题名: |
Teaching artificial neural systems to drive: Manual training techniques for autonomous systems |
作者: |
Shepanski, J. F.; Macy, S. A. |
关键词: |
systems;teac;manual;chin;drive;mous;each;aini;fici;applications |
摘要: |
A methodology was developed for manually training autonomous control systems based on artificial neural systems (ANS). In applications where the rule set governing an expert's decisions is difficult to formulate, ANS can be used to extract rules by associating the information an expert receives with the actions taken. Properly constructed networks imitate rules of behavior that permits them to function autonomously when they are trained on the spanning set of possible situations. This training can be provided manually, either under the direct supervision of a system trainer, or indirectly using a background mode where the networks assimilates training data as the expert performs its day-to-day tasks. To demonstrate these methods, an ANS network was trained to drive a vehicle through simulated freeway traffic. |
报告类型: |
科技报告 |