This paper presents a new generalized e!ective stress model, referred to as MIT-S1, which is capable of predicting the rate independent, e!ective stress}strain}strength behaviour of uncemented soils over a wide range of con"ning pressures and densities. Freshly deposited sand specimens compressed fr
A unified parameterized formulation of reasoning in fuzzy modeling and control
✍ Scribed by Mohammad R. Emami; I.Burhan Türksen; Andrew A. Goldenberg
- Publisher
- Elsevier Science
- Year
- 1999
- Tongue
- English
- Weight
- 433 KB
- Volume
- 108
- Category
- Article
- ISSN
- 0165-0114
No coin nor oath required. For personal study only.
✦ Synopsis
A uniÿed parameterized formulation for the reasoning process in fuzzy modeling and control is developed in this paper. First, by selecting a suitable parameterized family of triangular functions and extending to the n-ary operation, the parameterized form of Mamdani's approximation and formal logical reasoning approaches is introduced. Next, by unifying the inference mechanism for both approaches, a uniÿed parameterized reasoning function is developed. It is also proved that for crisp input variables, the two methods of inference from a set of rules, i.e., ÿrst-aggregate-theninfer (FATI) and ÿrst-infer-then-aggregate (FITA), generate identical fuzzy outputs. The proposed reasoning formulation introduces four reasoning parameters. Depending on these parameters, the reasoning operation varies continuously among the extreme cases in each step of the inference. In order to reduce the computational e ort, a fast algorithm for computing the parameterized family of triangular functions is suggested. Further, a simpliÿed parameterized reasoning formulation is also suggested in which the defuzziÿed output can be calculated directly from the individual consequent fuzzy sets. This simpliÿed formulation is comparable with Sugeno's and Yager's heuristic simpliÿed reasoning functions. Some examples demonstrate the validity of the results.
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