Towards the artificial evolution of target features in complex chemical systems

The synthesis of abiotic life-like behaviour in complex chemical systems is one of the great scientific challenges in today’s research environment. Very often in this type of design, the parameter space is so large and the system so complex that analytical, rational design techniques are extremely d...

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Main Author: Siepmann, Peter A.
Format: Thesis (University of Nottingham only)
Language:English
Published: 2010
Online Access:https://eprints.nottingham.ac.uk/11135/
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author Siepmann, Peter A.
author_facet Siepmann, Peter A.
author_sort Siepmann, Peter A.
building Nottingham Research Data Repository
collection Online Access
description The synthesis of abiotic life-like behaviour in complex chemical systems is one of the great scientific challenges in today’s research environment. Very often in this type of design, the parameter space is so large and the system so complex that analytical, rational design techniques are extremely difficult to manage, and more often than not, unavailable altogether. Machine learning methods have found many applications in the realm of design and manufacture and the research described in this thesis describes the application of these tools towards the development of pre-specified chemical functionality in complex systems. A detailed description of the ‘Evolutionary Engine’ built with this sort of design in mind is given, including preliminary investigations into coupling this engine to a ‘real life’ chemical reactor array. Studies are performed on a range of complex systems, including benchmark problems based on cellular automata, and, for the first time in this domain, on real world problems in self-organised scanning probe microscopy. Given a target behaviour of the system in question, usually represented by a series of patterns in a 2D image, it is shown that parameters can be ‘reverse engineered’ through a sophisticated combination of machine learning techniques and image analysis methods, such that the target behaviour/pattern can be faithfully reproduced. Finally, techniques for the approximation of a complex system and its associated fitness function are explored, giving rise to a dramatic decrease in computation time with little compromise to the quality of results.
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spelling nottingham-111352025-02-28T11:11:30Z https://eprints.nottingham.ac.uk/11135/ Towards the artificial evolution of target features in complex chemical systems Siepmann, Peter A. The synthesis of abiotic life-like behaviour in complex chemical systems is one of the great scientific challenges in today’s research environment. Very often in this type of design, the parameter space is so large and the system so complex that analytical, rational design techniques are extremely difficult to manage, and more often than not, unavailable altogether. Machine learning methods have found many applications in the realm of design and manufacture and the research described in this thesis describes the application of these tools towards the development of pre-specified chemical functionality in complex systems. A detailed description of the ‘Evolutionary Engine’ built with this sort of design in mind is given, including preliminary investigations into coupling this engine to a ‘real life’ chemical reactor array. Studies are performed on a range of complex systems, including benchmark problems based on cellular automata, and, for the first time in this domain, on real world problems in self-organised scanning probe microscopy. Given a target behaviour of the system in question, usually represented by a series of patterns in a 2D image, it is shown that parameters can be ‘reverse engineered’ through a sophisticated combination of machine learning techniques and image analysis methods, such that the target behaviour/pattern can be faithfully reproduced. Finally, techniques for the approximation of a complex system and its associated fitness function are explored, giving rise to a dramatic decrease in computation time with little compromise to the quality of results. 2010-07-20 Thesis (University of Nottingham only) NonPeerReviewed application/pdf en arr https://eprints.nottingham.ac.uk/11135/1/siepmann-thesis.pdf Siepmann, Peter A. (2010) Towards the artificial evolution of target features in complex chemical systems. PhD thesis, University of Nottingham.
spellingShingle Siepmann, Peter A.
Towards the artificial evolution of target features in complex chemical systems
title Towards the artificial evolution of target features in complex chemical systems
title_full Towards the artificial evolution of target features in complex chemical systems
title_fullStr Towards the artificial evolution of target features in complex chemical systems
title_full_unstemmed Towards the artificial evolution of target features in complex chemical systems
title_short Towards the artificial evolution of target features in complex chemical systems
title_sort towards the artificial evolution of target features in complex chemical systems
url https://eprints.nottingham.ac.uk/11135/