Title :
A two-phase methodology for technology selection and system design
Author :
Bard, Jonathan F. ; Feinberg, Abe
Author_Institution :
Dept. of Mech. Eng., Texas Univ., Austin, TX, USA
fDate :
2/1/1989 12:00:00 AM
Abstract :
A two-phase methodology to guide research and development managers in the evaluation and selection of competing technologies is presented. Deterministic multi-attribute utility theory is used in the first phase to rank the technological alternatives and to eliminate inferior candidates. The procedure is illustrated with an application drawn from a study centering on the evaluation of electric and hybrid passenger vehicles. Thirty-nine individuals were interviewed to assess their risk preferences and determine their attitudes toward the vehicle design. In the second phase, it is assumed that a particular technology has been chosen for further development. The decision-maker must then allocate a fixed amount of resources to different projects, some of which may be undertaken in parallel, to maximize a given measure of performance. The problem is formulated as a probabilistic network and solved heuristically using Monte Carlo simulation. Results are presented for the most preferred vehicle identified in phase one for two representative decision-makers and three budget options. In each case, the heuristic finds a solution that corresponds to the optimal allocation of funds
Keywords :
Monte Carlo methods; electric vehicles; research and development management; Monte Carlo simulation; development; electric vehicles; hybrid passenger vehicles; managers; multi-attribute utility theory; optimal funds allocation; probabilistic network; research; technology selection; two-phase methodology; Automotive engineering; Helium; Paper technology; Position measurement; Research and development; Research and development management; Resource management; Technology management; Utility theory; Vehicles;
Journal_Title :
Engineering Management, IEEE Transactions on