Abstract
In this paper, we proposed a multistage fuzzy inference system consisted of several two-input one-output fuzzy inference engine, which infers and predicts values of a set of time-series data. The inference engine use a two dimensional fuzzy rule array to represent the time-series data production mechanism. To construct the rule arrays, we extract the knowledge of production from a real time-series data by genetic algorithm. We applied the method to extract the anesthetist's knowledge for blood pressure control in surgical operation. It was found that it is useful for data-mining to acquire the knowledge about the time-series data, automatically. The acquired knowledge as rule arrays are not sufficient because the number of time-series data available is quite restricted and these subjects needs to be investigated for future problems.