Stochastic convexity for multidimensional processes
Cheng-Shang Chang, XiuLi Chao, et al.
CDC 1990
Learning-aided dynamic scheduling is proposed for production line scheduling. In this concept, the scheduling rules are dynamically switched during real operations to reflect changes in the production line status, given requirements and constraints. This switching is governed by some knowledge which is automatically acquired by machine learning during the iteration of simulations of the specific production line. The machine learning is carried out in the form of generation of a binary decision tree, and a new algorithm is developed for this objective. Simulation studies on its application to a routing problem have been performed, and the effectiveness of the concept was verified.
Cheng-Shang Chang, XiuLi Chao, et al.
CDC 1990
P. Bhattacharya, L. Georgiadis, et al.
CDC 1990
Wen-Wei Chiang
CDC 1990
Shinichi Nakasuka, Taketoshi Yoshida
Industrial Applications of Machine Intelligence and Vision 1989