A crucial early stage in the engineering design process is
the conceptual design phase, during which an initial solution
design is generated. The quality of this initial design has
a great bearing on the quality and success of the produced
artefact. Typically, the knowledge required to perform this
task is only acquired through many years of experience, and
so is often at a premium. This has led to a number of attempts
to automate this phase using intelligent computer systems. However,
the knowledge of how to generate designs has proved difficult
to acquire directly from human experts, and as a result, is
often unsatisfactory in these systems. The application of inductive
machine learning techniques to the acquisition of this sort
of knowledge has been advocated as one approach to overcoming
the difficulties surrounding its capture. Rather than acquiring
the knowledge from human experts, the knowledge would be inferred
automatically from a set of examples of the design process.
This paper describes the authors' investigations into the
general viability of this approach in the context of one particular
conceptual design task, that of the design of fluid power circuits.
The analysis of a series of experiments highlights a number
of issues that would seem to arise regardless of the working
domain or particular machine learning algorithm used. These
issues, presented and discussed here, cast serious doubts upon
the practicality of such an approach to knowledge acquisition,
given the current state of the art.