posted on 2014-06-16, 15:27authored byFangjin Zhang
Additive manufacturing (AM) has shown itself to be beneficial in many
application areas, including product design and manufacture, medical models
and prosthetics, architectural modelling and artistic endeavours. For some of
these applications, coupling AM with reverse engineering (RE) enables the
utilisation of data from existing 3D shapes. This thesis describes the
application of AM and RE within sculpture manufacture, in order to optimise
the process chains for sculpture reproduction and relic conservation and
restoration. This area poses particular problems since the original artefacts
can often be fragile and inaccessible, and the finishing required on the AM
replicas is both complex and varied. Several case studies within both
literature and practical projects are presented, which cover essential
knowledge of producing large scale sculptures from an original models as well
as a wide range of artefact shapes and downstream finishing techniques. The
combination of digital technologies and traditional art requires interdisciplinary
knowledge across engineering and fine art. Also, definitions and requirements
(e.g. ‘accuracy’), can be applied as both engineering and artistic terms when
specifications and trade-offs are being considered. The thesis discusses the
feasibility for using these technologies across domains, and explores the
potential for developing new market opportunities for AM. It presents and
analyses a number of case study projects undertaken by the author with a
view to developing cost and time models for various processes used. These
models have then been used to develop a series of "process maps", which
enable users of AM in this area to decide upon the optimum process route to
follow, under various circumstances. The maps were validated and user
feedback obtained through the execution of two further sculpture
manufacturing projects. The thesis finishes with conclusions about the
feasibility of the approach, its constraints, the pros and cons of adopting AM in
this area and recommendations for future research.