Measurement Induced Dynamics and Trace Preserving Replica Cutoffs
- URL: http://arxiv.org/abs/2504.00984v1
- Date: Tue, 01 Apr 2025 17:20:42 GMT
- Title: Measurement Induced Dynamics and Trace Preserving Replica Cutoffs
- Authors: Graham Kells,
- Abstract summary: We present a general methodology for addressing the infinite hierarchy problem that arises in measurement-induced dynamics of replicated quantum systems.<n>Our approach introduces trace-preserving replica cutoffs using tomographic-like techniques to estimate higher-order replica states from lower ones.<n>This guarantees that the dynamics of single-replica systems correctly reduce to standard Lindblad evolution.
- Score: 0.0
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: We present a general methodology for addressing the infinite hierarchy problem that arises in measurement-induced dynamics of replicated quantum systems. Our approach introduces trace-preserving replica cutoffs using tomographic-like techniques to estimate higher-order replica states from lower ones, ensuring that partial trace reduction properties are rigorously maintained. This guarantees that the dynamics of single-replica systems correctly reduce to standard Lindblad evolution. By systematically mapping information between replica spaces of different orders, we characterise null spaces under partial trace operations and outline efficient algorithmic approaches to enforce positivity. Importantly, it is demonstrated that pre-calculated stochastic Gaussian ensembles of free fermion states provide an effective and computationally efficient means to stabilise the replica hierarchy, even in the presence of interactions. Numerical tests on small interacting fermionic systems illustrate the effectiveness and practicality of our approach, showing precise agreement with trajectory methods while providing significantly better statistical convergence.
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