corre
lation tensors on an NMR quantum computer. This protocol requires the measurement
of 13 operators, where the expectation values of these operators form the elements of
these tensors. These same expectation values are used to construct a concurrence func
tion, which quantifies the global entanglement present in the system. Building on this
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foundation, an artificial neural network (ANN) model is developed to detect genuinely
multipartite entanglement (GME) and classify three-qubit states under SLOCC. It has
been demonstrated that 6 features are sufficient for SLOCC classification and 4 features
for GME classification when states are expressed in the canonical basis. Additionally,
the thesis explores the generation and detection of entanglement in three-qubit PPT en
tangled GHZ diagonal states using both linear and nonlinear entanglement witnesses.
Implementation on IBM hardware demonstrates the advantage of nonlinear witnesses
in NISQ devices. It introduces an algorithm for classifying 3 and 4 qubit systems us
ing matrix product states (MPS) into SLOCC classes using MPS properties. The work
also extends to the measurement of quantum discord, a form of quantum correlation
that goes beyond entanglement. Experimental techniques are developed for quantify
ing discord in NMRsystems, enhancing the understanding of quantum correlations and
their implications for quantum information processing. The thesis further explores the
dynamics of quantum systems, distinguishing between Markovian and non-Markovian
behavior using convex combinations of Pauli semigroups, with experimental valida
tion on NMRquantumprocessor.