Fuzzy logic try to harness the
human knowledge which is often guided by approximations by accepting input values in linguistic terms. The fuzzy rule base
comprises several IF-THEN rules which closely resemble human knowledge and decision-making. In this study, it was thus
proposed to apply the concept of fuzzy logic for modeling mode choice and compare the results with traditional MNL model.
For this purpose, a total of 5822 samples were collected in Port Blair city, India and data pertaining to input variables viz. invehicle
travel time, out-vehicle travel time, travel cost and comfort index were considered for development of mode choice
models. It was observed that the results obtained from fuzzy logic results gave better prediction accuracy in comparison to the
traditional MNL model. Thus it can be concluded that the fuzzy logic models were better able to capture and incorporate the
human knowledge and reasoning into mode choice behaviour. Further, developed fuzzy logic models are applied to evaluate
selected transport policies to demonstrate the suitability of the developed fuzzy logic mode choice models.