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Main Authors: Kazarnikov, Alexey, Scheichl, Robert, Epstein, Irving R., Haario, Heikki, Marciniak-Czochra, Anna
Format: Preprint
Published: 2025
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Online Access:https://arxiv.org/abs/2504.02530
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author Kazarnikov, Alexey
Scheichl, Robert
Epstein, Irving R.
Haario, Heikki
Marciniak-Czochra, Anna
author_facet Kazarnikov, Alexey
Scheichl, Robert
Epstein, Irving R.
Haario, Heikki
Marciniak-Czochra, Anna
contents Parameter identification in pattern formation models from a single experimental snapshot is challenging, as traditional methods often require knowledge of initial conditions or transient dynamics -- data that are frequently unavailable in experimental settings. In this study, we extend the recently developed statistical approach, Correlation Integral Likelihood (CIL) method to enable robust parameter identification from a single snapshot of an experimental pattern. Using the chlorite-iodite-malonic acid (CIMA) reaction -- a well-studied system that produces Turing patterns -- as a test case, we address key experimental challenges such as measurement noise, model-data discrepancies, and the presence of mixed-mode patterns, where different spatial structures (e.g., coexisting stripes and dots) emerge under the same conditions. Numerical experiments demonstrate that our method accurately estimates model parameters, even with incomplete or noisy data. This approach lays the groundwork for future applications in developmental biology, chemical reaction modelling, and other systems with heterogeneous output.
format Preprint
id arxiv_https___arxiv_org_abs_2504_02530
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle Statistical parameter identification of mixed-mode patterns from a single experimental snapshot
Kazarnikov, Alexey
Scheichl, Robert
Epstein, Irving R.
Haario, Heikki
Marciniak-Czochra, Anna
Analysis of PDEs
35B36 (Primary) 92C15, 65M06 (Secondary)
Parameter identification in pattern formation models from a single experimental snapshot is challenging, as traditional methods often require knowledge of initial conditions or transient dynamics -- data that are frequently unavailable in experimental settings. In this study, we extend the recently developed statistical approach, Correlation Integral Likelihood (CIL) method to enable robust parameter identification from a single snapshot of an experimental pattern. Using the chlorite-iodite-malonic acid (CIMA) reaction -- a well-studied system that produces Turing patterns -- as a test case, we address key experimental challenges such as measurement noise, model-data discrepancies, and the presence of mixed-mode patterns, where different spatial structures (e.g., coexisting stripes and dots) emerge under the same conditions. Numerical experiments demonstrate that our method accurately estimates model parameters, even with incomplete or noisy data. This approach lays the groundwork for future applications in developmental biology, chemical reaction modelling, and other systems with heterogeneous output.
title Statistical parameter identification of mixed-mode patterns from a single experimental snapshot
topic Analysis of PDEs
35B36 (Primary) 92C15, 65M06 (Secondary)
url https://arxiv.org/abs/2504.02530