Extraction of Fuzzy Rules Using Fuzzy Neural Networks with Forgetting.
スポンサーリンク
概要
- 論文の詳細を見る
We extract fuzzy rules from data using a fuzzy neural network without a prior information. First, we set the number of initial fuzzy rules based on the number of training data. Next, we generate the specified number of initial fuzzy rules that have less wasteful membership functions using self-organization learning by T. Kohonen. Finally, we tune and prune fuzzy rules using the similar method to back-propagation learning with forgetting by M. Ishikawa. We apply the method to problems of the iris classification by R.A. Fisher and the diagnosis of electric transformer by gas in oil, and we have very good results.
- 公益社団法人 計測自動制御学会の論文
公益社団法人 計測自動制御学会 | 論文
- Self-Excited Oscillation of Relay-Type Sampled-Data Feedback Control System
- タイトル無し
- Mold Level Control for a Continuous Casting Machine Using an Electrode-Type Mold-Level Detector
- Assessment and Control of Noise:Pollution by Noise from General Sources
- Information network system and home automation.