عنوان مقاله فارسی: تنظیم تصادفی بهینه سیستم های کنترل شبکه غیر خطی با استفاده از برنامه نویسی پویا تطبیقی مبتنی بر رویداد
عنوان مقاله لاتین: Stochastic Optimal Regulation of Nonlinear Networked Control Systems by Using Event-Driven Adaptive Dynamic Programming
نویسندگان: Avimanyu Sahoo; Sarangapani Jagannathan
تعداد صفحات: 13
سال انتشار: 2017
زبان: لاتین
Abstract:
In this paper, an event-driven stochastic adaptive dynamic programming (ADP)-based technique is introduced for nonlinear systems with a communication network within its feedback loop. A near optimal control policy is designed using an actor-critic framework and ADP with event sampled state vector. First, the system dynamics are approximated by using a novel neural network (NN) identifier with event sampled state vector. The optimal control policy is generated via an actor NN by using the NN identifier and value function approximated by a critic NN through ADP. The stochastic NN identifier, actor, and critic NN weights are tuned at the event sampled instants leading to aperiodic weight tuning laws. Above all, an adaptive event sampling condition based on estimated NN weights is designed by using the Lyapunov technique to ensure ultimate boundedness of all the closed-loop signals along with the approximation accuracy. The net result is event-driven stochastic ADP technique that can significantly reduce the computation and network transmissions. Finally, the analytical design is substantiated with simulation results.
stochastic optimal regulation of nonlinear networked control systems by using event-driven adaptive dynamic programming_1619696634_48031_4145_1134.zip0.96 MB |